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A steel property optimization model based on the XGBoost algorithm and improved PSO

机译:一种基于XGBoost算法和改进PSO的钢属性优化模型

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Exploring the relationships between the properties of steels and their compositions and manufacturing parameters is extremely crucial and indispensable to understanding the science of materials, and subsequently developing new materials. Tensile strength and plasticity, as two important properties of steels, are key to the improvement and optimization of the mechanical properties of steels. In the present paper, we propose an optimization model combining XGBoost algorithm with improved PSO to address the continuous multivariable optimization problem. The main goal is to determine the mapping functions between the tensile strength and plasticity and their influencing factors, based on a diversity of machine learning models such as Linear Regression, SVM, XGBoost, etc. After evaluating the performance these models, we then select the XGBoost model with highest accuracy as the mapping function, which has not been done in previous studies. Moreover, the determined mapping function serves as the fitness value of particle swarm optimization, after which the tensile strength and plasticity optimization with many variables is realized. Finally, the experimental results are analyzed theoretically, and proven to be effective and reliable.
机译:探索钢与其组合物和制造参数之间的关系是极为关键和不可或缺的理解材料科学,随后开发新材料。拉伸强度和可塑性,作为钢的两个重要特性,是钢的力学性能改善和优化的关键。在本文中,我们提出了一种优化模型,将XGBoost算法与改进的PSO组合以解决连续多变量优化问题。主要目标是根据线性回归,SVM,XGBoost等的机器学习模型等多样性,确定拉伸强度和可塑性及其影响因素之间的映射功能。然后选择这些模型的性能后,我们选择XGBoost模型具有最高精度作为映射函数,在以前的研究中尚未完成。此外,所确定的映射功能用作粒子群优化的适应值,之后实现了许多变量的拉伸强度和可塑性优化。最后,理论上分析了实验结果,并证明是有效和可靠的。

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