Developing a deep learning-based uncertainty-aware tool wear prediction method using smartphone sensors for the turning process of Ti-6Al-4V

被引:10
作者
Kim, Gyeongho [1 ]
Yang, Sang Min [2 ]
Kim, Dong Min [3 ]
Choi, Jae Gyeong [1 ]
Lim, Sunghoon [1 ,4 ,5 ]
Park, Hyung Wook [2 ]
机构
[1] Ulsan Natl Inst Sci & Technol, Dept Ind Engn, 50 UNIST gil, Ulsan 44919, South Korea
[2] Ulsan Natl Inst Sci & Technol, Dept Mech Engn, 50 UNIST gil, Ulsan 44919, South Korea
[3] Korea Inst Ind Technol, Dongnam Div, 25,Yeonkkot ro 165 gil, Jinju 52845, South Korea
[4] Ulsan Natl Inst Sci & Technol, Grad Sch Artificial Intelligence, 50 UNIST gil, Ulsan 44919, South Korea
[5] Ulsan Natl Inst Sci & Technol, Ind Intelligentizat Inst, 50 UNIST gil, Ulsan 44919, South Korea
基金
新加坡国家研究基金会;
关键词
Aleatoric uncertainty; Deep learning; Epistemic uncertainty; Machining; Smartphone sensor; Tool wear prediction; PARTICLE FILTER; MARKOV MODEL; SYSTEM; OPTIMIZATION; DEMAND;
D O I
10.1016/j.jmsy.2024.07.010
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Accurately predicting tool wear is crucial for intelligent machining process monitoring, control, and quality improvement. Recent studies on tool wear prediction predominantly apply deep learning-based data-driven approaches that use multivariate time-series signals from high-precision sensors. However, the reliance on these sensors incurs high installation and operation costs, posing practical challenges for small and mediumsized enterprises. This work proposes a novel deep learning-based approach that employs smartphone sensors to predict tool wear, which addresses the problems associated with smartphone sensor data, including higher noise levels and increased data and model uncertainties. To this end, this work develops various data-driven techniques for effective tool wear prediction and uncertainty quantification. First, a Kalman filter-based noise suppression method is applied to reduce undesired noise effects. Second, a novel uncertainty modeling method consisting of a Bayesian deep learning approach and a density output structure is proposed to capture both aleatoric and epistemic uncertainties during tool wear prediction. The proposed method not only takes into account high noise levels and induced uncertainty, but also continuously quantifies and dissects predictive uncertainty. The proposed method's effectiveness is validated with real-world datasets from Ti-6Al-4V turning experiments under three different machining conditions. The comprehensive experimental results indicate the superior prediction performance of the proposed method compared to existing data-driven methods, probabilistic deep learning-based methods, and state-of-the-art methods. For each of the three distinct datasets, the proposed method provides the lowest mean absolute error (MAE) values of 2.5815, 1.2414, and 1.2269, with the highest R2 2 values of 0.9951, 0.9971, and 0.9982, respectively.
引用
收藏
页码:133 / 157
页数:25
相关论文
共 82 条
[51]   A concise review of uncertainty analysis in metal machining [J].
Panda, Amlana ;
Sahoo, Ashok Kumar ;
Kumar, Ramanuj ;
Das, Diptikanta .
MATERIALS TODAY-PROCEEDINGS, 2020, 26 :1734-1739
[52]   A recursive low-pass filtering method for a commercial cooling fan tray parameter online estimation with measurement noise [J].
Peng, Chao -Chung ;
Chen, Tsai-Ying .
MEASUREMENT, 2022, 205
[53]   Kalman filter based production control of a failure-prone single-machine single-product manufacturing system with imprecise demand and inventory information [J].
Polotski, V ;
Kenne, J-P ;
Gharbi, A. .
JOURNAL OF MANUFACTURING SYSTEMS, 2020, 56 :558-572
[54]   Tool wear identification and prediction method based on stack sparse self-coding network [J].
Qin, Yiyuan ;
Liu, Xianli ;
Yue, Caixu ;
Zhao, Mingwei ;
Wei, Xudong ;
Wang, Lihui .
JOURNAL OF MANUFACTURING SYSTEMS, 2023, 68 :72-84
[55]   MobileNetV2: Inverted Residuals and Linear Bottlenecks [J].
Sandler, Mark ;
Howard, Andrew ;
Zhu, Menglong ;
Zhmoginov, Andrey ;
Chen, Liang-Chieh .
2018 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2018, :4510-4520
[56]  
Sequera A, 2013, PROCEEDINGS OF THE ASME 8TH INTERNATIONAL MANUFACTURING SCIENCE AND ENGINEERING CONFERENCE - 2013, VOL 2
[57]   Tool Wear Prediction via Multidimensional Stacked Sparse Autoencoders With Feature Fusion [J].
Shi, Chengming ;
Luo, Bo ;
He, Songping ;
Li, Kai ;
Liu, Hongqi ;
Li, Bin .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2020, 16 (08) :5150-5159
[58]   Online geometry assurance in individualized production by feedback control and model calibration of digital twins [J].
Sjoberg, Anders ;
Onnheim, Magnus ;
Frost, Otto ;
Cronrath, Constantin ;
Gustavsson, Emil ;
Lennartson, Bengt ;
Jirstrand, Mats .
JOURNAL OF MANUFACTURING SYSTEMS, 2023, 66 :71-81
[59]   Tool wear predicting based on weighted multi-kernel relevance vector machine and probabilistic kernel principal component analysis [J].
Song, Guohao ;
Zhang, Jianhua ;
Ge, Yingshang ;
Zhu, Kangyi ;
Fu, Zhensheng ;
Yu, Luchuan .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2022, 122 (5-6) :2625-2643
[60]   In-process tool condition forecasting based on a deep learning method [J].
Sun, Huibin ;
Zhang, Jiduo ;
Mo, Rong ;
Zhang, Xianzhi .
ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING, 2020, 64 (64)