利用简短试验和可解释的机器学习预测热塑性塑料的长期蠕变模量

IF 3.4 3区 工程技术 Q1 MECHANICS
Héctor Lobato , Carlos Cernuda , Kepa Zulueta , Aitor Arriaga , Jon M. Matxain , Aizeti Burgoa
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引用次数: 0

摘要

蠕变行为的预测在设计用于长期使用的热塑性材料时起着至关重要的作用。蠕变模量描述了材料随时间变化而产生的应力和应变之间的关系,是确定热塑性塑料长期热机械性能的关键属性。由于测试这一性能需要耗费大量时间和资源,因此本研究将数据驱动技术作为一种替代方法进行研究。为此,我们从 CAMPUS® 在线开放数据库中获取了由 400 多个不同热塑性塑料牌号组成的数据集。然后,对各种可解释的机器学习模型(线性回归、决策树、随机森林、XGBoost 和 LightGBM)进行了评估,以利用简短测试的数据预测长期蠕变模量。为了准确评估模型对新数据的泛化能力,我们采用了交叉验证和分组拆分等严格的模型评估技术,结果表明,各种算法都能预测蠕变模量,R2 分数都在 0.99 以上。有趣的是,线性回归不仅能与更复杂的模型相媲美,在某些情况下还能超越它们,同时它也是最简单、最易解释的模型。目前的工作表明,机器学习可以绕过最漫长的蠕变试验,降低成本、减少能耗、减少材料浪费、缩短产品开发时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of long-term creep modulus of thermoplastics using brief tests and interpretable machine learning

Prediction of long-term creep modulus of thermoplastics using brief tests and interpretable machine learning

The prediction of creep behavior plays a critical role in the design of thermoplastic materials intended for prolonged use. The creep modulus, which describes the relationship between stress and strain that a material experiences over time, is a key property to determine the long-term thermo-mechanical performance of thermoplastics. Due to the time-consuming and resource-intensive nature of testing for this property, the present work investigates the potential of data-driven techniques as an alternative approach. To accomplish this, a dataset comprising more than 400 distinct thermoplastic grades was obtained from CAMPUS® online open database. Then, various interpretable machine learning models (linear regression, decision trees, random forests, XGBoost, and LightGBM) were evaluated to predict the long-term creep modulus with data from brief tests. To accurately assess the models’ ability to generalize to new data, rigorous model evaluation techniques such as cross-validation and group-splitting were employed, showing that various algorithms can predict the creep modulus with R2 scores above 0.99. Interestingly, linear regression not only matches but, in some cases, also surpasses the performance of more complex models, while being the most simple and interpretable. The present work demonstrates that machine learning can bypass the most lengthy creep tests; reducing costs, energy consumption, material waste, and product development time.

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来源期刊
CiteScore
6.70
自引率
8.30%
发文量
405
审稿时长
70 days
期刊介绍: The International Journal of Solids and Structures has as its objective the publication and dissemination of original research in Mechanics of Solids and Structures as a field of Applied Science and Engineering. It fosters thus the exchange of ideas among workers in different parts of the world and also among workers who emphasize different aspects of the foundations and applications of the field. Standing as it does at the cross-roads of Materials Science, Life Sciences, Mathematics, Physics and Engineering Design, the Mechanics of Solids and Structures is experiencing considerable growth as a result of recent technological advances. The Journal, by providing an international medium of communication, is encouraging this growth and is encompassing all aspects of the field from the more classical problems of structural analysis to mechanics of solids continually interacting with other media and including fracture, flow, wave propagation, heat transfer, thermal effects in solids, optimum design methods, model analysis, structural topology and numerical techniques. Interest extends to both inorganic and organic solids and structures.
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