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Murashinij algoritm algoritm optimizaciyi murashinoyi koloniyi angl ant colony optimization ACO odin z efektivnih polinomialnih algoritmiv dlya znahodzhennya nablizhenih rozv yazkiv zadachi komivoyazhera a takozh analogichnih zavdan poshuku marshrutiv na grafah Pidhid zaproponovanij belgijskim doslidnikom Marko Dorigo angl Marco Dorigo Sut pidhodu polyagaye v analizi ta vikoristanni modeli povedinki murah sho shukayut dorogi vid koloniyi do yizhi Povedinka murah nadihnula metaevristichnu tehniku optimizaciyiU osnovi algoritmu lezhit povedinka murashinoyi koloniyi markuvannya vdalih dorig velikoyu kilkistyu feromonu Robota pochinayetsya z rozmishennya murashok u vershinah grafu mistah potim pochinayetsya ruh murashok napryam viznachayetsya imovirnisnim metodom na pidstavi formuli P i l i q f i p k 0 N l k q f k p displaystyle P i frac l i q cdot f i p sum k 0 N l k q cdot f k p de P i displaystyle P i jmovirnist perehodu shlyahom i displaystyle i l i displaystyle l i velichina obernena do dovzhini vagi i displaystyle i ogo perehodu f i displaystyle f i kilkist feromoniv na i displaystyle i omu perehodi q displaystyle q velichina yaka viznachaye zhadibnist algoritmu p displaystyle p velichina yaka viznachaye stadnist algoritmu i q p 1 displaystyle q p 1 Rezultat ne ye tochnim i navit mozhe buti odnim z girshih prote v silu imovirnosti rishennya povtorennya algoritmu mozhe vidavati dosit tochnij rezultat Vishidna diyalnist u comu napryami prizvela do provedennya konferencij prisvyachenih viklyuchno shtuchnim muraham a takozh chislennim komp yuternim programam vid specializovanih kompanij takih yak AntOptima Yak priklad murashinij algoritm ye klasom algoritmiv optimizaciyi za zrazkom koloniyi murashok Shtuchni murashki znahodyat optimalni varianti ruhayuchis prostorom parametriv yakij predstavlyaye usi mozhlivi rishennya Realni murahi vidilyayut feromoni shob spryamuvati odin odnogo do resursiv ta doslidzhuvati svoye otochennya Modelovani murahi analogichno fiksuyut svoyi poziciyi ta yakist svoyih rishen takim chinom v podalshih iteraciyah modelyuvannya murahi prijmayut krashi rishennya 1 Odnim z variantiv cogo pidhodu ye bdzholinij algoritm yakij analogichnij strukturi roboti medonosnih bdzhil inshoyi socialnoyi komahi Zmist 1 Oglyad 1 1 Prijnyattya rishen 1 2 Ekologichni merezhi intelektualnih ob yektiv 1 3 Sistema shtuchnih feromoniv 2 Pokrokovij opis zagalnoyi shemi 3 Podorozh murashki 4 Viparovuvannya feromoniv 5 Oblasti zastosuvannya 6 Istoriya 7 Div takozh 8 Primitki 9 PosilannyaOglyad RedaguvatiV prirodi murahi pochatkovo blukayut dovilnim chinom i po znahodzhenni yizhi povertayutsya do koloniyi zalishayuchi po sobi feromonnij slid Yaksho inshi murahi znahodyat takij shlyah voni shilni pripiniti svoyi blukannya natomist sliduvati poznachenim shlyahom posilyuyuchi jogo pid chas povernennya u razi znajdennya yizhi Odnak z chasom feromonovi shlyahi viparovuyutsya todi privablivist shlyahiv zmenshuyetsya Chim bilshe chasu potribno murasi shob podolati dorogu tim bilshe chasu mayut feromoni shob viparuvatis Natomist korotkij shlyah prohoditsya chastishe otzhe shilnist feromoniv staye bilshoyu na korotkomu shlyahu Viparovuvannya feromoniv takozh nadaye perevagu uniknennya lokalno najkrashih shlyahiv Yakbi viparovuvannya ne vidbuvalos vzagali shlyahi obrani pershim murahoyu tyazhili b stati vkraj