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一个简单实用的遗传算法c程序.doc

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一个简单实用的遗传算法c程序(转载) c++ 2009-07-28 23:09:03 阅读418 评论0 字号:大中小 这是一个非常简单的遗传算法源代码,是由Denis Cormier (North Carolina State University)开发的,Sita S.Raghavan (University of North Carolina at Charlotte)修正。代码保证尽可能少,实际上也不必查错。对一特定的应用修正此代码,用户只需改变常数的定义并且定义“评价函数”即可。注意代码的设计是求最大值,其中的目标函数只能取正值;且函数值和个体的适应值之间没有区别。该系统使用比率选择、精华模型、单点杂交和均匀变异。如果用Gaussian变异替换均匀变异,可能得到更好的效果。代码没有任何图形,甚至也没有屏幕输出,主要是保证在平台之间的高可移植性。读者可以从ftp.uncc.edu,目录 coe/evol中的文件prog.c中获得。要求输入的文件应该命名为‘gadata.txt’;系统产生的输出文件为‘galog.txt’。输入的文件由几行组成:数目对应于变量数。且每一行提供次序——对应于变量的上下界。如第一行为第一个变量提供上下界,第二行为第二个变量提供上下界,等等。 /**************************************************************************/ /* This is a simple genetic algorithm implementation where the */ /* evaluation function takes positive values only and the */ /* fitness of an individual is the same as the value of the */ /* objective function */ /**************************************************************************/ #include <stdio.h> #include <stdlib.h> #include <math.h> /* Change any of these parameters to match your needs */ #define POPSIZE 50 /* population size */ #define MAXGENS 1000 /* max. number of generations */ #define NVARS 3 /* no. of problem variables */ #define PXOVER 0.8 /* probability of crossover */ #define PMUTATION 0.15 /* probability of mutation */ #define TRUE 1 #define FALSE 0 int generation; /* current generation no. */ int cur_best; /* best individual */ FILE *galog; /* an output file */ struct genotype /* genotype (GT), a member of the population */ { double gene[NVARS]; /* a string of variables一个变量字符串 */ double fitness; /* GT's fitness适应度 */ double upper[NVARS]; /* GT's variables upper bound 变量的上限*/ double lower[NVARS]; /* GT's variables lower bound变量的下限 */ double rfitness; /* relative fitness 相对适应度*/ double cfitness; /* cumulative fitness 累计适应度*/ }; struct genotype population[POPSIZE+1]; /* population */ struct genotype newpopulation[POPSIZE+1]; /* new population; */ /* replaces the */ /* old generation */ /* Declaration of procedures used by this genetic algorithm */ void initialize(void); double randval(double, double); void evaluate(void); void keep_the_best(void); void elitist(void); void select(void); void crossover(void); void Xover(int,int); void swap(double *, double *); void mutate(void); void report(void); /***************************************************************/ /* Initialization function: Initializes the values of genes */ /* within the variables bounds. It also initializes (to zero) */ /* all fitness values for each member of the population. It */ /* reads upper and lower bounds of each variable from the */ /* input file `gadata.txt'. It randomly generates values */ /* between these bounds for each gene of each genotype in the */ /* population. The format of the input file `gadata.txt' is */ /* var1_lower_bound var1_upper bound */ /* var2_lower_bound var2_upper bound ... */ /***************************************************************/ void initialize(void) { FILE *infile; int i, j; double lbound, ubound; if ((infile = fopen("gadata.txt","r"))==NULL) { fprintf(galog,"\nCannot open input file!\n"); exit(1); } /* initialize variables within the bounds */ for (i = 0; i < NVARS; i++) { fscanf(infile, "%lf",&lbound); fscanf(infile, "%lf",&ubound); for (j = 0; j < POPSIZE; j++) { population[j].fitness = 0; population[j].rfitness = 0; population[j].cfitness = 0; population[j].lower[i] = lbound; population[j].upper[i]= ubound; population[j].gene[i] = randval(population[j].lower[i], population[j].upper[i]); } } fclose(infile); } /***********************************************************/ /* Random value generator: Generates a value within bounds */ /***********************************************************/ double randval(double low, double high) { double val; val = ((double)(rand()%1000)/1000.0)*(high - low) + low; return(val); } /*************************************************************/ /* Evaluation function: This takes a user defined function. */ /* Each time this is changed, the code has to be recompiled. */ /* The current function is: x[1]^2-x[1]*x[2]+x[3] */ /*************************************************************/ void evaluate(void) { int mem; int i; double x[NVARS+1]; for (mem = 0; mem < POPSIZE; mem++) { for (i = 0; i < NVARS; i++) x[i+1] = population[mem].gene[i]; population[mem].fitness = (x[1]*x[1]) - (x[1]*x[2]) + x[3]; } } /***************************************************************/ /* Keep_the_best function: This function keeps track of the */ /* best member of the population. Note that the last entry in */ /* the array Population holds a copy of the best individual */ /***************************************************************/ void keep_the_best() { int mem; int i; cur_best = 0; /* stores the index of the best individual */ for (mem = 0; mem < POPSIZE; mem++) { if (population[mem].fitness > population[POPSIZE].fitness) { cur_best = mem; population[POPSIZE].fitness = population[mem].fitness; } } /* once the best member in the population is found, copy the genes */ for (i = 0; i < NVARS; i++) population[POPSIZE].gene[i] = population[cur_best].gene[i]; } /****************************************************************/ /* Elitist function: The best member of the previous generation */ /* is stored as the last in the array. If the best member of */ /* the current generation is worse then the best member of the */ /* previous generation, the latter one would replace the worst */ /* member of the current population */ /****************************************************************/ void elitist() { int i; double best, worst; /* best and worst fitness values */ int best_mem, worst_mem; /* indexes of the best and worst member */ best = population[0].fitness; worst = population[0].fitness; for (i = 0; i < POPSIZE - 1; ++i) { if(population[i].fitness > population[i+1].fitness) { if (population[i].fitness >= best) { best = population[i].fitness; best_mem = i; } if (population[i+1].fitness <= worst) { worst = population[i+1].fitness; worst_mem = i + 1; } } else { if (population[i].fitness <= worst) { worst = population[i].fitness; worst_mem = i; } if (population[i+1].fitness >= best) { best = population[i+1].fitness; best_mem = i + 1; } } } /* if best individual from the new population is better than */ /* the best individual from the previous population, then */ /* copy the best from the new population; else replace the */ /* worst individual from the current population with the */ /* best one from the previous generation */ if (best >= population[POPSIZE].fitness) { for (i = 0; i < NVARS; i++) population[POPSIZE].gene[i] = population[best_mem].gene[i]; population[POPSIZE].fitness = population[best_mem].fitness; } else { for (i = 0; i < NVARS; i++) population[worst_mem].gene[i] = population[POPSIZE].gene[i]; population[worst_mem].fitness = population[POPSIZE].fitness; } } /**************************************************************/ /* Selection function: Standard proportional selection for */ /* maximization problems incorporating elitist model - makes */ /* sure that the best member survives */ /**************************************************************/ void select(void) { int mem, i, j, k; double sum = 0; double p; /* find total fitness of the population */ for (mem = 0; mem < POPSIZE; mem++) { sum += population[mem].fitness; } /* calculate relative fitness */ for (mem = 0; mem < POPSIZE; mem++) { population[mem].rfitness = population[mem].fitness/sum; } population[0].cfitness = population[0].rfitness; /* calculate cumulative fitness */ for (mem = 1; mem < POPSIZE; mem++) { population[mem].cfitness = population[mem-1].cfitness + population[mem].rfitness; } /* finally select survivors using cumulative fitness. */ for (i = 0; i < POPSIZE; i++) { p = rand()%1000/1000.0; if (p < population[0].cfitness) newpopulation[i] = population[0]; else { for (j = 0; j < POPSIZE;j++) if (p >= population[j].cfitness && p<population[j+1].cfitness) newpopulation[i] = population[j+1]; } } /* once a new population is created, copy it back */ for (i = 0; i < POPSIZE; i++) population[i] = newpopulation[i]; } /***************************************************************/ /* Crossover selection: selects two parents that take part in */ /* the crossover. Implements a single point