基于随机梯度粗糙神经网络的水泥回转窑多输入多输出非线性系统辨识

Gh. Ahmadi, M. Teshnelab
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引用次数: 0

摘要

由于多输入多输出(MIMO)非线性系统的变量之间存在相互作用,其识别是一项困难的任务,特别是在存在不确定性的情况下。水泥回转窑(CRK)是水泥厂中一个多输入多输出非线性系统,具有复杂的机理和不确定的扰动。CRK的识别对于预测、故障检测和控制等不同目的非常重要。在以前的工作中,CRK是在将其分解为几个多输入单输出(MISO)系统后识别的。本文首次在不使用MISO结构的情况下,将粗糙神经网络(R-NN)用于CRK的识别。R-NN是一种基于粗糙集理论设计的用于处理不确定性和模糊性的神经结构。此外,还提出了一种随机梯度下降学习算法来训练R-NN。仿真结果表明了该方法的有效性。
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Identification of Multiple Input-multiple Output Non-linear System Cement Rotary Kiln using Stochastic Gradient-based Rough-neural Network
Because of the existing interactions among the variables of a multiple input-multiple output (MIMO) nonlinear system, its identification is a difficult task, particularly in the presence of uncertainties. Cement rotary kiln (CRK) is a MIMO nonlinear system in the cement factory with a complicated mechanism and uncertain disturbances. The identification of CRK is very important for different purposes such as prediction, fault detection, and control. In the previous works, CRK was identified after decomposing it into several multiple input-single output (MISO) systems. In this paper, for the first time, the rough-neural network (R-NN) is utilized for the identification of CRK without the usage of MISO structures. R-NN is a neural structure designed on the base of rough set theory for dealing with the uncertainty and vagueness. In addition, a stochastic gradient descent learning algorithm is proposed for training the R-NNs. The simulation results show the effectiveness of proposed methodology.
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