privablivimi dlya nastupnih V comu razi rozvidka mozhlivih shlyahiv bula b obmezhena Takim chinom koli muraha znahodit vdalij tobto korotkij shlyah z koloniyi do dzherela yizhi inshi murahi shvidshe sliduvatimut jomu i pozitivnij zvorotnij zv yazok zreshtoyu prizvede do obrannya cogo shlyahu vsima murahami Ideya murashinogo algoritmu polyagaye v nasliduvanni povedinki z simulyatorom murahi sho progulyuyetsya grafom yakij predstavlyaye problemu sho treba rozv yazati Prijnyattya rishen Redaguvati nbsp Pervisna ideya prijshla zi sposterezhennya za vikoristannyam harchovih resursiv sered murah de murahi okremo obmezheni v svoyih piznavalnih mozhlivostyah kolektivno zdatni znajti najkorotshij shlyah mizh dzherelom yizhi i gnizdom Persha muraha znahodit dzherelo yizhi D cherez yakijs shlyah a todi povertayetsya do gnizda G zalishivshi pozadu slid z feromoniv b Murahi bez rozboru obirayut vsi chotiri shlyahi ale pidsilennya osnovnoyi stezhki robit yiyi privablivishoyu yak najkorotshij shlyah Murahi obirayut korotshij shlyah dovgi vidtinki vtrachayut shilnist feromonovogo slidu V seriyi doslidiv na koloniyi murah z viborom mizh dvoma shlyahami riznoyi dovzhini yaki vedut do dzherela yizhi biologi sposterigali sho murahi tyazhiyut do vikoristannya najkorotshogo shlyahu 2 3 Model sho poyasnyuye taku povedinku taka Muraha zvana blic ruhayetsya bilsh mensh vipadkovo po koloniyi Yaksho vona znahodit dzherelo yizhi vona povertayetsya pryamo do gnizda zalishayuchi po sobi feromonovij slid Ci feromoni zamanlivi blizhni murahi shilyatimutsya do sliduvannya bilsh chi mensh tochno cim shlyahom Povertayuchis do koloniyi murahi pidsilyuvatimut marshrut Yaksho nayavni dva shlyahi do odnogo j togo samogo dzherela yizhi todi za pevnij chas korotshij shlyah projde bilshe murah nizh dovshij Korotkij shlyah vse bilsh posilyuvatimetsya i takim chinom stavatime privablivishim Dovgij shlyah z chasom znikne bo feromoni vivitryatsya Zreshtoyu vsi murahi viznachatimut i cherez ce obiratimut najkorotshij shlyah Murahi vikoristovuyut navkolishnye seredovishe yak poserednik dlya zv yazku Voni obminyuyutsya informaciyeyu nepryamo cherez vidkladannya feromoniv yaki utochnyuyut status yihnoyi roboti Informaciya rozpovsyudzhuvana cherez feromoni maye miscevu diyu lishe murahi roztashovani poruch iz vidkladenimi feromonami pomichayut yih Taku sistemu nazivayut Stigmergi angl stigmergy i vona traplyayetsya v bagatoh spilnotah socialnih tvarin yiyi vivchali na prikladi rozbudovi stovpiv u gnizdah termitiv Spilne rozv yazannya problem zanadto skladnih dlya odnogo murahi ye horoshim prikladom samoorganizovanoyi sistemi Sistema pokladayetsya na pozitivnij zvorotnij zv yazok vidkladennya feromoniv privablyuyut inshih murah yaki pidsilyat yih u svoyu chergu i negativnij zniknennya marshrutu cherez viparovuvannya zabezpechuye optimalnist roboti sistemi Teoretichno yaksho shilnist feromoniv zalishatimetsya postijnoyu na vsih vidtinkah zhoden iz shlyahiv ne stane golovnim Odnak cherez zvorotnij zv yazok mali vidminnosti na pidmarshrutah pidsilyuvatimutsya i dozvolyatimut zrobiti vibir Algoritm zsuvatimetsya z nestabilnogo stanu de zhoden z pidmarshrutiv ne privablivishij za inshi u bik stabilnogo stanu de marshrut utvorenij z najsilnishih pidmarshrutiv Ekologichni merezhi intelektualnih ob yektiv Redaguvati Deyaki situaciyi potrebuyut novih koncepcij oskilki intelekt chasto ne ye centralizovanim a