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=== '''Overview''' ===
 
=== '''Overview''' ===
 
The goal of RadxRate is to estimate the precipitation rate at each gate within a three-dimensional radar volume. RadxRate includes several equations for estimating precipitation rate, which can be tuned according to the specific environment and precipitation type. All the coefficients for the equations are edited in the [http://wiki.lrose.net/index.php/RadxRate#4.29_Rate-specific_parameter_file rate] parameter file. This page will walk through these equations.
 
The goal of RadxRate is to estimate the precipitation rate at each gate within a three-dimensional radar volume. RadxRate includes several equations for estimating precipitation rate, which can be tuned according to the specific environment and precipitation type. All the coefficients for the equations are edited in the [http://wiki.lrose.net/index.php/RadxRate#4.29_Rate-specific_parameter_file rate] parameter file. This page will walk through these equations.
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===== '''Polarimetric-based estimates''' =====
 
===== '''Polarimetric-based estimates''' =====

Revision as of 21:13, 27 January 2021

Overview

The goal of RadxRate is to estimate the precipitation rate at each gate within a three-dimensional radar volume. RadxRate includes several equations for estimating precipitation rate, which can be tuned according to the specific environment and precipitation type. All the coefficients for the equations are edited in the rate parameter file. This page will walk through these equations.


Polarimetric-based estimates
R(Z)

Probably the most straightforward method of estimating precipitation rates, precipitation (mostly rainfall) can be estimated using an equation in the following form:

Many variations of this equation exist, depending on the precipitation conditions (e.g., convective vs stratiform, tropical vs midlatitude). An example of the estimated precipitation using a tropical version of this equation from northern Taiwan is shown in the image below. Since this particular example is from the lowest elevation angle, the echoes within ~150 km should all correspond to rain. Coefficients for Z-R relationships have been developed for dry snow, but aren't shown here given the warm environment near Taiwan.

Rate rzh.png


R(Z, ZDR)

Z-R relationships are known to be overly simplistic, as reflectivity depends on both hydrometeor size and concentration and single polarization only captures hydrometeor size in one dimension. The inclusion of ZDR helps mitigate the impact big drops have on Z. R(Z,ZDR) relationships take the form:

An example of the estimated precipitation using coefficients from Berkowitz et al. (2013) is shown below.

Rate rzhzdr.png


R(KDP)

KDP has been used to estimate precipitation due to its relationship to the rain water content that slows down the propagating wave. Benefits of R(KDP) algorithms include insensitivity to radar calibration, attenuation, partial beam blockage, and ground clutter (Zrnić and Ryzhkov 1996), though care must be taken in calculating KDP and in Mie-scattering regimes. In RadxRate, R(KDP) takes the following form:

An example of the estimated precipitation using coefficients from Berkowitz et al. (2013) is shown below.

Rate rkdp.png


R(KDP, ZDR)

Like the R(Z, ZDR) algorithms, R(KDP, ZDR) algorithms combine the rain water content and particle size information that can be inferred from KDP and ZDR.

An example of the estimated precipitation using coefficients from Bringi and Chandrasekar (2001) and Brandes et al. (2002) is shown below.

Rate rkdpzdr.png


PID-based estimates

In addition to the aforementioned relationships that estimate precipitation rates directly from polarimetric variables, RadxRate includes relationships that prescribe different relationships based on the dominant hydrometeor type inferred from the polarimetric radar data. That is, these PID-based algorithms will apply different equations to gates dominated by large raindrops and dry snow. All require the PID algorithm to be applied to the radar volume, which is done in an earlier step of RadxRate.


NCAR Hybrid

The NCAR Hybrid method applies some of the aforementioned precipitation rate equations to different PID categories. The method is described in the logical decision tree below (Dixon et al. 2015) and an example of the NCAR Hybrid method is also shown (right image).

Ncar hybrid.pngRate rhybrid 2.png


NCAR Weighted-PID

The NCAR Weighted-PID method applies some of the aforementioned precipitation rate equations to different PID categories, which are weighted by the interest values assigned by the PID algorithm. The method is described in the logical decision tree below (Dixon et al. 2015) and an example of the NCAR Weighted-PID method is also shown (right image).

Pid weighted.pngRate rpid.png


CSU HIDRO

Like the NCAR Hybrid method, the HIDRO method applies the aforementioned precipitation rate equations to different PID categories. The method is described in the logical decision tree below (Cifelli et al. 2011) and an example of the HIDRO method is also shown (right image).

Hidro hybrid.jpgRate rhidro.png


Bringi

Like the NCAR Hybrid method, the Bringi method applies the aforementioned precipitation rate equations to different PID categories. The method is described in the logical decision tree below (Bringi et al. 2009) and an example of the Bringi method is also shown (right image). We note that the equations mentioned in the linked citation were specifically optimized for a C-band radar.

Bringi hybrid.gifRate rbringi.png


References

Berkowitz, D. S., J. A Schultz, S. Vasiloff, K.L. Elmore, C.D. Payne and J.B. Boettcher, 2013: Status of Dual Pol QPE in the WSR-88D Network. AMS 27th conference on hydrology, Austin, Texas, 2.2. Link

Brandes, E. A., G. Zhang, and J. Vivekanandan, 2002: Experiments in rainfall estimation with a polarimetric radar in a subtropical environment. J. Appl. Meteor., 41, 674–685. Link

Bringi, V. N., and V. Chandrasekar, 2001: Polarimetric Doppler Weather Radar. Principles and Applications. Cambridge University Press, 636 pp. Book

Bringi, V. N., Williams, C. R., Thurai, M., & May, P. T. (2009). Using Dual-Polarized Radar and Dual-Frequency Profiler for DSD Characterization: A Case Study from Darwin, Australia, Journal of Atmospheric and Oceanic Technology, 26(10), 2107-2122. Link

Cifelli, R., Chandrasekar, V., Lim, S., Kennedy, P. C., Wang, Y., & Rutledge, S. A. (2011). A New Dual-Polarization Radar Rainfall Algorithm: Application in Colorado Precipitation Events, Journal of Atmospheric and Oceanic Technology, 28(3), 352-364. Link

Dixon, M. J., J. W. Wilson, T. M. Weckwerth, D. Albo, and E. J. Thompson, 2015: A dual-polarization QPE method based on the NCAR particle ID algorithm: Description and preliminary results. 37th Conf. on Radar Meteorology, Norman, OK, Amer. Meteor. Soc., 9A.1. Link

Ryzhkov, A. V., Giangrande, S. E., & Schuur, T. J. (2005). Rainfall Estimation with a Polarimetric Prototype of WSR-88D, Journal of Applied Meteorology, 44(4), 502-515. Link

Zrnić, D. S., and A. Ryzhkov. 1996. Advantages of rain measurements using specific differential phase. J. Atmos. Oceanic Technol. 13:454–464. Link