Cargando…

A Comparative Investigation of Machine Learning Algorithms for Pore-Influenced Fatigue Life Prediction of Additively Manufactured Inconel 718 Based on a Small Dataset

Fatigue life prediction of Inconel 718 fabricated by laser powder bed fusion was investigated using a miniature specimen tests method and machine learning algorithms. A small dataset-based machine learning framework integrating thirteen kinds of algorithms was constructed to predict the pore-influen...

Descripción completa

Detalles Bibliográficos
Autores principales: Hu, Bing-Li, Luo, Yan-Wen, Zhang, Bin, Zhang, Guang-Ping
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10574268/
https://www.ncbi.nlm.nih.gov/pubmed/37834743
http://dx.doi.org/10.3390/ma16196606
_version_ 1785120654102626304
author Hu, Bing-Li
Luo, Yan-Wen
Zhang, Bin
Zhang, Guang-Ping
author_facet Hu, Bing-Li
Luo, Yan-Wen
Zhang, Bin
Zhang, Guang-Ping
author_sort Hu, Bing-Li
collection PubMed
description Fatigue life prediction of Inconel 718 fabricated by laser powder bed fusion was investigated using a miniature specimen tests method and machine learning algorithms. A small dataset-based machine learning framework integrating thirteen kinds of algorithms was constructed to predict the pore-influenced fatigue life. The method of selecting random seeds was employed to evaluate the performance of the algorithms, and then the ranking of various machine learning algorithms for predicting pore-influenced fatigue life on small datasets was obtained by verifying the prediction model twenty or thirty times. The results showed that among the thirteen popular machine learning algorithms investigated, the adaptive boosting algorithm from the boosting category exhibited the best fitting accuracy for fatigue life prediction of the additively manufactured Inconel 718 using the small dataset, followed by the decision tree algorithm in the nonlinear category. The investigation also found that DT, RF, GBDT, and XGBOOST algorithms could effectively predict the fatigue life of the additively manufactured Inconel 718 within the range of 1 × 10(5) cycles on a small dataset compared to others. These results not only demonstrate the capability of using small dataset-based machine learning techniques to predict fatigue life but also may guide the selection of algorithms that minimize performance evaluation costs when predicting fatigue life.
format Online
Article
Text
id pubmed-10574268
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-105742682023-10-14 A Comparative Investigation of Machine Learning Algorithms for Pore-Influenced Fatigue Life Prediction of Additively Manufactured Inconel 718 Based on a Small Dataset Hu, Bing-Li Luo, Yan-Wen Zhang, Bin Zhang, Guang-Ping Materials (Basel) Article Fatigue life prediction of Inconel 718 fabricated by laser powder bed fusion was investigated using a miniature specimen tests method and machine learning algorithms. A small dataset-based machine learning framework integrating thirteen kinds of algorithms was constructed to predict the pore-influenced fatigue life. The method of selecting random seeds was employed to evaluate the performance of the algorithms, and then the ranking of various machine learning algorithms for predicting pore-influenced fatigue life on small datasets was obtained by verifying the prediction model twenty or thirty times. The results showed that among the thirteen popular machine learning algorithms investigated, the adaptive boosting algorithm from the boosting category exhibited the best fitting accuracy for fatigue life prediction of the additively manufactured Inconel 718 using the small dataset, followed by the decision tree algorithm in the nonlinear category. The investigation also found that DT, RF, GBDT, and XGBOOST algorithms could effectively predict the fatigue life of the additively manufactured Inconel 718 within the range of 1 × 10(5) cycles on a small dataset compared to others. These results not only demonstrate the capability of using small dataset-based machine learning techniques to predict fatigue life but also may guide the selection of algorithms that minimize performance evaluation costs when predicting fatigue life. MDPI 2023-10-09 /pmc/articles/PMC10574268/ /pubmed/37834743 http://dx.doi.org/10.3390/ma16196606 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Hu, Bing-Li
Luo, Yan-Wen
Zhang, Bin
Zhang, Guang-Ping
A Comparative Investigation of Machine Learning Algorithms for Pore-Influenced Fatigue Life Prediction of Additively Manufactured Inconel 718 Based on a Small Dataset
title A Comparative Investigation of Machine Learning Algorithms for Pore-Influenced Fatigue Life Prediction of Additively Manufactured Inconel 718 Based on a Small Dataset
title_full A Comparative Investigation of Machine Learning Algorithms for Pore-Influenced Fatigue Life Prediction of Additively Manufactured Inconel 718 Based on a Small Dataset
title_fullStr A Comparative Investigation of Machine Learning Algorithms for Pore-Influenced Fatigue Life Prediction of Additively Manufactured Inconel 718 Based on a Small Dataset
title_full_unstemmed A Comparative Investigation of Machine Learning Algorithms for Pore-Influenced Fatigue Life Prediction of Additively Manufactured Inconel 718 Based on a Small Dataset
title_short A Comparative Investigation of Machine Learning Algorithms for Pore-Influenced Fatigue Life Prediction of Additively Manufactured Inconel 718 Based on a Small Dataset
title_sort comparative investigation of machine learning algorithms for pore-influenced fatigue life prediction of additively manufactured inconel 718 based on a small dataset
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10574268/
https://www.ncbi.nlm.nih.gov/pubmed/37834743
http://dx.doi.org/10.3390/ma16196606
work_keys_str_mv AT hubingli acomparativeinvestigationofmachinelearningalgorithmsforporeinfluencedfatiguelifepredictionofadditivelymanufacturedinconel718basedonasmalldataset
AT luoyanwen acomparativeinvestigationofmachinelearningalgorithmsforporeinfluencedfatiguelifepredictionofadditivelymanufacturedinconel718basedonasmalldataset
AT zhangbin acomparativeinvestigationofmachinelearningalgorithmsforporeinfluencedfatiguelifepredictionofadditivelymanufacturedinconel718basedonasmalldataset
AT zhangguangping acomparativeinvestigationofmachinelearningalgorithmsforporeinfluencedfatiguelifepredictionofadditivelymanufacturedinconel718basedonasmalldataset
AT hubingli comparativeinvestigationofmachinelearningalgorithmsforporeinfluencedfatiguelifepredictionofadditivelymanufacturedinconel718basedonasmalldataset
AT luoyanwen comparativeinvestigationofmachinelearningalgorithmsforporeinfluencedfatiguelifepredictionofadditivelymanufacturedinconel718basedonasmalldataset
AT zhangbin comparativeinvestigationofmachinelearningalgorithmsforporeinfluencedfatiguelifepredictionofadditivelymanufacturedinconel718basedonasmalldataset
AT zhangguangping comparativeinvestigationofmachinelearningalgorithmsforporeinfluencedfatiguelifepredictionofadditivelymanufacturedinconel718basedonasmalldataset