environmentaltools.graphics.era5_time_series_plot
- environmentaltools.graphics.era5_time_series_plot(data, variable_name: str = 'swh', variable_label: str = 'Significant Wave Height', variable_units: str = 'm', start_year: int = None, end_year: int = None, output_path: str = None, file_name: str = None) str[source]
Create a comprehensive time series plot of ERA5 data.
Creates a multi-panel visualization including: - Complete time series - Monthly statistics (mean, IQR, max) - Distribution histogram with mean and 95th percentile
- Parameters:
data (pd.DataFrame) – Data with datetime index and variable column.
variable_name (str, optional) – Column name in dataframe. Defaults to ‘swh’.
variable_label (str, optional) – Label for plots. Defaults to ‘Significant Wave Height’.
variable_units (str, optional) – Units for axis labels. Defaults to ‘m’.
start_year (int, optional) – Start year for plot title. If None, extracted from data.
end_year (int, optional) – End year for plot title. If None, extracted from data.
output_path (str, optional) – Directory to save plot. If None, uses current directory.
file_name (str, optional) – Custom filename. If None, auto-generated.
- Returns:
Path to the saved plot file.
- Return type:
str
- Raises:
ValueError – If plot creation fails.
Example
>>> import pandas as pd >>> from environmentaltools.graphics.spatiotemporal import era5_time_series_plot >>> >>> # For wave height >>> plot_path = era5_time_series_plot( ... data, ... variable_name='swh', ... variable_label='Significant Wave Height', ... variable_units='m', ... output_path='./plots' ... ) >>> >>> # For wind speed >>> plot_path = era5_time_series_plot( ... data, ... variable_name='u10', ... variable_label='10m U Wind', ... variable_units='m/s' ... )