MPC, objective function with economic cost

Abel F. Alves, H. F. S. Freitas, C. Andrade, M. Ravagnani
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引用次数: 1

Abstract

The distillation is a common method with great energy expenditure used for separation in the oil, food, chemical, etc. However, the technology currently used today in the distillation process is not very different from that used in the first distillation columns in the 19th century. The requirements of thermal energy in the distillation process are enormous. The thermodynamic efficiency of the distillation process is less than 10%. It is estimated that 8% of all energy used by U.S. industries is consumed in the distillation process. Energy is responsible for 50 to 60% of the operating costs of refineries while in chemical that proportion varies from 30 to 40%. These data shows the potential of savings that the distillation process can be achieved when the process is subjected to better control and optimized. The Model Based Predictive Control (MPC) is an advanced control technique with features that solve operational problems present in distillation columns. The MPC can deal with of multivariable systems with interactions and considerable dead times, nonlinearities and restrictions on the variables. One of the most important steps in the MPC is the minimization of an objective function. Different types of objective functions can be used in the MPC control algorithm with specific parameter settings for each type of objective function. In this work, the Wood-Berry model for distillation columns will be used. One MPC control strategy for column using a objective function with economic cost will be implemented. Finally, they will be made adjustments to the parameters of the objective function in order to see how these settings influence the response of the MPC controller.
MPC,具有经济成本的目标函数
精馏是石油、食品、化工等行业中常用的一种能量消耗大的分离方法。然而,目前在蒸馏过程中使用的技术与19世纪第一个蒸馏塔中使用的技术并没有太大的不同。蒸馏过程对热能的需求是巨大的。蒸馏过程的热力学效率小于10%。据估计,美国工业使用的所有能源中有8%是在蒸馏过程中消耗的。能源占炼油厂运营成本的50%到60%,而在化工行业,这一比例从30%到40%不等。这些数据表明,当蒸馏过程受到更好的控制和优化时,可以实现节约的潜力。基于模型的预测控制(MPC)是一种先进的控制技术,具有解决精馏塔操作问题的特点。MPC可以处理具有相互作用和大量死区、非线性和变量约束的多变量系统。MPC中最重要的步骤之一是目标函数的最小化。MPC控制算法中可以使用不同类型的目标函数,并对每种目标函数进行特定的参数设置。在这项工作中,将使用Wood-Berry蒸馏塔模型。采用具有经济成本的目标函数实现了一种柱的MPC控制策略。最后,将对目标函数的参数进行调整,以了解这些设置如何影响MPC控制器的响应。
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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