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I have a time series which I would like to convert into the frequency domain, And I am using the code below but I think I am getting confused with the frequency distribution on x axis with linspace() and with y variable in the code. What correction would be needed for this code?

About the time series:

  • sample rate = 96000

  • len(data) = 40000000

      data = time_series
    
      y= fft(data)
    
      sample = len(data)
      N = 96000 # sampling rate
      frequency = np.linspace (0.0, sample, int (N/2))
      y= 2/N * (y[0:np.int (N/2)]).astype(np.float64)
      fig, axs = plt.subplots(2, sharex=True, gridspec_kw={'hspace': 0})
      plt.suptitle('Time and freq ', fontsize='30')
      axs[0].plot(df.iloc[:,0])
      axs[0].set_xlabel('Time', fontsize ='20')
      axs[0].set_ylabel('Q0', fontsize='20')
      axs[1].set_xlabel('freq', fontsize ='20')
      axs[1].set_ylabel('feature', fontsize='20')
      axs[1].plot(frequency[0:len(frequency)], y[0:len(y)], color = 'g')
      plt.show()
    
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  • length of the entire time data = 40000000 Commented Sep 30, 2022 at 8:56
  • Please include your import statement, so we know what functions you are calling. You should use fftfreq to get the frequencies associated with each sample in the frequency domain. Commented Sep 30, 2022 at 13:14

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