12345678910111213141516171819202122232425262728293031323334353637383940414243444546474849505152535455565758596061626364656667686970717273747576777879808182838485868788899091929394959697989910010110210310410510610710810911011111211311411511611711811912012112212312412512612712812913013113213313413513613713813914014114214314414514614714814915015115215315415515615715815916016116216316416516616716816917017117217317417517617717817918018118218318418518618718818919019119219319419519619719819920020120220320420520620720820921021121221321421521621721821922022122222322422522622722822923023123223323423523623723823924024124224324424524624724824925025125225325425525625725825926026126226326426526626726826927027127227327427527627727827928028128228328428528628728828929029129229329429529629729829930030130230330430530630730830931031131231331431531631731831932032132232332432532632732832933033133233333433533633733833934034134234334434534634734834935035135235335435535635735835936036136236336436536636736836937037137237337437537637737837938038138238338438538638738838939039139239339439539639739839940040140240340440540640740840941041141241341441541641741841942042142242342442542642742842943043143243343443543643743843944044144244344444544644744844945045145245345445545645745845946046146246346446546646746846947047147247347447547647747847948048148248348448548648748848949049149249349449549649749849950050150250350450550650750850951051151251351451551651751851952052152252352452552652752852953053153253353453553653753853954054154254354454554654754854955055155255355455555655755855956056156256356456556656756856957057157257357457557657757857958058158258358458558658758858959059159259359459559659759859960060160260360460560660760860961061161261361461561661761861962062162262362462562662762862963063163263363463563663763863964064164264364464564664764864965065165265365465565665765865966066166266366466566666766866967067167267367467567667767867968068168268368468568668768868969069169269369469569669769869970070170270370470570670770870971071171271371471571671771871972072172272372472572672772872973073173273373473573673773873974074174274374474574674774874975075175275375475575675775875976076176276376476576676776876977077177277377477577677777877978078178278378478578678778878979079179279379479579679779879980080180280380480580680780880981081181281381481581681781881982082182282382482582682782882983083183283383483583683783883984084184284384484584684784884985085185285385485585685785885986086186286386486586686786886987087187287387487587687787887988088188288388488588688788888989089189289389489589689789889990090190290390490590690790890991091191291391491591691791891992092192292392492592692792892993093193293393493593693793893994094194294394494594694794894995095195295395495595695795895996096196296396496596696796896997097197297397497597697797897998098198298398498598698798898999099199299399499599699799899910001001100210031004100510061007100810091010101110121013101410151016101710181019102010211022102310241025102610271028102910301031103210331034103510361037103810391040104110421043104410451046104710481049105010511052105310541055105610571058105910601061106210631064106510661067106810691070107110721073107410751076107710781079108010811082108310841085108610871088108910901091109210931094109510961097109810991100110111021103110411051106110711081109111011111112111311141115111611171118111911201121112211231124112511261127112811291130113111321133113411351136113711381139114011411142114311441145114611471148114911501151115211531154115511561157115811591160116111621163116411651166116711681169117011711172117311741175117611771178117911801181118211831184118511861187118811891190119111921193119411951196119711981199120012011202120312041205120612071208120912101211121212131214121512161217121812191220122112221223122412251226122712281229123012311232123312341235123612371238123912401241124212431244124512461247124812491250125112521253125412551256125712581259126012611262126312641265126612671268126912701271127212731274127512761277127812791280128112821283128412851286128712881289129012911292129312941295129612971298129913001301130213031304130513061307130813091310131113121313131413151316131713181319132013211322132313241325132613271328132913301331133213331334133513361337133813391340134113421343134413451346134713481349135013511352135313541355135613571358135913601361136213631364136513661367136813691370137113721373137413751376137713781379138013811382138313841385138613871388138913901391139213931394139513961397139813991400140114021403140414051406140714081409141014111412141314141415141614171418141914201421142214231424142514261427142814291430143114321433143414351436143714381439144014411442144314441445144614471448144914501451145214531454145514561457145814591460146114621463146414651466146714681469147014711472147314741475147614771478147914801481148214831484148514861487148814891490149114921493149414951496149714981499150015011502150315041505150615071508150915101511151215131514151515161517151815191520152115221523152415251526152715281529153015311532153315341535153615371538153915401541154215431544154515461547154815491550155115521553155415551556155715581559156015611562156315641565156615671568156915701571157215731574157515761577157815791580158115821583158415851586158715881589159015911592159315941595159615971598159916001601160216031604160516061607160816091610161116121613161416151616161716181619162016211622162316241625162616271628162916301631163216331634163516361637163816391640164116421643164416451646164716481649165016511652165316541655165616571658165916601661166216631664166516661667166816691670167116721673167416751676167716781679168016811682168316841685168616871688168916901691169216931694169516961697169816991700170117021703170417051706170717081709171017111712171317141715171617171718171917201721172217231724172517261727172817291730173117321733173417351736173717381739174017411742174317441745174617471748174917501751175217531754175517561757175817591760176117621763176417651766176717681769177017711772177317741775177617771778177917801781178217831784178517861787178817891790179117921793179417951796179717981799180018011802180318041805180618071808180918101811181218131814181518161817181818191820182118221823182418251826182718281829183018311832183318341835183618371838183918401841184218431844 |
- import os
- import random
- import time
- import numpy
- from math import sqrt, ceil, log
- from operator import itemgetter
- # TODO: double check this import
- # does it complain because libpcapreader is not a .py?
- import ID2TLib.libpcapreader as pr
- import Core.StatsDatabase as statsDB
- import ID2TLib.PcapFile as PcapFile
- import ID2TLib.Utility as Util
- from ID2TLib.IPv4 import IPAddress
- import matplotlib.pyplot as plt
- class Statistics:
- def __init__(self, pcap_file: PcapFile.PcapFile):
- """
- Creates a new Statistics object.
- :param pcap_file: A reference to the PcapFile object
- """
- # Fields
- self.pcap_filepath = pcap_file.pcap_file_path
- self.pcap_proc = None
- self.do_extra_tests = False
- self.file_info = None
- # Create folder for statistics database if required
- self.path_db = pcap_file.get_db_path()
- path_dir = os.path.dirname(self.path_db)
- if not os.path.isdir(path_dir):
- os.makedirs(path_dir)
- # Class instances
- self.stats_db = statsDB.StatsDatabase(self.path_db)
- def list_previous_interval_statistic_tables(self, output: bool=True):
- """
- Prints a list of all interval statistic tables from the database.
- :return: A list of intervals in seconds used to create the previous interval statistics tables
- """
- if self.stats_db.process_db_query("SELECT name FROM sqlite_master WHERE name='interval_tables';"):
- previous_interval_tables = self.stats_db.process_db_query("SELECT * FROM interval_tables;")
- else:
- previous_interval_tables = self.stats_db.process_db_query("SELECT name FROM sqlite_master WHERE "
- "type='table' AND name LIKE "
- "'interval_statistics_%';")
- previous_intervals = []
- if previous_interval_tables:
- if not isinstance(previous_interval_tables, list):
- previous_interval_tables = [previous_interval_tables]
- if output:
- print("There are " + str(len(previous_interval_tables)) + " interval statistics table(s) in the "
- "database:")
- i = 0
- if output:
- print("ID".ljust(3) + " | " + "interval in seconds".ljust(30) + " | is_default")
- for table in previous_interval_tables:
- seconds = float(table[0][len("interval_statistics_"):])/1000000
- if output:
- print(str(i).ljust(3) + " | " + str(seconds).ljust(30) + " | " + str(table[1]))
- previous_intervals.append(seconds)
- i = i + 1
- return previous_intervals
- def load_pcap_statistics(self, flag_write_file: bool, flag_recalculate_stats: bool, flag_print_statistics: bool,
- flag_non_verbose: bool, intervals, delete: bool=False, recalculate_intervals: bool=None):
- """
- Loads the PCAP statistics for the file specified by pcap_filepath. If the database is not existing yet, the
- statistics are calculated by the PCAP file processor and saved into the newly created database. Otherwise the
- statistics are gathered directly from the existing database.
- :param flag_write_file: Indicates whether the statistics should be written additionally into a text file (True)
- or not (False)
- :param flag_recalculate_stats: Indicates whether eventually existing statistics should be recalculated
- :param flag_print_statistics: Indicates whether the gathered basic statistics should be printed to the terminal
- :param flag_non_verbose: Indicates whether certain prints should be made or not, to reduce terminal clutter
- :param intervals: user specified interval in seconds
- :param delete: Delete old interval statistics.
- :param recalculate_intervals: Recalculate old interval statistics or not. Prompt user if None.
- """
- # Load pcap and get loading time
- time_start = time.clock()
- # Make sure user specified intervals are a list
- if intervals is None or intervals == []:
- intervals = [0.0]
- elif not isinstance(intervals, list):
- intervals = [intervals]
- current_intervals = intervals[:]
- # Inform user about recalculation of statistics and its reason
- if flag_recalculate_stats:
- print("Flag -r/--recalculate found. Recalculating statistics.")
