Inference in wireless sensor networks based on information structure optimization

Wei Zhao, Yao Liang
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引用次数: 3

Abstract

Distributed in-network inference plays a significant role in large-scale wireless sensor networks (WSNs) in applications for distributed detection and estimation. Belief propagation (BP) holds great potential for forming an essential and powerful underlying mechanism for such distributed inferences in WSNs. However, it has been recognized that many challenges exist in the context of WSN distributed inference. One such challenge is how to systematically develop a graphical model of WSN, upon which BP-based distributed inference can be effectively and efficiently performed, rather than ad hoc. This paper investigates this challenge and proposes a general and rigorous data-driven approach to building a solid and practical graphical model of WSN, given prior observations, based on graphical model optimization. The proposed approach is empirically evaluated using real-world sensor network data. We show that our approach can significantly reduce the energy consumption in BP-based distributed inference in WSNs and also improve the inference accuracy, when compared to the current practice of distributed inference in WSNs.
基于信息结构优化的无线传感器网络推理
分布式网络内推理在大规模无线传感器网络(WSNs)的分布式检测和估计应用中起着重要作用。在无线传感器网络中,信念传播(BP)为这种分布式推理提供了一种重要而强大的潜在机制。然而,人们已经认识到在WSN分布式推理的背景下存在许多挑战。其中一个挑战是如何系统地开发WSN的图形模型,在此模型上可以有效地执行基于bp的分布式推理,而不是临时的。本文研究了这一挑战,并提出了一种通用的、严格的数据驱动方法,基于图形模型优化,在给定先验观测的情况下,构建一个坚实实用的WSN图形模型。采用实际传感器网络数据对所提出的方法进行了实证评估。研究表明,与现有的分布式推理方法相比,我们的方法可以显著降低基于bp的WSNs分布式推理的能耗,并提高推理精度。
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