Improving Signal Statistics Using a Regression Ground Clutter Filter. Part 1: Theory and Simulations

Author:

Hubbert J.C.1,Meymaris G.1,Romatschke U.1,Dixon M.1

Affiliation:

1. National Center for Atmospheric Research, Boulder CO

Abstract

AbstractGround clutter filtering is an important and necessary step for quality control of ground-based weather radars. In this two-part paper ground clutter mitigation is addressed using a time-domain regression filter. Clutter filtering is now widely accomplished with spectral processing where the times series of data corresponding to a radar resolution volume are transformed with a Discrete Fourier Transform after which the zero and near-zero velocity clutter components are eliminated by setting them to zero. Subsequently for reectivity, velocity and spectrum width estimates, interpolation techniques are used to recover some of the power loss due to the clutter filter, which has been shown to reduce bias. The spectral technique requires that the I (in-phase) and Q (quadrature) time series be windowed in order to reduce clutter power leakage away from zero and near-zero velocities. Unfortunately, window functions such as the Hamming, Hann and Blackman attenuate the time series signal by 4.01, 4.19 and 5.23 dB for 64-point times series, respectively, and thereby effectively reduce the number of independent samples available for estimating the radar parameters of any underlying weather echo. Here in Part 1 a regression filtering technique is investigated, via simulated data, which does not require the use of such window functions and thus provides for better weather signal statistics. In Part 2 (Hubbert et al. 2021) the technique is demonstrated using both S-Pol and NEXRAD data. It is shown that the regression filter rejects clutter as effectively as the spectral technique but has the distinct advantage that estimates of the radar variables are greatly improved. The technique is straightforward and can be executed in real time.

Publisher

American Meteorological Society

Subject

Atmospheric Science,Ocean Engineering

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1. Enhancing precipitation estimation accuracy: An evaluation of traditional and machine learning approaches in rainfall predictions;Journal of Atmospheric and Solar-Terrestrial Physics;2024-02

2. Ground Clutter and Noise Mitigation Based on Range–Doppler Spectral Processing for Polarimetric Weather Radar;IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing;2024

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