source: liacs/ai/graaf/ga.cpp@ 144

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1/* File : ga.cpp
2 * Authors : Rick van der Zwet & Thomas Steenbergen
3 * S-number : 0433373 / 0117544
4 * Version : $Id: ga.cpp 612 2008-05-13 22:25:56Z rick $
5 * Licence : BSD
6 * Description : 4th Assignment AI 2008: Genetic Algoithm
7 */
8
9#include <iostream>
10#include <climits>
11#include <ctime>
12#include <cstdlib>
13#include <fstream>
14#include <math.h>
15#include <string>
16#include <sysexits.h>
17
18using namespace std;
19
20/*NOTE: Graph can only have this many nodes */
21#define MAX_NODES 50
22#define MAX_ARCHS 250
23
24/*NOTE: Maximum numbers of newly generated children */
25#define MAX_POP 20
26
27/*NOTE: The chance to which we mutate a given point */
28#define MUT_LEV 50
29
30/*NOTE: The maximum number of generations that the algorithm runs */
31#define DEFAULT_LOOPS 100000
32
33#define DEFAULT_FILENAME "input.txt"
34#define MAX_COORDINATES 1000
35
36
37struct arch {
38 int a, b;
39 double distance;
40
41 arch() {
42 a = -1;
43 b = -1;
44 distance = -1;
45 }
46};
47
48/* Coordinate of point in graph */
49struct point {
50 int x, y; /* X,Y coordinates */
51
52 point(){
53 x = -1;
54 y = -1;
55 }
56};
57
58/* Comparision between 2 points */
59bool operator==(point &a, point &b) {
60 if ( (a.x == b.x) && (a.y == b.y))
61 return true;
62 else
63 return false;
64}
65
66struct graph {
67 point nodes[MAX_NODES]; /* Location of nodes */
68 int fitness; /* Overall fitness graph */
69 int fitnessDistance;
70 int fitnessIntersection;
71
72 graph() {
73 fitness = -1;
74 fitnessDistance = -1;
75 fitnessIntersection = -1;
76 }
77};
78
79/*
80 * BEGIN Global variables
81 */
82
83arch archs[MAX_ARCHS]; /* arch listing in graph */
84int num_archs = -1; /* Number of archs in graph */
85int num_nodes = -1; /* Number of nodes in graph */
86int max_cord = -1; /* Domain e.g. maximum coord of X, Y*/
87int lon_con = -1; /* Longest connection of two points */
88int distances [MAX_NODES][MAX_NODES]; /* Distances between node i and j */
89graph population[MAX_POP]; /* Graph list */
90
91/*
92 * END Global variables
93 */
94
95
96
97/* Calculates the distance between two points
98 * Distance (A,B) = d((x1,y1),(x2,y2))=SQRT((x1-x2)^2+(y1-y2)^2)
99 */
100double calcDistance(point A, point B) {
101 double dist = 0;
102 dist = sqrt(pow((A.x - B.x),2) + pow((A.y - B.y),2));
103 return dist;
104}
105
106/* How well is the scaling of the branches ofthis graph weel
107 * versus the input graph. The more it deviates of the orginal the higher
108 * the fitness number.
