I have the following xarray DataSet with 3 dimensions (time, latitude, longitude) and 2 variables (__xarray_dataarray_variable__, regions). The regions variable can be either nan, 0, 1, 2, 3, 4, or 5 indicating the region Id for the lat/lon. The __xarray_dataarray_variable__ variable is of integer.

Dimensions:                        (latitude: 106, longitude: 193, time: 92)
  * latitude                       (latitude) float32 -39.2 -39.149525 ... -33.9
  * longitude                      (longitude) float32 140.8 140.84792 ... 150.0
  * time                           (time) datetime64[ns] 1972-01-01 ... 2017-07-01
Data variables:
    __xarray_dataarray_variable__  (time, latitude, longitude) int32 dask.array<shape=(92, 106, 193), chunksize=(2, 106, 193)>
    regions                        (latitude, longitude) float64 nan nan ... nan

I would like plot a figure which contains 6 lines and where the Y axis is the spatial mean value of __xarray_dataarray_variable__ and X axis is the time. Each line is for one region Id.

da = ds["__xarray_dataarray_variable__"]

# Region 0
da_region_0 = da.where(ds.regions == 0)
da_region_0_mean = da_region.mean(['longitude', 'latitude'])  # Get spatial mean

# We can follow the example to get da for region 1 - region 5.
... ...
p_mean = da_region_0_mean.plot.line(x='time')  # This is only plotting a figure for each region but not all 6 regions.

How can I plot one single figure that contains lines for all 6 regions instead of individual figures for each using the xarray plot capability?

  • Did you try creating a figure and supplying its axis to each of your line plots? That should help if you want to overlay multiple xarray plots in one figure – Light_B Apr 15 at 5:52

I think I understand what you are looking for. This is the way that I would approach it. I'll set up some data in the style of yours first:

import matplotlib.pyplot as plt
import numpy as np
import xarray as xr

data = np.random.random((6, 3, 11))
da = xr.DataArray(data, dims=['longitude', 'latitude', 'time'], name='foo')

region_data = np.random.choice(range(6), size=(6, 3))
region = xr.DataArray(region_data, dims=['longitude', 'latitude'], name='region')

ds = xr.merge([da, region])

This Dataset, ds, looks like:

Dimensions:  (latitude: 3, longitude: 6, time: 11)
Dimensions without coordinates: latitude, longitude, time
Data variables:
    foo      (longitude, latitude, time) float64 0.7016 0.1519 ... 0.1446 0.2396
    region   (longitude, latitude) int64 5 1 1 5 0 1 0 0 2 3 0 4 4 3 3 1 2 1

To compute the regional means, we can first stack the longitude and latitude dimensions of the Dataset:

stacked = ds.stack(xy=('longitude', 'latitude'))

This will enable us to easily use groupby to group by region number when computing the mean:

regional_means = stacked.foo.groupby(stacked.region).mean('xy')

To plot, we can use xarray.DataArray.plot.line along with the hue keyword argument to produce a single panel with time series lines for each region:

lines = regional_means.plot.line(hue='region', add_legend=False)
labels = range(6)
plt.legend(lines, labels, ncol=2, loc='lower right')

Here we have opted to create our own legend to give us as much control as possible over its position and format. This produces a plot like this:

Multi-line plot

More line plotting examples can be found here.

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