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Constrained robust submodular sensor selection with application to multistatic sonar arrays

机译:受约束的鲁棒次模块传感器选择及其在多静态声纳阵列中的应用

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摘要

The authors develop a framework to select a subset of sensors from a field in which the sensors have an ingrained independence structure. Given an arbitrary independence pattern, the authors construct a graph that denotes pairwise independence between sensors, which means those sensors may operate simultaneously without interfering. The set of all fully-connected subgraphs (cliques) of this independence graph forms the independent sets of matroids over which the authors maximise the average and minimum of a set of submodular objective functions. The average case is submodular, so it can be approximated. The minimum case is both non-submodular and inapproximable. The authors propose a novel algorithm GENSAT that exploits submodularity and, as a result, returns a near-optimal solution with approximation guarantees on a relaxed problem that are within a small factor of the average case scenario. The authors apply this framework to ping sequence optimisation for active multistatic sonar arrays by maximising sensor coverage for average and minimum case scenarios and derive lower bounds for minimum probability of detection for a fractional number of targets. In these ping sequence optimisation simulations, GENSAT exceeds the fractional lower bounds and reaches near-optimal performance, and submodular function optimisation vastly outperforms traditional approaches and nearly achieves optimal performance.
机译:作者开发了一个框架,从一个具有根深蒂固的独立性结构的领域中选择传感器的子集。给定任意的独立性模式,作者构建了一个图表,表示传感器之间的成对独立性,这意味着这些传感器可以同时运行而不会产生干扰。该独立图的所有全连接子图(斜体)的集合形成了拟阵的独立集合,作者在其上最大化了一组亚模目标函数的平均值和最小值。平均情况是亚模的,因此可以近似。最小情况是非次模且不可近似的。作者提出了一种新颖的算法GENSAT,该算法利用了次模量,因此返回了一个松弛最优问题的近似最优解,该近似最优解在平均情况的一小部分之内。作者通过将传感器覆盖范围最大化(适用于平均情况和最小情况),并将此框架应用于有源多基地声纳阵列的ping序列优化,并得出了针对小部分目标的最小检测概率的下限。在这些ping序列优化仿真中,GENSAT超过了分数下限并达到了接近最佳的性能,并且次模块函数优化的性能大大优于传统方法,并且几乎达到了最佳性能。

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