使用工业4.0基础设施的发电厂循环模型预测控制

IF 3 Q2 ENGINEERING, CHEMICAL Digital Chemical Engineering Pub Date : 2023-06-01 DOI:10.1016/j.dche.2023.100090
Daniel Kestering , Selorme Agbleze , Heleno Bispo , Fernando V. Lima
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引用次数: 4

摘要

这项工作涉及西弗吉尼亚大学(WVU)为过程系统应用开发的工业4.0基础设施。该基础设施模拟了一个相互连接的环境,使不同组件之间的通信和数据共享能够用于学术和工业环境。目前的基础设施包括与在线负载需求、分布式控制系统和数据分析组件交互的电厂模型。利用所建立的亚临界火电厂模型,在不同运行条件下,对基于该基础结构的经典控制策略和先进控制策略进行了评价。具体而言,评估的控制策略包括经典的比例-积分-导数(PID)和先进的模型预测控制(MPC)结构,重点是动态矩阵控制(DMC)方法与内部改进的顺序二次规划(SQP)求解器。为了解决电厂循环工况下的设定值跟踪和负荷跟踪问题,开发了MPC方法并进行了闭环仿真。在该基础设施中,PI系统将从电厂模型接收到的所有信息和在线电力需求进行集中,并将MPC计算出的控制动作发送回电厂模型执行。重点讨论了与循环相关的电厂运行区域实施这些控制策略的结果。
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Model predictive control of power plant cycling using Industry 4.0 infrastructure

This work involves the Industry 4.0 infrastructure developed at West Virginia University (WVU) for process systems applications. This infrastructure emulates an interconnected environment, enabling communication and data sharing among different components for use in academic and industrial settings. The current infrastructure encompasses a power plant model interacting with online load demand, distributed control systems, and data analytics components. The developed model of a sub-critical coal-fired power plant is employed to evaluate classical and advanced control strategies using this infrastructure under different operating conditions. Specifically, the control strategies evaluated include classical proportional–integral–derivative (PID) and advanced model predictive control (MPC) structures, focusing on the dynamic matrix control (DMC) approach with an in-house modified sequential quadratic programming (SQP) solver. The MPC approach is developed and simulated in closed loop to address setpoint tracking and load-following scenarios under power plant cycling conditions. In this infrastructure, the PI System centralizes all the information received from the power plant model and the online power demand and sends the control actions calculated by the MPC back to the power plant model for implementation. Results of the implementation of these control strategies are discussed focusing on power plant operating regions associated with cycling.

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