pyfvcom2.lanczos module
- class pyfvcom2.lanczos.LanczosFilter(dt: float = 1, cutoff: float = None, samples: int = 100, passtype: str = 'low')[source]
Bases:
objectLanczos low- or high-pass filter.
Creates a filter object with fixed parameters. Call filter() to apply it to a 1-D time series.
- Parameters:
dt (float, optional) – Sampling interval in minutes. Defaults to 1.
cutoff (float, optional) – Cutoff period in minutes. Defaults to half the Nyquist period.
samples (int, optional) – Number of samples (window length). Defaults to 100.
passtype (str, optional) –
'low'for low-pass (default) or'high'for high-pass.
Notes
Python reimplementation of the MATLAB lanczosfilter.m function: https://mathworks.com/matlabcentral/fileexchange/14041
NaN values are replaced by the time-series mean before filtering.
References
Emery, W. J. and R. E. Thomson. “Data Analysis Methods in Physical Oceanography”. Elsevier, 2nd ed., 2004, pp. 533-539.
- pyfvcom2.lanczos.lanczos(x: ndarray, dt: float = 1, cutoff: float = None, samples: int = 100, passtype: str = 'low')[source]
Apply a Lanczos low- or high-pass filter to a 1-D time series.
- Parameters:
x (np.ndarray) – 1-D time series values.
dt (float, optional) – Sampling interval in minutes. Defaults to 1.
cutoff (float, optional) – Cutoff period in minutes. Defaults to half the Nyquist period.
samples (int, optional) – Number of samples (window length). Defaults to 100.
passtype (str, optional) –
'low'for low-pass (default) or'high'for high-pass.
- Returns:
y (np.ndarray) – Filtered time series.
coef (np.ndarray) – Cosine window coefficients.
window (np.ndarray) – Frequency-domain window.
Cx (np.ndarray) – Complex Fourier transform of x (half-spectrum).
Ff (np.ndarray) – Fourier frequencies from 0 to the Nyquist frequency.
Notes
Python reimplementation of the MATLAB lanczosfilter.m function: https://mathworks.com/matlabcentral/fileexchange/14041
NaN values are replaced by the time-series mean before filtering.
References
Emery, W. J. and R. E. Thomson. “Data Analysis Methods in Physical Oceanography”. Elsevier, 2nd ed., 2004, pp. 533-539.