109 */
110int fitnessDistance(graph& A) {
111 int i,j;
112 int org_dist = 0; // distance between 2 points in input graph
113 double new_dist = 0; // distance between 2 points in population graph
114 double diff_dist = 0; // absolute difference
115 int tmp_fitness = 0;
116
117 for (i=0; i< num_nodes; i++) {
118 for (j=i+1; j< num_nodes; j++) {
119 org_dist = distances[i][j];
120 if (org_dist != 0){
121 new_dist = calcDistance(A.nodes[i],A.nodes[j]);
122 diff_dist = fabs(new_dist - org_dist);
123 tmp_fitness += diff_dist;
124 }
125 }
126 }
127
128 return(tmp_fitness);
129}
130
131/* Output point itself */
132void printPoint(point &A) {
133 cerr << A.x << "," << A.y;
134}
135
136/* Calculates whether the line A-B crosses with line C-D and wether in
137 * domain if so a it returns the point of intersection else return point
138 * [-1,-1] All explained in:
139 * http://www.topcoder.com/tc?module=Static&d1=tutorials&d2=geometry2
140 * http://en.wikipedia.org/wiki/Line-line_intersection
141 */
142bool calcIntersection(point A, point B, point C, point D, point& tmp) {
143 double K, L, M;
144 double S, T, R;
145 double det;
146 bool result;
147 double distance_a_b;
148
149 // rewrite line A-B into formula form: Kx + Ly = M
150 K = B.y - A.y;
151 L = A.x - B.x;
152 M = K * A.x + L * A.y;
153
154 // rewrite line C-D into formula form: Sx + Ty = R
155 S = D.y - C.y;
156 T = C.x - D.x;
157 R = S * C.x + T * C.y;
158
159 // Now we calculate the intersection between the lines
160 det = K*T - S*L;
161
162 if(det == 0){
163 /* Lines A-B & C-D are parallel, checking wether they are on top of
164 * each other
165 */
166 tmp.x = -1;
167 tmp.y = -1;
168 result = false;
169
170 distance_a_b = calcDistance(A,B);
171 if ((calcDistance(A,C) + calcDistance(B,C) == distance_a_b)) {
172 tmp.x = C.x;
173 tmp.y = C.y;
174 result = false;
175 } else if ((calcDistance(A,D) + calcDistance(B,D) == distance_a_b)) {
176 tmp.x = D.x;
177 tmp.y = D.y;
178 result = false;
179 }
180
181 } else {
182 tmp.x = (T*M - L*R)/det;
183 tmp.y = (K*R - S*M)/det;
184 result = true;
185
186 /* Verify intersection in domain */
187 if (tmp.x < 0 || tmp.x >= max_cord || tmp.y < 0 || tmp.y >= max_cord) {
188 result = false;
189 }
190
191 /* Verify intersection not a actual end point */
192 if ((tmp == A || tmp == B) && (tmp == C || tmp == D)) {
193 result = false;
194 }
195 }
196
197 return result;
198}
199
200bool calcIntersection(point A, point B, point C, point D) {
201 point tmp;
202 return calcIntersection(A, B, C, D, tmp);
203}
204
205/*
206 * The number of intersections a graph. How more intersections the higher
207 * the fitness number.
208 */
209int fitnessIntersection(graph& A) {
210 int i,j;
211 int tmp_fitness = 0;
212
213 for (i = 0; i < num_archs; i++) {
214 for (j = i + 1; j < num_archs; j++) {
215 if ( calcIntersection(A.nodes[archs[i].a],
216 A.nodes[archs[i].b],
217 A.nodes[archs[j].a],
218 A.nodes[archs[j].b])) {
219 tmp_fitness++;
220 }
221 }
222 }
223 return(tmp_fitness);
224}
225
226
227/* Calculates the fitness of every graph in the population */
228void calcFitness(graph& A) {
229 A.fitnessIntersection = fitnessIntersection(A);
230 A.fitnessDistance = fitnessDistance(A);
231 A.fitness = A.fitnessDistance + A.fitnessIntersection;
232}
233
234void crossover(graph& A, graph& B){
235 /* XXX: Find clever way to combine the different graphs to be able
236 * to make new ones. Three to expiriment with:
237 * - uniform crossover
238 * - single-point crossover
239 * - partially mapped crossover
240 * All explained in: http://www.liacs.nl/~kosters/AI/genetisch.pdf
241 */
242
243}
244
245// Combine two graphs using single point crossover
246// A single random point is chosen in a graph's node
247// array dividing it into two halves e.g. the head and the tail.
