1

I tried to calculate the fourier transform of the set of experimental data. I ended up looking at data where 0 Hz component is higher. Any idea on how to remove this? What does the 0 Hz component actually represent?

#Program for Fourier Transformation
# last update 131003, aj
import numpy as np
import numpy.fft as fft
import matplotlib.pyplot as plt

def readdat( filename ):
    """
        Reads experimental data from the file
    """

    # read all lines of input files
    fp = open( filename, 'r')
    lines = fp.readlines() # to read the tabulated data
    fp.close()

    # Processing the file data
    time = []
    ampl = []
    for line in lines:
        if line[0:1] == '#':
            continue # ignore comments in the file
        try:
            time.append(float(line.split()[0]))
            #first column is time
            ampl.append(float(line.split()[1]))
            # second column is corresponding amplitude
        except:
            # if the data interpretation fails..
            continue
    return np.asarray(time), np.asarray(ampl)

if __name__ == '__main__':

    time, ampl = readdat( 'VM.dat')
    print time
    print ampl

    spectrum = fft.fft(ampl)
    # assume samples at regular intervals
    timestep = time[1]-time[0] 
    freq = fft.fftfreq(len(spectrum),d=timestep)
    freq=fft.fftshift(freq)
    spectrum = fft.fftshift(spectrum)
    plt.figure(figsize=(5.0*1.21,5.0))
    plt.plot(freq,spectrum.real)
    plt.title("Measured Voltage")
    plt.xlabel("frequency(rad/s)")
    plt.ylabel("Spectrum")
    plt.xlim(0.,5.)
    plt.ylim(ymin=0.)
    plt.grid()
    plt.savefig("VM_figure.png")
1
  • Just remove the average value: ampl = ampl - np.mean(ampl) This is easier than running a filter and more correct than brute-forcing the 0 Hz bin May 27, 2020 at 20:07

2 Answers 2

1

If the average of the data set before processing is made to be zero then the 0Hz component should be negligible. This would be equivalent to detrending {scipy detrend} the data with option 'constant'.

This is sometimes used as a preconditioning step in low precision systems as finite precision numerical processing of data with large DC offsets will generate related numerical errors.

0

The 0 Hz component represents the DC offset of your signal.

You can remove it with any high-pass filter, just put the cutoff frequency as low as possible (the filter could be digital or analogue, I don't know what your experimental setup is).

A simple possibility is just to force that value to 0 (modifying the FFT in this way is equivalent to applying a high pass FIR filter).

2
  • Why am I getting the DC offset? Is it due to any problem with my wave generation devices or measurement device? Oct 9, 2013 at 9:04
  • Could be any of those... how are you generating and measuring? It could also be the numeric representation: if your A/D converter uses unsigned numbers as output, you'll have your signal centered around mid-scale.
    – pcarranzav
    Oct 16, 2013 at 9:56

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.