source: Sophya/trunk/Cosmo/RadioBeam/specpk.cc@ 3771

Last change on this file since 3771 was 3769, checked in by ansari, 15 years ago

Corrections/amelioration du programme de calcul de la sensibilite interfero, Reza 07/05/2010

File size: 11.1 KB
Line 
1// Classes to compute 3D power spectrum
2// R. Ansari - Nov 2008, May 2010
3
4#include "specpk.h"
5#include "randr48.h"
6
7//------------------------------------
8// Class SpectralShape
9// -----------------------------------
10
11double Pnu1(double nu)
12{
13 return ( sqrt(sqrt(nu)) / ((nu+1.0)/0.2) *
14 (1+0.2*cos(2*M_PI*(nu-2.)*0.15)*exp(-nu/50.)) );
15}
16
17double Pnu2(double nu)
18{
19 if (nu < 1.e-9) return 0.;
20 return ((1.-exp(-nu/0.5))/nu*(1+0.25*cos(2*M_PI*nu*0.1)*exp(-nu/20.)) );
21}
22
23
24double Pnu3(double nu)
25{
26 return ( log(nu/100.+1)*(1+sin(2*M_PI*nu/300))*exp(-nu/4000) );
27}
28
29
30double Pnu4(double nu)
31{
32 double x = (nu-0.5)/0.05;
33 double rc = 2*exp(-x*x);
34 x = (nu-3.1)/0.27;
35 rc += exp(-x*x);
36 x = (nu-7.6)/1.4;
37 rc += 0.5*exp(-x*x);
38 return ( rc+2.*exp(-x*x) );
39}
40
41//--------------------------------------------------
42// -- SpectralShape class : test P(k) class
43//--------------------------------------------------
44// Constructor
45SpectralShape::SpectralShape(int typ)
46{
47 typ_=typ;
48}
49
50// Return the spectral power for a given wave number wk
51double SpectralShape::operator() (double wk)
52{
53 wk/=DeuxPI;
54 switch (typ_)
55 {
56 case 1:
57 return Pnu1(wk);
58 break;
59 case 2:
60 return Pnu2(wk);
61 break;
62 case 3:
63 return Pnu3(wk);
64 break;
65 case 4:
66 return Pnu4(wk);
67 break;
68 default :
69 {
70 // global shape
71 double csp = pow( (2*sin(sqrt(sqrt(wk/7.)))),2.);
72 if (csp < 0.) return 0.;
73
74 // Adding some pics
75 double picpos[5] = {75.,150.,225.,300.,375.,};
76
77 for(int k=0; k<5; k++) {
78 double x0 = picpos[k];
79 if ( (wk > x0-25.) && (wk < x0+25.) ) {
80 double x = (wk-x0);
81 csp *= (1.+0.5*exp(-(x*x)/(2.*5*5)));
82 break;
83 }
84 }
85 return csp;
86 }
87 break;
88 }
89}
90// Return a vector representing the power spectrum (for checking)
91Histo SpectralShape::GetPk(int n)
92{
93 if (n<16) n = 256;
94 Histo h(0.,1024.*DeuxPI,n);
95 for(int k=0; k<h.NBins(); k++) h(k) = Value((k+0.5)*h.BinWidth());
96 return h;
97}
98
99//--------------------------------------------------
100// -- Four2DResponse class : test P(k) class
101
102//---------------------------------------------------------------
103// -- Four3DPk class : 3D fourier amplitudes and power spectrum
104//---------------------------------------------------------------
105// Constructeur avec Tableau des coeff. de Fourier en argument
106Four3DPk::Four3DPk(TArray< complex<TF> > & fourcoedd, RandomGeneratorInterface& rg)
107 : rg_(rg), fourAmp(fourcoedd)
108{
109 SetPrtLevel();
110 SetCellSize();
111}
112// Constructor
113Four3DPk::Four3DPk(RandomGeneratorInterface& rg, sa_size_t szx, sa_size_t szy, sa_size_t szz)
114 : rg_(rg), fourAmp(szx, szy, szz)
115{
116 SetPrtLevel();
117 SetCellSize();
118}
119
120
121// Generate mass field Fourier Coefficient
122void Four3DPk::ComputeFourierAmp(SpectralShape& pk)
123{
124 // We generate a random gaussian real field
125 // fourAmp represent 3-D fourier transform of a real input array.
