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Distributed Pareto-optimal state estimation using sensor networks

机译:使用传感器网络分布Pareto-Optimal状态估计

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摘要

A novel model-based dynamic distributed state estimator is proposed using sensor networks. The estimator consists of a filtering step - which uses a weighted combination of information provided by the sensors - and a model-based predictor of the system's state. The filtering weights and the model-based prediction parameters jointly minimize - at each time-step - the bias and the variance of the prediction error in a Pareto optimization framework. The simultaneous distributed design of the filtering weights and of the model-based prediction parameters is considered, differently from what is normally done in the literature. It is assumed that the weights of the filtering step are in general unequal for the different state components, unlike existing consensus-based approaches. The state, the measurements, and the noise components are allowed to be individually correlated, but no probability distribution knowledge is assumed for the noise variables. Each sensor can measure only a subset of the state variables. The convergence properties of the mean and of the variance of the prediction error are demonstrated, and they hold both for the global and the local estimation errors at any network node. Simulation results illustrate the performance of the proposed method, obtaining better results than state of the art distributed estimation approaches. (C) 2018 Elsevier Ltd. All rights reserved.
机译:使用传感器网络提出了一种基于模型的动态分布式状态估计器。估计器由过滤步骤组成 - 使用由传感器提供的信息的加权组合 - 以及系统状态的基于模型的预测器。过滤权重和基于模型的预测参数联合最小化 - 在每个时间 - 在Pareto优化框架中的预测误差的偏差和方差。考虑过滤权重和基于模型的预测参数的同时分布式设计,与文献中通常在文献中的常规完成的方式不同。假设与现有的基于共识的方法不同,滤波步骤的权重对于不同状态分量一般不等。允许状态,测量和噪声分量单独相关,但是没有假设噪声变量的概率分布知识。每个传感器只能测量状态变量的子集。对预测误差的均值和方差的均值属性进行说明,并且它们在任何网络节点处都适用于全局和局部估计误差。仿真结果说明了所提出的方法的性能,获得比现实分布式估计方法的状态更好的结果。 (c)2018年elestvier有限公司保留所有权利。

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