利用神经网络识别植物逆动态

D.T. Pham, S.J. Oh
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引用次数: 21

摘要

本文研究了一种新的递归反向传播神经网络对未知植物逆动力学的逼近。当对单输出装置建模时,网络有两个输入元素,一个用于接收装置输出,另一个用于补偿建模不确定性的误差输入。网络具有从其输出层、隐藏层和输入层到其“状态”层的反馈连接,以及“状态”层中的自连接。该方法的核心是利用直接逆学习方案,即使在存在噪声的情况下也能实现简单而准确的系统逆识别。该方法可以很容易地推广到在线自适应控制领域。仿真结果说明了该方法在控制定常对象的简单情况下的有效性。
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Identification of plant inverse dynamics using neural networks

This article investigates the approximation of the inverse dynamics of unknown plants using a new type of recurrent backpropagation neural network. The network has two input elements when modelling a single-output plant, one to receive the plant output and the other, an error input to compensate for modelling uncertainties. The network has feedback connections from its output, hidden, and input layers to its “state” layer and self-connections within the “state” layer. The essential point of the proposed approach is to make use of the direct inverse learning scheme to achieve simple and accurate inverse system identification even in the presence of noise. This approach can easily be extended to the area of on-line adaptive control which is briefly introduced. Simulation results are given to illustrate the usefulness of the method for the simpler case of controlling time-invariant plants.

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