Model Structures and Fitting Criteria for System Identification with Neural Networks

Marco Forgione, D. Piga
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引用次数: 20

Abstract

This paper focuses on the identification of dynamical systems with tailor-made model structures, where neural networks are used to approximate uncertain components and domain knowledge is retained, if available. These model structures are fitted to measured data using different criteria including a computationally efficient approach minimizing a regularized multi-step ahead simulation error. The neural net-work parameters are estimated along with the initial conditions used to simulate the output signal in small-size subsequences. A regularization term is included in the fitting cost in order to enforce these initial conditions to be consistent with the estimated system dynamics.
神经网络系统辨识的模型结构与拟合准则
本文的重点是识别具有定制模型结构的动力系统,其中使用神经网络来近似不确定组件,并保留领域知识(如果可用)。这些模型结构使用不同的标准来拟合测量数据,包括计算效率的方法,最小化正则化多步超前模拟误差。估计神经网络参数和初始条件,用于模拟小尺寸子序列的输出信号。为了使这些初始条件与估计的系统动力学一致,在拟合成本中包含了一个正则化项。
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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