Radhe S.T. Saini , Parth R. Brahmbhatt , Styliani Avraamidou , Hari S. Ganesh
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引用次数: 0
摘要
协同分布式模型预测控制(Cooperative Distributed Model Predictive Control, DiMPC)体系结构采用本地MPC控制器控制不同的子系统,通过迭代过程相互交换信息,与分散体系结构相比,提高了整体控制性能。然而,这种方法会导致控制器之间的高通信和计算成本。在这项工作中,通过开发基于多参数(mp)规划的新型无迭代求解算法,显著降低了DiMPC的信息交换量和计算成本。这些算法用显式mpDiMPC控制律函数的同时解来代替迭代过程。本地控制器之间通信的减少减少了系统延迟,这对实时控制应用至关重要。通过对多组耦合线性子系统的综合数值模拟,证明了所提出的无迭代mpDiMPC算法的有效性,这些子系统通过它们的输入和协作的全厂成本函数相互连接。
Iteration-free cooperative distributed model predictive control through multiparametric programming
Cooperative Distributed Model Predictive Control (DiMPC) architecture employs local MPC controllers to control different subsystems, exchanging information with each other through an iterative procedure to enhance overall control performance compared to the decentralized architecture. However, this method can result in high communication between the controllers and computational costs. In this work, the amount of information exchanged and the computational costs of DiMPC are reduced significantly by developing novel iteration-free solution algorithms based on multiparametric (mp) programming. These algorithms replace the iterative procedure with simultaneous solutions of explicit mpDiMPC control law functions. The reduced communication among local controllers decreases system latency, which is crucial for real-time control applications. The effectiveness of the proposed iteration-free mpDiMPC algorithms is demonstrated through comprehensive numerical simulations involving groups of coupled linear subsystems, which are interconnected through their inputs and a cooperative plant-wide cost function.
期刊介绍:
Computers & Chemical Engineering is primarily a journal of record for new developments in the application of computing and systems technology to chemical engineering problems.