- outstring_datasource = "from statistics database."
- # Recalculate statistics if database does not exist OR param -r/--recalculate is provided
- # FIXME: probably wanna add a "calculate only extra tests" case in the future
- if (not self.stats_db.get_db_exists()) or flag_recalculate_stats or self.stats_db.get_db_outdated() or \
- self.do_extra_tests:
- # Get interval statistics tables which already exist
- previous_intervals = self.list_previous_interval_statistic_tables()
- self.pcap_proc = pr.pcap_processor(self.pcap_filepath, str(self.do_extra_tests), Util.RESOURCE_DIR)
- recalc_intervals = None
- if previous_intervals:
- recalc_intervals = recalculate_intervals
- while (recalc_intervals is None and not delete) or self.stats_db.get_db_outdated():
- user_input = input("Do you want to recalculate them as well? (y)es|(n)o|(d)elete: ")
- if user_input.lower() == "yes" or user_input.lower() == "y":
- recalc_intervals = True
- elif user_input.lower() == "no" or user_input.lower() == "n":
- recalc_intervals = False
- elif user_input.lower() == "delete" or user_input.lower() == "d":
- recalc_intervals = False
- delete = True
- else:
- print("This was no valid input.")
- if recalc_intervals and previous_intervals:
- intervals = list(set(intervals + previous_intervals))
- print("The old interval statistics will be recalculated.")
- elif delete:
- print("The old interval statistics will be deleted.")
- else:
- print("The old interval statistics wont be recalculated.")
- if current_intervals != [0.0]:
- print("User specified intervals will be used to calculate interval statistics: " +
- str(current_intervals)[1:-1])
- self.pcap_proc.collect_statistics(intervals)
- self.pcap_proc.write_to_database(self.path_db, intervals, delete)
- outstring_datasource = "by PCAP file processor."
- # only print summary of new db if -s flag not set
- if not flag_print_statistics and not flag_non_verbose:
- self.stats_summary_new_db()
- elif intervals is not None and intervals != []:
- self.pcap_proc = pr.pcap_processor(self.pcap_filepath, str(self.do_extra_tests), Util.RESOURCE_DIR)
- # Get interval statistics tables which already exist
- previous_intervals = self.list_previous_interval_statistic_tables(output=False)
- for interval in intervals:
- if interval in previous_intervals:
- intervals.remove(interval)
- self.pcap_proc.collect_statistics(intervals)
- self.pcap_proc.write_new_interval_statistics(self.path_db, intervals)
- self.stats_db.set_current_interval_statistics_tables(current_intervals)
- # Load statistics from database
- self.file_info = self.stats_db.get_file_info()
- time_end = time.clock()
- print("Loaded file statistics in " + str(time_end - time_start)[:4] + " sec " + outstring_datasource)
- # Write statistics if param -e/--export provided
- if flag_write_file:
- self.write_statistics_to_file()
- # Print statistics if param -s/--statistics provided
- if flag_print_statistics:
- self.print_statistics()
- def get_file_information(self):
- """
- Returns a list of tuples, each containing a information of the file.
- :return: a list of tuples, each consisting of (description, value, unit), where unit is optional.
- """
- pdu_count = self.process_db_query("SELECT SUM(pktCount) FROM unrecognized_pdus")
- if pdu_count is None:
- pdu_count = 0
- pdu_share = pdu_count / self.get_packet_count() * 100
- last_pdu_timestamp = self.process_db_query(
- "SELECT MAX(timestampLastOccurrence) FROM unrecognized_pdus")
- return [("Pcap file path", self.pcap_filepath),
- ("Total packet count", self.get_packet_count(), "packets"),
- ("Recognized packets", self.get_packet_count() - pdu_count, "packets"),
- ("Unrecognized packets", pdu_count, "PDUs"),
- ("% Recognized packets", 100 - pdu_share, "%"),
- ("% Unrecognized packets", pdu_share, "%"),
- ("Last unknown PDU", last_pdu_timestamp),
- ("Capture duration", self.get_capture_duration(), "seconds"),
- ("Capture start", "\t" + str(self.get_pcap_timestamp_start())),
- ("Capture end", "\t" + str(self.get_pcap_timestamp_end()))]
- def get_general_file_statistics(self):
- """
- Returns a list of tuples, each containing a file statistic.
- :return: a list of tuples, each consisting of (description, value, unit).
- """
- return [("Avg. packet rate", self.file_info['avgPacketRate'], "packets/sec"),
- ("Avg. packet size", self.file_info['avgPacketSize'], "kbytes"),
- ("Avg. packets sent", self.file_info['avgPacketsSentPerHost'], "packets"),
- ("Avg. bandwidth in", self.file_info['avgBandwidthIn'], "kbit/s"),
- ("Avg. bandwidth out", self.file_info['avgBandwidthOut'], "kbit/s")]
- def get_interval_statistics(self, table_name: str=""):
- """
- Returns a list of tuples, each containing interval statistics.
- :param table_name: the name of the interval statistics table
- :return: a list of tuples, each consisting of (description, values, unit).
- """
- column_names = self.stats_db.get_field_types(table_name)
- column_names = sorted(column_names)
- result = column_names[0]
- for name in column_names[1:]:
- result += ", " + name
- interval_stats = self.stats_db.process_interval_statistics_query(
- "SELECT {} FROM %s ORDER BY starttimestamp ASC".format(result),
- table_name)
- pretty_names = {'starttimestamp': "First packet timestamp(seconds)",
- 'lastpkttimestamp': "Last packet timestamp(seconds)",
- 'pktrate': "packets count(packets)",
- 'kbyterate': "Avg. kbyte rate(kbytes/sec)",
- 'kbytes': "kbyte count(kbytes)"}
- final_names = []
- inverted_table = {}
- inverted_table["Interval count: "] = 0
- for name in column_names:
- if name in pretty_names.keys():
- name = pretty_names[name]
- inverted_table[name] = []
- final_names.append(name)
- for row in interval_stats:
- for column, name in zip(row, final_names):
- if type(column) == str:
- try:
- column = int(column)
- except ValueError:
- column = float(column)
- inverted_table[name].append(column)
- inverted_table["Interval count: "] = len(inverted_table[final_names[0]])
- return sorted(inverted_table.items())
- @staticmethod
- def write_list(desc_val_unit_list, func, line_ending="\n"):
- """
- Takes a list of tuples (statistic name, statistic value, unit) as input, generates a string of these three
- values and applies the function func on this string.
- Before generating the string, it identifies text containing a float number, casts the string to a
- float and rounds the value to two decimal digits.
- :param desc_val_unit_list: The list of tuples consisting of (description, value, unit)
- :param func: The function to be applied to each generated string
- :param line_ending: The formatting string to be applied at the end of each string
- """
- for entry in desc_val_unit_list:
- # Convert text containing float into float
- (description, value) = entry[0:2]
- if isinstance(value, str) and "." in value:
- try:
- value = float(value)
- except ValueError:
- pass # do nothing -> value was not a float
- # round float
- if isinstance(value, float):
- value = round(value, 4)
- # check for lists
- if isinstance(value, list):
- # remove brackets
- value = str(value)[1:-1]
- # write into file
- if len(entry) == 3:
- unit = entry[2]
- func(description + ":\t" + str(value) + " " + unit + line_ending)
- else:
- func(description + ":\t" + str(value) + line_ending)
- def print_statistics(self):
- """
- Prints the basic file statistics to the terminal.
- """
- print("\nPCAP FILE INFORMATION ------------------------------")
- Statistics.write_list(self.get_file_information(), print, "")
- print("\nGENERAL FILE STATISTICS ----------------------------")
- Statistics.write_list(self.get_general_file_statistics(), print, "")
- print("\n")
- @staticmethod
- def calculate_entropy(frequency: list, normalized: bool = False):
- """
- Calculates entropy and normalized entropy of list of elements that have specific frequency
- :param frequency: The frequency of the elements.
- :param normalized: Calculate normalized entropy
- :return: entropy or (entropy, normalized entropy)
- """
- entropy, normalized_ent, n = 0, 0, 0
- sum_freq = sum(frequency)
- for i, x in enumerate(frequency):
- p_x = float(frequency[i] / sum_freq)
- if p_x > 0:
- n += 1
- entropy += - p_x * log(p_x, 2)
- if normalized:
- if log(n) > 0:
- normalized_ent = entropy / log(n, 2)
- return entropy, normalized_ent
- else:
- return entropy
- def calculate_complement_packet_rates(self, pps):
- """
- Calculates the complement packet rates of the background traffic packet rates for each interval.
- Then normalize it to maximum boundary, which is the input parameter pps
- :return: normalized packet rates for each time interval.
