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Bias estimation for asynchronous multi-rate multi-sensor fusion with unknown inputs

机译:异步多速率多传感器融合与未知输入的偏差估计

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In asynchronous multi-sensor fusion, it is hard to guarantee that all sensors work at the single sampling rate, especially in the distributive and heterogeneous case. Meanwhile, the time-varying sensor bias driven by unknown inputs (UIs) are likely to occur in complex environments when conducting the sensor registration. In this paper, a two-stage fusion scheme is proposed to estimate the state, the UI and the UI-driven bias for asynchronous multi-sensor fusion. By establishing the dynamic system model at each scale and deriving its corresponding equivalent UI-decoupled bias dynamic model, the proposed scheme is implemented in two stages. At the first stage, each sensor collects its own measurements and generates the local optimal estimates of the state and the bias which are later used to compute the local estimate of the UI via the least squares method. At the second stage, local estimates of the state and the UI are distributively fused via network consensus to obtain the consensus state and UI estimates which are fed back to refine the local bias estimate. Local estimators are designed via the orthogonal projection principle and the least squares method, and the fusion estimators are designed via the average consensus fusion rule weighted by matrices. Simulation experiments are given to show the effectiveness of the developed method. (C) 2017 Published by Elsevier B.V.
机译:在异步多传感器融合中,难以保证所有传感器以单一采样率工作,尤其是在分配和异质情况下。同时,在进行传感器注册时,由未知输入(UIS)驱动的时变传感器偏差可能在复杂的环境中发生。在本文中,提出了一种两级融合方案来估计异步多传感器融合的状态,UI和UI驱动的偏置。通过在每个刻度建立动态系统模型并导出其相应的等效UI - 解耦偏置动态模型,所提出的方案以两个阶段实现。在第一阶段,每个传感器收集其自己的测量并产生状态的局部最佳估计和稍后用于通过最小二乘法计算UI的本地估计的偏置。在第二阶段,状态和UI的本地估计通过网络共识分散地​​融合,以获得反馈的共识状态和UI估计,以便反馈本地偏见估计。通过正交投影原理和最小二乘法设计本地估计器,并且融合估计器通过矩阵加权的平均共识融合规则设计。给出了仿真实验表明了开发方法的有效性。 (c)2017年由Elsevier B.V发布。

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