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A Fusion Kalman Filter and UFIR Estimator Using the Influence Function Method 被引量:4
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作者 Wei Xue xiaoli luan +1 位作者 Shunyi Zhao Fei Liu 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2022年第4期709-718,共10页
In this paper,the Kalman filter(KF)and the unbiased finite impulse response(UFIR)filter are fused in the discrete-time state-space to improve robustness against uncertainties.To avoid the problem where fusion filters ... In this paper,the Kalman filter(KF)and the unbiased finite impulse response(UFIR)filter are fused in the discrete-time state-space to improve robustness against uncertainties.To avoid the problem where fusion filters may give up some advantages of UFIR filters by fusing based on noise statistics,we attempt to find a way to fuse without using noise statistics.The fusion filtering algorithm is derived using the influence function that provides a quantified measure for disturbances on the resulting filtering outputs and is termed as an influence finite impulse response(IFIR)filter.The main advantage of the proposed method is that the noise statistics of process noise and measurement noise are no longer required in the fusion process,showing that a critical feature of the UFIR filter is inherited.One numerical example and a practice-oriented case are given to illustrate the effectiveness of the proposed method.It is shown that the IFIR filter has adaptive performance and can automatically switch from the Kalman estimate to the UFIR estimates according to operating conditions.Moreover,the proposed method can reduce the effects of optimal horizon length on the UFIR estimate and can give the state estimates of best accuracy among all the compared methods. 展开更多
关键词 Fusion filter influence function Kalman filter(KF) ROBUSTNESS unbiased finite impulse response(FIR)
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Introduction to the Special Issue on Advances on Modeling and State Estimation for Industrial Processes
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作者 Shunyi Zhao xiaoli luan +1 位作者 Jinfeng Liu Ruomu Tan 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第4期1-3,共3页
In the past few years,significant progress has been made in modeling and state estimation for industrial processes to improve control performance,reliable monitoring,quick and accurate fault detection,diagnosis,high p... In the past few years,significant progress has been made in modeling and state estimation for industrial processes to improve control performance,reliable monitoring,quick and accurate fault detection,diagnosis,high product quality,fule and resource consumption,etc.However,with the fast development of information technology,numerous essential issues are faced in modeling and state estimation,which generates the new need for novel modeling and or state estimation methodologies and in-depth studies of them.Therefore,this special issue is dedicated to innovative modeling and state estimation from applicability,computational efficiency,and effectiveness. 展开更多
关键词 ESTIMATION STATE DIAGNOSIS
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Self-Triggered Consensus Filtering over Asynchronous Communication Sensor Networks
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作者 Huiwen Xue Jiwei Wen +1 位作者 Akshya Kumar Swain xiaoli luan 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第2期857-871,共15页
In this paper,a self-triggered consensus filtering is developed for a class of discrete-time distributed filtering systems.Different from existing event-triggered filtering,the self-triggered one does not require to c... In this paper,a self-triggered consensus filtering is developed for a class of discrete-time distributed filtering systems.Different from existing event-triggered filtering,the self-triggered one does not require to continuously judge the trigger condition at each sampling instant and can save computational burden while achieving good state estimation.The triggering policy is presented for pre-computing the next execution time for measurements according to the filter’s own data and the latest released data of its neighbors at the current time.However,a challenging problem is that data will be asynchronously transmitted within the filtering network because each node self-triggers independently.Therefore,a co-design of the self-triggered policy and asynchronous distributed filter is developed to ensure consensus of the state estimates.Finally,a numerical example is given to illustrate the effectiveness of the consensus filtering approach. 展开更多
关键词 Self-triggered policy sensor networks distributed consensus filtering
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基于影响力函数的自适应鲁棒卡尔曼滤波 被引量:2
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作者 薛为 栾小丽 +1 位作者 赵顺毅 刘飞 《中国科学:信息科学》 北大核心 2025年第3期601-618,共18页
为解决卡尔曼(Kalman)滤波的工程应用难题,现有方法往往以过多的性能损失为代价来增强滤波算法鲁棒性,从而导致估计性能下降.为进一步提升滤波精度,本文借助于影响力函数,构建基于黎卡提(Riccati)方程的自适应鲁棒卡尔曼滤波(adaptive r... 为解决卡尔曼(Kalman)滤波的工程应用难题,现有方法往往以过多的性能损失为代价来增强滤波算法鲁棒性,从而导致估计性能下降.为进一步提升滤波精度,本文借助于影响力函数,构建基于黎卡提(Riccati)方程的自适应鲁棒卡尔曼滤波(adaptive robust Kalman filter, ARKF)算法,削弱不确定性影响的同时,最小化性能损失.首先,利用影响力函数实时感知并量化不确定性影响;其次,根据量化结果反演不确定性导致的观测偏移量;然后,根据观测偏移量实时放缩黎卡提方程先验信息上界,实现卡尔曼滤波鲁棒性的自适应调整,减小性能损失;最后,通过数值仿真以及在四容水箱实验中的应用,证实所提算法的有效性及优越性. 展开更多
关键词 卡尔曼滤波 自适应鲁棒滤波 影响力函数 黎卡提方程 不确定性
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