- """
- result = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp,pktsCount FROM %s ORDER BY lastPktTimestamp")
- # print(result)
- bg_interval_pps = []
- complement_interval_pps = []
- intervals_sum = 0
- if result:
- # Get the interval in seconds
- for i, row in enumerate(result):
- if i < len(result) - 1:
- intervals_sum += ceil((int(result[i + 1][0]) * 10 ** -6) - (int(row[0]) * 10 ** -6))
- interval = intervals_sum / (len(result) - 1)
- # Convert timestamp from micro to seconds, convert packet rate "per interval" to "per second"
- for row in result:
- bg_interval_pps.append((int(row[0]) * 10 ** -6, int(row[1] / interval)))
- # Find max PPS
- max_pps = max(bg_interval_pps, key=itemgetter(1))[1]
- for row in bg_interval_pps:
- complement_interval_pps.append((row[0], int(pps * (max_pps - row[1]) / max_pps)))
- return complement_interval_pps
- def get_tests_statistics(self):
- """
- Writes the calculated basic defects tests statistics into a file.
- """
- # self.stats_db.process_user_defined_query output is list of tuples, thus, we ned [0][0] to access data
- def count_frequncy(values_list):
- """
- TODO : FILL ME
- :param values_list:
- :return:
- """
- values, freq_output = [], []
- for x in values_list:
- if x in values:
- freq_output[values.index(x)] += 1
- else:
- values.append(x)
- freq_output.append(1)
- return values, freq_output
- # Payload Tests
- sum_payload_count = self.stats_db.process_interval_statistics_query("SELECT sum(payloadCount) FROM %s")
- pkt_count = self.stats_db.process_user_defined_query("SELECT packetCount FROM file_statistics")
- if sum_payload_count and pkt_count:
- payload_ratio = 0
- if pkt_count[0][0] != 0:
- payload_ratio = float(sum_payload_count[0][0] / pkt_count[0][0] * 100)
- else:
- payload_ratio = -1
- # TCP checksum Tests
- incorrect_checksum_count = self.stats_db.process_interval_statistics_query(
- "SELECT sum(incorrectTCPChecksumCount) FROM %s")
- correct_checksum_count = self.stats_db.process_interval_statistics_query(
- "SELECT avg(correctTCPChecksumCount) FROM %s")
- if incorrect_checksum_count and correct_checksum_count:
- incorrect_checksum_ratio = 0
- if (incorrect_checksum_count[0][0] + correct_checksum_count[0][0]) != 0:
- incorrect_checksum_ratio = float(incorrect_checksum_count[0][0] /
- (incorrect_checksum_count[0][0] + correct_checksum_count[0][0]) * 100)
- else:
- incorrect_checksum_ratio = -1
- # IP Src & Dst Tests
- result = self.stats_db.process_user_defined_query("SELECT ipAddress,pktsSent,pktsReceived FROM ip_statistics")
- data, src_frequency, dst_frequency = [], [], []
- if result:
- for row in result:
- src_frequency.append(row[1])
- dst_frequency.append(row[2])
- ip_src_entropy, ip_src_norm_entropy = self.calculate_entropy(src_frequency, True)
- ip_dst_entropy, ip_dst_norm_entropy = self.calculate_entropy(dst_frequency, True)
- new_ip_count = self.stats_db.process_interval_statistics_query("SELECT newIPCount FROM %s")
- ip_novels_per_interval, ip_novels_per_interval_frequency = count_frequncy(new_ip_count)
- ip_novelty_dist_entropy = self.calculate_entropy(ip_novels_per_interval_frequency)
- # Ports Tests
- port0_count = self.stats_db.process_user_defined_query(
- "SELECT SUM(portCount) FROM ip_ports WHERE portNumber = 0")
- if not port0_count[0][0]:
- port0_count = 0
- else:
- port0_count = port0_count[0][0]
- # FIXME: could be extended
- reserved_port_count = self.stats_db.process_user_defined_query(
- "SELECT SUM(portCount) FROM ip_ports WHERE portNumber IN (100,114,1023,1024,49151,49152,65535)")
- if not reserved_port_count[0][0]:
- reserved_port_count = 0
- else:
- reserved_port_count = reserved_port_count[0][0]
- # TTL Tests
- result = self.stats_db.process_user_defined_query(
- "SELECT ttlValue,SUM(ttlCount) FROM ip_ttl GROUP BY ttlValue")
- data, frequency = [], []
- for row in result:
- frequency.append(row[1])
- ttl_entropy, ttl_norm_entropy = self.calculate_entropy(frequency, True)
- new_ttl_count = self.stats_db.process_interval_statistics_query("SELECT newTTLCount FROM %s")
- ttl_novels_per_interval, ttl_novels_per_interval_frequency = count_frequncy(new_ttl_count)
- ttl_novelty_dist_entropy = self.calculate_entropy(ttl_novels_per_interval_frequency)
- # Window Size Tests
- result = self.stats_db.process_user_defined_query("SELECT winSize,SUM(winCount) FROM tcp_win GROUP BY winSize")
- data, frequency = [], []
- for row in result:
- frequency.append(row[1])
- win_entropy, win_norm_entropy = self.calculate_entropy(frequency, True)
- new_win_size_count = self.stats_db.process_interval_statistics_query("SELECT newWinSizeCount FROM %s")
- win_novels_per_interval, win_novels_per_interval_frequency = count_frequncy(new_win_size_count)
- win_novelty_dist_entropy = self.calculate_entropy(win_novels_per_interval_frequency)
- # ToS Tests
- result = self.stats_db.process_user_defined_query(
- "SELECT tosValue,SUM(tosCount) FROM ip_tos GROUP BY tosValue")
- data, frequency = [], []
- for row in result:
- frequency.append(row[1])
- tos_entropy, tos_norm_entropy = self.calculate_entropy(frequency, True)
- new_tos_count = self.stats_db.process_interval_statistics_query("SELECT newToSCount FROM %s")
- tos_novels_per_interval, tos_novels_per_interval_frequency = count_frequncy(new_tos_count)
- tos_novelty_dist_entropy = self.calculate_entropy(tos_novels_per_interval_frequency)
- # MSS Tests
- result = self.stats_db.process_user_defined_query(
- "SELECT mssValue,SUM(mssCount) FROM tcp_mss GROUP BY mssValue")
- data, frequency = [], []
- for row in result:
- frequency.append(row[1])
- mss_entropy, mss_norm_entropy = self.calculate_entropy(frequency, True)
- new_mss_count = self.stats_db.process_interval_statistics_query("SELECT newMSSCount FROM %s")
- mss_novels_per_interval, mss_novels_per_interval_frequency = count_frequncy(new_mss_count)
- mss_novelty_dist_entropy = self.calculate_entropy(mss_novels_per_interval_frequency)
- result = self.stats_db.process_user_defined_query("SELECT SUM(mssCount) FROM tcp_mss WHERE mssValue > 1460")
- # The most used MSS < 1460. Calculate the ratio of the values bigger that 1460.
- if not result[0][0]:
- result = 0
- else:
- result = result[0][0]
- big_mss = (result / sum(frequency)) * 100
- output = []
- if self.do_extra_tests:
- output = [("Payload ratio", payload_ratio, "%"),
- ("Incorrect TCP checksum ratio", incorrect_checksum_ratio, "%")]
- output = output + [("# IP addresses", sum([x[0] for x in new_ip_count]), ""),
- ("IP Src Entropy", ip_src_entropy, ""),
- ("IP Src Normalized Entropy", ip_src_norm_entropy, ""),
- ("IP Dst Entropy", ip_dst_entropy, ""),
- ("IP Dst Normalized Entropy", ip_dst_norm_entropy, ""),
- ("IP Novelty Distribution Entropy", ip_novelty_dist_entropy, ""),
- ("# TTL values", sum([x[0] for x in new_ttl_count]), ""),
- ("TTL Entropy", ttl_entropy, ""),
- ("TTL Normalized Entropy", ttl_norm_entropy, ""),
- ("TTL Novelty Distribution Entropy", ttl_novelty_dist_entropy, ""),
- ("# WinSize values", sum([x[0] for x in new_win_size_count]), ""),
- ("WinSize Entropy", win_entropy, ""),
- ("WinSize Normalized Entropy", win_norm_entropy, ""),
- ("WinSize Novelty Distribution Entropy", win_novelty_dist_entropy, ""),
- ("# ToS values", sum([x[0] for x in new_tos_count]), ""),
- ("ToS Entropy", tos_entropy, ""),
- ("ToS Normalized Entropy", tos_norm_entropy, ""),
- ("ToS Novelty Distribution Entropy", tos_novelty_dist_entropy, ""),
- ("# MSS values", sum([x[0] for x in new_mss_count]), ""),
- ("MSS Entropy", mss_entropy, ""),
- ("MSS Normalized Entropy", mss_norm_entropy, ""),
- ("MSS Novelty Distribution Entropy", mss_novelty_dist_entropy, ""),
- ("======================", "", "")]
- # Reasoning the statistics values
- if self.do_extra_tests:
- if payload_ratio > 80:
- output.append(("WARNING: Too high payload ratio", payload_ratio, "%."))
- if payload_ratio < 30:
- output.append(("WARNING: Too low payload ratio", payload_ratio, "% (Injecting attacks that are carried "
- "out in the packet payloads is not "
- "recommmanded)."))
