[121] | 1 | // This file is a part of the Framsticks GDK. |
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| 2 | // Copyright (C) 2002-2014 Maciej Komosinski and Szymon Ulatowski. See LICENSE.txt for details. |
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[109] | 3 | // Refer to http://www.framsticks.com/ for further information. |
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| 4 | |
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| 5 | #include "neuroimpl-fuzzy.h" |
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| 6 | #include "neuroimpl-fuzzy-f0.h" |
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| 7 | #include <common/nonstd_stl.h> //min,max |
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| 8 | |
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| 9 | int NI_FuzzyNeuro::countOuts(const Model *m, const Neuro *fuzzy) |
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| 10 | { |
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| 11 | int outputs=0; |
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| 12 | for(int i=0;i<m->getNeuroCount();i++) |
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| 13 | for(int in=0;in<m->getNeuro(i)->getInputCount();in++) |
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| 14 | if (m->getNeuro(i)->getInput(in)==fuzzy) outputs++; |
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| 15 | return outputs; |
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| 16 | } |
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| 17 | |
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| 18 | int NI_FuzzyNeuro::lateinit() |
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| 19 | { |
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| 20 | int i, maxOutputNr; |
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| 21 | |
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| 22 | //check correctness of given parameters: string must not be null, sets&rules number > 0 |
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| 23 | if((fuzzySetsNr<1)||(rulesNr<1)||(fuzzySetString.len()==0)||(fuzzyRulesString.len()==0)) |
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| 24 | return 0; //error |
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| 25 | |
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| 26 | // this part contains transformation of fuzzy sets |
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| 27 | fuzzySets = new double[4*fuzzySetsNr]; //because every fuzzy set consist of 4 numbers |
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| 28 | // converts fuzzy string from f0 to table of fuzzy numbers type 'double' |
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| 29 | // (fill created space with numbers taken from string) |
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| 30 | // also checks whether number of fuzzy sets in the string equals declared in the definition |
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| 31 | if (FuzzyF0String::convertStrToSets(fuzzySetString, fuzzySets, fuzzySetsNr) != 0) |
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| 32 | return 0; //error |
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| 33 | |
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| 34 | // this part contains transformation of fuzzy rules and defuzzyfication parameters |
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| 35 | rulesDef = new int[2*rulesNr]; //for each rule remembers number of inputs and outputs |
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| 36 | //check correctness of string and fill in the rulesDef |
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| 37 | if (FuzzyF0String::countInputsOutputs(fuzzyRulesString, rulesDef, rulesNr) == 0) |
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| 38 | { |
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| 39 | defuzzParam = new double[rulesNr]; // parameters used in defuzyfication process |
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| 40 | // create space for rules according to rulesDef |
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| 41 | rules = new int*[rulesNr]; //list of rules... |
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| 42 | for (i=0; i<rulesNr; i++) //...that contains rules body |
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| 43 | { |
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| 44 | rules[i] = new int[2*(rulesDef[2*i]+rulesDef[2*i+1])]; //each rule can have different number of inputs and outputs |
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| 45 | defuzzParam[i] = 0; //should be done a little bit earlier, but why do not use this loop? |
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| 46 | } |
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| 47 | // fill created space with numbers taken from string |
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| 48 | if (FuzzyF0String::convertStrToRules(fuzzyRulesString, rulesDef, rules, fuzzySetsNr, rulesNr, maxOutputNr) != 0) |
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| 49 | return 0; //error |
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| 50 | } |
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| 51 | else |
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| 52 | return 0; //error |
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| 53 | |
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| 54 | setChannelCount(countOuts(neuro->owner, neuro)); |
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| 55 | return 1; //success |
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| 56 | } |
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| 57 | |
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| 58 | NI_FuzzyNeuro::~NI_FuzzyNeuro() |
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| 59 | { |
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| 60 | if(rules) //delete rows and columns of **rules |
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| 61 | { |
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| 62 | for (int i=0; i<rulesNr; i++) SAFEDELETEARRAY(rules[i]) |
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| 63 | SAFEDELETEARRAY(rules) |
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| 64 | } |
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| 65 | SAFEDELETEARRAY(defuzzParam) |
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| 66 | SAFEDELETEARRAY(rulesDef) |
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| 67 | SAFEDELETEARRAY(fuzzySets) |
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| 68 | } |
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| 69 | |
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| 70 | int NI_FuzzyNeuro::GetFuzzySetParam(int set_nr, double &left, double &midleft, double &midright, double &right) |
