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Particle filtering-based recursive identification for controlled auto-regressive systems with quantised output

机译:基于粒子滤波的递归辨识用于具有量化输出的受控自回归系统

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摘要

Recursive prediction error method is one of the main tools for analysis of controlled auto-regressive systems with quantised output. In this study, a recursive identification algorithm is proposed based on the auxiliary model principle by modifying the standard stochastic gradient algorithm. To improve the convergence performance of the algorithm, a particle filtering technique, which approximates the posterior probability density function with a weighted set of discrete random sampling points is utilised to correct the linear output estimates. It can exclude those invalid particles according to their corresponding weights. The performance of the particle filtering technique-based algorithm is much better than that of the auxiliary model-based one. Finally, results are verified by examples from simulation and engineering.
机译:递归预测误差方法是分析具有量化输出的受控自回归系统的主要工具之一。通过修改标准随机梯度算法,提出了一种基于辅助模型原理的递归辨识算法。为了提高算法的收敛性能,利用粒子滤波技术对后验概率密度函数进行加权,该函数具有离散的随机采样点的加权集,以校正线性输出估计。它可以根据其相应的权重排除那些无效的粒子。基于粒子滤波技术的算法的性能要比基于辅助模型的算法的性能好得多。最后,通过仿真和工程实例验证了结果。

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