- if incorrect_checksum_ratio > 5:
- output.append(("WARNING: High incorrect TCP checksum ratio", incorrect_checksum_ratio, "%."))
- if ip_src_norm_entropy > 0.65:
- output.append(("WARNING: High IP source normalized entropy", ip_src_norm_entropy, "."))
- if ip_src_norm_entropy < 0.2:
- output.append(("WARNING: Low IP source normalized entropy", ip_src_norm_entropy, "."))
- if ip_dst_norm_entropy > 0.65:
- output.append(("WARNING: High IP destination normalized entropy", ip_dst_norm_entropy, "."))
- if ip_dst_norm_entropy < 0.2:
- output.append(("WARNING: Low IP destination normalized entropy", ip_dst_norm_entropy, "."))
- if ttl_norm_entropy > 0.65:
- output.append(("WARNING: High TTL normalized entropy", ttl_norm_entropy, "."))
- if ttl_norm_entropy < 0.2:
- output.append(("WARNING: Low TTL normalized entropy", ttl_norm_entropy, "."))
- if ttl_novelty_dist_entropy < 1:
- output.append(("WARNING: Too low TTL novelty distribution entropy", ttl_novelty_dist_entropy,
- "(The distribution of the novel TTL values is suspicious)."))
- if win_norm_entropy > 0.6:
- output.append(("WARNING: High Window Size normalized entropy", win_norm_entropy, "."))
- if win_norm_entropy < 0.1:
- output.append(("WARNING: Low Window Size normalized entropy", win_norm_entropy, "."))
- if win_novelty_dist_entropy < 4:
- output.append(("WARNING: Low Window Size novelty distribution entropy", win_novelty_dist_entropy,
- "(The distribution of the novel Window Size values is suspicious)."))
- if tos_norm_entropy > 0.4:
- output.append(("WARNING: High ToS normalized entropy", tos_norm_entropy, "."))
- if tos_norm_entropy < 0.1:
- output.append(("WARNING: Low ToS normalized entropy", tos_norm_entropy, "."))
- if tos_novelty_dist_entropy < 0.5:
- output.append(("WARNING: Low ToS novelty distribution entropy", tos_novelty_dist_entropy,
- "(The distribution of the novel ToS values is suspicious)."))
- if mss_norm_entropy > 0.4:
- output.append(("WARNING: High MSS normalized entropy", mss_norm_entropy, "."))
- if mss_norm_entropy < 0.1:
- output.append(("WARNING: Low MSS normalized entropy", mss_norm_entropy, "."))
- if mss_novelty_dist_entropy < 0.5:
- output.append(("WARNING: Low MSS novelty distribution entropy", mss_novelty_dist_entropy,
- "(The distribution of the novel MSS values is suspicious)."))
- if big_mss > 50:
- output.append(("WARNING: High ratio of MSS > 1460", big_mss, "% (High fragmentation rate in Ethernet)."))
- if port0_count > 0:
- output.append(("WARNING: Port number 0 is used in ", port0_count, "packets (awkward-looking port)."))
- if reserved_port_count > 0:
- output.append(("WARNING: Reserved port numbers are used in ", reserved_port_count,
- "packets (uncommonly-used ports)."))
- return output
- def write_statistics_to_file(self):
- """
- Writes the calculated basic statistics into a file.
- """
- def _write_header(title: str):
- """
- Writes the section header into the open file.
- :param title: The section title
- """
- target.write("====================== \n")
- target.write(title + " \n")
- target.write("====================== \n")
- def _write_sub_header(title: str):
- """
- Writes the section header into the open file.
- :param title: The section title
- """
- target.write("---------------------- \n")
- target.write(title + " \n")
- target.write("---------------------- \n")
- target = open(self.pcap_filepath + ".stat", 'w')
- target.truncate()
- _write_header("PCAP file information")
- Statistics.write_list(self.get_file_information(), target.write)
- _write_header("General statistics")
- Statistics.write_list(self.get_general_file_statistics(), target.write)
- _write_header("Interval statistics")
- tables = self.stats_db.get_all_current_interval_statistics_tables()
- for table in tables:
- _write_sub_header(table[len("interval_staistiscs_"):] + " microseconds")
- Statistics.write_list(self.get_interval_statistics(table), target.write)
- _write_header("Tests statistics")
- Statistics.write_list(self.get_tests_statistics(), target.write)
- target.close()
- def get_capture_duration(self):
- """
- :return: The duration of the capture in seconds
- """
- return self.file_info['captureDuration']
- def get_pcap_timestamp_start(self):
- """
- :return: The timestamp of the first packet in the PCAP file
- """
- return self.file_info['timestampFirstPacket']
- def get_pcap_timestamp_end(self):
- """
- :return: The timestamp of the last packet in the PCAP file
- """
- return self.file_info['timestampLastPacket']
- def get_pps_sent(self, ip_address: str):
- """
- Calculates the sent packets per seconds for a given IP address.
- :param ip_address: The IP address whose packets per second should be calculated
- :return: The sent packets per seconds for the given IP address
- """
- packets_sent = self.stats_db.process_db_query("SELECT pktsSent from ip_statistics WHERE ipAddress=?", False,
- (ip_address,))
- capture_duration = float(self.get_capture_duration())
- return int(float(packets_sent) / capture_duration)
- def get_pps_received(self, ip_address: str):
- """
- Calculate the packets per second received for a given IP address.
- :param ip_address: The IP address used for the calculation
- :return: The number of packets per second received
- """
- packets_received = self.stats_db.process_db_query("SELECT pktsReceived FROM ip_statistics WHERE ipAddress=?",
- False,
- (ip_address,))
- capture_duration = float(self.get_capture_duration())
- return int(float(packets_received) / capture_duration)
- def get_packet_count(self):
- """
- :return: The number of packets in the loaded PCAP file
- """
- return self.file_info['packetCount']
- def get_most_used_ip_address(self):
- """
- :return: The IP address/addresses with the highest sum of packets sent and received
- """
- return Util.handle_most_used_outputs(self.process_db_query("most_used(ipAddress)"))
- def get_ttl_distribution(self, ip_address: str):
- """
- TODO: FILL ME
- :param ip_address:
- :return:
- """
- result = self.process_db_query('SELECT ttlValue, ttlCount from ip_ttl WHERE ipAddress="' + ip_address + '"')
- result_dict = {key: value for (key, value) in result}
- return result_dict
- def get_mss_distribution(self, ip_address: str):
- """
- TODO: FILL ME
- :param ip_address:
- :return:
- """
- result = self.process_db_query('SELECT mssValue, mssCount from tcp_mss WHERE ipAddress="' + ip_address + '"')
- result_dict = {key: value for (key, value) in result}
- return result_dict
- def get_win_distribution(self, ip_address: str):
- """
- TODO: FILL ME
- :param ip_address:
- :return:
- """
- result = self.process_db_query('SELECT winSize, winCount from tcp_win WHERE ipAddress="' + ip_address + '"')
- result_dict = {key: value for (key, value) in result}
- return result_dict
- def get_tos_distribution(self, ip_address: str):
- """
- TODO: FILL ME
- :param ip_address:
- :return:
- """
- result = self.process_db_query('SELECT tosValue, tosCount from ip_tos WHERE ipAddress="' + ip_address + '"')
- result_dict = {key: value for (key, value) in result}
- return result_dict
- def get_ip_address_count(self):
- """
- TODO: FILL ME
- :return:
- """
- return self.process_db_query("SELECT COUNT(*) FROM ip_statistics")
- def get_ip_addresses(self):
- """
- TODO: FILL ME
- :return:
- """
- return self.process_db_query("SELECT ipAddress FROM ip_statistics")
- def get_random_ip_address(self, count: int = 1):
- """
- :param count: The number of IP addresses to return
- :return: A randomly chosen IP address from the dataset or iff param count is greater than one, a list of
- randomly chosen IP addresses
- """
- ip_address_list = self.process_db_query("SELECT ipAddress from ip_statistics ORDER BY ipAddress ASC")
- if count == 1:
- return random.choice(ip_address_list)
- else:
- result_list = []
- for i in range(0, count):
- random_ip = random.choice(ip_address_list)
- result_list.append(random_ip)
- ip_address_list.remove(random_ip)
- return result_list
- def get_ip_address_from_mac(self, mac_address: str):
- """
- :param mac_address: the MAC address of which the IP shall be returned, if existing in DB
- :return: the IP address used in the dataset by a given MAC address
- """
- return self.process_db_query("SELECT DISTINCT ipAddress FROM ip_mac WHERE macAddress = '" + mac_address + "'")
- def get_mac_addresses(self, ip_addresses: list):
- """
- :return: The MAC addresses used in the dataset for the given IP addresses as a dictionary.
- """
- return dict(self.process_db_query("SELECT DISTINCT ipAddress, macAddress from ip_mac WHERE ipAddress in ("
- + str(ip_addresses)[1:-1] + ")"))
- def get_mac_address(self, ip_address: str):
- """
- :return: The MAC address used in the dataset for the given IP address.
