pygmt.filter1d
- pygmt.filter1d(data, output_type='pandas', outfile=None, **kwargs)[source]
- Time domain filtering of 1-D data tables. - A general time domain filter for multiple column time series data. The user specifies which column is the time (i.e., the independent variable) via - time_col. The fastest operation occurs when the input time series are equally spaced and have no gaps or outliers and the special options are not needed. Read a table and output as a- numpy.ndarray,- pandas.DataFrame, or ASCII file.- Full option list at https://docs.generic-mapping-tools.org/6.5/filter1d.html - Aliases: - E = end 
 - F = filter_type 
 - N = time_col 
 - Parameters:
- output_type ( - Literal[- 'pandas',- 'numpy',- 'file'], default:- 'pandas') –- Desired output type of the result data. - pandaswill return a- pandas.DataFrameobject.
- numpywill return a- numpy.ndarrayobject.
- filewill save the result to the file specified by the- outfileparameter.
 
- outfile ( - str|- None, default:- None) – File name for saving the result data. Required if- output_type="file". If specified,- output_typewill be forced to be- "file".
- filter_type (str) – - typewidth[+h]. Set the filter type. Choose among convolution and non-convolution filters. Append the filter code followed by the full filter width in same units as time column. By default, this performs a low-pass filtering; append +h to select high-pass filtering. Some filters allow for optional arguments and a modifier. - Available convolution filter types are: - b: boxcar. All weights are equal. 
- c: cosine arch. Weights follow a cosine arch curve. 
- g: Gaussian. Weights are given by the Gaussian function. 
- f: custom. Instead of width give name of a one-column file with your own weight coefficients. 
 - Non-convolution filter types are: - m: median. Returns median value. 
- p: maximum likelihood probability (a mode estimator). Return modal value. If more than one mode is found we return their average value. Append +l or +u if you rather want to return the lowermost or uppermost of the modal values. 
- l: lower (absolute). Return the minimum of all values. 
- L: lower. Return minimum of all positive values only. 
- u: upper (absolute). Return maximum of all values. 
- U: upper. Return maximum of all negative values only. 
 - Upper case type B, C, G, M, P, F will use robust filter versions: i.e., replace outliers (2.5 L1 scale off median, using 1.4826 * median absolute deviation [MAD]) with median during filtering. - In the case of L|U it is possible that no data passes the initial sign test; in that case the filter will return 0.0. Apart from custom coefficients (f), the other filters may accept variable filter widths by passing width as a two-column time-series file with filter widths in the second column. The filter-width file does not need to be co-registered with the data as we obtain the required filter width at each output location via interpolation. For multi-segment data files the filter file must either have the same number of segments or just a single segment to be used for all data segments. 
- end (bool) – Include ends of time series in output. The default [False] loses half the filter-width of data at each end. 
- time_col (int) – Indicate which column contains the independent variable (time). The left-most column is 0, while the right-most is (n_cols - 1) [Default is - 0].
 
- Return type:
- Returns:
- ret – Return type depends on - outfileand- output_type:- Noneif- outfileis set (output will be stored in the file set by- outfile)
- pandas.DataFrameor- numpy.ndarrayif- outfileis not set (depends on- output_type)