/****************************************************************** * * * Random Library, Downloaded at: * * http://www.swin.edu.au/astronomy/pbourke/software/random/ * * * *******************************************************************/ #define FALSE 0 #define TRUE 1 /* This Random Number Generator is based on the algorithm in a FORTRAN version published by George Marsaglia and Arif Zaman, Florida State University; ref.: see original comments below. At the fhw (Fachhochschule Wiesbaden, W.Germany), Dept. of Computer Science, we have written sources in further languages (C, Modula-2 Turbo-Pascal(3.0, 5.0), Basic and Ada) to get exactly the same test results compared with the original FORTRAN version. April 1989 Karl-L. Noell and Helmut Weber This random number generator originally appeared in "Toward a Universal Random Number Generator" by George Marsaglia and Arif Zaman. Florida State University Report: FSU-SCRI-87-50 (1987) It was later modified by F. James and published in "A Review of Pseudo- random Number Generators" THIS IS THE BEST KNOWN RANDOM NUMBER GENERATOR AVAILABLE. (However, a newly discovered technique can yield a period of 10^600. But that is still in the development stage.) It passes ALL of the tests for random number generators and has a period of 2^144, is completely portable (gives bit identical results on all machines with at least 24-bit mantissas in the floating point representation). The algorithm is a combination of a Fibonacci sequence (with lags of 97 and 33, and operation "subtraction plus one, modulo one") and an "arithmetic sequence" (using subtraction). Use IJ = 1802 & KL = 9373 to test the random number generator. The subroutine RANMAR should be used to generate 20000 random numbers. Then display the next six random numbers generated multiplied by 4096*4096 If the random number generator is working properly, the random numbers should be: 6533892.0 14220222.0 7275067.0 6172232.0 8354498.0 10633180.0 */ /* Globals */ double u[97],c,cd,cm; int i97,j97; int test = FALSE; /* This is the initialization routine for the random number generator. NOTE: The seed variables can have values between: 0 <= IJ <= 31328 0 <= KL <= 30081 The random number sequences created by these two seeds are of sufficient length to complete an entire calculation with. For example, if sveral different groups are working on different parts of the same calculation, each group could be assigned its own IJ seed. This would leave each group with 30000 choices for the second seed. That is to say, this random number generator can create 900 million different subsequences -- with each subsequence having a length of approximately 10^30. */ void RandomInitialise(int ij,int kl) { double s,t; int ii,i,j,k,l,jj,m; /* Handle the seed range errors First random number seed must be between 0 and 31328 Second seed must have a value between 0 and 30081 */ if (ij < 0 || ij > 31328 || kl < 0 || kl > 30081) { ij = 1802; kl = 9373; } i = (ij / 177) % 177 + 2; j = (ij % 177) + 2; k = (kl / 169) % 178 + 1; l = (kl % 169); for (ii=0; ii<97; ii++) { s = 0.0; t = 0.5; for (jj=0; jj<24; jj++) { m = (((i * j) % 179) * k) % 179; i = j; j = k; k = m; l = (53 * l + 1) % 169; if (((l * m % 64)) >= 32) s += t; t *= 0.5; } u[ii] = s; } c = 362436.0 / 16777216.0; cd = 7654321.0 / 16777216.0; cm = 16777213.0 / 16777216.0; i97 = 97; j97 = 33; test = TRUE; } /* This is the random number generator proposed by George Marsaglia in Florida State University Report: FSU-SCRI-87-50 */ double RandomUniform(void) { double uni; /* Make sure the initialisation routine has been called */ if (!test) RandomInitialise(1802,9373); uni = u[i97-1] - u[j97-1]; if (uni <= 0.0) uni++; u[i97-1] = uni; i97--; if (i97 == 0) i97 = 97; j97--; if (j97 == 0) j97 = 97; c -= cd; if (c < 0.0) c += cm; uni -= c; if (uni < 0.0) uni++; return(uni); } /* ALGORITHM 712, COLLECTED ALGORITHMS FROM ACM. THIS WORK PUBLISHED IN TRANSACTIONS ON MATHEMATICAL SOFTWARE, VOL. 18, NO. 4, DECEMBER, 1992, PP. 434-435. The function returns a normally distributed pseudo-random number with a given mean and standard devaiation. Calls are made to a function subprogram which must return independent random numbers uniform in the interval (0,1). The algorithm uses the ratio of uniforms method of A.J. Kinderman and J.F. Monahan augmented with quadratic bounding curves. */ double RandomGaussian(double mean,double stddev) { double q,u,v,x,y; /* Generate P = (u,v) uniform in rect. enclosing acceptance region Make sure that any random numbers <= 0 are rejected, since gaussian() requires uniforms > 0, but RandomUniform() delivers >= 0. */ do { u = RandomUniform(); v = RandomUniform(); if (u <= 0.0 || v <= 0.0) { u = 1.0; v = 1.0; } v = 1.7156 * (v - 0.5); /* Evaluate the quadratic form */ x = u - 0.449871; y = fabs(v) + 0.386595; q = x * x + y * (0.19600 * y - 0.25472 * x); /* Accept P if inside inner ellipse */ if (q < 0.27597) break; /* Reject P if outside outer ellipse, or outside acceptance region */ } while ((q > 0.27846) || (v * v > -4.0 * log(u) * u * u)); /* Return ratio of P's coordinates as the normal deviate */ return (mean + stddev * v / u); } /* Return random integer within a range, lower -> upper INCLUSIVE */ int RandomInt(int lower, int upper) { return((int)(RandomUniform() * (upper - lower + 1)) + lower); } /* Return random float within a range, lower -> upper */ double RandomDouble(double lower, double upper) { return((upper - lower) * RandomUniform() + lower); } int flip(double pf){ if(RandomDouble(0.0,1.0)<=pf)return 1;else return 0; }