126 // The second half of the array along Y and Z contain negative frequencies
127 // double fnorm = 1./sqrt(2.*fourAmp.Size());
128 double fnorm = 1.;
129 double kxx, kyy, kzz;
130 // sa_size_t is large integer type
131 for(sa_size_t kz=0; kz<fourAmp.SizeZ(); kz++) {
132 kzz = (kz>fourAmp.SizeZ()/2) ? (double)(fourAmp.SizeZ()-kz)*dkz_ : (double)kz*dkz_;
133 for(sa_size_t ky=0; ky<fourAmp.SizeY(); ky++) {
134 kyy = (ky>fourAmp.SizeY()/2) ? (double)(fourAmp.SizeY()-ky)*dky_ : (double)ky*dky_;
135 for(sa_size_t kx=0; kx<fourAmp.SizeX(); kx++) {
136 double kxx=(double)kx*dkx_;
137 double wk = sqrt(kxx*kxx+kyy*kyy+kzz*kzz);
138 double amp = sqrt(pk(wk)*fnorm/2.);
139 fourAmp(kx, ky, kz) = complex<TF>(rg_.Gaussian(amp), rg_.Gaussian(amp)); // renormalize fourier coeff usin
140 }
141 }
142 }
143 if (prtlev_>0)
144 cout << " Four3DPk::ComputeFourierAmp() done ..." << endl;
145}
146
147// Generate mass field Fourier Coefficient
148void Four3DPk::ComputeNoiseFourierAmp(Four2DResponse& resp, bool crmask)
149{
150 TMatrix<r_4> mask(fourAmp.SizeY(), fourAmp.SizeX());
151 // fourAmp represent 3-D fourier transform of a real input array.
152 // The second half of the array along Y and Z contain negative frequencies
153 double kxx, kyy, kzz;
154 // sa_size_t is large integer type
155 for(sa_size_t kz=0; kz<fourAmp.SizeZ(); kz++) {
156 kzz = (kz>fourAmp.SizeZ()/2) ? -(double)(fourAmp.SizeZ()-kz)*dkz_ : (double)kz*dkz_;
157 for(sa_size_t ky=0; ky<fourAmp.SizeY(); ky++) {
158 kyy = (ky>fourAmp.SizeY()/2) ? -(double)(fourAmp.SizeY()-ky)*dky_ : (double)ky*dky_;
159 for(sa_size_t kx=0; kx<fourAmp.SizeX(); kx++) {
160 double kxx=(double)kx*dkx_;
161 double rep = resp(kxx, kyy);
162 if (crmask&&(kz==0)) mask(ky,kx)=((rep<1.e-8)?9.e9:(1./rep));
163 if (rep<1.e-8) fourAmp(kx, ky, kz) = complex<TF>(9.e9,0.);
164 else {
165 double amp = 1./sqrt(rep)/sqrt(2.);
166 fourAmp(kx, ky, kz) = complex<TF>(rg_.Gaussian(amp), rg_.Gaussian(amp));
167 }
168 }
169 }
170 }
171 if (prtlev_>1) fourAmp.Show();
172 if (crmask) {
173 POutPersist po("mask.ppf");
174 po << mask;
175 }
176 if (prtlev_>0)
177 cout << " Four3DPk::ComputeNoiseFourierAmp() done ..." << endl;
178}
179
180// Compute mass field from its Fourier Coefficient
181TArray<TF> Four3DPk::ComputeMassDens()
182{
183 TArray<TF> massdens;
184// Backward fourier transform of the fourierAmp array
185 FFTWServer ffts(true);
186 ffts.setNormalize(true);
187 ffts.FFTBackward(fourAmp, massdens, true);
188 // cout << " Four3DPk::ComputeMassDens() done NbNeg=" << npbz << " / NPix=" << massDens.Size() << endl;
189 cout << " Four3DPk::ComputeMassDens() done NPix=" << massdens.Size() << endl;
190 return massdens;
191}
192
193// Compute power spectrum as a function of wave number k
194// cells with amp^2=re^2+im^2>s2cut are ignored
195// Output : power spectrum (profile histogram)
196HProf Four3DPk::ComputePk(double s2cut, int nbin, double kmin, double kmax)
197{
198 // The second half of the array along Y (matrix rows) contain
199 // negative frequencies
