Review of the applications of neural networks in chemical process control — simulation and online implementation

Mohamed Azlan Hussain
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引用次数: 399

Abstract

As a result of good modeling capabilities, neural networks have been used extensively for a number of chemical engineering applications such as sensor data analysis, fault detection and nonlinear process identification. However, only in recent years, with the upsurge in the research on nonlinear control, has its use in process control been widespread. This paper intend to provide an extensive review of the various applications utilizing neural networks for chemical process control, both in simulation and online implementation. We have categorized the review under three major control schemes; predictive control, inverse-model-based control, and adaptive control methods, respectively. In each of these categories, we summarize the major applications as well as the objectives and results of the work. The review reveals the tremendous prospect of using neural networks in process control. It also shows the multilayered neural network as the most popular network for such process control applications and also shows the lack of actual successful online applications at the present time.

神经网络在化工过程控制中的应用综述——仿真与在线实现
由于良好的建模能力,神经网络已广泛应用于许多化学工程应用,如传感器数据分析,故障检测和非线性过程识别。然而,直到最近几年,随着非线性控制研究的兴起,非线性控制才在过程控制中得到广泛的应用。本文将广泛回顾神经网络在化学过程控制中的各种应用,包括模拟和在线实现。我们将检讨分为三个主要的管制计划;预测控制、基于逆模型的控制和自适应控制方法。在这些类别中,我们总结了主要的应用以及工作的目标和结果。综述揭示了神经网络在过程控制中的巨大应用前景。这也说明了多层神经网络是这类过程控制应用中最受欢迎的网络,同时也说明了目前缺乏实际成功的在线应用。
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