248// Then heads are swapped between parents A & B
249void crossSingle(graph& A, graph& B){
250 point tmp;
251 unsigned int cut;
252 unsigned int i;
253
254 cut = rand() % num_nodes;
255 for (i=0; i< cut;i++) {
256 tmp = A.nodes[i];
257 A.nodes[i] = B.nodes[i];
258 B.nodes[i] = tmp;
259 }
260}
261
262// Combine two graphs using uniform crossover
263// The points are swapped with a fixed probability of 0.5.
264void crossUniform(graph& A, graph& B){
265 point tmp;
266 int i, rnd;
267
268 for (i=0; i< num_nodes;i++) {
269 rnd = rand()% 2;
270 if (rnd == 1){
271 tmp.x = A.nodes[i].x;
272 A.nodes[i].x = B.nodes[i].x;
273 B.nodes[i].x = tmp.x;
274 }
275 rnd = rand()% 2;
276 if (rnd == 1){
277 tmp.y = A.nodes[i].y;
278 A.nodes[i].y = B.nodes[i].y;
279 B.nodes[i].y = tmp.y;
280 }
281 }
282}
283
284
285// Copies the contents of graph A to graph B
286void copyGraph(graph & A, graph& B){
287 int i;
288
289 for (i=0; i< num_nodes;i++) {
290 B.nodes[i] = A.nodes[i];
291 }
292 B.fitness = A.fitness;
293 B.fitnessIntersection = A.fitnessIntersection;
294 B.fitnessDistance = A.fitnessDistance;
295}
296
297/* Mutate random point in a graph and change it to random value
298 * within the domain of points
299 */
300void mutateGraph (int mutationLevel, graph& A){
301 int i,x,y;
302
303 if ((rand() % 100) > mutationLevel) {
304 return;
305 }
306
307 i = rand() % num_nodes;
308 x = (rand()% max_cord)+1;
309 y = (rand()% max_cord)+1;
310
311 A.nodes[i].x = x;
312 A.nodes[i].y = y;
313}
314
315/* To do selection we use roulettewheel selection, only we
316 * invert adjust the regular algorithm so it prefers
317 * the lowest fitness numbers e.g. the biggest slice of
318 * piece is now the least attractive.
319 */
320int selectGraph() {
321 int i;
322 int choice = -1;
323 int combined_fitness;
324 int fitness_reverse[MAX_POP];
325 int max_fitness = INT_MIN;
326 int min_fitness = INT_MAX;
327 int total_fitness = 0;
328 int wheelnumber;
329
330 /* Find minimum/maximum */
331 min_fitness = population[0].fitness;
332 max_fitness = population[MAX_POP - 1].fitness;
333
334 /* Set balanced fitness */
335 combined_fitness = min_fitness + max_fitness;
336 for(i=0; i< MAX_POP; i++) {
337 fitness_reverse[i] = combined_fitness - population[i].fitness;
338 total_fitness += fitness_reverse[i];
339 }
340
341 /* Get random number of wheel */
342 wheelnumber = rand() % total_fitness;
343
344 /* Find matching graph */
345 total_fitness = 0;
346 for(i=0; i< MAX_POP; i++) {
347 total_fitness += fitness_reverse[i];
348 if (total_fitness > wheelnumber) {
349 choice = i;
350 break;
351 }
352 }
353
354 return (choice);
355}
356
357/* Set the values of a given graph to random numbers
358 * In other word those graphs who aint fit enough
359 * for the next round will be discarded.