znahoditsya u najmenshih ob yektah Antropocentrichni koncepciyi zavzhdi privodili nas do virobnictva IT sistem v yakih vikoristovuyetsya centralizovana obrobka danih bloki upravlinnya ta obchislyuvalni potuzhnosti Taki centralizovani pidrozdili postijno pidvishuyut svoyu produktivnist i mozhut porivnyuvatis z lyudskim mozkom Model mozku stala etalonnim bachennyam komp yuteriv Neveliki pristroyi yaki mozhna porivnyati z komahami ne mayut vlasnogo rozvinutogo intelektu Navpaki yih intelekt mozhna nazvati dosit obmezhenim Napriklad nemozhlivo integruvati visokoefektivnij kalkulyator z mozhlivistyu virishuvati bud yaku matematichnu zadachu v biochip yakij implantuyetsya v organizm lyudini Odnak koli ob yekti vzayemopov yazani voni rozporyadzhayutsya formoyu intelektu yaku mozhna porivnyati z koloniyeyu murah abo bdzhil Dlya pevnih zadach cej tip intelektu mozhe navit perevershuvati ochikuvannya pro centralizovanu sistemu podibnu do mozku 4 Priroda dala nam kilka prikladiv togo yak mizerni organizmi yaksho vsi voni sliduyut odnomu i tomu zh osnovnomu pravilu mozhut stvoriti formu kolektivnogo intelektu na makroskopichnomu rivni Koloniyi socialnih komah chudovo ilyustruyut cyu model yaka silno vidriznyayetsya vid lyudskih suspilstv Cya model bazuyetsya na vzayemodiyi nezalezhnih pidrozdiliv z prostoyu ta neperedbachuvanoyu povedinkoyu 5 Voni ruhayutsya po navkolishnij teritoriyi shob vikonuvati pevni zavdannya i voloditi lishe obmezhenoyu kilkistyu informaciyi dlya cogo Napriklad koloniya murah predstavlyaye yakosti yaki mozhut buti zastosovani do merezhi shtuchnih ob yektiv Koloniyi murah mayut duzhe visoku zdatnist pristosovuvatisya do zmin u navkolishnomu seredovishi a takozh velicheznoyu siloyu u virishenni situacij koli odna lyudina ne v zmozi vikonati dane zavdannya Taka gnuchkist takozh bude duzhe korisnoyu dlya mobilnih merezh ob yektiv sho postijno rozvivayutsya Paketi informaciyi yaki peremishuyutsya z komp yutera na inshij mayut taku zh povedinku yak i murashki Voni peremishuyutsya merezheyu i perehodyat vid odnogo vuzla do nastupnogo z metoyu pributtya do kincevogo punktu priznachennya yaknajshvidshe 6 Sistema shtuchnih feromoniv Redaguvati Zv yazok na osnovi feromoniv ye odnim z najbilsh efektivnih sposobiv spilkuvannya yakij shiroko sposterigayetsya v prirodi Feromon vikoristovuyetsya socialnimi komahami takimi yak bdzholi murahi i termiti U zv yazku z jogo docilnistyu shtuchni feromoni buli prijnyati v sistemah multirobotiv i robototehnichnih sistem zi strukturoyu roya Zv yazok na osnovi feromoniv buv realizovanij riznimi zasobami takimi yak himichnij 7 8 abo fizichnij RFID mitki 9 svitlo 10 11 12 13 zvuk 14 sposobi Prote ci realizaciyi ne zmogli povtoriti vsi aspekti feromoniv yaki vikoristovuyutsya v zhivij prirodi Pokrokovij opis zagalnoyi shemi RedaguvatiPripustimo sho navkolishnye seredovishe dlya murah predstavlyaye povnozv yaznij neoriyentovanij graf Kozhne rebro maye vagu yaka poznachayetsya yak vidstan mizh dvoma vershinami sho nim z yednuyetsya Graf ye dvohskerovanim tomu muraha mozhe podorozhuvati po grani v bud yakomu napryamku Jmovirnist vklyuchennya rebra v marshrut okremoyi murahi proporcijna do kilkosti feromoniv na comu rebri a kilkist vidkladenogo feromonu proporcijne do dovzhini marshrutu Chim korotshij marshrut tim bilshe feromonu bude vidkladeno na jogo rebrah otzhe bilsha kilkist murah bude vklyuchati jogo v sintez vlasnih