Double-layered model predictive control strategy with dynamic trajectory calculation

Xiao Wang, Shaoyuan Li, Yi Zheng, Yaru Yang
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引用次数: 6

Abstract

In industrial process field, the integrations of model predictive control (MPC) and hierarchical control system are widely used. A new double-layered model predictive control strategy with dynamic trajectory calculation (DTC) in its upper layer is presented in this paper, which can be applied in the midst of a hierarchical control system. DTC includes a feasibility stage with prioritized constraints handling and an economic optimization stage in a compatible constraint set. The calculated trajectory for each output is tracked by MPC dynamically in the lower layer. The presented control algorithm with DTC inspired by the steady-state target calculation (SSTC) method from the existing research basis. It could achieve a better economic benefit and tracking effect of external targets (ET) obtained from real-time optimization (RTO). In the simulation example, the introduced and original algorithms are applied to a fluid catalytic cracking (FCC) model which is the core of refining industry. Control results and performance comparison between two methods illustrates effectiveness of the proposed control strategy.
具有动态轨迹计算的双层模型预测控制策略
在工业过程控制领域,模型预测控制(MPC)与分层控制系统的集成得到了广泛的应用。本文提出了一种新的双层模型预测控制策略,其上层采用动态轨迹计算(DTC),可用于分层控制系统的中间环节。DTC包括一个具有优先约束处理的可行性阶段和一个兼容约束集的经济优化阶段。每个输出的计算轨迹由MPC在底层动态跟踪。在已有的研究基础上,借鉴稳态目标计算(SSTC)方法,提出了基于DTC的控制算法。它可以获得较好的经济效益和外部目标的跟踪效果,从实时优化(RTO)。在仿真算例中,将所介绍的算法和原始算法应用于炼油工业核心的催化裂化(FCC)模型。控制结果和两种方法的性能比较验证了所提控制策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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