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Mar
12
awarded  Popular Question
Feb
4
asked Reading different types of variables from a file in C++
Jan
27
comment parallel summation of arrays with openmp in C++
Is it necessary that the initialization double subsum=0.0 is done after the #pragma ... and before the for-loop?
Jan
27
comment parallel summation of arrays with openmp in C++
Well, I tried #pragma omp parallel for default(shared) at every loop but the result was completely wrong. Then I tried to make some variables private, like private(i1,k,vector_1,vector_2) but this was just a desperate try and it didn't work neither.
Jan
27
asked parallel summation of arrays with openmp in C++
Oct
10
comment FFTW and fft with MatLab
Any idea how to fix that issue with FFTW when used with C++? There I get the same nasty oscillations. Could you give a mathworks-reference about that issue? I didn't see a remark about that on the page where the fft routine is explained.
Oct
10
comment FFTW and fft with MatLab
Do you have any idea about the reason for the other two issues that I have? I implemented your solution. It fixes the oscillations in both parts of the output but the imaginary part is still not zero. Moreover, when I change the number of points Nx, it stays the same while the peak of the real part changes proportionally to Nx. Any idea why this is like that?
Oct
10
comment FFTW and fft with MatLab
Thank you for the hint. However, I still do not understand why should I change the x-array with fftshift. Could you elaborate on that a little bit? I thought this were provided by doing fftshift on the output. Why is the Gaussian in my version effectively centred at x>0?
Oct
10
awarded  Student
Oct
10
comment FFTW and fft with MatLab
Of course, discreteness make things imprecise but the discrete FT is created as an approximation of the continuous FT. When the number of points and the interval are large enough, which is the case here, the approximation should be good. There will be some deviations, but they should definitely not be so large and so systematic. Also, when I increase Nx and Lx, the result does not change which means that convergence is achieved.
Oct
10
asked FFTW and fft with MatLab
Aug
20
asked fortran, read command