[286] | 1 | // This file is a part of Framsticks SDK. http://www.framsticks.com/ |
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| 2 | // Copyright (C) 1999-2015 Maciej Komosinski and Szymon Ulatowski. |
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| 3 | // See LICENSE.txt for details. |
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[109] | 4 | |
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| 5 | #include "neuroimpl.h" |
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| 6 | #include "neurofactory.h" |
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| 7 | #include <frams/util/rndutil.h> |
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| 8 | #include <common/nonstd_math.h> |
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[288] | 9 | #ifndef SDK_WITHOUT_FRAMS |
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[109] | 10 | #include <frams/simul/creature.h> |
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| 11 | #include <frams/mech/creatmechobj.h> |
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| 12 | #include <frams/simul/livegroups.h> |
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| 13 | #include <frams/simul/simul.h> |
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| 14 | #endif |
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| 15 | |
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| 16 | const int NeuroImpl::ENDDRAWING=-9999; |
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| 17 | const int NeuroImpl::MAXDRAWINGXY=0xffff; |
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| 18 | |
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| 19 | int NeuroNetImpl::mytags_id=0; |
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| 20 | |
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| 21 | ///////////////////////////////////////////////////////// |
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| 22 | |
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| 23 | #define FIELDSTRUCT NeuroNetConfig |
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| 24 | static ParamEntry nncfg_paramtab[]= |
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| 25 | { |
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| 26 | {"Creature: Neurons",1,3,"nnsim",}, |
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| 27 | {"randinit",1,0,"Random initialization","f 0 10 0.01",FIELD(randominit),"Allowed range for initializing all neuron states with uniform distribution random numbers and zero mean. Set to 0 for deterministic initialization."}, |
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| 28 | {"nnoise",1,0,"Noise","f 0 1 0",FIELD(nnoise),"Gaussian neural noise: a random value is added to each neural output in each simulation step. Set standard deviation here to add random noise, or 0 for deterministic simulation."}, |
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| 29 | {"touchrange",1,0,"T receptor range","f 0 100 1",FIELD(touchrange),}, |
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| 30 | {0,0,0,}, |
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| 31 | }; |
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| 32 | #undef FIELDSTRUCT |
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| 33 | |
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| 34 | NeuroNetConfig::NeuroNetConfig(NeuroFactory *fac) |
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| 35 | :par(nncfg_paramtab,this), |
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| 36 | randominit(0.01), |
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| 37 | nnoise(0), |
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| 38 | touchrange(1), |
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| 39 | factory(fac) |
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| 40 | {} |
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| 41 | |
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| 42 | ///////////////////////////////////////////////////////////////// |
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| 43 | |
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| 44 | NeuroNetImpl::NeuroNetImpl(Model& model, NeuroNetConfig& conf |
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| 45 | #ifdef NEURO_SIGNALS |
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| 46 | , ChannelSpace *ch |
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| 47 | #endif |
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| 48 | ) |
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| 49 | :mod(model),config(conf), |
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| 50 | isbuilt(1),errorcount(0) |
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| 51 | #ifdef NEURO_SIGNALS |
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| 52 | ,channels(ch) |
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| 53 | #endif |
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| 54 | { |
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| 55 | if (!mytags_id) mytags_id=mod.userdata.newID(); |
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| 56 | |
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| 57 | Neuro *n; |
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| 58 | NeuroImpl *ni; |
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| 59 | Joint *j; |
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| 60 | int i; |
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| 61 | DB(printf("makeNeuroNet(%p)\n",&mod)); |
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| 62 | |
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| 63 | minorder=3; maxorder=0; |
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| 64 | errorcount=0; |
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| 65 | |
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| 66 | for (i=0;j=mod.getJoint(i);i++) |
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| 67 | j->flags&=~(4+8); // todo: !!!neuroitems shouldn't use model fields!!! |
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| 68 | |
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| 69 | for (i=0;n=mod.getNeuro(i);i++) |
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| 70 | { |
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| 71 | ni=conf.factory->createNeuroImpl(n); |
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| 72 | n->userdata[mytags_id]=ni; |
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| 73 | if (!ni) { errorcount++; |
