LGSPJun 21, 2023

Resilient Sparse Array Radar with the Aid of Deep Learning

arXiv:2306.12285v11 citationsh-index: 52
Originality Incremental advance
AI Analysis

This addresses sensor failure issues in radar systems, offering incremental improvements for domain-specific applications.

The paper tackles the problem of direction of arrival estimation for multiple targets in sparse arrays with sensor failures, proposing two deep learning methods that significantly improve performance, maintaining resolution and even outperforming the original array at low SNR due to denoising effects.

In this paper, we address the problem of direction of arrival (DOA) estimation for multiple targets in the presence of sensor failures in a sparse array. Generally, sparse arrays are known with very high-resolution capabilities, where N physical sensors can resolve up to $\mathcal{O}(N^2)$ uncorrelated sources. However, among the many configurations introduced in the literature, the arrays that provide the largest hole-free co-array are the most susceptible to sensor failures. We propose here two machine learning (ML) methods to mitigate the effect of sensor failures and maintain the DOA estimation performance and resolution. The first method enhances the conventional spatial smoothing using deep neural network (DNN), while the second one is an end-to-end data-driven method. Numerical results show that both approaches can significantly improve the performance of MRA with two failed sensors. The data-driven method can maintain the performance of the array with no failures at high signal-tonoise ratio (SNR). Moreover, both approaches can even perform better than the original array at low SNR thanks to the denoising effect of the proposed DNN

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