Extending Cutting Tool Remaining Life through Deep Learning and Laser Shock Peening Remanufacturing Techniques

IF 9.7 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL Journal of Cleaner Production Pub Date : 2024-10-05 DOI:10.1016/j.jclepro.2024.143876
Yuchen Liang, Yuqi Wang, Jinzhong Lu
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Abstract

Predicting and extending the remaining life of cutting tools during machining processes is crucial for sustainable manufacturing. Traditional prognosis methods often struggle to adapt to diverse working conditions throughout the machining process lifecycle. This paper introduced a comprehensive framework that effectively addressed the challenges by integrating multi-source data and using deep learning techniques. The system integrated power and vibration data collected from LGMazak VTC-16A and IRON MAN QM200 machines with the following innovations: (1) A standardized data fusion method was developed to integrate multi-source data sources, the hybrid graph convolutional network (GCN) with attention mechanisms was employed to improve the prognosis accuracy of cutting tool remaining life, best accuracy of 98.56% and average accuracy of 97.71% were achieved. (2) The optimization of laser shock peening (LSP) remanufacturing parameters using the bees algorithm showed good performance, a fitness value of 0.95 was achieved with convergence within 15 iterations. (3) Monitoring of the LSP remanufacturing process was designed based on sound and vibration data for optimal remanufacturing performance. (4) The remanufacturing approach in extending the remaining life of cutting tool was validated through FEA analysis and experimental testing, cutting tool life was extended by 29.32% to achieve a sustainable manufacturing process.
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通过深度学习和激光冲击强化再制造技术延长切削工具的剩余寿命
在加工过程中预测和延长切削工具的剩余寿命对于可持续生产至关重要。传统的预测方法往往难以适应整个加工过程生命周期中的各种工作条件。本文介绍了一个综合框架,该框架通过整合多源数据和使用深度学习技术,有效地应对了这些挑战。该系统集成了从 LGMazak VTC-16A 和 IRON MAN QM200 机床采集的功率和振动数据,具有以下创新之处:(1)开发了一种标准化的数据融合方法来集成多源数据源,并采用了具有注意机制的混合图卷积网络(GCN)来提高切削刀具剩余寿命的预测精度,实现了 98.56% 的最佳精度和 97.71% 的平均精度。(2) 利用蜜蜂算法优化激光冲击强化(LSP)再制造参数,结果表明性能良好,在 15 次迭代内收敛,拟合度达到 0.95。(3) 基于声音和振动数据设计了激光冲击强化再制造过程的监控系统,以获得最佳的再制造性能。(4) 通过有限元分析和实验测试验证了延长切削刀具剩余寿命的再制造方法,切削刀具寿命延长了 29.32%,实现了可持续的制造过程。
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来源期刊
Journal of Cleaner Production
Journal of Cleaner Production 环境科学-工程:环境
CiteScore
20.40
自引率
9.00%
发文量
4720
审稿时长
111 days
期刊介绍: The Journal of Cleaner Production is an international, transdisciplinary journal that addresses and discusses theoretical and practical Cleaner Production, Environmental, and Sustainability issues. It aims to help societies become more sustainable by focusing on the concept of 'Cleaner Production', which aims at preventing waste production and increasing efficiencies in energy, water, resources, and human capital use. The journal serves as a platform for corporations, governments, education institutions, regions, and societies to engage in discussions and research related to Cleaner Production, environmental, and sustainability practices.
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