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| 74 | FMprintf("NeuroNetImpl","create",FMLV_WARN,"neuron #%d (%s) implementation not available", |
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[348] | 75 | i,n->getClassName().c_str()); |
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[109] | 76 | continue; } // implementation not available?! |
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| 77 | ni->owner=this; |
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| 78 | ni->neuro=n; |
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| 79 | ni->readParam(); |
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| 80 | } |
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| 81 | |
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| 82 | for (i=0;n=mod.getNeuro(i);i++) |
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| 83 | { |
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| 84 | n->state+=(rnd01-0.5)*config.randominit; |
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| 85 | ni=(NeuroImpl*)n->userdata[mytags_id]; |
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| 86 | if (!ni) continue; |
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| 87 | if (!ni->lateinit()) |
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| 88 | { ni->status=NeuroImpl::InitError; errorcount++; |
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| 89 | FMprintf("NeuroNetImpl","create",FMLV_WARN,"neuron #%d (%s) initialization failed", |
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[348] | 90 | i,n->getClassName().c_str()); |
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[109] | 91 | continue; } |
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| 92 | ni->status=NeuroImpl::InitOk; |
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| 93 | int order=ni->getSimOrder(); |
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| 94 | if (order<0) order=0; else if (order>2) order=2; |
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| 95 | if (order<minorder) minorder=order; |
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| 96 | if (order>maxorder) maxorder=order; |
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| 97 | neurons[order]+=ni; |
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| 98 | if (ni->getNeedPhysics()) |
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| 99 | neurons[3]+=ni; |
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| 100 | } |
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| 101 | cnode=mod.delmodel_list.add(STATRICKCALLBACK(this,&NeuroNetImpl::destroyNN,0)); |
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| 102 | } |
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| 103 | |
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| 104 | void NeuroNetImpl::destroyNN(CALLBACKARGS) |
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| 105 | { |
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| 106 | if (!isbuilt) return; |
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| 107 | DB(printf("destroyNeuroNet(%p)\n",&mod)); |
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| 108 | NeuroImpl *ni; |
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| 109 | Neuro *n; |
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| 110 | for (int i=0;n=mod.getNeuro(i);i++) |
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| 111 | { |
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| 112 | ni=(NeuroImpl*)n->userdata[mytags_id]; |
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| 113 | delete ni; |
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| 114 | n->userdata[mytags_id]=0; |
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| 115 | } |
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| 116 | mod.delmodel_list.remove(cnode); |
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| 117 | isbuilt=0; errorcount=0; |
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| 118 | delete this; |
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| 119 | } |
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| 120 | |
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| 121 | NeuroNetImpl::~NeuroNetImpl() |
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| 122 | { |
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| 123 | destroyNN(0,0); |
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| 124 | } |
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| 125 | |
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| 126 | void NeuroNetImpl::simulateNeuroNet() |
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| 127 | { |
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| 128 | NeuroImpl *ni; |
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| 129 | for (int order=minorder;order<=maxorder;order++) |
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| 130 | { |
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| 131 | int i; |
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| 132 | SList &nlist=neurons[order]; |
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| 133 | for (i=0;ni=(NeuroImpl*)nlist(i);i++) |
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| 134 | ni->go(); |
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| 135 | for (i=0;ni=(NeuroImpl*)nlist(i);i++) |
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| 136 | ni->commit(); |
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| 137 | } |
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| 138 | } |
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| 139 | |
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| 140 | void NeuroNetImpl::simulateNeuroPhysics() |
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| 141 | { |
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| 142 | NeuroImpl *ni; |
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| 143 | int i; |
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| 144 | SList &nlist=neurons[3]; |
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| 145 | for (i=0;ni=(NeuroImpl*)nlist(i);i++) |
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| 146 | ni->goPhysics(); |
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| 147 | } |
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| 148 | |
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| 149 | /////////////////////////////////////////////// |
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| 150 | |
