用回归或神经网络建立工艺装置数据的经验模型

T. Cheung, O. Kwapong, J. Elsey
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引用次数: 8

摘要

虽然神经网络通常被认为是经验数据建模的有用工具,但它在工业过程工厂数据建模中的效用需要与传统的统计技术进行比较。本文通过两个案例进行了比较。在每种情况下,来自实际炼油厂分馏器的数据通过神经网络和线性回归建模。该模型将过程测量值与通过低频实验室测试测量的流特性相关联。两个实例的结果表明,神经网络对包含非线性的过程数据建模是有效的。然而,当数据中不能观察到非线性时,其性能并不优于线性回归模型。虽然许多过程是非线性的,但在工业过程数据中往往存在噪声的情况下,弱非线性可能难以观察到。当数据中的噪声掩盖非线性时,线性回归模型更为合适。分析线性模型的残差有助于确定数据中是否存在可观察到的非线性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building Empirical Models of Process Plant Data by Regression or Neural Network
Although neural network has generally been recognized as a useful tool for empirical data modelling, its utility in modelling industrial process plant data needs to be compared against conventional statistical techniques. This paper presents such a comparison through two case studies. In each case, data from a real refinery frationator were modelled by neural network and by linear regression. The models correlate process measurements to stream properties which were measured by low frequency lab tests. Results from the two cases show that neural network is useful for modelling process data which contain nonlinearities. However, its performance cannot be better than linear regression model when nonlinearities cannot be observed in the data. Although many processes are nonlinear, weak nonlinearities may be difficult to observe in industrial process data which are often noisy. Linear regression models are more appropriate when noise in the data mask nonlinearities. Analyzing the residuals of the linear model helps determine if observable nonlinearities are present in the data.
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