非线性过程的带状态估计的加密分布式模型预测控制

IF 3 Q2 ENGINEERING, CHEMICAL
Yash A. Kadakia , Aisha Alnajdi , Fahim Abdullah , Panagiotis D. Christofides
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引用次数: 0

摘要

这项研究的重点是加密分布式控制体系结构,旨在提高大规模非线性系统的操作安全性、网络安全性和计算效率,在这些系统中,只有部分状态测量可用。在该设置中,利用分布式模型预测控制器(DMPC)将过程划分为多个子系统,每个子系统由不同的基于李雅普诺夫的MPC(LMPC)控制。为了考虑不同子系统之间的相互作用,每个控制器接收并与其他控制器共享为其特定子系统计算的控制输入。由于没有完整的状态反馈,我们将扩展的Luenberger观测器与每个LMPC集成,用观测器提供的完整状态估计信息初始化LMPC模型。此外,为了增强网络安全,对控制器接收和发送的无线信号进行加密。制定了在任何大规模非线性化学过程网络中实施该拟议控制结构的指南。在一个特定的非线性化学过程网络上进行的仿真结果表明,利用带有传感器噪声的部分状态反馈,利用状态估计的加密DMPC具有有效的闭环性能。随后对闭环性能、控制输入计算时间以及加密的集中式、去中心化和分布式MPC框架的适用性进行了全面比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Encrypted distributed model predictive control with state estimation for nonlinear processes

This research focuses on encrypted distributed control architectures, aimed at enhancing the operational safety, cybersecurity and computational efficiency of large-scale nonlinear systems, where only partial state measurements are available. In this setup, a distributed model predictive controller (DMPC) is utilized to partition the process into multiple subsystems, each controlled by a distinct Lyapunov-based MPC (LMPC). To consider the interactions among different subsystems, each controller receives and shares with the other controllers control inputs computed for its particular subsystem. As full state feedback is not available, we integrate an extended Luenberger observer with each LMPC, initializing the LMPC model with complete state estimate information provided by the observer. Furthermore, to enhance cybersecurity, wireless signals received and transmitted by the controllers are encrypted. Guidelines are established to implement this proposed control structure in any large-scale nonlinear chemical process network. Simulation results, conducted on a specific nonlinear chemical process network, demonstrate the effective closed-loop performance of the encrypted DMPC with state estimation, utilizing partial state feedback with sensor noise. This is followed by a comprehensive comparison of the closed-loop performance, control input computational time, and suitability of encrypted centralized, decentralized, and distributed MPC frameworks.

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