集成深度学习和显式MPC先进的过程控制

J. Katz, Iosif Pappas, Styliani Avraamidou, E. Pistikopoulos
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引用次数: 1

摘要

对于高度非线性系统,使用深度学习模型来捕获复杂的动力学是高级控制应用的一个有前途的特征。最近有研究表明,一类特定的深度学习模型可以精确地用混合整数线性规划公式进行重铸。将深度学习模型重铸为一组分段线性函数,可以将高级预测模型整合到模型预测控制等基于模型的控制策略中。为了减轻在线求解分段线性优化问题的计算负担,采用多参数规划方法获得最优控制问题的完整、离线、显式解。在这项工作中,提出了一种集成深度学习模型的策略,特别是具有整流线性单元的神经网络,以及显式模型预测控制。在一个涉及多个反应器、一个闪蒸分离器和一个循环流的基准化工过程的高级控制中验证了所提出的策略。积极的结果显示了所建议的方法的相关性和强度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Deep Learning and Explicit MPC for Advanced Process Control
For highly nonlinear systems, using deep learning models to capture complex dynamics is a promising feature for advanced control applications. Recently it has been shown that a particular class of deep learning models can be exactly recast in a mixed-integer linear programming formulation. Recasting a deep learning model as a set of piecewise linear functions enables the incorporation of advanced predictive models in model-based control strategies such as model predictive control. To alleviate the computational burden of solving the piecewise linear optimization problem online, multiparametric programming is utilized to obtain the full, offline, explicit solution of the optimal control problem. In this work, a strategy is presented for the integration of deep learning models, specifically neural networks with rectified linear units, and explicit model predictive control. The proposed strategy is demonstrated on the advanced control of a benchmark chemical process involving multiple reactors, a flash separator, and a recycle stream. The positive results showcase the relevance and strength of the proposed methodology.
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