Asnaashari Saleh, Shateri Mohammadhadi, Hemmati-Sarapardeh Abdolhossein, Band Shahab S
School of Metallurgy and Materials Engineering, University College of Engineering, University of Tehran, Tehran 7761968875, Iran.
Department of System Engineering, École de Technologie Supérieur, Montreal, QC H3C 1K3, Canada.
ACS Omega. 2023 Jul 25;8(31):28036-28051. doi: 10.1021/acsomega.2c07278. eCollection 2023 Aug 8.
In powder metallurgy materials, sintered density in Cu-Al alloy plays a critical role in detecting mechanical properties. Experimental measurement of this property is costly and time-consuming. In this study, adaptive boosting decision tree, support vector regression, -nearest neighbors, extreme gradient boosting, and four multilayer perceptron (MLP) models tuned by resilient backpropagation, Levenberg-Marquardt (LM), scaled conjugate gradient, and Bayesian regularization were employed for predicting powder densification through sintering. Yield strength, Young's modulus, volume variation caused by the phase transformation, hardness, liquid volume, liquidus temperature, the solubility ratio among the liquid phase and the solid phase, sintered temperature, solidus temperature, sintered atmosphere, holding time, compaction pressure, particle size, and specific shape factor were regarded as the input parameters of the suggested models. The cross plot, error distribution curve, and cumulative frequency diagram as graphical tools and average percent relative error (APRE), average absolute percent relative error (AAPRE), root mean square error (RMSE), standard deviation (SD), and coefficient of correlation () as the statistical evaluations were utilized to estimate the models' accuracy. All of the developed models were compared with preexisting approaches, and the results exhibited that the developed models in the present work are more precise and valid than the existing ones. The designed MLP-LM model was found to be the most precise approach with AAPRE = 1.292%, APRE = -0.032%, SD = 0.020, RMSE = 0.016, and = 0.989. Lately, outlier detection was applied performing the leverage technique to detect the suspected data points. The outlier detection discovered that few points are located out of the applicability domain of the proposed MLP-LM model.
在粉末冶金材料中,铜铝合金的烧结密度对检测机械性能起着关键作用。对该性能进行实验测量成本高且耗时。在本研究中,采用自适应增强决策树、支持向量回归、k近邻、极端梯度增强以及通过弹性反向传播、列文伯格-马夸特(LM)、缩放共轭梯度和贝叶斯正则化调整的四种多层感知器(MLP)模型,来预测粉末烧结过程中的致密化。屈服强度、杨氏模量、相变引起的体积变化、硬度、液体体积、液相线温度、液相与固相中溶解度比、烧结温度、固相线温度、烧结气氛、保温时间、压制压力、粒径和比形状因子被视为所提模型的输入参数。利用交叉图、误差分布曲线和累积频率图作为图形工具,以及平均相对百分误差(APRE)、平均绝对相对百分误差(AAPRE)、均方根误差(RMSE)、标准差(SD)和相关系数(r)作为统计评估指标,来估计模型的准确性。将所有开发的模型与现有方法进行比较,结果表明本工作中开发的模型比现有模型更精确、更有效。发现设计的MLP-LM模型是最精确的方法,其AAPRE = 1.292%,APRE = -0.032%,SD = 0.020,RMSE = 0.016,r = 0.989。最近,应用杠杆技术进行异常值检测,以检测可疑数据点。异常值检测发现,有几个点位于所提MLP-LM模型的适用范围之外。