- """
- return self.process_db_query("SELECT DISTINCT macAddress from ip_mac WHERE ipAddress = '" + ip_address + "'")
- def get_most_used_ttl_value(self):
- """
- :return: The most used TTL value.
- """
- return self.process_db_query("SELECT ttlValue FROM (SELECT ttlValue, SUM(ttlCount) as occ FROM ip_ttl GROUP BY "
- "ttlValue) WHERE occ=(SELECT SUM(ttlCount) as occ FROM ip_ttl GROUP BY ttlValue "
- "ORDER BY occ DESC LIMIT 1) ORDER BY ttlValue ASC")
- def get_most_used_ip_class(self):
- """
- :return: The most used IP class.
- """
- return self.process_db_query("SELECT ipClass FROM (SELECT ipClass, COUNT(*) as occ from ip_statistics GROUP BY "
- "ipClass ORDER BY occ DESC) WHERE occ=(SELECT COUNT(*) as occ from ip_statistics "
- "GROUP BY ipClass ORDER BY occ DESC LIMIT 1) ORDER BY ipClass ASC")
- def get_most_used_win_size(self):
- """
- :return: The most used window size.
- """
- return self.process_db_query("SELECT winSize FROM (SELECT winSize, SUM(winCount) as occ FROM tcp_win GROUP BY "
- "winSize) WHERE occ=(SELECT SUM(winCount) as occ FROM tcp_win GROUP BY winSize "
- "ORDER BY occ DESC LIMIT 1) ORDER BY winSize ASC")
- def get_most_used_mss_value(self):
- """
- :return: The most used mss value.
- """
- return self.process_db_query("SELECT mssValue FROM (SELECT mssValue, SUM(mssCount) as occ FROM tcp_mss GROUP BY"
- " mssValue) WHERE occ=(SELECT SUM(mssCount) as occ FROM tcp_mss GROUP BY mssValue "
- "ORDER BY occ DESC LIMIT 1) ORDER BY mssValue ASC")
- def get_most_used_mss(self, ip_address: str):
- """
- :param ip_address: The IP address whose used MSS should be determined
- :return: The TCP MSS value used by the IP address, or if the IP addresses never specified a MSS,
- then None is returned
- """
- mss_value = self.process_db_query('SELECT mssValue from tcp_mss WHERE ipAddress="' + ip_address +
- '" AND mssCount == (SELECT MAX(mssCount) from tcp_mss WHERE ipAddress="'
- + ip_address + '")')
- if isinstance(mss_value, int):
- return mss_value
- elif isinstance(mss_value, list):
- if len(mss_value) == 0:
- return None
- else:
- mss_value.sort()
- return mss_value[0]
- else:
- return None
- def get_most_used_ttl(self, ip_address: str):
- """
- :param ip_address: The IP address whose used TTL should be determined
- :return: The TTL value used by the IP address, or if the IP addresses never specified a TTL,
- then None is returned
- """
- ttl_value = self.process_db_query('SELECT ttlValue from ip_ttl WHERE ipAddress="' + ip_address +
- '" AND ttlCount == (SELECT MAX(ttlCount) from ip_ttl WHERE ipAddress="'
- + ip_address + '")')
- if isinstance(ttl_value, int):
- return ttl_value
- elif isinstance(ttl_value, list):
- if len(ttl_value) == 0:
- return None
- else:
- ttl_value.sort()
- return ttl_value[0]
- else:
- return None
- def get_avg_delay_local_ext(self):
- """
- Calculates the average delay of a packet for external and local communication, based on the tcp handshakes
- :return: tuple consisting of avg delay for local and external communication, (local, external)
- """
- conv_delays = self.stats_db.process_user_defined_query(
- "SELECT ipAddressA, ipAddressB, avgDelay FROM conv_statistics")
- if conv_delays:
- external_conv = []
- local_conv = []
- for conv in conv_delays:
- ip_a = IPAddress.parse(conv[0])
- ip_b = IPAddress.parse(conv[1])
- # split into local and external conversations
- if not ip_a.is_private() or not ip_b.is_private():
- external_conv.append(conv)
- else:
- local_conv.append(conv)
- # calculate avg local and external delay by summing up the respective delays and dividing them by the
- # number of conversations
- avg_delay_external = 0.0
- avg_delay_local = 0.0
- default_ext = False
- default_local = False
- if local_conv:
- for conv in local_conv:
- avg_delay_local += conv[2]
- avg_delay_local = (avg_delay_local / len(local_conv)) * 0.001 # ms
- else:
- # no local conversations in statistics found
- avg_delay_local = 0.055
- default_local = True
- if external_conv:
- for conv in external_conv:
- avg_delay_external += conv[2]
- avg_delay_external = (avg_delay_external / len(external_conv)) * 0.001 # ms
- else:
- # no external conversations in statistics found
- avg_delay_external = 0.09
- default_ext = True
- else:
- # if no statistics were found, use these numbers
- avg_delay_external = 0.09
- avg_delay_local = 0.055
- default_ext = True
- default_local = True
- # check whether delay numbers are consistent
- if avg_delay_local > avg_delay_external:
- avg_delay_external = avg_delay_local * 1.2
- # print information, that (default) values are used, that are not collected from the Input PCAP
- if default_ext or default_local:
- if default_ext and default_local:
- print("Warning: Could not collect average delays for local or external communication, using "
- "following values:")
- elif default_ext:
- print("Warning: Could not collect average delays for external communication, using following values:")
- elif default_local:
- print("Warning: Could not collect average delays for local communication, using following values:")
- print("Avg delay of external communication: {0}s, Avg delay of local communication: {1}s".format(
- avg_delay_external, avg_delay_local))
- return avg_delay_local, avg_delay_external
- def get_filtered_degree(self, degree_type: str):
- """
- gets the desired type of degree statistics and filters IPs with degree value zero
- :param degree_type: the desired type of degrees, one of the following: inDegree, outDegree, overallDegree
- :return: the filtered degrees
- """
- degrees_raw = self.stats_db.process_user_defined_query(
- "SELECT ipAddress, %s FROM ip_degrees" % degree_type)
- degrees = []
- if degrees_raw:
- for deg in degrees_raw:
- if int(deg[1]) > 0:
- degrees.append(deg)
- return degrees
- def get_rnd_win_size(self, pkts_num):
- """
- :param pkts_num: maximum number of window sizes, that should be returned
- :return: A list of randomly chosen window sizes with given length.
- """
- sql_return = self.process_db_query("SELECT DISTINCT winSize FROM tcp_win ORDER BY winsize ASC;")
- if not isinstance(sql_return, list):
- return [sql_return]
- result = []
- for i in range(0, min(pkts_num, len(sql_return))):
- result.append(random.choice(sql_return))
- sql_return.remove(result[i])
- return result
- def get_statistics_database(self):
- """
- :return: A reference to the statistics database object
- """
- return self.stats_db
- def process_db_query(self, query_string_in: str, print_results: bool = False):
- """
- Executes a string identified previously as a query. This can be a standard SQL SELECT/INSERT query or a named
- query.
- :param query_string_in: The query to be processed
- :param print_results: Indicates whether the results should be printed to terminal
- :return: The result of the query
- """
- return self.stats_db.process_db_query(query_string_in, print_results)
- def is_query(self, value: str):
- """
- Checks whether the given string is a standard SQL query (SELECT, INSERT) or a named query.
- :param value: The string to be checked
- :return: True if the string is recognized as a query, otherwise False.
- """
- if not isinstance(value, str):
- return False
- else:
- return (any(x in value.lower().strip() for x in self.stats_db.get_all_named_query_keywords()) or
- any(x in value.lower().strip() for x in self.stats_db.get_all_sql_query_keywords()))
- @staticmethod
- def calculate_standard_deviation(lst):
- """
- Calculates the standard deviation of a list of numbers.
- :param lst: The list of numbers to calculate its SD.
- """
- num_items = len(lst)
- mean = sum(lst) / num_items
- differences = [x - mean for x in lst]
- sq_differences = [d ** 2 for d in differences]
- ssd = sum(sq_differences)
- variance = ssd / num_items
- sd = sqrt(variance)
- return sd
- def plot_statistics(self, entropy: int, file_format: str = 'pdf'): # 'png'
- """
- Plots the statistics associated with the dataset.
- :param entropy: the statistics entropy
- :param file_format: The format to be used to save the statistics diagrams.
