Difference between revisions of "Csu radartools tutorial"
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Blanked sector over the wheelhouse: we will look for large blocks of azimuthal jumps to mask them.</br> | Blanked sector over the wheelhouse: we will look for large blocks of azimuthal jumps to mask them.</br> | ||
For some reason the correlation coefficient was not correct but can be calculated from the UNKNOWN field</br> | For some reason the correlation coefficient was not correct but can be calculated from the UNKNOWN field</br> | ||
− | |||
###These are PECULIARS TO THE SEA-POL DATA. YMMV</br> | ###These are PECULIARS TO THE SEA-POL DATA. YMMV</br> | ||
#Get the difference between each azimuth and look for jumps larger than 30º. If so, mask the data so it plots correctly.</br> | #Get the difference between each azimuth and look for jumps larger than 30º. If so, mask the data so it plots correctly.</br> | ||
+ | <code lang="python" line> | ||
az_diff = np.diff(radar.azimuth['data'])</br> | az_diff = np.diff(radar.azimuth['data'])</br> | ||
jumps = np.where(np.abs(az_diff) >= 30.0)[0]</br> | jumps = np.where(np.abs(az_diff) >= 30.0)[0]</br> | ||
Line 71: | Line 71: | ||
radar.fields[f]['data'][j].mask = True</br> | radar.fields[f]['data'][j].mask = True</br> | ||
radar.fields[f]['data'][j+1].mask = True</br> | radar.fields[f]['data'][j+1].mask = True</br> | ||
− | |||
#Now correct the Untitled field to transform into the correlation coefficient.</br> | #Now correct the Untitled field to transform into the correlation coefficient.</br> | ||
ccorr = deepcopy(radar.fields['UNKNOWN_ID_82']['data'])</br> | ccorr = deepcopy(radar.fields['UNKNOWN_ID_82']['data'])</br> |
Revision as of 17:55, 18 August 2021
Contents
Overview
This tutorial will walk through the steps to read and convert a raw radar file, quality control the data (removing unwanted artifacts and echoes, unfold radial velocity and calculate Kdp), then grid the data, and finally process the gridded data to end up with hydrometeor identification, precipitation rates, and DSD information. This is generally focused on surface polarimetric X, C, or S-band radar. We will apply a series of corrections
- Unfold radial velocity
- Calculate Kdp
- Apply thresholds to remove non-meteorological data
- Calculate the attenuation and differential attenuation
- Despeckle and remove 2nd trip
Modules available from GitHub
Scientific Background
Step-by-step Instructions
The Example file is from the C-band polarimetric SEA-POL radar. The raw data are in sigmet native format:
SEA20190917_073004
- First convert the data to cfradial data to be more easily transferable to other programs.
We can do this from a command line, but we can also do it from python with the os command.
mydir = '/Users/bdolan/scratch/LROSE/SEA-POL/ppi/'
os.system(f'RadxConvert -f {mydir}SEA20190917_071005 -outdir {mydir}cfrad')
This will put the output in a directory for the date in directory 'cfrad'.
Now we have a file called:
cfrad.20190917_071006.545_to_20190917_071353.149_SEAPOL_SUR.nc
There are a lot of variables in this file, but the ones of interest are:
DBZ: Reflectivity
ZDR: Differential Reflectivity’
UNKNOWN_ID_82: Correlation Coefficient
VEL: Radial velocity
SQI: Signal Quality Index
PHIDP: Differential phase
SNR: Signal to noise ratio
- Next do some quality control using PyART and CSU_Radartools.
import numpy as np
from copy import deepcopy
import os
import pyart
from CSU_RadarTools.csu_radartools import csu_kdp
from CSU_RadarTools.csu_radartools import csu_misc
Special handling for SEA-POL:
Blanked sector over the wheelhouse: we will look for large blocks of azimuthal jumps to mask them.
For some reason the correlation coefficient was not correct but can be calculated from the UNKNOWN field
- These are PECULIARS TO THE SEA-POL DATA. YMMV
- These are PECULIARS TO THE SEA-POL DATA. YMMV
- Get the difference between each azimuth and look for jumps larger than 30º. If so, mask the data so it plots correctly.
az_diff = np.diff(radar.azimuth['data'])
jumps = np.where(np.abs(az_diff) >= 30.0)[0]
if len(jumps):
for f in radar.fields.keys():
for j in jumps:
radar.fields[f]['data'][j].mask = True
radar.fields[f]['data'][j+1].mask = True
- Now correct the Untitled field to transform into the correlation coefficient.
ccorr = deepcopy(radar.fields['UNKNOWN_ID_82']['data'])
ccorr[ccorr<0] += 65535
ccorr = (ccorr-1)/65533.0
radar.add_field_like('RHOHV','CC',ccorr)