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首页> 外文期刊>International Journal of Adaptive Control and Signal Processing >Identification of a class of non-linear parametrically varying models
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Identification of a class of non-linear parametrically varying models

机译:一类非线性参数变化模型的辨识

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摘要

The aim of this paper is to propose a novel class of non-linear, possibly parameter-varying models suitable for system identification purposes. These models are given in the form of a linear fractional transformation (LFT) where the 'forward' part is represented by a conventional linear regression and the 'feedback' part is given by a non-linear dynamic map parameterized by a neural network (NN) which can take into account scheduling variables available for measurement. For this specific model structure a parameter estimation procedure has been set up, which turns out to be particularly efficient from the computational point of view. Also, it is possible to establish a connection between this model class and the well known class of local model networks (LMNs): this aspect is investigated in the paper. Finally, we have applied the proposed identification procedure to the problem of determining accurate non-linear models for knee joint dynamics in paraplegic patients, within the framework of a functional electrical stimulation (FES) rehabilitation engineering project.
机译:本文的目的是提出一种适用于系统识别目的的新型非线性,可能参数变化的模型。这些模型以线性分数变换(LFT)的形式给出,其中“正向”部分由常规线性回归表示,“反馈”部分由神经网络(NN)参数化的非线性动态映射给出),可以考虑可用于测量的计划变量。对于这种特定的模型结构,已经建立了参数估计过程,从计算的角度来看,该过程特别有效。同样,可以在此模型类与本地模型网络(LMN)的众所周知的类之间建立连接:本文对这一方面进行了研究。最后,我们在功能性电刺激(FES)康复工程项目的框架内,将拟议的识别程序应用于确定截瘫患者膝关节动力学的准确非线性模型的问题。

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