- """
- def plot_distribution(query_output, title, x_label, y_label, file_ending: str):
- """
- TODO: FILL ME
- :param query_output:
- :param title:
- :param x_label:
- :param y_label:
- :param file_ending:
- :return:
- """
- plt.gcf().clear()
- graphx, graphy = [], []
- for row in query_output:
- graphx.append(row[0])
- graphy.append(row[1])
- plt.autoscale(enable=True, axis='both')
- plt.title(title)
- plt.xlabel(x_label)
- plt.ylabel(y_label)
- width = 0.1
- plt.xlim([0, (max(graphx) * 1.1)])
- plt.grid(True)
- plt.bar(graphx, graphy, width, align='center', linewidth=1, color='red', edgecolor='red')
- out = self.pcap_filepath.replace('.pcap', '_plot-' + title + file_ending)
- plt.savefig(out, dpi=500)
- return out
- def plot_ttl(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_user_defined_query(
- "SELECT ttlValue, SUM(ttlCount) FROM ip_ttl GROUP BY ttlValue")
- title = "TTL Distribution"
- x_label = "TTL Value"
- y_label = "Number of Packets"
- if query_output:
- return plot_distribution(query_output, title, x_label, y_label, file_ending)
- def plot_mss(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_user_defined_query(
- "SELECT mssValue, SUM(mssCount) FROM tcp_mss GROUP BY mssValue")
- title = "MSS Distribution"
- x_label = "MSS Value"
- y_label = "Number of Packets"
- if query_output:
- return plot_distribution(query_output, title, x_label, y_label, file_ending)
- def plot_win(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_user_defined_query(
- "SELECT winSize, SUM(winCount) FROM tcp_win GROUP BY winSize")
- title = "Window Size Distribution"
- x_label = "Window Size"
- y_label = "Number of Packets"
- if query_output:
- return plot_distribution(query_output, title, x_label, y_label, file_ending)
- def plot_protocol(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- plt.gcf().clear()
- result = self.stats_db.process_user_defined_query(
- "SELECT protocolName, SUM(protocolCount) FROM ip_protocols GROUP BY protocolName")
- if result:
- graphx, graphy = [], []
- for row in result:
- graphx.append(row[0])
- graphy.append(row[1])
- plt.autoscale(enable=True, axis='both')
- plt.title("Protocols Distribution")
- plt.xlabel('Protocols')
- plt.ylabel('Number of Packets')
- width = 0.1
- plt.xlim([0, len(graphx)])
- plt.grid(True)
- # Protocols' names on x-axis
- x = range(0, len(graphx))
- my_xticks = graphx
- plt.xticks(x, my_xticks)
- plt.bar(x, graphy, width, align='center', linewidth=1, color='red', edgecolor='red')
- out = self.pcap_filepath.replace('.pcap', '_plot-protocol' + file_ending)
- plt.savefig(out, dpi=500)
- return out
- else:
- print("Error plot protocol: No protocol values found!")
- def plot_port(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- plt.gcf().clear()
- result = self.stats_db.process_user_defined_query(
- "SELECT portNumber, SUM(portCount) FROM ip_ports GROUP BY portNumber")
- graphx, graphy = [], []
- for row in result:
- graphx.append(row[0])
- graphy.append(row[1])
- plt.autoscale(enable=True, axis='both')
- plt.title("Ports Distribution")
- plt.xlabel('Ports Numbers')
- plt.ylabel('Number of Packets')
- width = 0.1
- plt.xlim([0, max(graphx)])
- plt.grid(True)
- plt.bar(graphx, graphy, width, align='center', linewidth=1, color='red', edgecolor='red')
- out = self.pcap_filepath.replace('.pcap', '_plot-port' + file_ending)
- plt.savefig(out, dpi=500)
- return out
- # This distribution is not drawable for big datasets
- def plot_ip_src(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- plt.gcf().clear()
- result = self.stats_db.process_user_defined_query(
- "SELECT ipAddress, pktsSent FROM ip_statistics")
- graphx, graphy = [], []
- for row in result:
- graphx.append(row[0])
- graphy.append(row[1])
- plt.autoscale(enable=True, axis='both')
- plt.title("Source IP Distribution")
- plt.xlabel('Source IP')
- plt.ylabel('Number of Packets')
- width = 0.1
- plt.xlim([0, len(graphx)])
- plt.grid(True)
- # IPs on x-axis
- x = range(0, len(graphx))
- my_xticks = graphx
- plt.xticks(x, my_xticks, rotation='vertical', fontsize=5)
- # plt.tight_layout()
- # limit the number of xticks
- plt.locator_params(axis='x', nbins=20)
- plt.bar(x, graphy, width, align='center', linewidth=1, color='red', edgecolor='red')
- out = self.pcap_filepath.replace('.pcap', '_plot-ip-src' + file_ending)
- plt.savefig(out, dpi=500)
- return out
- # This distribution is not drawable for big datasets
- def plot_ip_dst(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- plt.gcf().clear()
- result = self.stats_db.process_user_defined_query(
- "SELECT ipAddress, pktsReceived FROM ip_statistics")
- graphx, graphy = [], []
- for row in result:
- graphx.append(row[0])
- graphy.append(row[1])
- plt.autoscale(enable=True, axis='both')
- plt.title("Destination IP Distribution")
- plt.xlabel('Destination IP')
- plt.ylabel('Number of Packets')
- width = 0.1
- plt.xlim([0, len(graphx)])
- plt.grid(True)
- # IPs on x-axis
- x = range(0, len(graphx))
- my_xticks = graphx
- plt.xticks(x, my_xticks, rotation='vertical', fontsize=5)
- # plt.tight_layout()
- # limit the number of xticks
- plt.locator_params(axis='x', nbins=20)
- plt.bar(x, graphy, width, align='center', linewidth=1, color='red', edgecolor='red')
- out = self.pcap_filepath.replace('.pcap', '_plot-ip-dst' + file_ending)
- plt.savefig(out, dpi=500)
- return out
- def plot_interval_statistics(query_output, title, x_label, y_label, file_ending: str):
- """
- TODO: FILL ME
- :param query_output:
- :param title:
- :param x_label:
- :param y_label:
- :param file_ending:
- :return:
- """
- plt.gcf().clear()
- graphx, graphy = [], []
- for row in query_output:
- graphx.append(row[0])
- graphy.append(row[1])
- plt.autoscale(enable=True, axis='both')
- plt.title(title)
- plt.xlabel(x_label)
- plt.ylabel(y_label)
- width = 0.5
- plt.xlim([0, len(graphx)])
- plt.grid(True)
- # timestamp on x-axis
- x = range(0, len(graphx))
- # limit the number of xticks
- plt.locator_params(axis='x', nbins=20)
- plt.bar(x, graphy, width, align='center', linewidth=1, color='red', edgecolor='red')
- out = self.pcap_filepath.replace('.pcap', '_plot-' + title + file_ending)
- plt.savefig(out, dpi=500)
- return out
- def plot_interval_pkt_count(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, pktsCount FROM %s ORDER BY lastPktTimestamp")
- title = "Packet Rate"
- x_label = "Time Interval"
- y_label = "Number of Packets"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_ip_src_ent(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, ipSrcEntropy FROM %s ORDER BY lastPktTimestamp")
- title = "Source IP Entropy"
- x_label = "Time Interval"
- y_label = "Entropy"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_ip_dst_ent(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, ipDstEntropy FROM %s ORDER BY lastPktTimestamp")
- title = "Destination IP Entropy"
- x_label = "Time Interval"
- y_label = "Entropy"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_new_ip(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, newIPCount FROM %s ORDER BY lastPktTimestamp")
- title = "IP Novelty Distribution"
- x_label = "Time Interval"
- y_label = "Novel values count"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_new_port(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, newPortCount FROM %s ORDER BY lastPktTimestamp")
- title = "Port Novelty Distribution"
- x_label = "Time Interval"
- y_label = "Novel values count"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_new_ttl(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, newTTLCount FROM %s ORDER BY lastPktTimestamp")
- title = "TTL Novelty Distribution"
- x_label = "Time Interval"
- y_label = "Novel values count"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_new_tos(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, newToSCount FROM %s ORDER BY lastPktTimestamp")
- title = "ToS Novelty Distribution"
- x_label = "Time Interval"
- y_label = "Novel values count"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_new_win_size(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, newWinSizeCount FROM %s ORDER BY lastPktTimestamp")
- title = "Window Size Novelty Distribution"
- x_label = "Time Interval"
- y_label = "Novel values count"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_new_mss(file_ending: str):
- """
- TODO: FILL ME
- :param file_ending:
- :return:
- """
- query_output = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, newMSSCount FROM %s ORDER BY lastPktTimestamp")
- title = "MSS Novelty Distribution"
- x_label = "Time Interval"
- y_label = "Novel values count"
- if query_output:
- return plot_interval_statistics(query_output, title, x_label, y_label, file_ending)
- def plot_interval_ip_cum_ent(ip_type: str, file_ending: str):
- """
- TODO: FILL ME
- :param ip_type: source or destination
- :param file_ending:
- :return:
- """
- if ip_type is "src":
- sod = "Src"
- full = "Source"
- elif ip_type is "dst":
- sod = "Dst"
- full = "Destination"
- else:
- return None
- plt.gcf().clear()
- result = self.stats_db.process_interval_statistics_query(
- "SELECT lastPktTimestamp, ip{0}CumEntropy FROM %s ORDER BY lastPktTimestamp".format(sod))
- graphx, graphy = [], []
- for row in result:
- graphx.append(row[0])
- graphy.append(row[1])
- # If entropy was not calculated do not plot the graph
- if graphy[0] != -1:
- plt.autoscale(enable=True, axis='both')
- plt.title(full + " IP Cumulative Entropy")
