采用外生自回归模型进行模型预测控制,提高CO2脱除性能

A. Wahid, Nisa Methilda Andriana Rodiman, A. Rahma, A. Ahmad, Andri Kapuji Kaharian
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引用次数: 0

摘要

将模型预测控制(MPC)应用于苏邦油田CO2脱除过程中,以提高其控制性能。MPC通过控制原料气压力(PIC-1101)、补水流量(FIC-1102)和胺流量(FIC-1103)来维持甜气输出时的CO2浓度。应用MPC来表示过程模型的经验模型是自回归外生(ARX)模型。基于ARX模型与实际过程的均方根误差(RMSE),将ARX模型与一阶加死区时间(FOPDT)模型进行比较,然后调整MPC参数,包括采样时间(T)、预测水平(P)和控制水平(M),对三个变量进行控制。改进的控制性能是基于积分平方误差(ISE)来衡量的。结果表明,ARX模型是CO2脱除过程的最佳模型,其RMSE值比FOPDT模型小35% ~ 91%。CO2去除过程的最优控制参数预测水平(P)、控制水平(M)和采样时间(T)在PIC-1101上分别为75、25和1,在FIC-1102上分别为25、10和1,在FIC-1103上分别为30、25和1。MPC-ARX(使用ARX模型的MPC)在伺服控制中可以提高33%的控制性能,在调节控制中可以提高6-56%的控制性能。然而,并不是所有的人都比以前的研究显示出控制性能的改善,即使他们使用了最好的模型(ARX)。这是由于MPC参数设置尚不合适,因此需要返回。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model predictive control with exogenous auto-regressive model to improve performance in the CO2 removal
Model predictive control (MPC) is used in the CO2 removal process in the Subang field to improve its control performance. MPC is used to maintain the CO2 concentration at the sweet gas output by controlling the feed gas pressure (PIC-1101), makeup water flow rate (FIC-1102), and amine flow rate (FIC-1103). The empirical model applied to MPC to represent the process model is the auto-regressive exogenous (ARX) model. The ARX model is compared with the first order plus dead time (FOPDT) model based on the root mean square error (RMSE) between the model and the actual process, then MPC parameters are tuned which include sampling time (T), prediction horizon (P) and control horizon (M) to control for the three variables. Improved control performance is measured based on the integral square error (ISE). The results show that the ARX model is the best model for the CO2 removal process with an RMSE value of 35%-91% smaller than the FOPDT model. The optimal control parameters Prediction Horizon (P), Control Horizon (M) and Sampling Time (T) in the CO2 removal process are 75, 25 and 1 on PIC-1101, 25, 10 and 1 on FIC-1102, and 30, 25 and 1 on FIC-1103. The MPC-ARX (MPC using ARX model) can improve the control performance of 33% in the servo control and 6-56% on the regulatory control. However, not all of them showed an increase in control performance improvement from previous studies even though they had used the best model (ARX). This is due to the MPC parameter setting that is not yet appropriate, so it needs to be retuning.
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