marshrutiv Modelyuvannya takogo pidhodu sho vikoristovuye tilki dodatnij zvorotnij zv yazok prizvodit do peredchasnoyi zbizhnosti bilshist murashok ruhayetsya po lokalno optimalnomu marshrutu Uniknuti cogo mozhna modelyuyuchi vid yemnij zvorotnij zv yazok u viglyadi viparovuvannya feromonu Prichomu yaksho feromon viparovuyetsya shvidko to ce prizvodit do vtrati pam yati koloniyi i zabuvannya horoshih rishen z inshogo boku zbilshennya chasu vipariv mozhe prizvesti do otrimannya stijkogo lokalnogo optimalnogo rishennya Podorozh murashki RedaguvatiProjdenij murahoyu shlyah vidobrazhayetsya koli muraha vidvidaye vsi vuzli grafu Cikli zaboroneno oskilki v algoritm vklyucheno spisok tabu Pislya zavershennya dovzhina shlyahu mozhe buti pidrahovana vona dorivnyuye sumi dovzhin vsih reber yakimi podorozhuvala muraha Rivnyannya 1 pokazuye kilkist feromonu yakij buv zalishenij na kozhnomu rebri shlyahu dlya murashki k Zminna Q ye konstantoyu t i j k t Q L k t displaystyle bigtriangleup tau ij k t frac Q L k t nbsp 1 Rezultat rivnyannya ye zasobom vimiryuvannya shlyahu korotkij shlyah harakterizuyetsya visokoyu koncentraciyeyu feromoniv a bilsh dovgij shlyah bilsh nizkoyu Dali otrimanij rezultat vikoristovuyetsya v rivnyanni 2 shob zbilshiti kilkist feromonu vzdovzh kozhnogo rebra projdenogo murahoyu shlyahu t i j t t i j t t i j k r displaystyle tau ij t bigtriangleup tau ij t tau ij k times rho nbsp 2 Vazhlivo sho dane rivnyannya zastosovuyetsya do vsogo shlyahu pri comu kozhne rebro poznachayetsya feromonom proporcijne do dovzhini shlyahu Tomu slid dochekatisya poki muraha zakinchit podorozh i lishe potim onoviti rivni feromonu v inshomu vipadku spravzhnya dovzhina shlyahu zalishitsya nevidomoyu Konstanta p znachennya mizh 0 i 1 Viparovuvannya feromoniv Redaguvati nbsp Petlovi vibratorni anteni formatu 10 10 sintezovani na osnovi murashinogo algoritmu optimizaciyi nbsp Nepetlovi vibratori formatu 10 10 sintezovani za dopomogoyu murashinogo algoritmuNa pochatku shlyahu u kozhnogo rebra ye shans buti obranim Shob postupovo vidaliti rebra yaki vhodyat u girshi shlyahi grafu do vsih reber zastosovuyetsya procedura viparovuvannya feromonu Vikoristovuyuchi konstantu p z rivnyannya 2 otrimuyemo rivnyannya 3 t i j t t i j t 1 r displaystyle tau ij t tau ij t times 1 rho nbsp 3 Dlya viparovuvannya feromonu vikoristovuyetsya zvorotnij koeficiyent onovlennya shlyahu Oblasti zastosuvannya RedaguvatiAlgoritm optimizaciyi murashinoyi koloniyi mozhe buti uspishno zastosovanij dlya virishennya skladnih kompleksnih zavdan optimizaciyi Meta virishennya skladnih kompleksnih zavdan optimizaciyi poshuk i viznachennya najbilsh vidpovidnogo rishennya dlya optimizaciyi znahodzhennya minimumu abo maksimumu cilovoyi funkciyi cini tochnosti chasu vidstani tosho z diskretnoyi mnozhini mozhlivih rishen Tipovimi prikladami virishennya takogo zavdannya ye zadacha kalendarnogo planuvannya zavdannya marshrutizaciyi transportu riznih merezh GPRS telefonni komp yuterni tosho rozpodil resursiv ta robit optimizaciya formi anten napriklad RFID tegiv 15 16 17 Ci zadachi vinikayut u biznesi inzheneriyi virobnictvi ta bagatoh inshih oblastyah Doslidzhennya pokazali sho metod murashinih kolonij mozhe davati rezultati navit krashi nizh pri vikoristanni genetichnih algoritmiv i nejronnih merezh dzherelo Istoriya RedaguvatiZasnovnikami ye Frans Mojson i Bernard Manderik Pionerami polya ye Marko Dorigo