Abstract

The novel sensing technology airborne passive bistatic radar (PBR) has the problem of being affecting by multipath components in the reference signal. Due to the movement of the receiving platform, different multipath components contain different Doppler frequencies. When the contaminated reference signal is used for space–time adaptive processing (STAP), the power spectrum of the spatial–temporal clutter is broadened. This can cause a series of problems, such as affecting the performance of clutter estimation and suppression, increasing the blind area of target detection, and causing the phenomenon of target self-cancellation. To solve this problem, the authors of this paper propose a novel algorithm based on sparse Bayesian learning (SBL) for direct clutter estimation and multipath clutter suppression. The specific process is as follows. Firstly, the space–time clutter is expressed in the form of covariance matrix vectors. Secondly, the multipath cost is decorrelated in the covariance matrix vectors. Thirdly, the modeling error is reduced by alternating iteration, resulting in a space–time clutter covariance matrix without multipath components. Simulation results showed that this method can effectively estimate and suppress clutter when the reference signal is contaminated.

Highlights

  • A spatial–temporal clutter snapshot with multipath is expressed in the form of covariance, and the multipath components are decorrelated in the covariance vector

  • Aiming to solve the problem of degraded clutter suppression performance due to the contamination of the reference signal in airborne passive bistatic radar (PBR), a novel algorithm of multipath clutter suppression based on sparse Bayesian learning was proposed in this paper

  • The spatial–temporal clutter snapshot with multipath is expressed in the form of covariance, and the multipath components are decorrelated in the covariance vector

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Multipath reference signals cause a series of problems due to the clutter cancellation and target detection of airborne PBR. It is necessary to design an effective algorithm that allows airborne PBR to effectively suppress spatial–temporal clutter and detect targets when the reference signal is contaminated. Aiming to solve the contaminated reference signal problem of airborne PBR, the authors of this paper propose a clutter suppression method based on the sparse Bayesian learning (SBL) methods [29]. Simulation results showed that the proposed algorithm can effectively estimate and suppress clutter when the reference signal is contaminated. The reference antenna receives a direct wave signal from a non-cooperative emission source and the multipath signal reflected by the strong point. It is necessary to propose corresponding algorithms to suppress the influence of the multipath reference signal

Proposed Algorithm
Direct Path Clutter Sparse Model
Covariance Matrix with Multipath Clutter and Its Decorrelation
T b b H
Proposed Algorithm Based on Sparse Bayesian Learning
Noise Power Estimation
Summary
Simulations and Performance Analyses
Spatial–Temporal Clutter Spectrum
Improvement Factor of Signal-to-Noise Ratio
Performance with Different Number of Multipaths
Performance with Different Multipath Intensity
Findings
Conclusions
Full Text
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