0

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.

<xarray.Dataset>
Dimensions:                        (latitude: 106, longitude: 193, time: 92)
Coordinates:
  * 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
0

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:

<xarray.Dataset>
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.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.