




已閱讀5頁,還剩10頁未讀, 繼續(xù)免費(fèi)閱讀
版權(quán)說明:本文檔由用戶提供并上傳,收益歸屬內(nèi)容提供方,若內(nèi)容存在侵權(quán),請進(jìn)行舉報(bào)或認(rèn)領(lǐng)
文檔簡介
Zero-momentpointtrajectorymodelingofabipedwalkingrobotusinganadaptiveneuro-fuzzysystemD.Kim,S.-J.SeoandG.-T.ParkAbstract:Abipedalarchitectureishighlysuitableforarobotbuilttoworkinhumanenvironmentssincesucharobotwillfindavoidingobstaclesarelativelyeasytask.However,thecomplexdynamicsinvolvedinthewalkingmechanismmakethecontrolofsucharobotachallengingtask.Thezero-momentpoint(ZMP)trajectoryintherobotsfootisasignicantcriterionfortherobotsstabilityduringwalking.IftheZMPcouldbemeasuredon-linethenitbecomespossibletocreatestablewalkingconditionsfortherobotandherealsostablycontroltherobotbyusingthemeasuredZMP,values.ZMPdataismeasuredinreal-timesituationsusingabipedwalkingrobotandthisZMPdataisthenmodelledusinganadaptiveneuro-fuzzysystem(ANFS).Naturalwalkingmotionsonatlevelsurfacesandupanddowna10slopearemeasured.ThemodellingperformanceoftheANFSisoptimizedbychangingthemembershipfunctionsandtheconsequentpartofthefuzzyrules.TheexcellentperformancedemonstratedbytheANFSmeansthatitcannotonlybeusedtomodelrobotmovementsbutalsotocontrolactualrobots.1IntroductionThebipedalstructureisoneofthemostversatilesetupsforawalkingrobot.Abiped,robothasalmostthesamemovementmechanismsasahumananditabletooperateinenvironmentscontainingstairs,obstaclesetc.However,thedynamicsinvolvedarehighlynonlinear,complexandunstable.Thus,itisdifculttogenerateahuman-likewalkingmotion.Therealisationofhuman-likewalkingrobotsisanareaofconsiderableactivity14.Incontrasttoindustrialrobotmanipulators,theinteractionbetweenawalkingrobotandthegroundiscomplex.Theconceptofazero-momentpoint(ZMP)2hasbeenshowntobeusefulinthecontrolofthisinteraction.ThetrajectoryoftheZMPbeneaththerobotfootduringawalkisaftertakentobeanindicationofthestabilityofthewalk16.UsingtheZMPwecansynthesisethewalkingpatternsofbipedrobotsanddemonstrateawalkingmotionwithactualrobots.Thus,theZMPcriteriondictatesthedynamicstabilityofabipedrobot.TheZMPrepresentsthepointatwhichthegroundreactionforceistakentooccur.ThelocationoftheZMPcanbecalculatedusingamodeloftherobot.However,itispossiblethattherecanbealargeerrorbetweentheactualZMPvalueandthecalculatedvalue,duetodeviationsinthephysicalparametersbetweenthemathematicalmodelandtherealmachine.Thus,theactualZMPshouldbemeasuredespeciallyifitistobeusedinatoparametersacontrolmethodforstablewalking.InthisworkactualZMPdatatakenthroughoutthewholewalkingcycleareobtainedfromapracticalbipedwalingrobot.Therobotwillbetestedbothonaatoorandalsoon10slopes.Anadaptiveneuro-fuzzysystem(ANFS)willbeusedtomodeltheZMPtrajectorydatatherebyallowingitsusetocontrolacomplexrealbipedwalkingrobot.2Bipedwalkingrobot2.1DesignofthebipedwalkingrobotWehavedesignedandimplementedthebipedwalkingrobotshowninFig.1.Therobothas19joints.ThekeydimensionsoftherobotarealsoshowninFig.1.Theheightandthetotalweightareabout380mmand1700gincludingbatteries,respectively.Theweightoftherobotisminimisedbyusingaluminiuminitsconstruction.EachjointisdrivenbyaRCservomotorthatconsistsofaDCmotor,gearsandasimplecontroller.EachoftheRCservomotorsismountedinalinkedstructure.Thisstructureensuresthattherobotisstable(i.e.willnotfalldowneasily)andgivestherobotahuman-likeappearance.AblockdiagramofourrobotsystemisshowninFig.2.Outrobotisabletowalkatarateofonestep(48mm)every1.4sonaatoororanshallowslopes.ThespecicationsoftherobotarelistedinTable1.ThewalkingmotionsoftherobotareshowninFigs.36.-Figures3and4areshowfrontandsideviewsoftherobot,respectivelywhentherobotisonaatsurface.Figure5isasnapshotoftherobotwalkingdownaslopewhereasFig.6isasnapshotoftherobotwalkingupaslope.ThelocationsofthejointsduringmotionareshowninFig.7.ThemeasuredZMPtrajectoryisobtainedfromten-degree-of-freedom(DOF)dataasshowninFig.7.TwodegreesoffreedomareassignedtothehipsandanklesandoneDOFtoeachknee.Usingthesejointangles,acyclicwalkingpatternhasbeenrealised.Ourrobotisabletowalkcontinuouslywithoutfallingdown.Thejointanglesinthefour-stepmotionofourrobotaresummarisedintheAppendix.2.2ZMPmeasurementsystemTheZMPtrajectoryinarobotfootisasignicantcriterionforthestabilityofthewalk.Inmanystudies,ZMPcoordinatesarecomputedusingamodeloftherobotandinformationfromtheencodersonthejoints.However,weemployedamoredirectapproachwhichistousedatameasuredusingsensorsmountedontherobotsfeet.Thedistributionofthegroundisreactionforcebeneaththerobotsfootiscomplicated.However,atanypointPonthesoleofthefoottothereactioncanberepresentedbyaforceNandmomentM,asshowninFig.8.TheZMPissimplythecentreofthepressureofthefootontheground,andthemomentappliedbythegroundaboutthispointiszero.Inotherwords,thepointPonthegroundisthepointatwhichthenetmomentoftheinertialandgravityforceshasnocomponentalongtheaxesparalleltotheground1,7.Figure9illustratestheusedsensorsandtheirplacementonthesoleoftherobotsfoot.ThetypeofforcesensorusedinourexperimentsisaFlexiForceA201sensor8.Theyareattachedtothefourcornersoftheplatethatconstitutesthesoleofthefoot.SensorsignalsaredigitisedbyanADCboard,withasamplingtimeof10ms.Measurementsarecarriedoutinrealtime.Thefootpressureisobtainedbysummingtheforcesignals.UsingthesensordataitiseasytocalculatetheactualZMPvalues.TheZMPsinthelocalfootcoordinateframearecomputedusing(1).Whereeachfiistheforceatasensorriisthesensorpositionwhichisavector.ThesearedenedinFig.10.Inthegure,Oistheoriginofthefootcoordinateframewhichislocatedatthelower-left-handcornertheleftfoot.ExperimentalresultsareshowninFigs.1116.Figures11,13and15showthex-coordinateandy-coordinateoftheactualZMPpositionsforthefour-stepmotionoftherobotwalkingonaatoorandalsodownandupaslopeof10,respectively.Figures12,14and16showntheZMPtrajectoryoftheone-stepmotionoftherobotusingtheactualZMPpositionsshowninFigs.11,13and15.Asshowninthetrajectories,theZMPsexistinarectangulardomainshownbyasolidline.Thus,thepositionsoftheZMPsarewithintherobotsfootandhencetherobotisstable.3ZMPtrajectorymodellingInmanyscienticproblemsanessentialsteptowardstheirsolutionistoaccomplishthemodellingofthesystemunderinvestigation.Theimportantroleofmodellingistoestablishempiricalrelationshipsbetweenobservedvariables.Thecomplexdynamicsinvolvedinmakingarobotwalkmakethecontroloftherobotcontrolachallengingtask.However,ifthehighlynonlinearandcomplexdynamicscanbecloselyproducedthenthismodellingcanbeusedinthecontroloftherobot.Inaddition,modelling,canevenbeusedinrobustintelligentcontroltominimisedisturbancesandnoise.3.1ANFSFuzzymodellingtechniqueshavebecomeanactiveresearchareainrecentyearsbecauseoftheirsuccessfulapplicationtocomplex,ill-denedanduncertainsystemsinwhichconventionalmathematicalmodelsfailtogivesatisfactoryresults9.InthislightweintendtouseasystemtomodeltheZMPtrajectory.Thefuzzyinferencesystemisapopularcomputingframeworkthatisbasedontheconceptsoffuzzysettheory,fuzzyif-thenrules,andfuzzyreasoning.WewillusetheSugenofuzzymodelinwhichsinceeachrulehasacrispoutput,theoveralloutputisobtainedviaaweightedaverage,thusavoidingthetime-consumingprocessofdefuzzication.Whenweconsiderfuzzyrulesinthefuzzymodel,theconsequentpartcanbeexpressedbyeitheraconstantoralinearpolynomial.ThedifferentformsofpolynomialsthatcanbeusedinthefuzzysystemaresummarisedinTable2.Themodellingperformancedependsonthetypeofconsequentpolynomialusedinthemodelling.Moreover,wecanexploitvariousformsofmembershipfunctions(MFs),suchastriangularandGaussian,forthefuzzysetinthepremisepartofthefuzzyrules.Theseareanotherfactorthatcontributestotheexibilityoftheproposedapproach.ThetypesofthepolynomialareasfollowsAblockdiagramofthemodellingsystemisshowninFig.17.Theproposedmethodisrstusedtomodelandthencontrolapracticalbipedwalkingrobot.Toobtainthefuzzyrulesforthefuzzymodellingsystemwemustnotesthatthenonlinearsystemtobeidentiedisabipedwalkingrobotwithteninputvariablesandeachinputvariableshastwofuzzysets,respectively.Forthefuzzymodel,theif-thenrulesareasfollows:whereAi,Bi,,Jiinthepremisepartoftheruleshavelinguisticvalues(suchassmallorbig)associatedwiththeinputvariable,x1,x2,x10;respectively.Fj(x1,x2,x10);istheconstant,orrst-orderconsequentpolynomialfunctionforthejthrule.AsdepictedinFig.18,twotypesofMFswereexamined.OneisthetriangularandtheotherisGaussian.Figure19isanadaptiveneuro-fuzzyinferencesystem10architecturethatisequivalenttotheten-inputfuzzymodelconsideredhere,inwhicheachinputisassumedtohaveoneofthetwoMFsshowninFig.18.NodeslabelledPgivetheproductofalltheincomingsignalsandtheselabelledNcalculatetheratioofacertainrulesringstrengthtothesumofalltherulesringstrengths.ParametervariationinANFISisoccuredusingeitheragradientdescentalgorithmorarecursiveleast-squaresestimationalgorithmtoadjustboththepremiseandconsequentparametersiteratively.However,wedonotusethecomplexhybridlearningalgorithmbutinsteadusethegeneralleast-squaresestimationalgorithmandonlydeterminethecoefcientsintheconsequentpolynomialfunction.3.2SimulationresultsApproximatelymodelswereconstructedusingtheANFS.Thenaccuracywasquantiedintermsoftheremean-squarederror(MSE),values.TheANFSwasappliedtomodeltheZMPtrajectoryofabipedwalkingrobotusingdatameasuredfromoutrobot.TheperformanceoftheANFSwasoptimisedbywaryingtheMFandconsequenttypeinthefuzzyrule.ThemeasuredZMPtrajectorydatafromourrobot(showninFigs.3241AintheAppendix)areusedastheprocessparameters.WhentriangularandGaussianMFsareusedinthepremisepartandaconstantintheconsequentpartthen,thecorrespondingMSEvaluesarelistedinTable3.WehaveplattedourresultsinFigs.2025.ThegeneratedZMPpositionsfromtheANFSareshowninFigs.20,22and24foraatleveloor,walkingdowna10slopeandwalkingupa10slope,respectively.InFigs.21,23and25,wecanseethecorrespondingZMPtrajectorieswhicharegeneratedfromtheANFS.Forsimplicity,theprocessparameterofbothkneescanbeignored.Asaresult,wecanreducethedimensionofthefuzzyrulesandtherebylowerthecomputationalburden.InthiscasethesimulationconditionsoftheANFSanditscorrespondingMSEvaluesaregiveninTable4.FromtheFiguresandTablesthatpresentthesimu
溫馨提示
- 1. 本站所有資源如無特殊說明,都需要本地電腦安裝OFFICE2007和PDF閱讀器。圖紙軟件為CAD,CAXA,PROE,UG,SolidWorks等.壓縮文件請下載最新的WinRAR軟件解壓。
- 2. 本站的文檔不包含任何第三方提供的附件圖紙等,如果需要附件,請聯(lián)系上傳者。文件的所有權(quán)益歸上傳用戶所有。
- 3. 本站RAR壓縮包中若帶圖紙,網(wǎng)頁內(nèi)容里面會有圖紙預(yù)覽,若沒有圖紙預(yù)覽就沒有圖紙。
- 4. 未經(jīng)權(quán)益所有人同意不得將文件中的內(nèi)容挪作商業(yè)或盈利用途。
- 5. 人人文庫網(wǎng)僅提供信息存儲空間,僅對用戶上傳內(nèi)容的表現(xiàn)方式做保護(hù)處理,對用戶上傳分享的文檔內(nèi)容本身不做任何修改或編輯,并不能對任何下載內(nèi)容負(fù)責(zé)。
- 6. 下載文件中如有侵權(quán)或不適當(dāng)內(nèi)容,請與我們聯(lián)系,我們立即糾正。
- 7. 本站不保證下載資源的準(zhǔn)確性、安全性和完整性, 同時(shí)也不承擔(dān)用戶因使用這些下載資源對自己和他人造成任何形式的傷害或損失。
最新文檔
- 母親節(jié)物業(yè)公司活動方案
- 武鳴傳統(tǒng)公益活動方案
- 溝通漏斗活動方案
- 汽車客戶俱樂部活動方案
- 檢察院聯(lián)合活動方案
- 汾陽東關(guān)中學(xué)活動方案
- 畢業(yè)拓展活動方案
- 2026屆高考英語常見形容詞轉(zhuǎn)名詞和例句+清單
- 四上語文《快樂讀書吧》必讀《古希臘神話故事》
- 愛國班會課件教案
- 2023年湖北省高中學(xué)業(yè)水平合格性考試語文試卷真題(答案詳解)
- 中國現(xiàn)代文學(xué)中的革命文學(xué)思潮
- 寧夏銀川外國語實(shí)驗(yàn)學(xué)校2024屆數(shù)學(xué)七下期末教學(xué)質(zhì)量檢測試題含解析
- 農(nóng)村集體聚餐食品安全管理培訓(xùn)課件
- 電子文件管理復(fù)習(xí)資料
- 水龍頭知識培訓(xùn)課件
- 四川省三臺縣教育和體育局為城區(qū)學(xué)校公開遴選51名部分緊缺學(xué)科教師筆試歷年高頻考點(diǎn)試題含答案帶詳解
- 道德與法治課程2022課標(biāo)解讀
- 從deepfakes深度偽造技術(shù)看AI安全
- 東莞職業(yè)技術(shù)學(xué)院輔導(dǎo)員考試題庫
- 哈弗H5汽車說明書
評論
0/150
提交評論