200 // int nbh = sqrt(fourAmp.SizeX()*fourAmp.SizeX()+fourAmp.SizeY()*fourAmp.SizeY()/4.+fourAmp.SizeZ()*fourAmp.SizeY()/4.);
201 // The profile histogram will contain the mean value of FFT amplitude
202 // as a function of wave-number k = sqrt((double)(kx*kx+ky*ky))
203 // if (nbin < 1) nbin = nbh/2;
204 if ((kmax<0.)||(kmax<kmin)) {
205 kmin=0.;
206 double maxx=fourAmp.SizeX()*dkx_;
207 double maxy=fourAmp.SizeY()*dky_/2;
208 double maxz=fourAmp.SizeZ()*dkz_/2;
209 kmax=sqrt(maxx*maxx+maxy*maxy+maxz*maxz);
210 }
211 if (nbin<2) nbin=128;
212 HProf hp(kmin, kmax, nbin);
213 hp.SetErrOpt(false);
214 ComputePkCumul(hp, s2cut);
215 return hp;
216}
217
218// Compute power spectrum as a function of wave number k
219// Cumul dans hp - cells with amp^2=re^2+im^2>s2cut are ignored
220void Four3DPk::ComputePkCumul(HProf& hp, double s2cut)
221{
222
223 // fourAmp represent 3-D fourier transform of a real input array.
224 // The second half of the array along Y and Z contain negative frequencies
225 double kxx, kyy, kzz;
226 // sa_size_t is large integer type
227 for(sa_size_t kz=0; kz<fourAmp.SizeZ(); kz++) {
228 kzz = (kz > fourAmp.SizeZ()/2) ? (double)(fourAmp.SizeZ()-kz)*dkz_ : (double)kz*dkz_;
229 for(sa_size_t ky=0; ky<fourAmp.SizeY(); ky++) {
230 kyy = (ky > fourAmp.SizeY()/2) ? (double)(fourAmp.SizeY()-ky)*dky_ : (double)ky*dky_;
231 for(sa_size_t kx=0; kx<fourAmp.SizeX(); kx++) {
232 double kxx=(double)kx*dkx_;
233 complex<TF> za = fourAmp(kx, ky, kz);
234 if (za.real()>8.e9) continue;
235 double wk = sqrt(kxx*kxx+kyy*kyy+kzz*kzz);
236 double amp2 = za.real()*za.real()+za.imag()*za.imag();
237 if ((s2cut>1.e-9)&&(amp2>s2cut)) continue;
238 hp.Add(wk, amp2);
239 }
240 }
241 }
242 return;
243}
244
245
246
247//-----------------------------------------------------
248// -- MassDist2D class : 2D mass distribution
249//-----------------------------------------------------
250// Constructor
251MassDist2D::MassDist2D(GenericFunc& pk, int size, double meandens)
252: pkSpec(pk) , sizeA((size>16)?size:16) , massDens(sizeA, sizeA),
253 meanRho(meandens) , fg_fourAmp(false) , fg_massDens(false)
254{
255}
256
257// To the computation job
258void MassDist2D::Compute()
259{
260 ComputeFourierAmp();
261 ComputeMassDens();
262}
263
264// Generate mass field Fourier Coefficient
265void MassDist2D::ComputeFourierAmp()
266{
267 if (fg_fourAmp) return; // job already done
268 // We generate a random gaussian real field
269 double sigma = 1.;
270// The following line fills the array by gaussian random numbers
271//--Replaced-- massDens = RandomSequence(RandomSequence::Gaussian, 0., sigma);
272// Can be replaced by
273 DR48RandGen rg;
274 for(sa_size_t ir=0; ir<massDens.NRows(); ir++) {
275 for(sa_size_t jc=0; jc<massDens.NCols(); jc++) {
276 massDens(ir, jc) = rg.Gaussian(sigma);
277 }
278 }
279// --- End of random filling
280
281 // Compute fourier transform of the random gaussian field -> white noise
282 FFTWServer ffts(true);
283 ffts.setNormalize(true);
284 ffts.FFTForward(massDens, fourAmp);
285
286 // fourAmp represent 2-D fourier transform of a real input array.
