Development of adaptive neural networks for flexible control of batch processes

J.-L. Dirion, M. Cabassud, M.V. Le Lann, G. Casamatta
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引用次数: 8

Abstract

This paper deals with the application of a neural controller for temperature control of a batch reactor. The term “neural controller” is used to refer to a multilayer neural network which computes the control values to be applied to the process.

We present the design and the development of the neural network: architecture, learning database and learning procedure. In a first step, the learning phase consists in teaching the neural network to map the dynamics of a classical adaptive controller (generalized predictive control with double model reference) implemented on the process. Although the neural controller performance is good for operating conditions included in the learning set (interpolation), it exhibits limitations on extrapolation. In this work, two methods for the on-line adaptation of the network's weights are developed: one of them is the “specialized” learning technique, whereas the other uses another neural network in order to model the reactor dynamics. Several results are shown and prove the good capacities of neural networks for controlling batch processes.

批量过程柔性控制的自适应神经网络研究
本文研究了神经控制器在间歇式反应器温度控制中的应用。术语“神经控制器”指的是多层神经网络,它计算要应用于过程的控制值。介绍了神经网络的设计与实现,包括系统架构、学习数据库和学习过程。在第一步中,学习阶段包括教神经网络映射在过程上实现的经典自适应控制器(双模型参考的广义预测控制)的动态。尽管神经控制器在学习集(插值)中包含的操作条件下表现良好,但它在外推方面存在局限性。在这项工作中,开发了两种在线适应网络权重的方法:一种是“专门”学习技术,而另一种是使用另一种神经网络来模拟反应器动力学。研究结果表明,神经网络具有良好的批处理控制能力。
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