Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging

Direct recycling of aluminum waste is crucial in sustainable manufacturing to mitigate environmental impact and conserve resources. This work was carried out to study the application of hot press forging (HPF) in recycling AA6061 aluminum chip waste, aiming to optimize operating factors using Respon...

Full description

Saved in:
Bibliographic Details
Main Authors: M. Altharan, Yahya, Shamsudin, Shazarel, Lajis, Mohd Amri, Sami Al-Alimi, Sami Al-Alimi, Yusuf, Nur Kamilah Y, Mohammed Alduais, Nayef Abdulwahab, Atef M. Ghaleb, Atef M. Ghaleb, Wenbin Zhou, Wenbin Zhou
Format: Article
Language:English
Published: Plas One 2024
Subjects:
Online Access:http://eprints.uthm.edu.my/11123/1/J17616_3f2e7cbd4b41778d1b8908faffb4d48f.pdf
http://eprints.uthm.edu.my/11123/
https://doi.org/10.1371/journal.pone.0300504
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.uthm.eprints.11123
record_format eprints
spelling my.uthm.eprints.111232024-06-10T02:02:14Z http://eprints.uthm.edu.my/11123/ Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging M. Altharan, Yahya Shamsudin, Shazarel Lajis, Mohd Amri Sami Al-Alimi, Sami Al-Alimi Yusuf, Nur Kamilah Y Mohammed Alduais, Nayef Abdulwahab Atef M. Ghaleb, Atef M. Ghaleb Wenbin Zhou, Wenbin Zhou T Technology (General) Direct recycling of aluminum waste is crucial in sustainable manufacturing to mitigate environmental impact and conserve resources. This work was carried out to study the application of hot press forging (HPF) in recycling AA6061 aluminum chip waste, aiming to optimize operating factors using Response Surface Methodology (RSM), Artificial Neural Network (ANN) and Genetic algorithm (GA) strategy to maximize the strength of recycled parts. The experimental runs were designed using Full factorial and RSM via Minitab 21 software. RSM-ANN models were employed to examine the effect of factors and their interactions on response and to predict output, while GA-RSM and GA-ANN were used for optimization. The chips of different morphology were cold compressed into billet form and then hot forged. The effect of varying forging temperature (Tp, 450–550˚C), holding time (HT, 60–120 minutes), and chip surface area to volume ratio (AS:V, 15.4–52.6 mm2 /mm3 ) on ultimate tensile strength (UTS) was examined. Maximum UTS (237.4 MPa) was achieved at 550˚C, 120 minutes and 15.4 mm2 /mm3 of chip’s AS: V. The Tp had the largest contributing effect ratio on the UTS, followed by HT and AS:V according to ANOVA analysis. The proposed optimization process suggested 550˚C, 60 minutes, and 15.4 mm2 as the optimal condition yielding the maximum UTS. The developed models’ evaluation results showed that ANN (with MSE = 1.48%) outperformed RSM model. Overall, the study promotes sustainable production by demonstrating the potential of integrating RSM and ML to optimize complex manufacturing processes and improve product quality. Plas One 2024 Article PeerReviewed text en http://eprints.uthm.edu.my/11123/1/J17616_3f2e7cbd4b41778d1b8908faffb4d48f.pdf M. Altharan, Yahya and Shamsudin, Shazarel and Lajis, Mohd Amri and Sami Al-Alimi, Sami Al-Alimi and Yusuf, Nur Kamilah Y and Mohammed Alduais, Nayef Abdulwahab and Atef M. Ghaleb, Atef M. Ghaleb and Wenbin Zhou, Wenbin Zhou (2024) Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging. Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach. pp. 1-29. https://doi.org/10.1371/journal.pone.0300504
institution Universiti Tun Hussein Onn Malaysia
building UTHM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
url_provider http://eprints.uthm.edu.my/
language English
topic T Technology (General)
spellingShingle T Technology (General)
M. Altharan, Yahya
Shamsudin, Shazarel
Lajis, Mohd Amri
Sami Al-Alimi, Sami Al-Alimi
Yusuf, Nur Kamilah Y
Mohammed Alduais, Nayef Abdulwahab
Atef M. Ghaleb, Atef M. Ghaleb
Wenbin Zhou, Wenbin Zhou
Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging
description Direct recycling of aluminum waste is crucial in sustainable manufacturing to mitigate environmental impact and conserve resources. This work was carried out to study the application of hot press forging (HPF) in recycling AA6061 aluminum chip waste, aiming to optimize operating factors using Response Surface Methodology (RSM), Artificial Neural Network (ANN) and Genetic algorithm (GA) strategy to maximize the strength of recycled parts. The experimental runs were designed using Full factorial and RSM via Minitab 21 software. RSM-ANN models were employed to examine the effect of factors and their interactions on response and to predict output, while GA-RSM and GA-ANN were used for optimization. The chips of different morphology were cold compressed into billet form and then hot forged. The effect of varying forging temperature (Tp, 450–550˚C), holding time (HT, 60–120 minutes), and chip surface area to volume ratio (AS:V, 15.4–52.6 mm2 /mm3 ) on ultimate tensile strength (UTS) was examined. Maximum UTS (237.4 MPa) was achieved at 550˚C, 120 minutes and 15.4 mm2 /mm3 of chip’s AS: V. The Tp had the largest contributing effect ratio on the UTS, followed by HT and AS:V according to ANOVA analysis. The proposed optimization process suggested 550˚C, 60 minutes, and 15.4 mm2 as the optimal condition yielding the maximum UTS. The developed models’ evaluation results showed that ANN (with MSE = 1.48%) outperformed RSM model. Overall, the study promotes sustainable production by demonstrating the potential of integrating RSM and ML to optimize complex manufacturing processes and improve product quality.
format Article
author M. Altharan, Yahya
Shamsudin, Shazarel
Lajis, Mohd Amri
Sami Al-Alimi, Sami Al-Alimi
Yusuf, Nur Kamilah Y
Mohammed Alduais, Nayef Abdulwahab
Atef M. Ghaleb, Atef M. Ghaleb
Wenbin Zhou, Wenbin Zhou
author_facet M. Altharan, Yahya
Shamsudin, Shazarel
Lajis, Mohd Amri
Sami Al-Alimi, Sami Al-Alimi
Yusuf, Nur Kamilah Y
Mohammed Alduais, Nayef Abdulwahab
Atef M. Ghaleb, Atef M. Ghaleb
Wenbin Zhou, Wenbin Zhou
author_sort M. Altharan, Yahya
title Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging
title_short Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging
title_full Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging
title_fullStr Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging
title_full_unstemmed Optimizing strength of directly recycled aluminum chip-based parts through a hybrid RSM-GA-ANN approach in sustainable hot forging
title_sort optimizing strength of directly recycled aluminum chip-based parts through a hybrid rsm-ga-ann approach in sustainable hot forging
publisher Plas One
publishDate 2024
url http://eprints.uthm.edu.my/11123/1/J17616_3f2e7cbd4b41778d1b8908faffb4d48f.pdf
http://eprints.uthm.edu.my/11123/
https://doi.org/10.1371/journal.pone.0300504
_version_ 1803337342515150848
score 13.211869