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Main Authors: Liu, Liangqi, Pu, Wenqiang, Li, Yingru, Jiu, Bo, Luo, Zhi-Quan
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.16274
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author Liu, Liangqi
Pu, Wenqiang
Li, Yingru
Jiu, Bo
Luo, Zhi-Quan
author_facet Liu, Liangqi
Pu, Wenqiang
Li, Yingru
Jiu, Bo
Luo, Zhi-Quan
contents The dynamic competition between radar and jammer systems presents a significant challenge for modern Electronic Warfare (EW), as current active learning approaches still lack sample efficiency and fail to exploit jammer's characteristics. In this paper, the competition between a frequency agile radar and a Digital Radio Frequency Memory (DRFM)-based intelligent jammer is considered. We introduce an Online Convex Optimization (OCO) framework designed to illustrate this adversarial interaction. Notably, traditional OCO algorithms exhibit suboptimal sample efficiency due to the limited information obtained per round. To address the limitations, two refined algorithms are proposed, utilizing unbiased gradient estimators that leverage the unique attributes of the jammer system. Sub-linear theoretical results on both static regret and universal regret are provided, marking a significant improvement in OCO performance. Furthermore, simulation results reveal that the proposed algorithms outperform common OCO baselines, suggesting the potential for effective deployment in real-world scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2402_16274
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Radar Anti-jamming Strategy Learning via Domain-knowledge Enhanced Online Convex Optimization
Liu, Liangqi
Pu, Wenqiang
Li, Yingru
Jiu, Bo
Luo, Zhi-Quan
Signal Processing
The dynamic competition between radar and jammer systems presents a significant challenge for modern Electronic Warfare (EW), as current active learning approaches still lack sample efficiency and fail to exploit jammer's characteristics. In this paper, the competition between a frequency agile radar and a Digital Radio Frequency Memory (DRFM)-based intelligent jammer is considered. We introduce an Online Convex Optimization (OCO) framework designed to illustrate this adversarial interaction. Notably, traditional OCO algorithms exhibit suboptimal sample efficiency due to the limited information obtained per round. To address the limitations, two refined algorithms are proposed, utilizing unbiased gradient estimators that leverage the unique attributes of the jammer system. Sub-linear theoretical results on both static regret and universal regret are provided, marking a significant improvement in OCO performance. Furthermore, simulation results reveal that the proposed algorithms outperform common OCO baselines, suggesting the potential for effective deployment in real-world scenarios.
title Radar Anti-jamming Strategy Learning via Domain-knowledge Enhanced Online Convex Optimization
topic Signal Processing
url https://arxiv.org/abs/2402.16274