Material informatics and impact of multicollinearity on regression model for fatigue strength of steel

IF 2.2 3区 工程技术 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY International Journal of Fracture Pub Date : 2024-03-29 DOI:10.1007/s10704-024-00765-8
Mrinal Kumar Adhikary, Archana Bora
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Abstract

In the last few decades, the advancements made in material characterisation equipment and physics-based multiscale material modeling have generated vast database in the field of Material Science and Engineering. This has inspired material innovators to attempt predicting mechanical properties of synthesised materials using big-data so as to reduce the cost, time and effort for materials innovation. However, the impact of collinerarity has always been a matter of concern in emperical research, specially in such predictions of mechanical properties. In the present work, we revisit NIMS database for steel and study the effect of multicollinearity on regression based models for predicting fatigue strength for the material. We use an iterative scheme to isolate highly correlated parameters contributing in determination of the fatigue strength of the steel. We then construct a regression model using only the non-correlated parameters to make the model more efficient computationally. Our results show that the regression model built after consideration of multicollinearity of the variables provide better performance in comparison with regression model built without consideration of the same.

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材料信息学和多重共线性对钢疲劳强度回归模型的影响
过去几十年来,材料表征设备和基于物理学的多尺度材料建模技术的进步为材料科学与工程领域带来了庞大的数据库。这激发了材料创新者尝试利用大数据预测合成材料的机械性能,从而降低材料创新的成本、时间和精力。然而,在经验研究中,尤其是在此类力学性能预测中,共线性的影响一直是一个值得关注的问题。在本研究中,我们重新访问了钢材的 NIMS 数据库,研究了多重共线性对基于回归的材料疲劳强度预测模型的影响。我们使用迭代方案来分离出有助于确定钢材疲劳强度的高度相关参数。然后,我们仅使用不相关的参数构建回归模型,以提高模型的计算效率。结果表明,与未考虑变量多重共线性的回归模型相比,考虑了变量多重共线性的回归模型具有更好的性能。
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来源期刊
International Journal of Fracture
International Journal of Fracture 物理-材料科学:综合
CiteScore
4.80
自引率
8.00%
发文量
74
审稿时长
13.5 months
期刊介绍: The International Journal of Fracture is an outlet for original analytical, numerical and experimental contributions which provide improved understanding of the mechanisms of micro and macro fracture in all materials, and their engineering implications. The Journal is pleased to receive papers from engineers and scientists working in various aspects of fracture. Contributions emphasizing empirical correlations, unanalyzed experimental results or routine numerical computations, while representing important necessary aspects of certain fatigue, strength, and fracture analyses, will normally be discouraged; occasional review papers in these as well as other areas are welcomed. Innovative and in-depth engineering applications of fracture theory are also encouraged. In addition, the Journal welcomes, for rapid publication, Brief Notes in Fracture and Micromechanics which serve the Journal''s Objective. Brief Notes include: Brief presentation of a new idea, concept or method; new experimental observations or methods of significance; short notes of quality that do not amount to full length papers; discussion of previously published work in the Journal, and Brief Notes Errata.
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