1. 河南大学智能技术与系统重点实验室,开封,475001
2. 西北工业大学控制与信息研究所,西安,710072
纸质出版:2010
移动端阅览
刘先省, 胡振涛, 金勇, 等. 基于粒子优化的多模型粒子滤波算法[J]. 电子学报, 2010,38(2):301-306.
A novel multiple model particle filter algorithm based on particle optimization[J]. Acta Electronica Sinica, 2010, 38(2): 301-306.
<FONT face=Verdana>针对模型信息引入粒子采样过程中导致用于逼近当前时刻真实状态与模型的粒子数减少问题,本文给出了一种基于粒子优化的多模型粒子滤波算法.在算法实现中,对每个粒子运行一个扩展卡尔曼滤波器,结合扩展卡尔曼滤波中预测更新机制实现最新量测信息的有效利用,进而提升单个采样粒子对于真实系统状态和模型逼近的有效性.理论分析和仿真结果表明:新算法在系统状态估计的精度以及模型辨识的准确性方面均明显地优于交互式多模型粒子滤波算法和多模型粒子滤波算法.
<FONT face=Verdana>For the adverse effect caused by the number decline of particles which are applied to implement the state estimation and model recognition
when model information is introduced into particle sampling process
a novel multiple model particle filter algorithm based on particle optimization is proposed. In the new algorithm
every particle is combined with extended Kalman filter
and the prediction and update mechanism of extended Kalman filter is used to realize the reasonable utilization of the latest observation information. The affectivity of single particle to approximate the real system state and model is improved. The theory analysis and simulation results show the new method outperform obviously the interacting multiple model particle filter and the standard multiple model particle filter in the filter precision of system state and the accuracy of model recognition.
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