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首页> 外文期刊>IEEE Transactions on Signal Processing >Distributed Sequential Bayesian Estimation of a Diffusive Source in Wireless Sensor Networks
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Distributed Sequential Bayesian Estimation of a Diffusive Source in Wireless Sensor Networks

机译:无线传感器网络中扩散源的分布式顺序贝叶斯估计

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摘要

We develop an efficient distributed sequential Bayesian estimation method for applications relating to diffusive sources-localizing a diffusive source, determining its space-time concentration distribution, and predicting its cloud envelope evolution using wireless sensor networks. Potential applications include security, environmental and industrial monitoring, as well as pollution control. We first derive the physical model of the substance dispersion by solving the diffusion equations under different environment scenarios and then integrate the physical model into the distributed processing technologies. We propose a distributed sequential Bayesian estimation method in which the state belief is transmitted in the wireless sensor networks and updated using the measurements from the new sensor node. We propose two belief representation methods: a Gaussian density approximation and a new LPG function (linear combination of polynomial Gaussian density functions) approximation. These approximations are suitable for the distributed processing in wireless sensor networks and are applicable to different sensor network situations. We implement the idea of information-driven sensor collaboration and select the next sensor node according to certain criterions, which provides an optimal subset and an optimal order of incorporating the measurements into our belief update, reduces response time, and saves energy consumption of the sensor network. Numerical examples demonstrate the effectiveness and efficiency of the proposed methods
机译:我们为与扩散源相关的应用程序开发了一种有效的分布式顺序贝叶斯估计方法,该方法用于定位扩散源,确定其时空浓度分布并使用无线传感器网络预测其云包演化。潜在的应用包括安全性,环境和工业监控以及污染控制。我们首先通过求解不同环境下的扩散方程来推导物质扩散的物理模型,然后将物理模型集成到分布式处理技术中。我们提出了一种分布式顺序贝叶斯估计方法,其中状态置信度在无线传感器网络中传输,并使用来自新传感器节点的测量值进行更新。我们提出两种信念表示方法:高斯密度近似和新的LPG函数(多项式高斯密度函数的线性组合)近似。这些近似值适用于无线传感器网络中的分布式处理,并且适用于不同的传感器网络情况。我们实施信息驱动的传感器协作的想法,并根据某些标准选择下一个传感器节点,这提供了将测量结果整合到我们的信念更新中的最佳子集和最佳顺序,减少了响应时间,并节省了传感器的能耗网络。数值算例表明了所提方法的有效性和有效性。

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