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Use OCW to download, normalize and evaluate two datasets
against an OCW metric (bias) and plot the results of the
evaluation (contour map).
In this example:
1. Download two netCDF files from a local site.
2. Load the local files into OCW dataset objects.
3. Temporally rebin the data anually.
4. Spatially regrid the dataset objects to a 1 degree grid.
5. Build a bias metric to use for evaluation use the standard OCW metric set.
6. Create an evaluation object using the datasets and metric.
7. Plot the results of the evaluation (contour map).
OCW modules demonstrated:
1. datasource/local
2. dataset_processor
3. evaluation
4. metrics
5. plotter
from __future__ import print_function
import sys
from os import path
import numpy as np
import ocw.data_source.local as local
import ocw.dataset_processor as dsp
import ocw.evaluation as evaluation
import ocw.metrics as metrics
import ocw.plotter as plotter
import tempfile
if sys.version_info[0] >= 3:
from urllib.request import urlretrieve
# Not Python 3 - today, it is most likely to be Python 2
# But note that this might need an update when Python 4
# might be around one day
from urllib import urlretrieve
# File URL leader
# Two Local Model Files
FILE_1 = ""
FILE_2 = ""
# Filename for the output image/plot (without file extension)
OUTPUT_PLOT = "wrf_bias_compared_to_knmi"
# Retrieve the local model files into the OS-aware temp directory.
tempdir = tempfile.gettempdir()
FILE_1_PATH = path.join(tempdir, FILE_1)
FILE_2_PATH = path.join(tempdir, FILE_2)
if not path.exists(FILE_1_PATH):
urlretrieve(FILE_LEADER + FILE_1, FILE_1_PATH)
if not path.exists(FILE_2_PATH):
urlretrieve(FILE_LEADER + FILE_2, FILE_2_PATH)
# Step 1: Load Local NetCDF Files into OCW Dataset Objects.
print("Loading %s into an OCW Dataset Object" % (FILE_1_PATH,))
knmi_dataset = local.load_file(FILE_1_PATH, "tasmax")
print("KNMI_Dataset.values shape: (times, lats, lons) - %s \n" %
print("Loading %s into an OCW Dataset Object" % (FILE_2_PATH,))
wrf_dataset = local.load_file(FILE_2_PATH, "tasmax")
print("WRF_Dataset.values shape: (times, lats, lons) - %s \n" %
# Step 2: Temporally Rebin the Data into an Annual Timestep.
print("Temporally Rebinning the Datasets to an Annual Timestep")
knmi_dataset = dsp.temporal_rebin(knmi_dataset, temporal_resolution='annual')
wrf_dataset = dsp.temporal_rebin(wrf_dataset, temporal_resolution='annual')
print("KNMI_Dataset.values shape: %s" % (knmi_dataset.values.shape,))
print("WRF_Dataset.values shape: %s \n\n" % (wrf_dataset.values.shape,))
# Step 3: Spatially Regrid the Dataset Objects to a 1 degree grid.
# The spatial_boundaries() function returns the spatial extent of the dataset
print("The KNMI_Dataset spatial bounds (min_lat, max_lat, min_lon, max_lon) are: \n"
"%s\n" % (knmi_dataset.spatial_boundaries(), ))
print("The KNMI_Dataset spatial resolution (lat_resolution, lon_resolution) is: \n"
"%s\n\n" % (knmi_dataset.spatial_resolution(), ))
min_lat, max_lat, min_lon, max_lon = knmi_dataset.spatial_boundaries()
# Using the bounds we will create a new set of lats and lons on 1 degree step
new_lons = np.arange(min_lon, max_lon, 1)
new_lats = np.arange(min_lat, max_lat, 1)
# Spatially regrid datasets using the new_lats, new_lons numpy arrays
print("Spatially Regridding the KNMI_Dataset...")
knmi_dataset = dsp.spatial_regrid(knmi_dataset, new_lats, new_lons)
print("Final shape of the KNMI_Dataset: \n"
"%s\n" % (knmi_dataset.values.shape, ))
print("Spatially Regridding the WRF_Dataset...")
wrf_dataset = dsp.spatial_regrid(wrf_dataset, new_lats, new_lons)
print("Final shape of the WRF_Dataset: \n"
"%s\n" % (wrf_dataset.values.shape, ))
# Step 4: Build a Metric to use for Evaluation - Bias for this example.
# You can build your own metrics, but OCW also ships with some common metrics
print("Setting up a Bias metric to use for evaluation")
bias = metrics.Bias()
# Step 5: Create an Evaluation Object using Datasets and our Metric.
# The Evaluation Class Signature is:
# Evaluation(reference, targets, metrics, subregions=None)
# Evaluation can take in multiple targets and metrics, so we need to convert
# our examples into Python lists. Evaluation will iterate over the lists
print("Making the Evaluation definition")
bias_evaluation = evaluation.Evaluation(knmi_dataset, [wrf_dataset], [bias])
print("Executing the Evaluation using the object's run() method")
# Step 6: Make a Plot from the Evaluation.results.
# The Evaluation.results are a set of nested lists to support many different
# possible Evaluation scenarios.
# The Evaluation results docs say:
# The shape of results is (num_metrics, num_target_datasets) if no subregion
# Accessing the actual results when we have used 1 metric and 1 dataset is
# done this way:
print("Accessing the Results of the Evaluation run")
results = bias_evaluation.results[0][0]
print("The results are of type: %s" % type(results))
# From the bias output I want to make a Contour Map of the region
print("Generating a contour map using ocw.plotter.draw_contour_map()")
lats = new_lats
lons = new_lons
gridshape = (4, 5) # 20 Years worth of plots. 20 rows in 1 column
plot_title = "TASMAX Bias of WRF Compared to KNMI (1989 - 2008)"
sub_titles = range(1989, 2009, 1)
plotter.draw_contour_map(results, lats, lons, fname,
gridshape=gridshape, ptitle=plot_title,