Order Determination of Linear Systems Using Convolutional Neural Networks

Sh. Kalantari, A. Kalhor, Babak Nadjar Araabi
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Abstract

In this paper, a fast, intelligent model is proposed for the order determination of linear dynamical systems by using convolutional neural networks. This model estimates the dynamic order of the system with considerably lower excitation order of stimulation signal and without any prior knowledge in comparison to former works. To this end, only step response of the system is taken to estimate the dynamic order for both stable and unstable linear systems. Unlike the conventional methods, in this deep-based approach, the order determination is performed quickly, automatically, at a low cost, and without any iteration. In addition, it is demonstrated that the proposed approach has low sensitivity against delay and noise. Such an intelligent model can satisfy the demands for a fast identifier in online and plug-and-play controllers.
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用卷积神经网络确定线性系统的阶数
本文提出了一种基于卷积神经网络的线性动力系统阶数快速智能确定模型。与以往的工作相比,该模型以较低的激励信号的激励阶数估计系统的动态阶数,并且不需要任何先验知识。为此,仅采用系统阶跃响应来估计稳定和不稳定线性系统的动态阶数。与传统方法不同,在这种基于深度的方法中,顺序确定可以快速、自动、低成本地执行,并且不需要任何迭代。此外,该方法对延迟和噪声具有较低的灵敏度。这种智能模型可以满足在线控制器和即插即用控制器对快速识别的需求。
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