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Quality monitoring in petroleum refinery with regression neural network: Improving prediction accuracy with appropriate design of training set

机译:回归神经网络的石油炼油厂质量监测:提高培训训练设计的预测准确性

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摘要

The objective of this research is twofold. First, design of training set from the available plant data which is followed by use of training set for developing data driven linear and non-linear soft sensor models for continuous quality monitoring in petroleum refinery. Three data sets from three different processes in the petroleum refinery were investigated. The three data sets belong to ethane-ethylene distillation, debutanization and sulphur recovery process. Five different training set design techniques were applied separately to the three process datasets. These include Kennard-Stone, Duplex, SPXY, KSPXY and SPXYE techniques. Different sets of training data and validation data are designed for the three processes using the five techniques. The resulting training set data are used to develop linear (Multiple Linear Regression) and non-linear (Regression Neural Network) models of the three processes. The resulting validation set data are used to test the generalization ability of the developed models. Subsequently, the function computation time for all five techniques on the three process datasets were determined. It was observed that the duplex technique resulted in the best representative training set. However, the training sets designed from Kennard-Stone and SPXYE techniques resulted in models with best prediction performance with unknown data. The regression neural network models developed from the training set obtained by using Kennard-Stone algorithm for the debutanizer column and sulphur recovery unit are also found to perform better than some other data driven models reported in the literature. (C) 2018 Elsevier Ltd. All rights reserved.
机译:这项研究的目的是双重的。首先,从可用的工厂数据设置训练,然后使用用于开发数据驱动的线性和非线性软传感器模型的培训,以便在石油炼油厂连续质量监测。研究了来自石油炼油厂三种不同过程的三种数据集。三种数据集属于乙烷 - 乙烯蒸馏,癸丁化和硫回收过程。五种不同的训练集设计技术分别应用于三个过程数据集。这些包括肯纳德 - 石头,双工,SPXY,Kspxy和Spxye技术。使用五种技术的三个流程设计了不同的培训数据和验证数据集。得到的训练集数据用于开发三个过程的线性(多个线性回归)和非线性(回归神经网络)模型。生成的验证集数据用于测试开发模型的泛化能力。随后,确定了三个过程数据集上的所有五种技术的功能计算时间。观察到双工技术导致了最佳代表培训集。然而,从肯纳德 - 石头和SPXye技术设计的训练集导致模型具有最佳预测性能,具有未知的数据。也发现从使用Kennard-Stone算法为Debutanizer栏和硫回收单元获得的训练集开发的回归神经网络模型,比文献中报告的一些其他数据驱动模型更好。 (c)2018年elestvier有限公司保留所有权利。

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