Skip to main content
Top
Published in: Journal of Intelligent Manufacturing 3/2024

07-03-2023

Tool wear condition monitoring across machining processes based on feature transfer by deep adversarial domain confusion network

Authors: Zhiwen Huang, Jiajie Shao, Jianmin Zhu, Wei Zhang, Xiaoru Li

Published in: Journal of Intelligent Manufacturing | Issue 3/2024

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

Deep learning-based data-driven methods have been successfully developed in tool wear condition monitoring (TWCM), relying on the massive available labeled samples and the same probability distribution between training and testing data. However, these two prerequisites are often difficult to satisfy in actual industries, which results in significant performance deterioration of those methods. This paper proposes an intelligent cross-domain data-driven TWCM method based on feature transfer by a deep adversarial domain confusion network (DADCN) model. In this model, source and target feature extractors sharing the same network architecture are employed to obtain high-level representation from time–frequency spectrums of vibration signals in the different domains respectively. An independent adversarial learning mechanism is designed in domain obfuscator to learn domain-invariant feature knowledge, while the maximum mean discrepancy is applied to measure the distribution difference between different domains. A cross-domain classifier is utilized for tool wear condition monitoring across machining processes. The performances of the proposed DADCN model under two distribution measure criteria are experimentally demonstrated using six transfer tasks between laboratory and factory platforms. The results indicate that the DADCN model can improve the monitoring accuracy and exhibit distinct clustering of tool wear conditions, promoting a successful application of data-driven methods in actual industrial fields.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Literature
go back to reference Alonso, F. J., & Salgado, D. R. (2008). Analysis of the structure of vibration signals for tool wear detection. Mechanical Systems and Signal Processing, 22(3), 735–748.ADSCrossRef Alonso, F. J., & Salgado, D. R. (2008). Analysis of the structure of vibration signals for tool wear detection. Mechanical Systems and Signal Processing, 22(3), 735–748.ADSCrossRef
go back to reference Attoui, I., Fergani, N., Boutasseta, N., Oudjani, B., & Deliou, A. (2017). A new time–frequency method for identification and classification of ball bearing faults. Journal of Sound and Vibration, 397, 241–265.ADSCrossRef Attoui, I., Fergani, N., Boutasseta, N., Oudjani, B., & Deliou, A. (2017). A new time–frequency method for identification and classification of ball bearing faults. Journal of Sound and Vibration, 397, 241–265.ADSCrossRef
go back to reference Bagr, S., Manwar, A., Varghese, A., Mujumdar, S., & Joshi, S. S. (2021). Tool wear and remaining useful life prediction in micro-milling along complex tool paths using neural networks. Journal of Manufacturing Processes, 71, 679–698.CrossRef Bagr, S., Manwar, A., Varghese, A., Mujumdar, S., & Joshi, S. S. (2021). Tool wear and remaining useful life prediction in micro-milling along complex tool paths using neural networks. Journal of Manufacturing Processes, 71, 679–698.CrossRef
go back to reference Bajaj, N. S., Patange, A. D., Jegadeeshwaran, R., Kulkarni, K. A., Ghatpande, R. S., & Kapadnis, A. M. (2022). A bayesian optimized discriminant analysis model for condition monitoring of face milling cutter using vibration datasets. Journal of Nondestructive Evaluation, Diagnostics & Prognostics of Engineering Systems, 5(2), 021002. https://doi.org/10.1115/1.4051696CrossRef Bajaj, N. S., Patange, A. D., Jegadeeshwaran, R., Kulkarni, K. A., Ghatpande, R. S., & Kapadnis, A. M. (2022). A bayesian optimized discriminant analysis model for condition monitoring of face milling cutter using vibration datasets. Journal of Nondestructive Evaluation, Diagnostics & Prognostics of Engineering Systems, 5(2), 021002. https://​doi.​org/​10.​1115/​1.​4051696CrossRef