- # plt.xlabel('Timestamp')
- plt.xlabel('Time Interval')
- plt.ylabel('Entropy')
- plt.xlim([0, len(graphx)])
- plt.grid(True)
- # timestamp on x-axis
- x = range(0, len(graphx))
- # my_xticks = graphx
- # plt.xticks(x, my_xticks, rotation='vertical', fontsize=5)
- # plt.tight_layout()
- # limit the number of xticks
- plt.locator_params(axis='x', nbins=20)
- plt.plot(x, graphy, 'r')
- out = self.pcap_filepath.replace('.pcap', '_plot-interval-ip-' + ip_type + '-cum-ent' + file_ending)
- plt.savefig(out, dpi=500)
- return out
- def plot_degree(degree_type: str, file_ending: str):
- """
- Creates a Plot, visualizing a degree for every IP Address
- :param degree_type: the type of degree, which should be plotted
- :param file_ending: The file extension for the output file containing the plot, e.g. "pdf"
- :return: A filepath to the file containing the created plot
- """
- if degree_type not in ["in", "out", "overall"]:
- return None
- plt.gcf().clear()
- # retrieve data
- degree = self.stats_db.process_user_defined_query(
- "SELECT ipAddress, %s FROM ip_degrees" % (degree_type + "Degree"))
- if degree is None:
- return None
- graphx, graphy = [], []
- for entry in degree:
- if entry[1] <= 0:
- continue
- # degree values
- graphx.append(entry[1])
- # IP labels
- graphy.append(entry[0])
- # set labels
- plt.title(degree_type + " Degree per IP Address")
- plt.ylabel('IpAddress')
- plt.xlabel(degree_type + 'Degree')
- # set width of the bars
- width = 0.3
- # set scalings
- plt.figure(
- figsize=(int(len(graphx)) / 20 + 5, int(len(graphy) / 5) + 5)) # these proportions just worked well
- # set limits of the axis
- plt.ylim([0, len(graphy)])
- plt.xlim([0, max(graphx) + 10])
- # display numbers at each bar
- for i, v in enumerate(graphx):
- plt.text(v + 1, i + .1, str(v), color='blue', fontweight='bold')
- # display grid for better visuals
- plt.grid(True)
- # plot the bar
- labels = graphy
- graphy = list(range(len(graphx)))
- plt.barh(graphy, graphx, width, align='center', linewidth=1, color='red', edgecolor='red')
- plt.yticks(graphy, labels)
- out = self.pcap_filepath.replace('.pcap', '_plot-' + degree_type + ' Degree of an IP' + file_ending)
- # plt.tight_layout()
- plt.savefig(out, dpi=500)
- return out
- def plot_big_conv_ext_stat(attr: str, title: str, xlabel: str, suffix: str):
- """
- Plots the desired statistc per connection as horizontal bar plot.
- Included are 'half-open' connections, where only one packet is exchanged.
- The given statistics table has to have at least the attributes 'ipAddressA', 'portA', 'ipAddressB',
- 'portB' and the specified additional attribute.
- Note: there may be cutoff/scaling problems within the plot if there is too little data.
- :param attr: The desired statistic, named with respect to its attribute in the given statistics table
- :param title: The title of the created plot
- :param xlabel: The name of the x-axis of the created plot
- :param suffix: The suffix of the created file, including file extension
- :return: A filepath to the file containing the created plot
- """
- plt.gcf().clear()
- result = self.stats_db.process_user_defined_query(
- "SELECT ipAddressA, portA, ipAddressB, portB, %s FROM conv_statistics_extended" % attr)
- if result:
- graphy, graphx = [], []
- # plot data in descending order
- result = sorted(result, key=lambda r: r[4])
- # compute plot data
- for i, row in enumerate(result):
- addr1, addr2 = "%s:%d" % (row[0], row[1]), "%s:%d" % (row[2], row[3])
- # adjust the justification of strings to improve appearance
- len_max = max(len(addr1), len(addr2))
- addr1 = addr1.ljust(len_max)
- addr2 = addr2.ljust(len_max)
- # add plot data
- graphy.append("%s\n%s" % (addr1, addr2))
- graphx.append(row[4])
- # have x axis and its label appear at the top (instead of bottom)
- fig, ax = plt.subplots()
- ax.xaxis.tick_top()
- ax.xaxis.set_label_position("top")
- # compute plot height in inches for scaling the plot
- dist_mult_height = 0.55 # this value turned out to work well
- plt_height = len(graphy) * dist_mult_height
- # originally, a good title distance turned out to be 1.012 with a plot height of 52.8
- title_distance = 1 + 0.012 * 52.8 / plt_height
- plt.gcf().set_size_inches(plt.gcf().get_size_inches()[0], plt_height) # set plot height
- plt.gcf().subplots_adjust(left=0.35)
- # set additional plot parameters
- plt.title(title, y=title_distance)
- plt.xlabel(xlabel)
- plt.ylabel('Connection')
- width = 0.5
- plt.grid(True)
- plt.gca().margins(y=0) # removes the space between data and x-axis within the plot
- # plot the above data, first use plain numbers as graphy to maintain sorting
- plt.barh(range(len(graphy)), graphx, width, align='center', linewidth=0.5, color='red', edgecolor='red')
- # now change the y numbers to the respective address labels
- plt.yticks(range(len(graphy)), graphy)
- # save created figure
- out = self.pcap_filepath.replace('.pcap', suffix)
- plt.savefig(out, dpi=500)
- return out
- def plot_packets_per_connection(file_ending: str):
- """
- Plots the total number of exchanged packets per connection.
- :param file_ending: The file extension for the output file containing the plot
- :return: A filepath to the file containing the created plot
- """
- title = 'Number of exchanged packets per connection'
- suffix = '_plot-PktCount per Connection Distribution' + file_ending
- # plot data and return outpath
- return plot_big_conv_ext_stat("pktsCount", title, "Number of packets", suffix)
- def plot_avg_pkts_per_comm_interval(file_ending: str):
- """
- Plots the average number of exchanged packets per communication interval for every connection.
- :param file_ending: The file extension for the output file containing the plot
- :return: A filepath to the file containing the created plot
- """
- title = 'Average number of exchanged packets per communication interval'
- suffix = '_plot-Avg PktCount Communication Interval Distribution' + file_ending
- # plot data and return outpath
- return plot_big_conv_ext_stat("avgIntervalPktCount", title, "Number of packets", suffix)
- def plot_avg_time_between_comm_interval(file_ending: str):
- """
- Plots the average time between the communication intervals of every connection.
- :param file_ending: The file extension for the output file containing the plot
- :return: A filepath to the file containing the created plot
- """
- title = 'Average time between communication intervals in seconds'
- suffix = '_plot-Avg Time Between Communication Intervals Distribution' + file_ending
- # plot data and return outpath
- return plot_big_conv_ext_stat("avgTimeBetweenIntervals", title, 'Average time between intervals', suffix)
- def plot_avg_comm_interval_time(file_ending: str):
- """
- Plots the average duration of a communication interval of every connection.
- :param file_ending: The file extension for the output file containing the plot
- :return: A filepath to the file containing the created plot
- """
- title = 'Average duration of a communication interval in seconds'
- suffix = '_plot-Avg Duration Communication Interval Distribution' + file_ending
- # plot data and return outpath
- return plot_big_conv_ext_stat("avgIntervalTime", title, 'Average interval time', suffix)
- def plot_total_comm_duration(file_ending: str):
- """
- Plots the total communication duration of every connection.
- :param file_ending: The file extension for the output file containing the plot
- :return: A filepath to the file containing the created plot
- """
- title = 'Total communication duration in seconds'
- suffix = '_plot-Total Communication Duration Distribution' + file_ending
- # plot data and return outpath
- return plot_big_conv_ext_stat("totalConversationDuration", title, 'Duration', suffix)
- def plot_comm_histogram(attr: str, title: str, label: str, suffix: str):
- """
- Plots a histogram about the specified attribute for communications.
- :param attr: The statistics attribute for this histogram
- :param title: The title of the histogram
- :param label: The xlabel of the histogram
- :param suffix: The file suffix
- :return: The path to the created plot
- """
- plt.gcf().clear()
- result_raw = self.stats_db.process_user_defined_query(
- "SELECT %s FROM conv_statistics_extended" % attr)
- # return without plotting if no data available
- if not result_raw:
- return None
- result = []
- for entry in result_raw:
- result.append(entry[0])
- # if title would be cut off, set minimum width
- plt_size = plt.gcf().get_size_inches()
- min_width = len(title) * 0.12
- if plt_size[0] < min_width:
- plt.gcf().set_size_inches(min_width, plt_size[1]) # set plot size
- # set additional plot parameters
- plt.title(title)
- plt.ylabel("Relative frequency of connections")
- plt.xlabel(label)
- plt.grid(True)
- # create 11 bins
- bins = []
- max_val = max(result)
- for i in range(0, 11):
- bins.append(i * max_val / 10)
- # set weights normalize histogram
- weights = numpy.ones_like(result) / float(len(result))
- # plot the above data, first use plain numbers as graphy to maintain sorting
- plt.hist(result, bins=bins, weights=weights, color='red', edgecolor='red', align="mid", rwidth=0.5)
- plt.xticks(bins)
- # save created figure
- out = self.pcap_filepath.replace('.pcap', suffix)
- plt.savefig(out, dpi=500)
- return out
- def plot_histogram_degree(degree_type: str, title: str, label: str, suffix: str):
- """
- Plots a histogram about the specified type for the degree of an IP.