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| 151 | void NeuroImpl::setChannelCount(int c) |
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| 152 | { |
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| 153 | if (c<1) c=1; |
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| 154 | if (c==channels) return; |
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| 155 | if (c<channels) {channels=c; chstate.trim(c-1); chnewstate.trim(c-1); return;} |
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| 156 | double s=getState(channels-1); |
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| 157 | chnewstate.setSize(c-1); |
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| 158 | chstate.setSize(c-1); |
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| 159 | for(int i=channels;i<c;i++) |
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| 160 | {chstate(i-1)=s; chnewstate(i-1)=s;} |
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| 161 | channels=c; |
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| 162 | } |
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| 163 | |
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| 164 | void NeuroImpl::setState(double st,int channel) |
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| 165 | { |
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| 166 | validateNeuroState(st); |
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| 167 | if (channel>=channels) channel=channels-1; |
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| 168 | if (channel<=0) {newstate=st;return;} |
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| 169 | chnewstate(channel-1)=st; |
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| 170 | } |
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| 171 | |
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| 172 | void NeuroImpl::setCurrentState(double st,int channel) |
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| 173 | { |
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| 174 | validateNeuroState(st); |
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| 175 | if (channel>=channels) channel=channels-1; |
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| 176 | if (channel<=0) {neuro->state=st; return;} |
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| 177 | chstate(channel-1)=st; |
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| 178 | } |
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| 179 | |
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| 180 | double NeuroImpl::getNewState(int channel) |
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| 181 | { |
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| 182 | if (neuro->flags&Neuro::HoldState) return getState(channel); |
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| 183 | if (channel>=channels) channel=channels-1; |
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| 184 | if (channel<=0) {return newstate;} |
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| 185 | return chnewstate(channel-1); |
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| 186 | } |
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| 187 | |
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| 188 | double NeuroImpl::getState(int channel) |
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| 189 | { |
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| 190 | if (channel>=channels) channel=channels-1; |
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| 191 | if (channel<=0) return neuro->state; |
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| 192 | return chstate(channel-1); |
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| 193 | } |
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| 194 | |
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| 195 | void NeuroImpl::commit() |
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| 196 | { |
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| 197 | if (!(neuro->flags&Neuro::HoldState)) |
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| 198 | { |
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| 199 | if (channels>1) |
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| 200 | chstate=chnewstate; |
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| 201 | neuro->state=newstate; |
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| 202 | if (owner->getConfig().nnoise>0.0) |
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| 203 | { |
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| 204 | neuro->state+=RndGen.GaussStd()*owner->getConfig().nnoise; |
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| 205 | if (channels>1) |
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| 206 | for(int i=0;i<chstate.size();i++) |
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| 207 | chstate(0)+=RndGen.GaussStd()*owner->getConfig().nnoise; |
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| 208 | } |
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| 209 | } |
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| 210 | } |
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| 211 | |
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| 212 | int NeuroImpl::getInputChannelCount(int i) |
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| 213 | { |
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| 214 | if ((i<0)||(i >= neuro->getInputCount())) return 1; |
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| 215 | Neuro *nu=neuro->getInput(i); |
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| 216 | NeuroImpl *ni=NeuroNetImpl::getImpl(nu); |
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| 217 | if (!ni) return 1; |
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| 218 | return ni->channels; |
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| 219 | } |
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| 220 | |
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| 221 | double NeuroImpl::getInputState(int i,int channel) |
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| 222 | { |
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| 223 | if ((i<0)||(i >= neuro->getInputCount())) return 0; |
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| 224 | Neuro *nu=neuro->getInput(i); |
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| 225 | if (channel<=0) return nu->state; |
