Adaptive sequential refinement: A tractable approach for ambiguity function shaping in cognitive radar

Omar Aldayel, Tiantong Guo, V. Monga, M. Rangaswamy
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引用次数: 10

Abstract

Ambiguity function shaping continues to be one of the most challenging open problems in cognitive radar. Analytically, a complex quartic function should be optimized as a function of the radar waveform code. Practical considerations further require that the waveform be constant modulus, which exacerbates the issue and leads to a hard non-convex problem. We develop a new approach called Adaptive Sequential Refinement (ASR) to suppress the clutter returns for a desired range-Doppler, i.e. ambiguity function response. ASR solves the aforementioned optimization problem in a unique iterative manner such that the formulation is updated depending on the iteration index. We establish formally that: 1.) the problem in each step of the iteration has a closed form solution, and 2.) monotonic decrease of the cost function until convergence is guaranteed. Experimental validation shows that ASR produces a radar waveform with higher Signal to Interference Ratio (SIR) and superior ambiguity function shaping than state of the art alternatives even as its computational burden is orders of magnitude lower.
自适应序列细化:认知雷达中模糊函数形成的一种易于处理的方法
模糊函数的形成一直是认知雷达中最具挑战性的开放性问题之一。解析上,应将复四次函数优化为雷达波形码的函数。实际考虑进一步要求波形是恒定模量,这加剧了问题并导致了一个困难的非凸问题。我们开发了一种新的方法,称为自适应序列细化(ASR)来抑制杂波回波的期望距离-多普勒,即模糊函数响应。ASR以独特的迭代方式解决上述优化问题,使得公式根据迭代索引更新。我们正式证明:1.)迭代每一步的问题都有一个封闭形式的解,2.)代价函数单调递减直到保证收敛。实验验证表明,ASR产生的雷达波形具有更高的信干扰比(SIR)和优越的模糊函数塑造,即使其计算负担低了几个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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