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Implementation and testing of a soft computing based model predictive control on an industrial controller

机译:工业控制器上基于软计算的模型预测控制的实现和测试

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This work presents a real time testing approach of an Intelligent Multiobjective Nonlinear-Model Predictive Control Strategy (iMO-NMPC). The goal is the testing and analysis of the feasibility and reliability of some Soft Computing (SC) techniques running on a real time industrial controller. In this predictive control strategy, a Multiobjective Genetic Algorithm is used together with a Recurrent Artificial Neural Network in order to obtain the control action at each sampling time. The entire development process, from the numeric simulation of the control scheme to its implementation and testing on a PC-based industrial controller, is also presented in this paper. The computational time requirements are discussed as well. The obtained results show that the SC techniques can be considered also to tackle highly nonlinear and coupled complex control problems in real time, thus optimising and enhancing the response of the control loop. Therefore this work is a contribution to spread the SC techniques in on-line control applications, where currently they are relegated mainly to be used off-line, as is the case of optimal tuning of control strategies. (C) 2014 Elsevier B.V. All rights reserved.
机译:这项工作提出了一种智能多目标非线性模型预测控制策略(iMO-NMPC)的实时测试方法。目的是测试和分析在实时工业控制器上运行的某些软计算(SC)技术的可行性和可靠性。在这种预测控制策略中,多目标遗传算法与递归人工神经网络一起使用,以便在每个采样时间获得控制作用。本文还介绍了整个开发过程,从控制方案的数值模拟到其在基于PC的工业控制器上的实现和测试,都将在此进行介绍。还讨论了计算时间要求。获得的结果表明,也可以考虑使用SC技术来实时解决高度非线性和耦合的复杂控制问题,从而优化和增强控制回路的响应。因此,这项工作有助于在在线控制应用中推广SC技术,目前,它们主要降级为离线使用,这是控制策略的最佳调整的情况。 (C)2014 Elsevier B.V.保留所有权利。

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