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Adaptive Neural Network Model Based Nonlinear Predictive Control of a Fluid Catalytic Cracking Unit

机译:基于自适应神经网络模型的催化裂化单元非线性预测控制。

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摘要

Neural Networks are used for a wide variety of chemical applications because of their ability to learn system features. This paper presents the use of artificial neural networks (ANN) for dynamic modeling and nonlinear model predictive control of a fluid catalytic unit (FCCU). An off-line trained ANN model based predictive control structure (NNMPC) and on adaptive neural network model based predictive control (ANNMPC) scheme were tested. Both control structures give a superior control performance compared to the classical proportional-integral (PI) controllers. To improve the convergence of the optimization process in both the off-line or on-line training of the ANN model and in the on-line control problem the use of genetic algorithm (GA) in combination with the classical optimization algorithms was proposed.
机译:神经网络具有学习系统功能的能力,因此可用于多种化学应用。本文介绍了人工神经网络(ANN)在流体催化单元(FCCU)的动态建模和非线性模型预测控制中的应用。测试了基于离线训练的ANN模型的预测控制结构(NNMPC)和基于自适应神经网络模型的预测控制(ANNMPC)方案。与经典的比例积分(PI)控制器相比,这两种控制结构均具有出色的控制性能。为了提高ANN模型的离线或在线训练以及在线控制问题中优化过程的收敛性,提出了结合经典优化算法的遗传算法(GA)的使用。

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