非线性动态系统参数估计的粒子滤波灰狼优化

Cuilian Zhang, Xu Yang, Lilingbo, Derek F. Wong
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引用次数: 2

摘要

粒子滤波采样器、马尔可夫链蒙特卡罗(MCM-C)采样器和群体智能可以用于非线性动态系统的后验概率分布参数估计。然而采样器的全局探测能力和效率依赖于粒子滤波采样器的移动步长。本文提出了一种混合采样器算法:粒子滤波灰狼优化采样器(PF -GWO)。PF-GWO采样器将灰狼优化与Metropolis比结合到粒子滤波框架中,适用于估计非线性动态模型的未知静态参数。基于贝叶斯框架的Lorenz模型参数估计表明,PF -GWO采样器优于其他大范围先验分布的组合粒子滤波采样器算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle Filter Grey Wolf Optimization for Parameter Estimation of Nonlinear Dynamic System
Particle filter samplers, Markov chain Monte Carlo (MCM-C)samplers, and swarm intelligence can be used for parameter estimation with posterior probability distribution in nonlinear dynamic system. However the global exploration capabilities and efficiency of the sampler rely on the moving step of particle filter sampler. In this paper, we presented a mixing sampler algorithm: particle filter grey wolf optimization sampler(PF -GWO). PF-GWO sampler is operated by combining grey wolf optimization with Metropolis ratio into framework of particle filter, which is suitable to estimate unknown static parameters of nonlinear dynamic models. Based on Bayesian framework, parameter estimation of Lorenz model shows that PF -GWO sampler is superior to other combined particle filter sampler algorithms with large range prior distribution.
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