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| 226 | NeuroImpl *ni=NeuroNetImpl::getImpl(nu); |
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| 227 | if (!ni) return nu->state; |
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| 228 | if (channel>=ni->channels) channel=ni->channels-1; |
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| 229 | if (!channel) return nu->state; |
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| 230 | return ni->chstate(channel-1); |
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| 231 | } |
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| 232 | |
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| 233 | double NeuroImpl::getWeightedInputState(int i, int channel) |
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| 234 | { |
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| 235 | if ((i<0)||(i >= neuro->getInputCount())) return 0; |
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| 236 | double w; |
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| 237 | Neuro *nu=neuro->getInput(i,w); |
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| 238 | if (channel<=0) return nu->state * w; |
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| 239 | NeuroImpl *ni=NeuroNetImpl::getImpl(nu); |
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| 240 | if (!ni) return nu->state * w; |
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| 241 | if (channel>=ni->channels) channel=ni->channels-1; |
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| 242 | if (!channel) return w * nu->state; |
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| 243 | return w * ni->chstate(channel-1); |
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| 244 | } |
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| 245 | |
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| 246 | double NeuroImpl::getInputSum(int startwith) |
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| 247 | { |
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| 248 | if (startwith<0) return 0; |
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| 249 | Neuro *inp; |
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| 250 | double sum=0.0; |
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| 251 | while(inp=neuro->getInput(startwith++)) |
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| 252 | sum+=inp->state; |
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| 253 | return sum; |
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| 254 | } |
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| 255 | |
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| 256 | double NeuroImpl::getWeightedInputSum(int startwith) |
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| 257 | { |
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| 258 | if (startwith<0) return 0; |
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| 259 | Neuro *inp; |
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| 260 | double sum=0.0; |
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| 261 | double w; |
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| 262 | while(inp=neuro->getInput(startwith++,w)) |
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| 263 | sum+=inp->state*w; |
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| 264 | return sum; |
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| 265 | } |
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| 266 | |
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| 267 | void NeuroImpl::readParam() |
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| 268 | { |
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| 269 | Param par; |
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| 270 | if (!paramentries) return; |
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| 271 | par.setParamTab(paramentries); |
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| 272 | par.select(this); |
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| 273 | par.setDefault(); |
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| 274 | int zero=0; |
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| 275 | par.load2(neuro->getClassParams(),zero); |
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| 276 | } |
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| 277 | |
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| 278 | Param& NeuroImpl::getStaticParam() |
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| 279 | { |
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| 280 | static Param p(neuroimpl_tab,0,"Neuro"); |
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| 281 | return p; |
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| 282 | } |
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| 283 | |
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| 284 | ///////////////////////////// |
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| 285 | |
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| 286 | #ifdef NEURO_SIGNALS |
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| 287 | #define NEUROIMPL_SIGNAL_PROPS 1 |
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| 288 | #else |
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| 289 | #define NEUROIMPL_SIGNAL_PROPS 0 |
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| 290 | #endif |
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| 291 | |
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| 292 | #define FIELDSTRUCT NeuroImpl |
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| 293 | ParamEntry neuroimpl_tab[]= |
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| 294 | { |
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| 295 | {"Neuro",1,27+NEUROIMPL_SIGNAL_PROPS,"Neuro","Live Neuron object."}, |
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| 296 | |
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| 297 | {"getInputState",0,0,"Get input signal","p f(d input)",PROCEDURE(p_get),}, |
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| 298 | {"getInputWeight",0,0,"Get input weight","p f(d input)",PROCEDURE(p_getweight),}, |
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| 299 | {"getWeightedInputState",0,0,"Get weighted input signal","p f(d input)",PROCEDURE(p_getw),}, |
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| 300 | {"getInputSum",0,0,"Get signal sum","p f(d input)",PROCEDURE(p_getsum),}, |
