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A kind of modeling method based on the Bayesian dynamic linear model for model predictive control of a nitrobenzene prefractionator

机译:一种基于贝叶斯动态线性模型的硝基苯预测控制模型预测控制的一种建模方法

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The plant testing method, which has the disadvantages of time consuming and production disruption, is a usual system modeling method in process industries. This paper presents the Bayesian dynamic linear model (DLM) using the subjective experience information from operator and fewer step tests to calculate and forecast the model for model predictive control (MPC), which is used to control the bottom stage temperature of a nitrobenzene prefractionator. The effectiveness of the model based on the Bayesian DLM is illustrated by a comparison of predictive effects with the model identified by step tests, and a MPC controller using a model based on the Bayesian DLM with eight step tests and initial experience information is designed and put into operation. The practical application shows that the designed MPC controller could effectively improve the stability of the bottom temperature and the system modeling method based on the Bayesian DLM could reduce the number of step tests and has great economic and practical significance.
机译:植物试验方法具有耗时和生产中断的缺点,是过程行业的一种通常的系统建模方法。本文介绍了贝叶斯动态线性模型(DLM),使用操作员的主观体验信息和更少的步骤测试来计算和预测模型预测控制(MPC)的模型,用于控制硝基苯预选器的底部级温度。基于贝叶斯DLM的模型的有效性通过比较预测效应与步骤测试标识的模型的比较,以及使用基于贝叶斯DLM的模型的MPC控制器,设计和放置初始体验信息运作。实际应用表明,设计的MPC控制器可以有效地提高底部温度的稳定性,基于贝叶斯DLM的系统建模方法可以减少阶梯测试的数量,具有巨大的经济和实践意义。

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