识别混合系统的智能技术

Juraj Števek, A. Szucs, M. Kvasnica, S. Kozák, M. Fikar
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引用次数: 5

摘要

本文描述了一种基于多点线性逼近的非线性系统辨识方法。我们证明,在温和的假设下,任务可以转化为一系列一维近似,为此我们提出了一种基于求解简单非线性规划(nlp)的有效求解方法。该方法提供了从输入输出数据中识别多项式模型结构(ARX, OE, BJ)中的非线性系统。该近似是基于神经网络建模程序。所提出的建模方法具有训练速度快、精度可调和降低最终模型复杂度的特点。该建模技术广泛应用于汽车、电力电子、计算机图形学等领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart technique for identifying hybrid systems
The paper describes a system identification method for a nonlinear system based on a multi-point linear approximation. We show that under mild assumptions, the task can be transformed into a series of one-dimensional approximations, for which we propose an efficient solution method based on solving simple nonlinear programs (NLPs). The approach provides identification of nonlinear systems in a polynomial model structure (ARX, OE, BJ) from input-output data. The approximation is based on a neural network modelling procedure. The proposed modelling procedure is characterized by fast training, adjustable accuracy and reduced complexity of the final model. The modelling technique is widely applicable in automotive, power electronics, computer graphics, etc.
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