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| 71 | { |
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| 72 | if ( (set_nr>=0) && (set_nr<fuzzySetsNr) ) |
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| 73 | { |
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| 74 | left = fuzzySets[4*set_nr]; |
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| 75 | midleft = fuzzySets[4*set_nr+1]; |
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| 76 | midright = fuzzySets[4*set_nr+2]; |
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| 77 | right = fuzzySets[4*set_nr+3]; |
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| 78 | return 0; |
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| 79 | } |
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| 80 | else |
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| 81 | return 1; |
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[112] | 82 | } |
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[109] | 83 | |
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| 84 | /** Function conduct fuzzyfication of inputs and calculates - according to rules - crisp multi-channel output */ |
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| 85 | void NI_FuzzyNeuro::go() |
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| 86 | { |
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| 87 | if (Fuzzyfication()!=0) |
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| 88 | return; |
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| 89 | if (Defuzzyfication()!=0) |
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| 90 | return; |
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[112] | 91 | } |
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[109] | 92 | |
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| 93 | /** |
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| 94 | * Function conduct fuzzyfication process - calculates minimum membership function (of every input) for each rule, |
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| 95 | * and writes results into defuzzParam - variable that contains data necessary for defuzzyfication |
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| 96 | */ |
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| 97 | int NI_FuzzyNeuro::Fuzzyfication() |
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| 98 | { |
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| 99 | int i, j, nrIn, inputNr, nrFuzzySet; |
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| 100 | double minimumCut; // actual minimal level of cut (= min. membership function) |
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| 101 | |
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| 102 | // sets defuzzyfication parameters for each rule: |
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| 103 | for (i=0; i<rulesNr; i++) |
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| 104 | { |
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| 105 | nrIn = rulesDef[2*i]; // nr of inputs in rule #i |
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| 106 | minimumCut = 2; // the highest value of membership function is 1.0, so this value will definitely change |
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| 107 | for (j=0; (j<nrIn)&&(minimumCut>0); j++) //minimumCut can not be <0, so if =0 then stop calculations |
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| 108 | { |
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| 109 | nrFuzzySet = rules[i][j*2 + 1]; // j*2 moves pointer through each output, +1 moves to nr of fuzzy set |
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| 110 | inputNr = rules[i][j*2]; // as above but gives input number |
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| 111 | minimumCut = min( minimumCut, TrapeziumFuzz(nrFuzzySet, getWeightedInputState(inputNr))); // value of membership function for this input and given fuzzy set |
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| 112 | } |
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| 113 | if ( (minimumCut>1) || (minimumCut<0) ) |
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| 114 | return 1; |
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| 115 | defuzzParam[i] = minimumCut; |
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| 116 | } |
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| 117 | return 0; |
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[112] | 118 | } |
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[109] | 119 | |
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| 120 | /** |
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| 121 | * Function calculates value of the membership function of the set given by wchich_fuzzy_set for given crisp value input_val |
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| 122 | * In other words, this function fuzzyficates given crisp value with given fuzzy set, returning it's membership function |
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| 123 | * @param which_fuzzy_set - 0 < number of set < fuzzySetsNr |
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| 124 | * @param input_val - crisp value of input in range <-1; 1> |
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| 125 | * @return value of membership function (of given input for given set) in range <0;1> or, if error occur, negative value |
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| 126 | */ |
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| 127 | double NI_FuzzyNeuro::TrapeziumFuzz(int which_fuzzy_set, double input_val) |
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| 128 | { |
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| 129 | double range=0, left=0, midleft=0, midright=0, right=0; |
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| 130 | |
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| 131 | if ( (which_fuzzy_set < 0) || (which_fuzzy_set > fuzzySetsNr) ) |
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| 132 | return -2; |
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| 133 | if ( (input_val < -1) || (input_val > 1) ) |
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| 134 | return -3; |
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| 135 | |
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| 136 | if (GetFuzzySetParam(which_fuzzy_set, left, midleft, midright, right) != 0) |
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| 137 | return -4; |
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| 138 | |
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| 139 | if ( (input_val < left) || (input_val > right) ) // greather than right value |
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| 140 | return 0; |
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| 141 | else if ( (input_val >= midleft) && (input_val <= midright) ) // in the core of fuzzy set |
