Development of inferential models for fractionation reformate unit

Z. U. Andrijic, I. Mohler, N. Bolf, Hrvoje Dorić
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引用次数: 1

Abstract

Industrial facilities show an increasing need for continuous measurement and monitoring a large number of process variables due to strict product quality requirements, environmental laws and for advanced process control application. On-line analyzers typically suffer from long measurement delays not desirable in continuous control. Suitable alternative are soft sensors and inferential control. In this paper the development of soft sensor models for the estimation of light reformate benzene content is carried out. Linear dynamical autoregressive model with external inputs (ARX), autoregressive moving average model with exogenous inputs (ARMAX) and Box-Jenkins (BJ) models are developed. For the regression vector optimization usually performed by trial and error, Genetic Algorithm (GA) and Simulated Annealing (SA) methods have been applied. The results indicate that the GA and SA as global optimization methods are suitable for the regressor order estimation of linear dynamical models with multiple inputs. Based on developed soft sensors, it is possible to apply advanced process control schemes.
分馏重整装置推理模型的建立
由于严格的产品质量要求,环境法律和先进的过程控制应用,工业设施对大量过程变量的连续测量和监控的需求日益增加。在线分析仪通常遭受长时间的测量延迟,这在连续控制中是不可取的。合适的替代方案是软传感器和推理控制。本文对轻重整苯含量软测量模型的开发进行了研究。建立了带外部输入的线性动态自回归模型(ARX)、带外源输入的自回归移动平均模型(ARMAX)和Box-Jenkins模型(BJ)。对于通常通过试错法进行的回归向量优化,采用了遗传算法(GA)和模拟退火(SA)方法。结果表明,GA和SA作为全局优化方法适用于多输入线性动态模型的回归量阶估计。基于开发的软传感器,可以应用先进的过程控制方案。
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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