Data-driven Soft Sensor Approach For Quality Prediction in a Refinery Process

D. Wang, R. Srinivasan, J. Liu, PK Guru, K. Leong
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引用次数: 11

Abstract

In petrochemical industry, the product quality encapsulates the commercial and operational performance of a manufacturing process. Usually, the product quality is measured in the analytical laboratory and it involves resources and considerable time delay. On-line prediction of quality using frequent process measurements would be beneficial in terms of operation and quality control. In this article, a novel soft sensor technology based on partial least squares (PLS) regression between process variables and quality variable is developed and applied to a refinery process for quality prediction. The modeling process is described, with emphasis on data preprocessing, PLS regression, multi-outliers' detection and variables selection in regression. Enhancement of PLS is also discussed to take into account the dynamics in the process data. The proposed approach is applied to data collected from a refinery process and its feasibility and performance are justified by comparison with laboratory data.
数据驱动的炼油过程质量预测软测量方法
在石油化工行业,产品质量包含了生产过程的商业和操作性能。通常,产品质量的测量是在分析实验室进行的,这涉及到资源和相当长的时间延迟。使用频繁的过程测量来在线预测质量将有利于操作和质量控制。本文提出了一种基于过程变量和质量变量之间偏最小二乘回归的新型软测量技术,并将其应用于炼油过程的质量预测。描述了建模过程,重点介绍了数据预处理、PLS回归、多异常值检测和回归中的变量选择。本文还讨论了考虑到过程数据的动态性对PLS的改进。将该方法应用于某炼油厂的数据,并与实验室数据进行了对比,验证了该方法的可行性和性能。
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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