论文标题
雷达如何掩盖其认知?
How can a Radar Mask its Cognition?
论文作者
论文摘要
认知雷达是一种受约束的效用最大化器,可根据不断变化的环境调整其传感模式。如果对手可以估计认知雷达的效用函数,则可以确定雷达的传感策略,并通过电子对策(ECM)来减轻雷达的性能。本文讨论了认知雷达如何从检测认知的对手中{\ em隐藏}其策略。雷达通过有目的地设计的亚最佳响应来欺骗对手的尼曼 - 佩森探测器来做到这一点。我们通过确保对手检测器的I型错误概率超过预定义的水平来提供理论保证。我们通过涉及波形适应和光束分配的数值示例来说明我们的认知掩蔽方案。我们表明,与雷达的最佳策略的小针对性偏差使对手大量混淆,从而掩盖了雷达的认知。我们的方法使用了从微观经济学和对抗性逆增强学习中揭示的偏爱中的新思想。我们提出的算法为系统级电子反环境(ECCM)提供了一种原则性的方法,以掩盖雷达的认知,即从对手中隐藏雷达的策略。当对手对雷达的响应的测量结果误指定时,我们还为我们的认知掩蔽方案提供了性能界限。
A cognitive radar is a constrained utility maximizer that adapts its sensing mode in response to a changing environment. If an adversary can estimate the utility function of a cognitive radar, it can determine the radar's sensing strategy and mitigate the radar performance via electronic countermeasures (ECM). This paper discusses how a cognitive radar can {\em hide} its strategy from an adversary that detects cognition. The radar does so by transmitting purposefully designed sub-optimal responses to spoof the adversary's Neyman-Pearson detector. We provide theoretical guarantees by ensuring the Type-I error probability of the adversary's detector exceeds a pre-defined level for a specified tolerance on the radar's performance loss. We illustrate our cognition masking scheme via numerical examples involving waveform adaptation and beam allocation. We show that small purposeful deviations from the optimal strategy of the radar confuse the adversary by significant amounts, thereby masking the radar's cognition. Our approach uses novel ideas from revealed preference in microeconomics and adversarial inverse reinforcement learning. Our proposed algorithms provide a principled approach for system-level electronic counter-countermeasures (ECCM) to mask the radar's cognition, i.e., hide the radar's strategy from an adversary. We also provide performance bounds for our cognition masking scheme when the adversary has misspecified measurements of the radar's response.