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| 301 | {"getWeightedInputSum",0,0,"Get weighted signal sum","p f(d input)",PROCEDURE(p_getwsum),"Uses any number of inputs starting with the specified input. getWeightedInputSum(0)=weightedInputSum"}, |
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[127] | 302 | {"getInputCount",0,PARAM_READONLY,"Get input count","d",GETONLY(count),}, |
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| 303 | {"inputSum",0,PARAM_READONLY,"Full signal sum","f",GETONLY(sum),}, |
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| 304 | {"weightedInputSum",0,PARAM_READONLY,"Full weighted signal sum","f",GETONLY(wsum),}, |
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[109] | 305 | {"getInputChannelCount",0,0,"Get channel count for input","p d(d input)",PROCEDURE(p_getchancount),}, |
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| 306 | {"getInputStateChannel",0,0,"Get input signal from channel","p f(d input,d channel)",PROCEDURE(p_getchan),}, |
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| 307 | {"getWeightedInputStateChannel",0,0,"Get weighted input signal from channel","p f(d input,d channel)",PROCEDURE(p_getwchan),}, |
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| 308 | {"state",0,0,"Neuron state (channel 0)","f",GETSET(state),"When read, returns the current neuron state.\nWhen written, sets the 'internal' neuron state that will become current in the next step.\nTypically you should use this field, and not currState."}, |
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| 309 | {"channelCount",0,0,"Number of output channels","d",GETSET(channels),}, |
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| 310 | {"getStateChannel",0,0,"Get state for channel","p f(d channel)",PROCEDURE(p_getstate),}, |
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| 311 | {"setStateChannel",0,0,"Set state for channel","p(d channel,f value)",PROCEDURE(p_setstate),}, |
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| 312 | {"hold",0,0,"Hold state","d 0 1",GETSET(hold),"\"Holding\" means keeping the neuron state as is, blocking the regular neuron operation. This is useful when your script needs to inject some control signals into the NN. Without \"holding\", live neurons would be constantly overwriting your changes, and the rest of the NN could see inconsistent states, depending on the connections. Setting hold=1 ensures the neuron state will be only set by you, and not by the neuron. The enforced signal value can be set using Neuro.currState before or after setting hold=1. Set hold=0 to resume normal operation.",}, |
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| 313 | {"currState",0,0,"Current neuron state (channel 0)","f",GETSET(cstate),"When read, it behaves just like the 'state' field.\nWhen written, changes the current neuron state immediately, which disturbs the regular synchronous NN operation.\nThis feature should only be used while controlling the neuron 'from outside' (like a neuro probe) and not in the neuron definition. See also: Neuro.hold",}, |
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| 314 | {"setCurrStateChannel",0,0,"Set current neuron state for channel","p(d channel,f value)",PROCEDURE(p_setcstate),"Analogous to \"currState\"."}, |
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[127] | 315 | {"position_x",0,PARAM_READONLY,"Position x","f",GETONLY(position_x),}, |
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| 316 | {"position_y",0,PARAM_READONLY,"Position y","f",GETONLY(position_y),}, |
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| 317 | {"position_z",0,PARAM_READONLY,"Position z","f",GETONLY(position_z),}, |
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| 318 | {"creature",0,PARAM_READONLY,"Gets owner creature","o Creature",GETONLY(creature),}, |
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| 319 | {"part",0,PARAM_READONLY,"The Part object where this neuron is located","o MechPart",GETONLY(part),}, |
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| 320 | {"joint",0,PARAM_READONLY,"The Joint object where this neuron is located","o MechJoint",GETONLY(joint),}, |
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| 321 | {"fields",0,PARAM_READONLY,"Custom neuron fields","o Fields",GETONLY(fields), |
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[109] | 322 | "Neurons can have different fields depending on their class. Script neurons have their fields defined using the \"prop:\" syntax. If you develop a custom neuron script you should use the Fields object for accessing your own neuron fields. The Neuro.fields property is meant for accessing the neuron fields from the outside script.\n" |
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| 323 | "Examples:\n" |
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| 324 | "var c=Populations.createFromString(\"X[N]\");\n" |
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| 325 | "Simulator.print(\"standard neuron inertia=\"+c.getNeuro(0).fields.in);\n" |
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| 326 | "c=Populations.createFromString(\"X[Nn,e:0.1]\");\n" |
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| 327 | "Simulator.print(\"noisy neuron error rate=\"+c.getNeuro(0).fields.e);\n" |
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| 328 | "\n" |
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| 329 | "The Interface object can be used to discover which fields are available for a certain neuron object:\n" |
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| 330 | "c=Populations.createFromString(\"X[N]\");\n" |
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| 331 | "var iobj=Interface.makeFrom(c.getNeuro(0).fields);\n" |
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| 332 | "var i;\n" |
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| 333 | "for(i=0;i<iobj.properties;i++)\n" |
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| 334 | " Simulator.print(iobj.getId(i)+\" (\"+iobj.getName(i)+\")\");",}, |
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[127] | 335 | {"def",0,PARAM_READONLY,"Neuron definition from which this live neuron was built","o NeuroDef",GETONLY(neurodef),}, |
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| 336 | {"classObject",0,PARAM_READONLY,"Neuron class for this neuron","o NeuroClass",GETONLY(classObject),}, |
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[109] | 337 | #ifdef NEURO_SIGNALS |
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| 338 | {"signals",0,PARAM_READONLY,"Signals","o NeuroSignals",FIELD(sigs_obj),}, |