- :param degree_type: The type of degree, i.e. inDegree, outDegree or overallDegree
- :param title: The title of the histogram
- :param label: The xlabel of the histogram
- :param suffix: The file suffix
- :return: The path to the created plot
- """
- plt.gcf().clear()
- result_raw = self.get_filtered_degree(degree_type)
- # return without plotting if no data available
- if not result_raw:
- return None
- result = []
- for entry in result_raw:
- result.append(entry[1])
- # set additional plot parameters
- plt.title(title)
- plt.ylabel("Relative frequency of IPs")
- plt.xlabel(label)
- plt.grid(True)
- # create 11 bins
- bins = []
- max_val = max(result)
- for i in range(0, 11):
- bins.append(int(i * max_val / 10))
- # set weights normalize histogram
- weights = numpy.ones_like(result) / float(len(result))
- # plot the above data, first use plain numbers as graphy to maintain sorting
- plt.hist(result, bins=bins, weights=weights, color='red', edgecolor='red', align="mid", rwidth=0.5)
- plt.xticks(bins)
- # save created figure
- out = self.pcap_filepath.replace('.pcap', suffix)
- plt.savefig(out, dpi=500)
- return out
- ttl_out_path = plot_ttl('.' + file_format)
- print(".", end="", flush=True)
- mss_out_path = plot_mss('.' + file_format)
- print(".", end="", flush=True)
- win_out_path = plot_win('.' + file_format)
- print(".", end="", flush=True)
- protocol_out_path = plot_protocol('.' + file_format)
- print(".", end="", flush=True)
- plot_interval_pktCount = plot_interval_pkt_count('.' + file_format)
- print(".", end="", flush=True)
- if entropy:
- plot_interval_ip_src_ent = plot_interval_ip_src_ent('.' + file_format)
- print(".", end="", flush=True)
- plot_interval_ip_dst_ent = plot_interval_ip_dst_ent('.' + file_format)
- print(".", end="", flush=True)
- plot_interval_ip_src_cum_ent = plot_interval_ip_cum_ent("src", '.' + file_format)
- print(".", end="", flush=True)
- plot_interval_ip_dst_cum_ent = plot_interval_ip_cum_ent("dst", '.' + file_format)
- print(".", end="", flush=True)
- plot_interval_new_ip = plot_interval_new_ip('.' + file_format)
- print(".", end="", flush=True)
- plot_interval_new_port = plot_interval_new_port('.' + file_format)
- print(".", end="", flush=True)
- plot_interval_new_ttl = plot_interval_new_ttl('.' + file_format)
- print(".", end="", flush=True)
- plot_interval_new_tos = plot_interval_new_tos('.' + file_format)
- print(".", end="", flush=True)
- plot_interval_new_win_size = plot_interval_new_win_size('.' + file_format)
- print(".", end="", flush=True)
- plot_interval_new_mss = plot_interval_new_mss('.' + file_format)
- print(".", end="", flush=True)
- plot_hist_indegree_out = plot_histogram_degree("inDegree", "Histogram - Ingoing degree per IP Address",
- "Ingoing degree",
- "_plot-Histogram Ingoing Degree per IP" + file_format)
- print(".", end="", flush=True)
- plot_hist_outdegree_out = plot_histogram_degree("outDegree", "Histogram - Outgoing degree per IP Address",
- "Outgoing degree",
- "_plot-Histogram Outgoing Degree per IP" + file_format)
- print(".", end="", flush=True)
- plot_hist_overalldegree_out = plot_histogram_degree("overallDegree",
- "Histogram - Overall degree per IP Address",
- "Overall degree",
- "_plot-Histogram Overall Degree per IP" + file_format)
- print(".", end="", flush=True)
- plot_hist_pkts_per_connection_out = plot_comm_histogram("pktsCount",
- "Histogram - Number of exchanged packets per connection",
- "Number of packets",
- "_plot-Histogram PktCount per Connection" + "." + file_format)
- print(".", end="", flush=True)
- plot_hist_avgpkts_per_commint_out = plot_comm_histogram("avgIntervalPktCount",
- "Histogram - Average number of exchanged packets per communication interval",
- "Average number of packets",
- "_plot-Histogram Avg PktCount per Interval per Connection" + "." + file_format)
- print(".", end="", flush=True)
- plot_hist_avgtime_betw_commints_out = plot_comm_histogram("avgTimeBetweenIntervals",
- "Histogram - Average time between communication intervals in seconds",
- "Average time between intervals",
- "_plot-Histogram Avg Time Between Intervals per Connection" + "." + file_format)
- print(".", end="", flush=True)
- plot_hist_avg_int_time_per_connection_out = plot_comm_histogram("avgIntervalTime",
- "Histogram - Average duration of a communication interval in seconds",
- "Average interval time",
- "_plot-Histogram Avg Interval Time per Connection" + "." + file_format)
- print(".", end="", flush=True)
- plot_hist_total_comm_duration_out = plot_comm_histogram("totalConversationDuration",
- "Histogram - Total communication duration in seconds",
- "Duration",
- "_plot-Histogram Communication Duration per Connection" + "." + file_format)
- print(".", end="", flush=True)
- if entropy:
- plot_out_degree = plot_degree("out", '.' + file_format)
- print(".", end="", flush=True)
- plot_in_degree = plot_degree("in", '.' + file_format)
- print(".", end="", flush=True)
- plot_overall_degree = plot_degree("overall", '.' + file_format)
- print(".", end="", flush=True)
- plot_packets_per_connection_out = plot_packets_per_connection('.' + file_format)
- print(".", end="", flush=True)
- plot_avg_pkts_per_comm_interval_out = plot_avg_pkts_per_comm_interval('.' + file_format)
- print(".", end="", flush=True)
- plot_avg_time_between_comm_interval_out = plot_avg_time_between_comm_interval('.' + file_format)
- print(".", end="", flush=True)
- plot_avg_comm_interval_time_out = plot_avg_comm_interval_time("." + file_format)
- print(".", end="", flush=True)
- plot_total_comm_duration_out = plot_total_comm_duration("." + file_format)
- print(".", end="", flush=True)
- print(" done.")
- # Time consuming plot
- # port_out_path = plot_port('.' + format)
- # Not drawable for too many IPs
- # ip_src_out_path = plot_ip_src('.' + format)
- # ip_dst_out_path = plot_ip_dst('.' + format)
- print("Saved plots in the input PCAP directory.")
- def stats_summary_post_attack(self, added_packets):
- """
- Prints a summary of relevant statistics after an attack is injected
- :param added_packets: sum of packets added by attacks, gets updated if more than one attack
- :return: None
- """
- total_packet_count = self.get_packet_count() + added_packets
- added_packets_share = added_packets / total_packet_count * 100
- timespan = self.get_capture_duration()
- summary = [("Total packet count", total_packet_count, "packets"),
- ("Added packet count", added_packets, "packets"),
- ("Share of added packets", added_packets_share, "%"),
- ("Capture duration", timespan, "seconds")]
- print("\nPOST INJECTION STATISTICS SUMMARY --------------------------")
- self.write_list(summary, print, "")
- print("------------------------------------------------------------")
- def stats_summary_new_db(self):
- """
- Prints a summary of relevant statistics when a new db is created
- :return: None
- """
- self.file_info = self.stats_db.get_file_info()
- print("\nNew database has been generated, printing statistics summary... ")
- total_packet_count = self.get_packet_count()
- pdu_count = self.process_db_query("SELECT SUM(pktCount) FROM unrecognized_pdus")
- if pdu_count is None:
- pdu_count = 0
- pdu_share = pdu_count / total_packet_count * 100
- last_pdu_timestamp = self.process_db_query(
- "SELECT MAX(timestampLastOccurrence) FROM unrecognized_pdus")
- timespan = self.get_capture_duration()
- summary = [("Total packet count", total_packet_count, "packets"),
- ("Recognized packets", total_packet_count - pdu_count, "packets"),
- ("Unrecognized packets", pdu_count, "PDUs"),
- ("% Recognized packets", 100 - pdu_share, "%"),
- ("% Unrecognized packets", pdu_share, "%"),
- ("Last unknown PDU", last_pdu_timestamp),
- ("Capture duration", timespan, "seconds")]
- print("\nPCAP FILE STATISTICS SUMMARY ------------------------------")
- self.write_list(summary, print, "")
- print("------------------------------------------------------------")
|