/* * This file is part of TISEAN * * Copyright (c) 1998-2007 Rainer Hegger, Holger Kantz, Thomas Schreiber * * TISEAN is free software; you can redistribute it and/or modify * it under the terms of the GNU General Public License as published by * the Free Software Foundation; either version 2 of the License, or * (at your option) any later version. * * TISEAN is distributed in the hope that it will be useful, * but WITHOUT ANY WARRANTY; without even the implied warranty of * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the * GNU General Public License for more details. * * You should have received a copy of the GNU General Public License * along with TISEAN; if not, write to the Free Software * Foundation, Inc., 51 Franklin St, Fifth Floor, Boston, MA 02110-1301 USA */ /*Author: Rainer Hegger. Last modified: Aug 27, 2004 */ #include #include #include #include #include "routines/tsa.h" #define WID_STR "Estimates the average forecast error for a zeroth\n\t\ order fit from a multidimensional time series" #ifndef _MATH_H #include #endif /*number of boxes for the neighbor search algorithm*/ #define NMAX 512 unsigned int nmax=(NMAX-1); long **box,*list; unsigned long *found; double **series,**diffs; double interval,min,epsilon; char epsset=0,dimset=0,clengthset=0,causalset=0; char *infile=NULL; char *outfile=NULL,stdo=1; char *COLUMNS=NULL; unsigned int embed=2,dim=1,DELAY=1,MINN=30; unsigned long STEP=1,causal; unsigned int verbosity=0x1; double EPS0=1.e-3,EPSF=1.2; unsigned long refstep=1; unsigned long LENGTH=ULONG_MAX,exclude=0,CLENGTH=ULONG_MAX; void show_options(char *progname) { what_i_do(progname,WID_STR); fprintf(stderr," Usage: %s [options]\n",progname); fprintf(stderr," Options:\n"); fprintf(stderr,"Everything not being a valid option will be interpreted" " as a possible" " datafile.\nIf no datafile is given stdin is read. Just - also" " means stdin\n"); fprintf(stderr,"\t-l # of data to use [default: whole file]\n"); fprintf(stderr,"\t-x # of lines to be ignored [default: 0]\n"); fprintf(stderr,"\t-c columns to read [default: 1,...,X]\n"); fprintf(stderr,"\t-m dimension and embedding dimension" " [default: %d,%d]\n",dim,embed); fprintf(stderr,"\t-d delay [default: %d]\n",DELAY); fprintf(stderr,"\t-n # of reference points [default: length]\n"); fprintf(stderr,"\t-S temporal distance between the reference points" " [default: %lu]\n",refstep); fprintf(stderr,"\t-k minimal number of neighbors for the fit " "[default: %d]\n",MINN); fprintf(stderr,"\t-r neighborhoud size to start with " "[default: (data interval)/1000]\n"); fprintf(stderr,"\t-f factor to increase size [default: 1.2]\n"); fprintf(stderr,"\t-s steps to forecast [default: 1]\n"); fprintf(stderr,"\t-C width of causality window [default: steps]\n"); fprintf(stderr,"\t-o output file [default: 'datafile.zer'," " without -o: stdout]\n"); fprintf(stderr,"\t-V verbosity level [default: 1]\n\t\t" "0='only panic messages'\n\t\t" "1='+ input/output messages'\n\t\t" "2='give individual forecast errors for the max step'\n"); fprintf(stderr,"\t-h show these options\n"); exit(0); } void scan_options(int n,char **in) { char *out; if ((out=check_option(in,n,'l','u')) != NULL) sscanf(out,"%lu",&LENGTH); if ((out=check_option(in,n,'x','u')) != NULL) sscanf(out,"%lu",&exclude); if ((out=check_option(in,n,'c','s')) != NULL) COLUMNS=out; if ((out=check_option(in,n,'m','2')) != NULL) { dimset=1; sscanf(out,"%u%*c%u",&dim,&embed); if (embed == 0) embed=1; } if ((out=check_option(in,n,'d','u')) != NULL) sscanf(out,"%u",&DELAY); if ((out=check_option(in,n,'n','u')) != NULL) { sscanf(out,"%lu",&CLENGTH); clengthset=1; } if ((out=check_option(in,n,'S','u')) != NULL) sscanf(out,"%lu",&refstep); if ((out=check_option(in,n,'k','u')) != NULL) sscanf(out,"%u",&MINN); if ((out=check_option(in,n,'r','f')) != NULL) { epsset=1; sscanf(out,"%lf",&EPS0); } if ((out=check_option(in,n,'f','f')) != NULL) sscanf(out,"%lf",&EPSF); if ((out=check_option(in,n,'s','u')) != NULL) sscanf(out,"%lu",&STEP); if ((out=check_option(in,n,'C','u')) != NULL) { sscanf(out,"%lu",&causal); causalset=1; } if ((out=check_option(in,n,'V','u')) != NULL) sscanf(out,"%u",&verbosity); if ((out=check_option(in,n,'o','o')) != NULL) { stdo=0; if (strlen(out) > 0) outfile=out; } } void make_fit(long act,unsigned long number,long istep,double **error) { double casted,*help; long i,j,h; h=istep-1; for (j=0;j= ((long)LENGTH-(long)(embed*DELAY)-(long)MINN)) { fprintf(stderr,"steps to forecast (-s) too large. Exiting!\n"); exit(ZEROTH__STEP_TOO_LARGE); } if (!causalset) causal=STEP; #ifndef OMIT_WHAT_I_DO if (verbosity&VER_INPUT) what_i_do(argv[0],WID_STR); #endif infile=search_datafile(argc,argv,NULL,verbosity); if (infile == NULL) stdi=1; if (outfile == NULL) { if (!stdi) { check_alloc(outfile=(char*)calloc(strlen(infile)+5,(size_t)1)); sprintf(outfile,"%s.zer",infile); } else { check_alloc(outfile=(char*)calloc((size_t)10,(size_t)1)); sprintf(outfile,"stdin.zer"); } } if (!stdo) test_outfile(outfile); if (COLUMNS == NULL) series=(double**)get_multi_series(infile,&LENGTH,exclude,&dim,"",dimset, verbosity); else series=(double**)get_multi_series(infile,&LENGTH,exclude,&dim,COLUMNS, dimset,verbosity); check_alloc(hser=(double**)malloc(sizeof(double*)*dim)); check_alloc(av=(double*)malloc(sizeof(double)*dim)); check_alloc(rms=(double*)malloc(sizeof(double)*dim)); check_alloc(hinter=(double*)malloc(sizeof(double)*dim)); interval=0.0; for (i=0;i= MINN) { for (j=1;j<=STEP;j++) { make_fit(hi,actfound,j,error); } done[i]=1; } alldone &= done[i]; } } if (stdo) { if (verbosity&VER_INPUT) fprintf(stderr,"Writing to stdout\n"); for (i=0;i