crossover */ /***************************************************************/ void crossover(void) { int i, mem, one; int first = 0; /* count of the number of members chosen */ double x; for (mem = 0; mem < POPSIZE; ++mem) { x = rand()%1000/1000.0; if (x < PXOVER) { ++first; if (first % 2 == 0) Xover(one, mem); else one = mem; } } } /**************************************************************/ /* Crossover: performs crossover of the two selected parents. */ /**************************************************************/ void Xover(int one, int two) { int i; int point; /* crossover point */ /* select crossover point */ if(NVARS > 1) { if(NVARS == 2) point = 1; else point = (rand() % (NVARS - 1)) + 1; for (i = 0; i < point; i++) swap(&population[one].gene[i], &population[two].gene[i]); } } /*************************************************************/ /* Swap: A swap procedure that helps in swapping 2 variables */ /*************************************************************/ void swap(double *x, double *y) { double temp; temp = *x; *x = *y; *y = temp; } /**************************************************************/ /* Mutation: Random uniform mutation. A variable selected for */ /* mutation is replaced by a random value between lower and */ /* upper bounds of this variable */ /**************************************************************/ void mutate(void) { int i, j; double lbound, hbound; double x; for (i = 0; i < POPSIZE; i++) for (j = 0; j < NVARS; j++) { x = rand()%1000/1000.0; if (x < PMUTATION) { /* find the bounds on the variable to be mutated */ lbound = population[i].lower[j]; hbound = population[i].upper[j]; population[i].gene[j] = randval(lbound, hbound); } } } /***************************************************************/ /* Report function: Reports progress of the simulation. Data */ /* dumped into the output file are separated by commas */ /***************************************************************/ void report(void) { int i; double best_val; /* best population fitness */ double avg; /* avg population fitness */ double stddev; /* std. deviation of population fitness */ double sum_square; /* sum of square for std. calc */ double square_sum; /* square of sum for std. calc */ double sum; /* total population fitness */ sum = 0.0; sum_square = 0.0; for (i = 0; i < POPSIZE; i++) { sum += population[i].fitness; sum_square += population[i].fitness * population[i].fitness; } avg = sum/(double)POPSIZE; square_sum = avg * avg * POPSIZE; stddev = sqrt((sum_square - square_sum)/(POPSIZE - 1)); best_val = population[POPSIZE].fitness; fprintf(galog, "\n%5d, %6.3f, %6.3f, %6.3f \n\n", generation, best_val, avg, stddev); } /**************************************************************/ /* Main function: Each generation involves selecting the best */ /* members, performing crossover & mutation and then */ /* evaluating the resulting population, until the terminating */ /* condition is satisfied */ /**************************************************************/ void main(void) { int i; if ((galog = fopen("galog.txt","w"))==NULL) { exit(1); } generation = 0; fprintf(galog, "\n generation best average standard \n"); fprintf(galog, " number value fitness deviation \n"); initialize(); evaluate(); keep_the_best(); while(generation<MAXGENS) { generation++; select(); crossover(); mutate(); report(); evaluate(); elitist(); } fprintf(galog,"\n\n Simulation completed\n"); fprintf(galog,"\n Best member: \n"); for (i = 0; i < NVARS; i++) { fprintf (galog,"\n var(%d) = %3.3f",i,population[POPSIZE].gene[i]); } fprintf(galog,"\n\n Best fitness = %3.3f",population[POPSIZE].fitness); fclose(galog); printf("Success\n"); } /***************************************************************/ 链接库文件?这个简单 一般的第三方库文件有2种提供方式 1.lib静态库,这样必须在工程设置里面添加。比如可以在项目的“属性”配置对话框里面的,连接器-》输入。选择“附加依赖项”,添加进去那个lib文件,(注意最好是将此lib拷入工程目录下,或者设置“附加包含目录”。或添加#pragma comment(lib,“my.lib")的方式设置库依赖 2.dll动态库,有2种添加方法,一种是静态的,一种是动态地。动态的就是使用 LoadLibrary, GetProcAddress, FreeLibrary,这3个函数,一个是装入dll库,一个是取库中导出函数地址,最后是用完了释放库。用法比较简单,看MSDN的说明就会了。静态的装入必须要提供dll的lib文件(类似于上面的lib静态库,但这个lib只是dll的导出头,具体的功能实现还是在dll中,类似于h文件),如果未提供,可以使用impl
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