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| 339 | #endif |
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| 340 | |
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| 341 | {0,0,0,}, |
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| 342 | }; |
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| 343 | #undef FIELDSTRUCT |
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| 344 | |
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| 345 | #ifdef NEURO_SIGNALS |
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| 346 | ParamEntry neurosignals_paramtab[]= |
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| 347 | { |
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| 348 | {"NeuroSignals",1,8,"NeuroSignals","Signals attached to a neuron.\nSee also: Signal, WorldSignals, CreatureSignals.\nscripts/light.neuro and scripts/seelight.neuro are simple custom neuron examples demonstrating how to send/receive signals between creatures.",}, |
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| 349 | |
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| 350 | #define FIELDSTRUCT NeuroSignals |
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| 351 | SIGNPAR_ADD(""), |
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| 352 | SIGNPAR_RECEIVE(""), |
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| 353 | SIGNPAR_RECEIVESET(""), |
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| 354 | SIGNPAR_RECEIVEFILTER(""), |
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| 355 | SIGNPAR_RECEIVESINGLE(""), |
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| 356 | #undef FIELDSTRUCT |
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| 357 | |
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| 358 | #define FIELDSTRUCT SignalSet |
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| 359 | SIGNSETPAR_GET, |
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| 360 | SIGNSETPAR_SIZE, |
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| 361 | SIGNSETPAR_CLEAR, |
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| 362 | #undef FIELDSTRUCT |
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| 363 | {0,0,0,}, |
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| 364 | }; |
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| 365 | |
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| 366 | Param& NeuroSignals::getStaticParam() |
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| 367 | { |
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| 368 | static Param p(neurosignals_paramtab,0); |
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| 369 | return p; |
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| 370 | } |
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| 371 | #endif |
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| 372 | |
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| 373 | #ifdef NEURO_SIGNALS |
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| 374 | class NeuroSigSource: public SigSource |
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| 375 | { |
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| 376 | protected: |
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| 377 | NeuroImpl* owner; |
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| 378 | public: |
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| 379 | NeuroSigSource(NeuroImpl *n,Creature *c):SigSource(0,c),owner(n) {} |
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| 380 | bool update(); |
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| 381 | }; |
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| 382 | |
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| 383 | bool NeuroSigSource::update() |
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| 384 | { |
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| 385 | Pt3D p; |
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| 386 | if (owner->getPosition(p)) |
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| 387 | { |
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| 388 | setLocation(p); |
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| 389 | return true; |
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| 390 | } |
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| 391 | return false; |
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| 392 | } |
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| 393 | |
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| 394 | Creature *NeuroSignals::getCreature() |
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| 395 | { |
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| 396 | if (!cr) |
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| 397 | { |
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| 398 | cr=owner->getCreature(); |
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| 399 | } |
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| 400 | return cr; |
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| 401 | } |
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| 402 | |
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| 403 | void NeuroSignals::p_add(PARAMPROCARGS) |
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| 404 | { |
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| 405 | SigSource *s=new NeuroSigSource(owner,getCreature()); |
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| 406 | if (owner->owner->channels) |
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| 407 | { |
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| 408 | SigChannel *ch=owner->owner->channels->getChannel(args->getString(),true); |
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| 409 | ch->addSource(s); |
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| 410 | } |
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| 411 | else |
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| 412 | SigChannel::dummy_channel.addSource(s); |
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| 413 | sigs+=s; |
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| 414 | s->setupObject(ret); |
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| 415 | } |
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| 416 | |
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| 417 | void NeuroSignals::p_receive(PARAMPROCARGS) |
