人工神经网络与多因素降维分析相结合预测钛合金贝塔系数

P.S. Noori Banu, S. Devaki Rani
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引用次数: 3

摘要

为了预测钛合金的β转变,基于合金成分建立了人工神经网络(ANN)和多元线性回归(MLR)模型。Mo、V、Zr、Cr、Fe、Al、Si和O是β转变的主要决定因素。ANN和MLR模型中的“r2”(92.0%对90.7%)和平均预测误差[训练(1.4%对2.8%)和测试(2%对2.4%)]模式表明ANN模型具有优越的性能。多因素降维分析显示了Al、O和Cr之间的相互作用,这一点得到了ANN模型的证实。β-transus与铝当量呈正相关,与钼当量呈反相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Beta transus prediction of titanium alloys through integration of artificial neural network and multifactor dimensionality reduction analyses

Beta transus prediction of titanium alloys through integration of artificial neural network and multifactor dimensionality reduction analyses

To predict beta transus of titanium alloys, artificial neural network (ANN) and multiple linear regression (MLR) models were developed based on the alloy composition. Mo, V, Zr, Cr, Fe, Al, Si and O were the principle determinants of beta transus. The ‘r2’ (92.0% vs. 90.7%) and mean predicted error [training (1.4% vs. 2.8%) and testing (2% vs. 2.4%)] pattern in ANN and MLR models suggest superior performance of ANN model. Multifactor dimensionality reduction analysis showed interactions among Al, O and Cr, which were confirmed by the ANN model. The positive association of beta transus with aluminium equivalent and inverse association with molybdenum equivalent was demonstrated.

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