认知雷达的智能干扰信号设计

Bosung Kana, Vikram Krishnamnurthy, Kunal Pattanayak, S. Gogineni, M. Rangaswamy
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引用次数: 2

摘要

本文研究了一个涉及认知雷达的对抗推理问题。本文所描述的博弈论框架包括“我们”和“对手”。我们的目标是设计一个外部干扰信号,用给定的雷达信号信息混淆敌方雷达。优化问题的建立是为了使所设计干扰的信号功率最小,同时使雷达的信杂波加噪比(SCNR)超过一定SCNR水平的概率小于指定的阈值。由于约束是基于不可微的概率密度函数(PDF),因此所得到的问题是一个具有挑战性的优化问题。通过取SCNR的期望值,利用半定松弛将问题松弛为一个凸问题。利用RFView高保真建模仿真工具,仿真结果验证了所设计干扰的性能。
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Smart Interference Signal Design to a Cognitive Radar
This paper addresses an adversarial inference problem involving cognitive radars. The game theoretic framework described in this paper comprises “us” and an “adversary”. Our goal is to design an external interference signal that confuses the adversary radar with given information of the signals of the radar. The optimization problem is formulated such that the signal power of the designed interference is minimized while enforcing the probability that the signal-to-clutter-plus-noise ratio (SCNR) of the radar exceeds a certain SCNR level to be less than a specified threshold. The resulting problem is a challenging optimization problem since the constraint is based on a probability density function (PDF), which is non-differentiable. By taking an expected value of the SCNR, the problem is relaxed to a convex problem using the semidefinite relaxation. The simulation results verify the performance of the designed interference using the high-fidelity modeling and simulation tool, RFView.
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