en Luka Mariya Gambardela en 18 Hronologiya algoritmiv optimizaciyi koloniyi murah 1959 P yer Pol Grasse en vinajshov teoriyu Stigmergi shob poyasniti povedinku buduvannya gnizda termitami 19 1983 Denubur ta jogo kolegi vivchali kolektivnu povedinku murah 20 1989 praci Gossa Arona Denbura i Pastelya pro kolektivnu povedinku argentinskih murah yaki dadut uyavlennya pro algoritmi optimizaciyi koloniyi murashok 21 1989 vprovadzhennya modeli povedinki dlya harchovih produktiv Ebling ta jogo koleg 22 1991 Marko Dorigo zaproponuvav sistemu murah v svoyij doktorskij disertaciyi yaka bula opublikovana v 1992 roci 23 Tehnichnij zvit vityagnutij z disertaciyi ta spivavtoriv V Manecco ta A Kolorni 23 buv opublikovanij cherez p yat rokiv 24 1994 Appleby i Steward British Telecommunications Plc opublikuvali pershu zayavku na telekomunikacijni merezhi 25 1996 publikaciya statti pro murashkovu sistemu 24 1996 Hus i Shtyucl pridumali max min sistemu murah 26 1997 Dorigo ta Gambardella publikuyut sistemu kolonij murah 27 1997 Shundervoerd ta jogo kolegi opublikuvali vdoskonalene zastosuvannya do telekomunikacijnih merezh 28 1998 Dorigo zapuskaye pershu konferenciyu prisvyachenu murashinim algoritmam 29 1998 Shtyucl proponuye pochatkovi paralelni realizaciyi 30 1999 Bonabeu Dorigo ta Zeraulaz vidayut knigu sho zajmayetsya perevazhno shtuchnimi murahami 31 2000 specialnij vipusk zhurnalu Komp yuterni sistemi majbutnogo pokolinnya pro algoritmi murashok 32 2000 pershi programi dlya planuvannya poslidovnosti planuvannya i zadovolennya obmezhen 2000 Gutyar daye pershi dokazi konvergenciyi dlya algoritmu kolonij murashok 33 2001 pershe vikoristannya murashinih algoritmiv kompaniyami Eurobios Arhivovano 25 lyutogo 2019 u Wayback Machine ta AntOptima Arhivovano 10 sichnya 2019 u Wayback Machine 2001 Iredi ta jogo kolegi opublikuvali pershij bagatocilovij algoritm 34 2002 pershi programi v rozrobci grafika bajyesivskih merezh 2002 Byanchi ta yiyi kolegi zaproponuvali pershij algoritm stohastichnoyi problemi 35 2004 Dorigo ta Shtyucl publikuyut knigu z optimizaciyi koloniyi murah z presoyu MIT Press 36 2004 Zlochin ta Dorigo pokazuyut sho deyaki algoritmi ekvivalentni stohastichnomu spusku gradiyenta metod perehresnoyi entropiyi ta algoritmi dlya ocinki rozpodilu 37 2005 pershe zastosuvannya do problem zgortannya bilkiv 2012 Prabhakar i jogo kolegi publikuyut doslidzhennya pov yazani z funkcionuvannyam okremih murah yaki spilkuyutsya v tandemi bez feromoniv vidobrazhayuchi principi organizaciyi komp yuternih merezh Model zv yazku bula porivnyana z TCP 38 2016 pershe zastosuvannya do dizajnu poslidovnostej peptidiv 39 2017 uspishna integraciya bagatokriterialnogo metodu prijnyattya rishen PROMETHEE v murashinomu algoritmi algoritm HUMANT en 40 Div takozh Redaguvati nbsp Portal Matematika Zadacha optimizaciyi Teorema shem Funkciya dopasovanosti Genetichnij algoritmPrimitki Redaguvati Marco Dorigo 2004 Ant colony optimization Cambridge Mass MIT Press ISBN 9780262256032 OCLC 57182707 S Goss S Aron J L Deneubourg et J M Pasteels Self organized shortcuts in the Argentine ant Naturwissenschaften volume 76 pages 579 581 1989 J L Deneubourg S Aron S Goss et J M Pasteels The self organizing exploratory pattern of the Argentine ant Journal of Insect Behavior volume 3 page 159 1990 Waldner Jean Baptiste 2008 Nanocomputers and Swarm 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