A neural network approach to on-line identification of non-linear systems

P. Mills, Albert Y. Zomaya
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引用次数: 7

Abstract

The authors introduce three aspects of the neural identification of nonlinear systems. First, a method of extending the error backpropagation neural network to enable it to perform online identification of a system is considered. This enables the investigation of adaptive nonlinear process control based on neural identification. Second, the neural identification has been successfully tested on a complex nonlinear composite system which includes formidable, but realistic, nonlinear process characteristics such as hysteresis. This has helped to demonstrate the general applicability of identification using neural techniques. Third, the novel method of neural identification was compared with online identification based on the well-established linear least-squares technique. The comparison highlights the faster adaptation of linear identification against the higher asymptotic accuracy of neural identification.<>
非线性系统在线辨识的神经网络方法
作者从三个方面介绍了非线性系统的神经辨识。首先,考虑了一种扩展误差反向传播神经网络的方法,使其能够对系统进行在线辨识。这使得研究基于神经辨识的自适应非线性过程控制成为可能。其次,在一个复杂的非线性复合系统上成功地进行了神经识别的测试,该系统包含了复杂但现实的非线性过程特征,如滞后。这有助于证明使用神经技术识别的一般适用性。第三,将该方法与基于线性最小二乘法的在线辨识方法进行了比较。对比表明,线性辨识的自适应速度较快,而神经辨识的渐近精度较高。
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