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Chernoff information-based optimization of sensor networks for distributed detection

机译:基于Chernoff信息的分布式传感器网络优化

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This paper addresses the scalable optimization of sensor networks for distributed detection applications. In the general case, the jointly optimum solution for the local sensor decision rules and the fusion rule is extremely difficult to obtain and does not scale with the number of sensors. In this paper, we consider optimization of distributed detection systems based on a local metric for sensor detection performance. Derived from the asymptotic error exponents in binary hypothesis testing, the Chernoff information emerges as an appropriate metric for sensor detection quality. By locally maximizing the Chernoff information at each sensor and thus decoupling the optimization problem, scalable solutions are obtained which are also robust with respect to the underlying prior probabilities. By considering the problem of detecting a deterministic signal in the presence of Gaussian noise, a detailed numerical study illustrates the feasibilty of the proposed approach.
机译:本文介绍了用于分布式检测应用的传感器网络的可扩展优化。在一般情况下,很难获得针对局部传感器决策规则和融合规则的联合最优解,并且无法随传感器的数量而扩展。在本文中,我们考虑基于局部度量的分布式检测系统的优化,以提高传感器的检测性能。从二元假设检验中的渐近误差指数得出,Chernoff信息作为传感器检测质量的适当度量而出现。通过局部最大化每个传感器处的切尔诺夫信息,从而解耦优化问题,可以获得可扩展的解决方案,该解决方案相对于潜在的先验概率也很健壮。通过考虑在高斯噪声存在下检测确定性信号的问题,详细的数值研究说明了该方法的可行性。

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