Spiking neural controllers in multi-agent competitive systems for adaptive targeted motor learning
Academic Article
Publication Date:
2015
abstract:
The proposedworkintroducesaneuralcontrolstrategyforguidingadaptationinspikingneuralstructures acting asnonlinearcontrollersinagroupofbio-inspiredrobotswhichcompeteinreachingtargetsina virtual environment.Theneuralstructuresembeddedintoeachagentareinspiredbyaspecific partofthe insect brain,namelyCentralComplex,devotedtodetect,learnandmemorizevisualfeaturesfortargeted motor control.Areduced-ordermodelofaspikingneuronisusedasthebasicbuildingblockfortheneural controller. Thecontrolmethodologyemploysbio-inspired,correlationbasedlearningmechanismslike Spike timingdependentplasticity with theadditionofareward/punishment-basedmethodexperimentally found ininsects.Thereferencesignalfortheoverallmulti-agentcontrolsystemisimposedbyaglobal reward, whichguidesmotorlearningtodirecteachagenttowardsspecific visualtargets.Theneural controllers withintheagentsstartfromidenticalconditions:thelearningstrategyinduceseachrobottoshow anticipated targetingactionsuponspecific visualstimuli.Thewholecontrolstructurealsocontributesto make therobotsrefractoryormoresensitivetospecific visualstimuli,showingdistinctpreferencesinfuture choices. Thisleadstoanenvironmentallyinduced,targetedmotorcontrol,evenwithoutadirect communication amongtheagents,givingrobots,whilerunning,theabilitytoperformadaptationinreal- time. Experiments,carriedoutinadynamicsimulationenvironment,showthesuitabilityoftheproposed approach. Specific performanceindexes,likeShannon'sEntropy,areadoptedtoquantitativelyanalyze diversity andspecializationwithinthegroup.
Iris type:
14.a.1 Articolo su rivista
List of contributors:
Vitanza, A.; Patane, L.; Arena, P.
Published in: