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On rate-constrained distributed estimation in unreliable sensor networks

机译:不可靠传感器网络中速率受限的分布式估计

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We study the problem of estimating a physical process at a central processing unit (CPU) based on noisy measurements collected from a distributed, bandwidth-constrained, unreliable, network of sensors, modeled as an erasure network of unreliable "bit-pipes" between each sensor and the CPU. The CPU is guaranteed to receive data from a minimum fraction of the sensors and is tasked with optimally estimating the physical process under a specified distortion criterion. We study the noncollaborative (i.e., fully distributed) sensor network regime, and derive an information-theoretic achievable rate-distortion region for this network based on distributed source-coding insights. Specializing these results to the Gaussian setting and the mean-squared-error (MSE) distortion criterion reveals interesting robust-optimality properties of the solution. We also study the regime of clusters of collaborative sensors, where we address the important question: given a communication rate constraint between the sensor clusters and the CPU, should these clusters transmit their "raw data" or some low-dimensional "local estimates"? For a broad set of distortion criteria and sensor correlation statistics, we derive conditions under which rate-distortion-optimal compression of correlated cluster-observations separates into the tasks of dimension-reducing local estimation followed by optimal distributed compression of the local estimates.
机译:我们研究了基于从分布式的,带宽受限的,不可靠的传感器网络中收集到的噪声测量值来估计中央处理器(CPU)上的物理过程的问题,这些噪声模型被建模为每个设备之间不可靠的“位管”擦除网络传感器和CPU。确保CPU从最小部分的传感器接收数据,并根据指定的失真标准来优化估计物理过程。我们研究了非协作式(即完全分布式)传感器网络机制,并基于分布式源编码的见解为该网络导出了信息理论上可实现的速率失真区域。将这些结果专门用于高斯设置和均方误差(MSE)失真准则,揭示了该解决方案有趣的鲁棒优化特性。我们还研究了协作传感器集群的机制,在此我们解决了一个重要问题:给定传感器集群与CPU之间的通信速率约束,这些集群应该传输其“原始数据”还是一些低维的“局部估计”?对于广泛的失真标准和传感器相关性统计信息,我们得出条件,在该条件下,相关簇观测的速率失真最佳压缩分离为降维局部估计的任务,然后是局部估计的最佳分布式压缩。

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