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Adaptive distributed compressed sensing for dynamic high-dimensional hypothesis testing

机译:自适应分布式压缩传感,用于动态高维假设检验

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In this paper, a framework for dynamic high-dimensional hypothesis testing in wireless sensor networks is presented. The sensor nodes (SNs) collect and transmit to a fusion center (FC), in a distributed fashion, compressed measurements of a time-correlated hypothesis vector. The FC, based on the measurements collected, tracks the hypothesis vector, and feeds back minimal information about the uncertainty in the current estimate, which enables adaptation of the SNs' data collection and transmission strategy. The policy of the SNs is optimized with the overall objective of minimizing the detection error probability, under sensing and transmission cost constraints incurred by each SN. A Bernoulli approximation on the detection error is employed, which enables a significant reduction in the optimization complexity and the design of scalable estimators based on sparse approximation recovery algorithms. Simulation results demonstrate that, for a target 5% detection error, the adaptive scheme attains 90% and 50% cost savings with respect to a memoryless scheme which does not exploit the time-correlation and a non-adaptive one, respectively.
机译:本文提出了一种在无线传感器网络中进行动态高维假设检验的框架。传感器节点(SN)收集时间相关的假设向量的压缩测量值,并以分布式的方式传输到融合中心(FC)。 FC根据收集到的测量值,跟踪假设向量,并反馈有关当前估计中不确定性的最小信息,从而可以调整SN的数据收集和传输策略。在每个SN所引起的感测和传输成本约束下,以使检测错误概率最小化为总体目标来优化SN的策略。采用对检测误差的伯努利近似,可以大大降低优化复杂度,并且可以基于稀疏近似恢复算法设计可伸缩估计器。仿真结果表明,对于目标5%的检测误差,自适应方案相对于不采用时间相关性和非自适应方案的无记忆方案分别节省了90%和50%的成本。

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