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Modeling the Correlation of Composition-Processing-Property for TC11 Titanium Alloy Based on Principal Component Analysis and Artificial Neural Network

机译:基于主成分分析和人工神经网络的TC11钛合金成分-加工性能相关性建模

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摘要

In the present investigation, the correlation of composition-processing-property for TC11 titanium alloy was established using principal component analysis (PCA) and artificial neural network (ANN) based on the experimental datasets obtained from the forging experiments. During the PCA step, the feature vector is extracted by calculating the eigenvalue of correlation coefficient matrix for training dataset, and the dimension of input variables is reduced from 11 to 6 features. Thus, PCA offers an efficient method to characterize the data with a high degree of dimensionality reduction. During the ANN step, the principal components were chosen as the input parameters and the mechanical properties as the output parameters, including the ultimate tensile strength ( $ upsigma_{text{b}} $ ), yield strength ( $ upsigma_{0.2} $ ), elongation ( $ updelta $ ), and reduction of area (φ). The training of ANN model was conducted using back-propagation learning algorithm. The results clearly present ideal agreement between the predicted value of PCA-ANN model and experimental value, indicating that the established model is a powerful tool to construct the correlation of composition-processing-property for TC11 titanium alloy. More importantly, the integrated method of PCA and ANN is also able to be utilized as the mechanical property prediction for the other alloys.
机译:在本研究中,基于锻造实验获得的实验数据集,使用主成分分析(PCA)和人工神经网络(ANN)建立了TC11钛合金成分-加工性能的相关性。在PCA步骤中,通过计算训练数据集的相关系数矩阵的特征值来提取特征向量,并将输入变量的维数从11个减少到6个。因此,PCA提供了一种高效的方法来表征数据,并具有高度的降维性。在人工神经网络步骤中,选择主要成分作为输入参数,并选择机械性能作为输出参数,包括极限抗拉强度($ upsigma_ {text {b}} $),屈服强度($ upsigma_ {0.2} $) ,伸长率($ updelta $)和面积减小(φ)。神经网络模型的训练是使用反向传播学习算法进行的。结果清楚地表明了PCA-ANN模型的预测值与实验值之间的理想一致性,表明所建立的模型是构建TC11钛合金成分-加工性能相关性的有力工具。更重要的是,PCA和ANN的集成方法还可以用作其他合金的力学性能预测。

著录项

  • 来源
    《Journal of Materials Engineering and Performance》 |2012年第11期|p.2231-2237|共7页
  • 作者单位

    State Key Laboratory of Solidification Processing, Northwestern Polytechnical University, Xi’an, 710072, People’s Republic of China;

    State Key Laboratory of Solidification Processing, Northwestern Polytechnical University, Xi’an, 710072, People’s Republic of China;

    Northwest Institute for Nonferrous Metal Research, Xi’an, 710016, People’s Republic of China;

    State Key Laboratory of Solidification Processing, Northwestern Polytechnical University, Xi’an, 710072, People’s Republic of China;

    State Key Laboratory of Solidification Processing, Northwestern Polytechnical University, Xi’an, 710072, People’s Republic of China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    mechanical property; neural network; principle component analysis; processing parameters; TC11 titanium alloy;

    机译:力学性能;神经网络;原理成分分析;工艺参数;TC11钛合金;

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