A New Statistical Method for Determining the Clutter Covariance Matrix in Spatial-Temporal Adaptive Processing of a Radar Signal

Sensors (Basel). 2023 Apr 26;23(9):4280. doi: 10.3390/s23094280.

Abstract

In this article, a new statistical method for estimating the clutter covariance matrix in space-time adaptive radar signal processing (STAP) is presented and studied. The new method was designed for multiple-input-multiple-output (MIMO) radar with time division multiplexing (TDM). An extensive analysis of statistical and non-statistical methods for estimating the clutter covariance matrix in STAP is presented in this paper. In addition, the STAP algorithm for the standard statistical SMI clutter covariance matrix estimation method, which is based on QR distribution, has been presented. The new method is based on LU distribution with partial pivoting. Simulation results confirm the validity of the presented model and theoretical assumptions. In addition, more accurate object detection results were demonstrated for specific computational examples than for other statistical methods. Considering the current analysis of the literature, it is noted that attention has now been focused worldwide on the study of non-statistical methods for estimating clutter covariance matrices in heterogeneous environments. Hence, it should be emphasized that the posted study fills a gap in current research on STAP.

Keywords: radar MIMO; sample matrix inversion; space–time adaptive processing.

Grants and funding

This research received no external funding.