原油提提过程的人工智能推理控制

M. Ebnali, M. Shahbazian, H. Jazayeri-Rad
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引用次数: 1

摘要

汽提塔用于原油脱硫,在遇到故障时,必须使产品硫化氢含量尽可能接近设定值。由于产品质量不能容易地和经济地在线测量,产品质量的控制通常是通过保持合适的托盘温度接近其设定点来实现的。托盘温度控制方法,然而,不是一个适当的选择多组分汽提塔,因为托盘温度不完全对应于产品组成。为了克服这个问题,二次测量可以用来推断产品质量和调整被操纵变量的值。本文提出了一种基于自适应网络模糊推理系统(ANFIS)的新型推理控制方法。采用不同学习算法的ANFIS对过程进行建模,并建立一个组合估计器来估计底积的组合。对所开发的估计器进行了测试,结果表明,ANFIS结构的预测结果与ASPEN HYSYS过程仿真包的仿真结果吻合较好。此外,在串级控制方案中实现基于anfiss的在线成分估计器的推理控制,具有积分时间绝对误差小、再沸器占空率低的优点,优于传统的托盘温度控制方法。
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Artificial Intelligence for Inferential Control of Crude Oil Stripping Process
Stripper columns are used for sweetening crude oil, and they must hold product hydrogen sulfide content as near the set points as possible in the faces of upsets. Since product    quality cannot be measured easily and economically online, the control of product quality is often achieved by maintaining a suitable tray temperature near its set point. Tray temperature control method, however, is not a proper option for a multi-component stripping column because the tray temperature does not correspond exactly to the product composition. To overcome this problem, secondary measurements can be used to infer the product quality and adjust the values of the manipulated variables. In this paper, we have used a novel inferential control approach base on adaptive network fuzzy inference system (ANFIS) for stripping process. ANFIS with different learning algorithms is used for modeling the process and building a composition estimator to estimate the composition of the bottom product. The developed estimator is tested, and the results show that the predictions made by ANFIS structure are in good agreement with the results of simulation by ASPEN HYSYS process simulation package. In addition, inferential control by the implementation of ANFIS-based online composition estimator in a cascade control scheme is superior to traditional tray temperature control method based on less integral time absolute error and low duty consumption in reboiler.
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