LGMTRL-SCIAIAug 21, 2022

MechProNet: Machine Learning Prediction of Mechanical Properties in Metal Additive Manufacturing

arXiv:2209.12605v2119 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

This work addresses the need for cost-effective and flexible prediction of mechanical properties in metal additive manufacturing, though it is incremental as it focuses on benchmarking and framework development rather than a new paradigm.

The authors tackled the problem of predicting mechanical properties in metal additive manufacturing by introducing a comprehensive benchmarking framework for machine learning models, resulting in a dataset from over 90 articles and 140 data sheets and the development of data-driven explicit models for enhanced interpretability.

Predicting mechanical properties in metal additive manufacturing (MAM) is essential for ensuring the performance and reliability of printed parts, as well as their suitability for specific applications. However, conducting experiments to estimate mechanical properties in MAM processes can be laborious and expensive, and they are often limited to specific materials and processes. Machine learning (ML) methods offer a more flexible and cost-effective approach to predicting mechanical properties based on processing parameters and material properties. In this study, we introduce a comprehensive framework for benchmarking ML models for predicting mechanical properties. We compiled an extensive experimental dataset from over 90 MAM articles and data sheets from a diverse range of sources, encompassing 140 different MAM data sheets. This dataset includes information on MAM processing conditions, machines, materials, and resulting mechanical properties such as yield strength, ultimate tensile strength, elastic modulus, elongation, hardness, and surface roughness. Our framework incorporates physics-aware featurization specific to MAM, adjustable ML models, and tailored evaluation metrics to construct a comprehensive learning framework for predicting mechanical properties. Additionally, we explore the Explainable AI method, specifically SHAP analysis, to elucidate and interpret the predicted values of ML models for mechanical properties. Furthermore, data-driven explicit models were developed to estimate mechanical properties based on processing parameters and material properties, offering enhanced interpretability compared to conventional ML models.

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