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摘要: 粒子退化和对突变状态的跟踪能力差是粒子滤波在故障预报应用中存在的主要问题. 再采样粒子滤波虽可缓解粒子退化, 但易导致样本贫化; 扩展粒子滤波也可在一定程度上解决退化问题, 但难以跟踪突变状态. 本文提出了强跟踪粒子滤波算法, 将强跟踪滤波引入粒子滤波更新粒子, 产生重要性密度, 缓解粒子退化和样本贫化问题, 提高跟踪突变状态的能力. 仿真结果显示该算法可行并能及时准确地预报系统故障.Abstract: Particle degeneracy and its poor ability to track saltatory states are two main problems when a particle filter is applied to fault prediction. The sequential importance re-sampling particle filter can abate the influence of particle degeneracy but will easily lead to another problem --- sample impoverishment. The extended particle filter can resolve the problem of particle degeneracy to a certain extent but can not track the saltatory state. A strong tracking particle filter is put forward by introducing a strong tracking filter into a particle filter to resolve the above problems, in which the strong tracking filter is used to update particles and produce importance densities. As a result, the problems of particle degeneracy and sample impoverishment are ameliorated, and the tracking ability is improved. Simulation results demonstrate that the strong tracking particle filter is feasible and system fault can be predicted in time and correctly.
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