360 */
361void setRandGraph(graph& A) {
362 int i;
363 for (i=0; i< num_nodes;i++) {
364 A.nodes[i].x = (rand()%max_cord)+1;
365 A.nodes[i].y = (rand()%max_cord)+1;
366 }
367
368 calcFitness(A);
369}
370
371/* Create a graph and set nodes to certain location */
372graph initGraph() {
373 graph A;
374 setRandGraph(A);
375 return A;
376}
377
378// Generates a population of MAX_POP graphs with random coordinates
379void initPopulation () {
380 int i;
381
382 for (i=0; i< MAX_POP;i++) {
383 population[i] = initGraph();
384 }
385}
386// Using bubblesort we sort the graphs in the population on fitness
387void sortPopulation () {
388 graph tmp;
389 int i, j;
390 for (j = 1; j < MAX_POP; j++ ) {
391 for (i = 0; i < MAX_POP-j; i++ ) {
392 if (population[i].fitness > population[i+1].fitness) {
393 tmp = population[i];
394 population[i] = population[i+1];
395 population[i+1] = tmp;
396 }
397 }
398 }
399}
400
401/* Opens input file with adjacency-matrix which contains data about the
402 * number of nodes (N) on the first line and the values of the
403 * connections between those nodes in a N x N matrix in the following
404 * lines
405 */
406void openFile(char * inputFile) {
407 ifstream input;
408 int i, j;
409 input.open(inputFile, ios::in);
410
411 if (input) {
412 cerr << "Opening "<< inputFile << "..." << endl;
413 input >> num_nodes;
414 if (num_nodes <= 0) {
415 input.close();
416 cerr << "Error: Invalid data format!" << endl;
417 exit(EX_DATAERR);
418 } else if (num_nodes < MAX_NODES) {
419 for (i=0; i< num_nodes; i++) {
420 for (j=0; j< num_nodes; j++) {
421 input >> distances[i][j];
422 if (input.eof()) {
423 cerr << "Error: Invalid data format!" <<endl;
424 exit(EX_DATAERR);
425 }
426 if (distances[i][j] > lon_con){
427 lon_con = distances[i][j];
428 }
429 }
430 }
431 } else {
432 input.close();
433 cerr << "Error: Number of nodes in "<< inputFile;
434 cerr << " exceeds maximum number of nodes" << endl;
435 exit(EX_DATAERR);
436 }
437 } else {
438 input.close();
439 cerr << "Error: Couldn't open file " << inputFile << endl;
440 exit(EX_NOINPUT);
441 }
442
443 /* Transform 2d structure to 1d archs to allow easy computations */
444 num_archs = 0;
445 for (i = 0; i < num_nodes; i++) {
446 for (j = i+1; j < num_nodes; j++) {
447 if (distances[i][j] > 0) {
448 archs[num_archs].a = i;
449 archs[num_archs].b = j;
450 archs[num_archs].distance = distances[i][j];
451 num_archs++;
452 }
453 }
454 }
455}
456
457// Prints the adjacency-matrix of openFile() to the screen
458void printDistances() {
459 int i, j;
460
461 cout << " " << endl;
462 for (i=0; i< num_nodes; i++) {
463 for (j=0; j< num_nodes; j++) {
464 cout << distances[i][j]<< " ";
465 }
466 cout << endl;
467 }
468 cout << " " << endl;
469}
470
471/* Prints the coordinates of every point in a graph to the screen in
472 * graphviz compatible output
473 * cat <<EOF | neato -Tpng -oga.png && open ga.png
474 */
475void printGraph(graph& A) {
476 int i;
477
478 cout << "graph G { node [shape=circle,"
479 << "fontname=\"Lucida Console\",margin=0,0];" << endl;
480 for (i=0; i< num_nodes; i++) {
481 cout << "C" << i << "[pos=\"" << A.nodes[i].x * 28 << "," <<
482 A.nodes[i].y * 28 << "!\", label=\"C" << i << "\"];" << endl;
483 }
484 for (i=0; i < num_archs; i++) {
485 cout << "C" << archs[i].a << " -- C" << archs[i].b << ";" << endl;
486 }
487 cout << "}" << endl;
488}
489
490
491// Prints every graph stored in array population
492void printPopulation () {
493 int i;
494 cerr << " " << endl;
495 for (i=0; i< MAX_POP; i++) {
496 cerr << i << " => ";
497 printGraph(population[i]);
498 }
499 cerr << " " << endl;
500}
501
502
