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Comparison of hot rolled steel mechanical property prediction models using linear multiple regression, non-linear multiple regression and non-liner artificial neural networks

机译:基于线性多元回归,非线性多元回归和非线性人工神经网络的热轧钢力学性能预测模型的比较

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摘要

In the manufacture of rolled steel from a hot strip mill, the final mechanical properties, such as yield strength, ultimate tensile strength and elongation to fracture, are important requirements specified by the customer. The use of mathematical modelling techniques such as multiple regression analysis, or computational developments such as artificial neural networks, can result in the creation of acceptably accurate predictive models. However, the accuracy of any predictive model will depend on the quality of data used in its creation, and thus a brief statistical analysis of the mechanical property data used for model development is discussed. In the present paper a comparison of the application of linear multiple regression, non-linear multiple regression and non-linear neural networks is made for various steel families using data taken from the Corus Port Talbot hot strip mill. A statistical summary of their relative predictive errors is given, and although all three are comparable, the non-linear, black box approach of a suitably structured neural -network provides overall more accurate predictive models than the use of linear or non-linear multiple regression.
机译:在用热轧机生产轧钢时,最终机械性能,例如屈服强度,极限抗拉强度和断裂伸长率,是客户指定的重要要求。使用数学建模技术(例如多元回归分析)或计算开发(例如人工神经网络)可以导致创建可接受的准确预测模型。但是,任何预测模型的准确性都将取决于其创建中使用的数据的质量,因此,对用于模型开发的机械性能数据的简要统计分析进行了讨论。在本文中,使用从Corus Port Talbot热轧机获得的数据,对各种钢系列进行了线性多元回归,非线性多元回归和非线性神经网络的应用比较。给出了它们的相对预测误差的统计摘要,尽管所有这三个都是可比较的,但结构合理的神经网络的非线性黑盒方法比使用线性或非线性多元回归提供了更准确的整体预测模型。

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