Rapid system identification for jump Markov non-linear systems

A. R. Braga, C. Fritsche, F. Gustafsson, Marcelo G. S. Bruno
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引用次数: 4

Abstract

This work evaluates a previously introduced algorithm called Particle-Based Rapid Incremental Smoother within the framework of state inference and parameter identification in Jump Markov Non-Linear System. It is applied to the recursive form of two well-known Maximum Likelihood based algorithms who face the common challenge of online computation of smoothed additive functionals in order to accomplish the task of model parameter estimation. This work extends our previous contributions on identification of Markovian switching systems with the goal to reduce the computational complexity. A benchmark problem is used to illustrate the results.
跃变马尔可夫非线性系统的快速辨识
本文在跳跃马尔可夫非线性系统的状态推理和参数识别框架内评估了先前引入的基于粒子的快速增量平滑算法。将其应用于两种著名的基于极大似然算法的递归形式,这两种算法都面临着在线计算光滑加性泛函的共同挑战,以完成模型参数估计的任务。这项工作扩展了我们之前在马尔可夫切换系统识别方面的贡献,目标是降低计算复杂性。用一个基准问题来说明结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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