介绍了非线性时变过程系统辨识的递归学习算法

M. Mirmomeni, C. Lucas, Babak Nadjar Araabi
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引用次数: 4

摘要

介绍了几种通过局部或部分线性模型识别非线性过程的方法。不幸的是,大多数这些方法都有一个训练阶段,应该离线完成。有些现象具有时变行为。此外,在模型投入运行之前可用的测量数据的数量、分布和/或质量可能不足以建立符合规范的模型。局部线性模型树(LoLiMoT)算法是非线性系统辨识中最常用的学习方法之一,它是一种增量学习方法,需要通过离线数据集进行学习。本文介绍了该算法的递归版本,称为递归局部线性模型树算法(RLoLiMoT),用于时变和在线应用。该方法还消除了局部线性模型(LLMs)在调整前提参数方面的一些LoLiMoT限制。通过两个案例来测试所提出方法的性能。仿真结果表明了该方法在非线性时变系统在线辨识中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing recursive learning algorithm for system identification of nonlinear time varying processes
several methods have been introduced for identification of nonlinear processes via locally or partially linear models. Unfortunately, most of these methods have a training phase which should be done offline. There are phenomena that possess time varying behavior. Furthermore, the amount, distribution and/or quality of measurement data that is available before the model is put to operation may be insufficient to build a model that would meet the specification. One of the most popular learning methods in nonlinear system identification is Locally Linear Model Tree (LoLiMoT) algorithm as an incremental learning method which needs to be carried out by an offline data set. This paper introduces a recursive version of this algorithm called Recursive Locally Linear Model Tree algorithm (RLoLiMoT) for time varying and online applications. The proposed method also eliminates some of the LoLiMoT restrictions in tuning premise parameters of the Locally Linear Models (LLMs). Two case studies are considered to test the performance of the proposed method. The results depict the power of the proposed method in online system identification of nonlinear time varying systems.
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