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Centralized Fusion Approach to the Estimation Problem with Multi-Packet Processing under Uncertainty in Outputs and Transmissions

机译:输出和传输不确定性下多包处理估算问题的集中融合方法

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摘要

This paper is concerned with the least-squares linear centralized estimation problem in multi-sensor network systems from measured outputs with uncertainties modeled by random parameter matrices. These measurements are transmitted to a central processor over different communication channels, and owing to the unreliability of the network, random one-step delays and packet dropouts are assumed to occur during the transmissions. In order to avoid network congestion, at each sampling time, each sensor's data packet is transmitted just once, but due to the uncertainty of the transmissions, the processing center may receive either one packet, two packets, or nothing. Different white sequences of Bernoulli random variables are introduced to describe the observations used to update the estimators at each sampling time. To address the centralized estimation problem, augmented observation vectors are defined by accumulating the raw measurements from the different sensors, and when the current measurement of a sensor does not arrive on time, the corresponding component of the augmented measured output predictor is used as compensation in the estimator design. Through an innovation approach, centralized fusion estimators, including predictors, filters, and smoothers are obtained by recursive algorithms without requiring the signal evolution model. A numerical example is presented to show how uncertain systems with state-dependent multiplicative noise can be covered by the proposed model and how the estimation accuracy is influenced by both sensor uncertainties and transmission failures.
机译:本文关注的是最小二乘线性集中估计问题在多传感器网络系统从测量的输出与由随机参数矩阵模型的不确定性。这些测量传送到通过不同的通信信道的中心处理器,并且由于网络的不可靠性,随机一步延迟和分组遗失被假定的发射期间发生。为了避免网络拥塞,在每个采样时间,每个传感器的数据包被发送只需一次,但是由于传输的不确定性,处理中心可能会收到一个分组,两个分组,或什么都没有。伯努利随机变量的不同白色序列被引入来描述用于更新各采样时刻的估计的观测。为了解决集中估计问题,增强观测矢量由来自不同传感器累积原始测量结果定义的,并且当传感器的电流测量不按时到达,增强测量的输出预测器的相应部件中被用作补偿估计设计。通过创新方法中,集中式融合估计,包括预测器,过滤器和平滑器通过递归算法,而不需要信号演变模型获得。呈现一个数值例子来说明如何不确定系统的状态依赖相乘噪声可以通过所提出的模型,以及如何估计精度由两个传感器不确定性和传输失败的影响所覆盖。

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