Exploring the non-linearity in empirical modelling of a steel system using statistical and neural network models

被引:12
作者
Das, Prasun
Datta, Shubhabrata
机构
[1] Indian Stat Inst, SQC & OR Unit, Kolkata 700108, India
[2] Bengal Engn & Sci Univ, Sch Mat Sci & Engn, Sibpur 711103, Howrah, India
关键词
artificial neural network; steel; regression models; learning; backpropagation algorithm;
D O I
10.1080/00207540600792465
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The relationship between the physical properties of metal is often very complex in nature with its chemistry and several other rolling parameters in operation. Non-linear regression models play a very important role in modelling the underlying mechanism, provided it is known. Artificial neural networks provide a wide class of general-purpose and flexible non-linear regression models. The most commonly used neural networks, called multi-layered perceptrons, can vary the complexity of the model from a simple parametric model to a highly flexible nonparametric model. In this particular work, an industry-based data set is used for learning and optimizing the neural network architecture using some well-known algorithms for prediction under neural-net systems. The outcome of the analysis is compared with the results achieved through empirical statistical modelling from its prediction error level and the knowledge of materials science.
引用
收藏
页码:699 / 717
页数:19
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