Artificial Intelligence · Computer Science
Enhancing Manufacturing Quality Prediction Models through the Integration of Explainability Methods
Dennis Gross, Helge Spieker, Arnaud Gotlieb, Ricardo Knoblauch
2024-03-28
Signal Processing · Electrical Eng. & Systems
Enhancing Corrosion Resistance of Aluminum Alloys Through AI and ML Modeling
Farnaz Kaboudvand, Maham Khalid, Nydia Assaf, Vardaan Sahgal +2
2025-08-19
Materials Science · Physics
Corrosion-resistant aluminum alloy design through machine learning combined with high-throughput calculations
Yucheng Ji, Xiaoqian Fu, Feng Ding, Yongtao Xu +9
2023-12-27
Computational Physics · Physics
Reliable and Explainable Machine Learning Methods for Accelerated Material Discovery
Bhavya Kailkhura, Brian Gallagher, Sookyung Kim, Anna Hiszpanski +1
2019-03-12
Materials Science · Physics
Machine Learning-based estimation and explainable artificial intelligence-supported interpretation of the critical temperature from magnetic ab initio Heusler alloys data
Robin Hilgers, Daniel Wortmann, Stefan Blügel
2023-11-28
Materials Science · Physics
Physics-informed machine learning for composition-process-property alloy design: shape memory alloy demonstration
Sen Liu, Branden B. Kappes, Behnam Amin-ahmadi, Othmane Benafan +2
2020-10-12
Machine Learning · Computer Science
An Explainable Regression Framework for Predicting Remaining Useful Life of Machines
Talhat Khan, Kashif Ahmad, Jebran Khan, Imran Khan +1
2022-05-03
Materials Science · Physics
AFLOW-ML: A RESTful API for machine-learning predictions of materials properties
Eric Gossett, Cormac Toher, Corey Oses, Olexandr Isayev +7
2017-11-30
Machine Learning · Computer Science
Explainable Artificial Intelligence for Improved Modeling of Processes
Riza Velioglu, Jan Philip Göpfert, André Artelt, Barbara Hammer
2022-12-02
Materials Science · Physics
Machine Learning Materials Properties with Accurate Predictions, Uncertainty Estimates, Domain Guidance, and Persistent Online Accessibility
Ryan Jacobs, Lane E. Schultz, Aristana Scourtas, KJ Schmidt +6
2024-06-25
Materials Science · Physics
Experimentally validated and empirically compared machine learning approach for predicting yield strength of additively manufactured multi-principal element alloys from Co-Cr-Fe-Mn-Ni system
Abhinav Chandraker, Sampad Barik, Nichenametla Jai Sai, Ankur Chauhan
2024-12-12
Materials Science · Physics
Accelerating the Design of Resorbable Magnesium Alloys: A Machine Learning Approach to Property Prediction
Vickey Nandal, Vít Beneš, Pavel Baláž, Jiří Ryjáček +1
2026-04-23
Machine Learning · Computer Science
Research on Milling Machine Predictive Maintenance Based on Machine Learning and SHAP Analysis in Intelligent Manufacturing Environment
Wen Zhao, Jiawen Ding, Xueting Huang, Yibo Zhang
2025-12-02
Machine Learning · Computer Science
Toward data-driven research: preliminary study to predict surface roughness in material extrusion using previously published data with Machine Learning
Fátima García-Martínez, Diego Carou, Francisco de Arriba-Pérez, Silvia García-Méndez
2024-06-21
Materials Science · Physics
Prediction of properties of metal alloy materials based on machine learning
Houchen Zuo, Yongquan Jiang, Yan Yang, Jie Hu
2021-09-21
Materials Science · Physics
Hardness prediction of age-hardening aluminum alloy based on ensemble learning
Houchen Zuo, Yongquan Jiang, Yan Yang, Baoying Liu +1
2022-07-05
Materials Science · Physics
Coupling Physics in Machine Learning to Predict Properties of High-temperatures Alloys
Jian Peng, Yukinori Yamamoto, Jeffrey A. Hawk, Edgar Lara-Curzio +1
2020-09-04
Machine Learning · Computer Science
Machine learning for automated quality control in injection moulding manufacturing
Steven Michiels, Cédric De Schryver, Lynn Houthuys, Frederik Vogeler +1
2022-07-01
Machine Learning · Computer Science
Machine learning model for predicting surface wettability in laser-textured metal alloys
Mohammad Mohammadzadeh Sanandaji, Danial Ebrahimzadeh, Mohammad Ikram Haider, Yaser Mike Banad +2
2026-01-21
Machine Learning · Computer Science
A Study of the Learnability of Relational Properties: Model Counting Meets Machine Learning (MCML)
Muhammad Usman, Wenxi Wang, Kaiyuan Wang, Marko Vasic +2
2020-09-08