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| 142 | return 1; |
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| 143 | else if ( (input_val >= left) && (input_val < midleft) ) // at the left side of trapezium |
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| 144 | { |
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| 145 | range = fabs(midleft - left); |
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| 146 | return fabs(input_val-left)/((range>0)?range:1); // quotient of distance between input and extreme left point of trapezium and range of rising side, or 1 |
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| 147 | } |
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| 148 | else if ( (input_val > midright) && (input_val <= right) ) // at the right side of trapezium |
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| 149 | { |
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| 150 | range = fabs(right - midright); |
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| 151 | return fabs(right-input_val)/((range>0)?range:1); // quotient of distance between input and extreme right point of trapezium and range of falling side, or 1 |
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| 152 | }; |
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| 153 | |
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| 154 | // should not occur |
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| 155 | return 0; |
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| 156 | |
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[112] | 157 | } |
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[109] | 158 | |
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| 159 | /** |
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| 160 | * Function conducts defuzzyfication process: multi-channel output values are calculates with singleton method (method of high). |
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| 161 | * For each rules, all outputs fuzzy sets are taken and cut at 'cut-level', that is at minumum membership function (of current rule). |
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| 162 | * For all neuro pseudo-outputs, answer is calculated according to prior computations. |
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| 163 | * In fact, there is one output with multi-channel answer and appropriate values are given to right channels. |
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| 164 | */ |
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| 165 | int NI_FuzzyNeuro::Defuzzyfication() |
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| 166 | { |
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| 167 | int i, j, nrIn, nrOut, out, set, outputsNr; |
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| 168 | double *numerators, *denominators, midleft, midright, unimp; |
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| 169 | |
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| 170 | outputsNr = getChannelCount(); |
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| 171 | |
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| 172 | numerators = new double[outputsNr]; |
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| 173 | denominators = new double[outputsNr]; |
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| 174 | |
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| 175 | for(i=0;i<outputsNr;i++) numerators[i] = denominators[i] = 0; |
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| 176 | |
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| 177 | // for each rule... |
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| 178 | for (i=0; i<rulesNr; i++) |
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| 179 | { |
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| 180 | nrIn = rulesDef[2*i]; // number of inputs in rule #i |
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| 181 | nrOut = rulesDef[2*i + 1]; // number of outputs in rule #i |
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| 182 | // ...calculate each output's product of middle fuzzy set value and minimum membership function (numerator) and sum of minimum membership function (denominator) |
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| 183 | for (j=0; j<nrOut; j++) |
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| 184 | { |
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| 185 | out = rules[i][2*nrIn + 2*j]; //number of j-output |
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| 186 | set = rules[i][2*nrIn + 2*j + 1]; //number of fuzzy set attributed to j-output |
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| 187 | if (GetFuzzySetParam(set, unimp, midleft, midright, unimp) != 0) // gets range of core of given fuzzy set |
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| 188 | { SAFEDELETEARRAY(denominators) SAFEDELETEARRAY(numerators) return 1; } |
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| 189 | //defuzzParam[i] = minimum membership function for rule #i - calculated in fuzzyfication block |
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| 190 | // defuzzyfication method of singletons (high): (fuzzy set modal value) * (minimum membership value) |
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| 191 | numerators[out] += ((midleft + midright)/2.0) * defuzzParam[i]; |
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| 192 | denominators[out] += defuzzParam[i]; |
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| 193 | } |
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| 194 | } |
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| 195 | |
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| 196 | for (i=0; i<outputsNr; i++) |
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| 197 | { |
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| 198 | if (denominators[i] == 0) |
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| 199 | setState(0, i); |
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| 200 | else |
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| 201 | setState(numerators[i]/denominators[i], i); |
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| 202 | } |
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| 203 | |
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| 204 | SAFEDELETEARRAY(denominators) |
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| 205 | SAFEDELETEARRAY(numerators) |
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| 206 | |
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| 207 | return 0; |
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[112] | 208 | } |
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[109] | 209 | |
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