基于模拟 (FEA) 和响应面方法 (RSM) 的烧结 Al-TiB2 预型件预测模型

IF 1.6 4区 材料科学 Q2 Materials Science Transactions of The Indian Institute of Metals Pub Date : 2024-07-25 DOI:10.1007/s12666-024-03364-2
Md. Ahasan, D. S. Chandramouli, Ratnala Prasad, Nalla Pradeep, Ch. Shashikanth
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引用次数: 0

摘要

当前的研究集中于两种技术:神经网络(NN)和响应面方法(RSM),这两种技术被应用于预测烧结铝预型件的最终密度(FD)。在这项工作中,载荷、长宽比和初始预成型密度被作为输入参数,测量的响应(输出)变量是最终密度。借助反应和输入变量之间的经验关系,使用 RSM 方框-贝肯实验设计技术和神经网络(NN)对反应变量 FD 进行了预测。通过 RSM 和 NN 这两种技术预测的响应值与实验值进行了比较,并确定了它们与实验值的接近程度。此外,研究还发现,长宽比对致密化的影响很小,而预型件的 FD 会随着施加的载荷和烧结预型件的初始预型件密度而上升。作者利用 NN 和 RSM 技术预测了不同初始预型和长宽比条件下 Al-TiB2 烧结预型件的 FD。
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A Prediction Model Based on Simulation (FEA) and Response Surface Methodology (RSM) for Sintered Al–TiB2 Preforms

The current study centers on two techniques: neural network (NN) and response surface methodology (RSM), applied to predict the final density (FD) of sintered aluminum preforms. In this work, the load, the aspect ratio and the initial preform density were taken as input parameters and the response (output) variable measured was FD. Prediction for the response variable FD was obtained with the help of empirical relation between the response and the input variables using RSM’s (RSM) Box–Behnken design of experimental technique and also through Neural Network (NN). Predicted values of the response by both the techniques, i.e., RSM and NN were compared with the experimental values and their closeness with the experimental values was determined. Moreover, it has been discovered that the aspect ratio has minimal impact on densification and that the FD of the preform rises with both the load applied and the initial preform density of the sintered preforms. The authors were able to predict the FD of sintered preforms of Al–TiB2 for different initial preform and aspect ratio conditions by using NN and RSM techniques.

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来源期刊
Transactions of The Indian Institute of Metals
Transactions of The Indian Institute of Metals Materials Science-Metals and Alloys
CiteScore
2.60
自引率
6.20%
发文量
3
期刊介绍: Transactions of the Indian Institute of Metals publishes original research articles and reviews on ferrous and non-ferrous process metallurgy, structural and functional materials development, physical, chemical and mechanical metallurgy, welding science and technology, metal forming, particulate technologies, surface engineering, characterization of materials, thermodynamics and kinetics, materials modelling and other allied branches of Metallurgy and Materials Engineering. Transactions of the Indian Institute of Metals also serves as a forum for rapid publication of recent advances in all the branches of Metallurgy and Materials Engineering. The technical content of the journal is scrutinized by the Editorial Board composed of experts from various disciplines of Metallurgy and Materials Engineering. Editorial Advisory Board provides valuable advice on technical matters related to the publication of Transactions.
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