Application of Genetic Programming on Temper Mill Datasets

M. Kommenda, G. Kronberger, Stephan M. Winkler, M. Affenzeller, Stefan Wagner, L. Schickmair, B. Lindner
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引用次数: 5

Abstract

Temper rolling is essential for the quality of steel sheets. The degree of temper rolling determines the mechanical properties of the steel sheet and is highly influenced by the rolling force or strip tension. Since mathematical models generate unsatisfactory results for the calculation of these two process parameters, other methods for the presetting of tempers mills must be used. The parameter presetting of temper mills is of prime importance because it reduces the effort of tuning these parameters later. Hence, the production costs are reduced by minimizing the amount of wasted material that does not fulfill the quality requirements. Genetic Programming (GP) is an evolutionary inspired and population based modeling technique and has been successfully applied in different contexts. In this paper we present first results of advanced genetic programming concepts on large datasets from a temper mill in comparison to linear regression (LR), support vector machines (SVMs) and previous analysis on the datasets. The use of GP shows an improvement compared to previous work, but is still inferior to models obtained by SVMs. A major advantage of GP compared to support vector machines is that the identified models are mathematical formulae which can be interpreted and enable knowledge generation about the temper rolling process.
遗传规划在回火轧机数据集上的应用
回火轧制对钢板的质量至关重要。回火轧制的程度决定了钢板的力学性能,并且受轧制力或带钢张力的影响很大。由于数学模型对这两个工艺参数的计算结果不能令人满意,因此必须采用其他方法对回火轧机进行预置。调质机的参数预置是至关重要的,因为它减少了后期调整这些参数的工作量。因此,通过最大限度地减少不符合质量要求的浪费材料,可以降低生产成本。遗传规划(GP)是一种受进化启发的基于种群的建模技术,已经成功地应用于不同的环境中。在本文中,我们提出了先进的遗传规划概念在大型数据集上的初步结果,与线性回归(LR)、支持向量机(svm)和之前对数据集的分析进行了比较。与以前的工作相比,GP的使用有了改进,但仍然不如svm获得的模型。与支持向量机相比,GP的一个主要优点是识别的模型是可以解释的数学公式,并且可以生成有关回火轧制过程的知识。
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