287 // The second half of the array along Y (matrix rows) contain
288 // negative frequencies
289// double fnorm = 1./sqrt(2.*fourAmp.Size());
290// PUT smaller value for fnorm and check number of zeros
291 double fnorm = 1.;
292 // sa_size_t is large integer type
293 for(sa_size_t ky=0; ky<fourAmp.NRows(); ky++) {
294 double kyy = ky;
295 if (ky > fourAmp.NRows()/2) kyy = fourAmp.NRows()-ky; // negative frequencies
296 for(sa_size_t kx=0; kx<fourAmp.NCols(); kx++) {
297 double wk = sqrt((double)(kx*kx+kyy*kyy));
298 double amp = pkSpec(wk)*fnorm;
299 fourAmp(ky, kx) *= amp; // renormalize fourier coeff using
300 }
301 }
302 fg_fourAmp = true;
303 cout << " MassDist2D::ComputeFourierAmp() done ..." << endl;
304}
305
306// Compute mass field from its Fourier Coefficient
307void MassDist2D::ComputeMassDens()
308{
309 if (fg_massDens) return; // job already done
310 if (!fg_fourAmp) ComputeFourierAmp(); // Check fourier amp generation
311
312// Backward fourier transform of the fourierAmp array
313 FFTWServer ffts(true);
314 ffts.setNormalize(true);
315 ffts.FFTBackward(fourAmp, massDens, true);
316// We consider that massDens represents delta rho/rho
317// rho = (delta rho/rho + 1) * MeanDensity
318 massDens += 1.;
319// We remove negative values
320 sa_size_t npbz = 0;
321 for (sa_size_t i=0; i<massDens.NRows(); i++)
322 for (sa_size_t j=0; j<massDens.NCols(); j++)
323 if (massDens(i,j) < 0.) { npbz++; massDens(i,j) = 0.; }
324 massDens *= meanRho;
325 cout << " MassDist2D::ComputeMassDens() done NbNeg=" << npbz << " / NPix=" << massDens.Size() << endl;
326}
327
328// Compute power spectrum as a function of wave number k
329// Output : power spectrum (profile histogram)
330HProf MassDist2D::ReconstructPk(int nbin)
331{
332 // The second half of the array along Y (matrix rows) contain
333 // negative frequencies
334 int nbh = sqrt(2.0)*fourAmp.NCols();
335 // The profile histogram will contain the mean value of FFT amplitude
336 // as a function of wave-number k = sqrt((double)(kx*kx+ky*ky))
337 if (nbin < 1) nbin = nbh/2;
338 HProf hp(-0.5, nbh-0.5, nbin);
339 hp.SetErrOpt(false);
340
341 for(int ky=0; ky<fourAmp.NRows(); ky++) {
342 double kyy = ky;
343 if (ky > fourAmp.NRows()/2) kyy = fourAmp.NRows()-ky; // negative frequencies
344 for(int kx=0; kx<fourAmp.NCols(); kx++) {
345 double wk = sqrt((double)(kx*kx+kyy*kyy));
346 complex<r_8> za = fourAmp(ky, kx);
347 double amp = sqrt(za.real()*za.real()+za.imag()*za.imag());
348 hp.Add(wk, amp);
349 }
350 }
351 return hp;
352}
353
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