Abstract
Predicting cutting tool remaining life is important to sustainable machining. Accurate wear assessment improves efficiency, reduces waste, and lowers costs by minimizing tool failure. Traditional prognosis methods are often crippled by the inability to adapt to diverse working conditions across the machining process lifecycle. This paper introduces a fog computing-enabled adaptive prognosis framework utilizing multi-source data to address these challenges effectively. The key innovations include the following: (1) the proposed system integrates power and vibration data collected from LGMazak VTC-16A and IRON MAN QM200 machines. A standardized data fusion method combines multi-source data to enhance robustness and accuracy. (2) The transformer model is employed to improve prognosis accuracy of cutting tool remaining life; best accuracy of 98.24% and an average accuracy of 97.63% are achieved. (3) Finite element analysis is incorporated to validate the model’s predictions to validate reliability of deep learning model. (4) The fog computing optimization mechanism based on the bees algorithm, which shows fitness value of 0.92 and convergence within 15 iterations. The proposed method reduces total data volume in cloud by 54.12%, prediction time by 33.64%, and time complexity in the cloud layer by 4.62%. The effectiveness of fog computing in improving the operational efficiency and reliability of manufacturing systems is validated through the integration of advanced data analytics and deep learning techniques.
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Details
; Wang, Yuqi 2 ; Gu, Chengyi 3 ; Tang, Jie 3 ; Pang, Xianjuan 4 1 School of Mechanical Engineering, Jiangsu University , 301 Xuefu Road, Jingkou District, Zhenjiang, Jiangsu 212013 , P.R. China
2 School of Transportation and Logistics Engineering, Wuhan University of Technology , 1040 Heping Avenue, Wuchang District, Wuhan, Hubei 430070 , P.R. China
3 Jiangsu Haiyu Machinery Co., Ltd , 8 Yingbin Road, Industrial District, Taizhou, Jiangsu 225714 , P.R. China
4 National United Engineering Laboratory for Advanced Bearing Tribology, Henan University of Science and Technology , 263 Kaiyuan Avenue, Luolong District, Luoyang, Henan 471000 , P.R. China