503/* Implementation of Steady State Evolution Algorithm based on p.119 AI
504 * Book */
505int main(int argc, char * argv[]) {
506 int i,j;
507 int org_dist, new_dist;
508 int select_one, select_two;
509 int loopCounter;
510 unsigned int randomSeed;
511
512 graph min;
513 graph child_one, child_two;
514
515 // use random seed to create x,y coordinates of a point
516 randomSeed = (unsigned)time(0);
517 randomSeed = 0;
518 srand(randomSeed);
519 /* Debug static seed */
520 // srand(0);
521
522 // Open the file that contains data about
523 // the number odf branches and which branches are
524 // connected with each other
525 if (argc >= 2) {
526 openFile(argv[1]);
527 } else {
528 cerr << "Usage: " << argv[0] << " <filename> <loopCount>" << endl;
529 exit(EX_USAGE);
530 }
531
532 if (argc == 3) {
533 loopCounter = atoi(argv[2]);
534 } else {
535 loopCounter = DEFAULT_LOOPS;
536 }
537
538 /* To optimize the speed of the genetic algoritm we limit the domain
539 * of the points */
540 if ((lon_con * num_nodes) < MAX_COORDINATES){
541 max_cord = lon_con * num_nodes;
542 } else {
543 max_cord = MAX_COORDINATES;
544 }
545 cerr << "Domain of points is set to "
546 << max_cord << " x " << max_cord << endl;
547
548 // Minimum graph to store best found solution
549 min.fitness = INT_MAX;
550
551 /* Populate population, with random values */
552 initPopulation();
553
554 for (i=0; i< loopCounter; i++) {
555 // Sort the population of graphs so that graph
556 // with smallest fitness is placed in population[0]
557 sortPopulation();
558
559 // Store the lowest found fitness if it is better
560 // then the fitness we already had stored
561 if (min.fitness > population[0].fitness){
562 copyGraph(population[0],min);
563 }
564
565 // Stop if optimal is found e.g fitness equals zero
566 if(population[0].fitness == 0){
567 break;
568 }
569
570 // Selection reproducing parents via roulette wheel
571 // fittest parents get selected
572 select_one = selectGraph();
573 do {
574 select_two = selectGraph();
575 }while (select_one == select_two);
576
577 // set points in children with crossover result of parents
578 copyGraph(population[select_one], child_one);
579 copyGraph(population[select_two], child_two);
580
581 // Crossover the selected parents
582 crossUniform(child_one, child_two);
583
584 // mutate childs with small random probability usually 50%
585 mutateGraph(99, child_one);
586 mutateGraph(99, child_two);
587
588 // Calculate fitness of both children
589 calcFitness(child_one);
590 calcFitness(child_two);
591
592 // Least fittest graphs in population get replaced
593 copyGraph(child_one,population[MAX_POP -2]);
594 copyGraph(child_two,population[MAX_POP -1]);
595 }
596
597 cerr << "Best found coordinates after "<< i <<
598 " epochs for given input graph: " << endl;
599 printGraph(min);
600
601 if(min.fitness != 0){
602 for (i=0; i< num_nodes; i++) {
603 for (j=i+1; j< num_nodes; j++) {
604 org_dist = distances[i][j];
605 if (org_dist != 0){
606 new_dist = calcDistance(min.nodes[i],min.nodes[j]);
607 cerr << "Distance between point C"<< i << " - C" << j << " = ";
608 cerr << calcDistance(min.nodes[i],min.nodes[j]) << " ";
609 if (new_dist != org_dist){
610 cerr << "SHOULD BE " << org_dist << endl;
611 } else {
612 cerr << "CORRECT" << endl;
613 }
614 }
615 }
616 }
617 }
618 cerr << "Fitness Intersection : " << min.fitnessIntersection << endl;
619 cerr << "Fitness Distance : " << min.fitnessDistance << endl;
620 cerr << "Fitness Overall : " << min.fitness << endl;
621 cerr << "Random seed : " << randomSeed << endl;
622 return(EX_OK);
623}
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