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| 418 | { |
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| 419 | SigChannel *ch; Pt3D p; |
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| 420 | if (owner->owner->channels && (ch=owner->owner->channels->getChannel(args->getString(),false)) && owner->getPosition(p)) |
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| 421 | ret->setDouble(ch->receive(&p,getCreature())); |
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| 422 | else |
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| 423 | ret->setDouble(0); |
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| 424 | } |
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| 425 | |
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| 426 | void NeuroSignals::p_receiveFilter(PARAMPROCARGS) |
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| 427 | { |
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| 428 | SigChannel *ch; Pt3D p; |
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| 429 | if (owner->owner->channels && (ch=owner->owner->channels->getChannel(args[3].getString(),false)) && owner->getPosition(p)) |
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| 430 | ret->setDouble(ch->receive(&p,getCreature(),args[2].getDouble(),args[1].getDouble(),args[0].getDouble())); |
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| 431 | else |
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| 432 | ret->setDouble(0); |
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| 433 | } |
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| 434 | |
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| 435 | void NeuroSignals::p_receiveSet(PARAMPROCARGS) |
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| 436 | { |
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| 437 | SigChannel *ch; Pt3D p; |
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| 438 | SigVector *vec=new SigVector(); |
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| 439 | if (owner->owner->channels && (ch=owner->owner->channels->getChannel(args[1].getString(),false)) && owner->getPosition(p)) |
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| 440 | ch->receiveSet(vec,&p,getCreature(),args[0].getDouble()); |
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| 441 | ret->setObject(vec->makeObject()); |
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| 442 | } |
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| 443 | |
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| 444 | void NeuroSignals::p_receiveSingle(PARAMPROCARGS) |
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| 445 | { |
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| 446 | SigChannel *ch; Pt3D p; |
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| 447 | if (owner->owner->channels && (ch=owner->owner->channels->getChannel(args[1].getString(),false)) && owner->getPosition(p)) |
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| 448 | { |
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| 449 | SigSource *src=ch->receiveSingle(&p,getCreature(),args[0].getDouble(),0,1e99); |
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| 450 | if (src) |
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| 451 | { |
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| 452 | src->setupObject(ret); |
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| 453 | return; |
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| 454 | } |
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| 455 | } |
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| 456 | ret->setEmpty(); |
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| 457 | } |
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| 458 | #endif |
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| 459 | |
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| 460 | extern ParamEntry creature_paramtab[]; |
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| 461 | static Param creature_param(creature_paramtab,0); |
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| 462 | |
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| 463 | Creature* NeuroImpl::getCreature() |
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| 464 | { |
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[288] | 465 | #ifndef SDK_WITHOUT_FRAMS |
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[109] | 466 | CreatMechObject *cmo=(CreatMechObject *)neuro->owner->userdata[CreatMechObject::modeltags_id]; |
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| 467 | return cmo->creature; |
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| 468 | #else |
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| 469 | return 0; |
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| 470 | #endif |
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| 471 | } |
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| 472 | |
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| 473 | void NeuroImpl::get_creature(ExtValue *ret) |
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| 474 | { |
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[288] | 475 | #ifndef SDK_WITHOUT_FRAMS |
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[109] | 476 | ret->setObject(ExtObject(&creature_param,getCreature())); |
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| 477 | #endif |
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| 478 | } |
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| 479 | |
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| 480 | void NeuroImpl::get_part(ExtValue *ret) |
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| 481 | { |
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[288] | 482 | #ifndef SDK_WITHOUT_FRAMS |
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[109] | 483 | Part *pa; |
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| 484 | if (pa=neuro->getPart()) |
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| 485 | ret->setObject(ExtObject(&MechPart::getStaticParam(),((MechPart *)pa->userdata[CreatMechObject::modeltags_id]))); |
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| 486 | else |
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| 487 | ret->setEmpty(); |
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| 488 | #endif |
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| 489 | } |
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| 490 | |
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| 491 | void NeuroImpl::get_joint(ExtValue *ret) |
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| 492 | { |
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[288] | 493 | #ifndef SDK_WITHOUT_FRAMS |
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[109] | 494 | Joint *jo; |
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| 495 | if (jo=neuro->getJoint()) |
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| 496 | ret->setObject(ExtObject(&MechJoint::getStaticParam(),((MechJoint*)jo->userdata[CreatMechObject::modeltags_id]))); |
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| 497 | else |
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| 498 | ret->setEmpty(); |
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| 499 | #endif |
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| 500 | } |
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| 501 | |
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| 502 | bool NeuroImpl::getPosition(Pt3D &pos) |
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| 503 | { |
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[288] | 504 | #ifndef SDK_WITHOUT_FRAMS |
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[109] | 505 | Part *pa; Joint *jo; |
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| 506 | if (pa=neuro->getPart()) |
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| 507 | {pos=((MechPart *)pa->userdata[CreatMechObject::modeltags_id])->p; return true;} |
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| 508 | if (jo=neuro->getJoint()) |
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| 509 | { |
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| 510 | if (neuro->getClass()->getVisualHints() & NeuroClass::AtFirstPart) |
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| 511 | pos=((MechPart*)jo->part1->userdata[CreatMechObject::modeltags_id])->p; |
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| 512 | else if (neuro->getClass()->getVisualHints() & NeuroClass::AtSecondPart) |
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| 513 | pos=((MechPart*)jo->part2->userdata[CreatMechObject::modeltags_id])->p; |
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| 514 | else pos=(((MechPart*)jo->part1->userdata[CreatMechObject::modeltags_id])->p |
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| 515 | +((MechPart*)jo->part2->userdata[CreatMechObject::modeltags_id])->p)/2; |
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| 516 | return true; |
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| 517 | } |
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| 518 | #endif |
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| 519 | return false; |
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| 520 | } |
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| 521 | |
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| 522 | void NeuroImpl::get_position_x(ExtValue *ret) |
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| 523 | {Pt3D pos; if (getPosition(pos)) ret->setDouble(pos.x); else ret->setEmpty();} |
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| 524 | void NeuroImpl::get_position_y(ExtValue *ret) |
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| 525 | {Pt3D pos; if (getPosition(pos)) ret->setDouble(pos.y); else ret->setEmpty();} |
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| 526 | void NeuroImpl::get_position_z(ExtValue *ret) |
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| 527 | {Pt3D pos; if (getPosition(pos)) ret->setDouble(pos.z); else ret->setEmpty();} |
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| 528 | |
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| 529 | |
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| 530 | void NeuroImpl::createFieldsObject() |
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| 531 | { |
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| 532 | fields_param=new Param(paramentries?paramentries:(ParamEntry*)&empty_paramtab,this,"Fields"); |
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| 533 | fields_object=new ExtObject(fields_param); |
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| 534 | } |
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| 535 | |
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| 536 | void NeuroImpl::get_fields(ExtValue *ret) |
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| 537 | { |
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| 538 | if (!fields_object) |
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| 539 | createFieldsObject(); |
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| 540 | ret->setObject(*fields_object); |
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| 541 | } |
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| 542 | |
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| 543 | void NeuroImpl::get_neurodef(ExtValue *ret) |
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| 544 | { |
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| 545 | ret->setObject(ExtObject(&Neuro::getStaticParam(),neuro)); |
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| 546 | } |
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| 547 | |
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| 548 | void NeuroImpl::get_classObject(ExtValue *ret) |
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| 549 | { |
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[288] | 550 | #ifndef SDK_WITHOUT_FRAMS |
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[109] | 551 | NeuroClassExt::makeStaticObject(ret,neuroclass); |
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| 552 | #endif |
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| 553 | } |
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| 554 | |
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| 555 | NeuroImpl::~NeuroImpl() |
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| 556 | { |
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| 557 | if (fields_param) |
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| 558 | { |
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| 559 | delete fields_param; |
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| 560 | delete fields_object; |
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| 561 | } |
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| 562 | } |
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