go back to reference Ben-David, S., Blitzer, J., Crammer, K., Kulesza, A., Pereira, F., & Vaughan, J. W. (2010). A theory of learning from different domains. Machine Learning, 79(1–2), 151–175.MathSciNetCrossRef Ben-David, S., Blitzer, J., Crammer, K., Kulesza, A., Pereira, F., & Vaughan, J. W. (2010). A theory of learning from different domains. Machine Learning, 79(1–2), 151–175.MathSciNetCrossRef
go back to reference Bustillo, A., Urbikain, G., Perez, J. M., Pereira, O. M., & López de Lacalle, L. N. (2018). Smart optimization of a friction-drilling process based on boosting ensembles. Journal of Manufacturing Systems, 48, 108–121.CrossRef Bustillo, A., Urbikain, G., Perez, J. M., Pereira, O. M., & López de Lacalle, L. N. (2018). Smart optimization of a friction-drilling process based on boosting ensembles. Journal of Manufacturing Systems, 48, 108–121.CrossRef
go back to reference Cai, W., Zhang, W., Hu, X., & Liu, Y. (2020). A hybrid information model based on long short-term memory network for tool condition monitoring. Journal of Intelligent Manufacturing, 31(6), 1497–1510.CrossRef Cai, W., Zhang, W., Hu, X., & Liu, Y. (2020). A hybrid information model based on long short-term memory network for tool condition monitoring. Journal of Intelligent Manufacturing, 31(6), 1497–1510.CrossRef
go back to reference Chen, Z., He, G., Li, J., Liao, Y., Gryllias, K., & Li, W. (2020). Domain adversarial transfer network for cross-domain fault diagnosis of rotary machinery. IEEE Transactions on Instrumentation and Measurement, 69(11), 8702–8712.ADSCrossRef Chen, Z., He, G., Li, J., Liao, Y., Gryllias, K., & Li, W. (2020). Domain adversarial transfer network for cross-domain fault diagnosis of rotary machinery. IEEE Transactions on Instrumentation and Measurement, 69(11), 8702–8712.ADSCrossRef
go back to reference Cheng, C., Zhou, B., Ma, G., Wu, D., & Yuan, Y. (2020). Wasserstein distance based deep adversarial transfer learning for intelligent fault diagnosis with unlabeled or insufficient labeled data. Neurocomputing, 409, 35–45.CrossRef Cheng, C., Zhou, B., Ma, G., Wu, D., & Yuan, Y. (2020). Wasserstein distance based deep adversarial transfer learning for intelligent fault diagnosis with unlabeled or insufficient labeled data. Neurocomputing, 409, 35–45.CrossRef
go back to reference Cui, S., Wang, S., Zhuo, J., Li, L., Huang, Q., & Tian, Q. (2020). Towards discriminability and diversity: Batch nuclear-norm maximization under label insufficient situations. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (pp. 3941–3950). Cui, S., Wang, S., Zhuo, J., Li, L., Huang, Q., & Tian, Q. (2020). Towards discriminability and diversity: Batch nuclear-norm maximization under label insufficient situations. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (pp. 3941–3950).
go back to reference Ganin, Y., Ustinova, E., Ajakan, H., Germain, P., Larochelle, H., Laviolette, F., Marchand, M., & Lempitsky, V. (2016). Domain-adversarial training of neural networks. The Journal of Machine Learning Research, 17(1), 2096–2030.MathSciNet Ganin, Y., Ustinova, E., Ajakan, H., Germain, P., Larochelle, H., Laviolette, F., Marchand, M., & Lempitsky, V. (2016). Domain-adversarial training of neural networks. The Journal of Machine Learning Research, 17(1), 2096–2030.MathSciNet
go back to reference Goodfellow, I., Pouget-Abadie, J., Mirza, M., Xu, B., Warde-Farley, D., Ozair, S., Courville, A., & Bengio, Y. (2014). Generative adversarial nets. Advances in neural information processing systems (pp. 2672–2680). Curran Associates. Goodfellow, I., Pouget-Abadie, J., Mirza, M., Xu, B., Warde-Farley, D., Ozair, S., Courville, A., & Bengio, Y. (2014). Generative adversarial nets. Advances in neural information processing systems (pp. 2672–2680). Curran Associates.
go back to reference Goyal, D., Mongia, C., & Sehgal, S. (2021). Applications of digital signal processing in monitoring machining processes and rotary components: A review. IEEE Sensors Journal, 21(7), 8780–8804.ADSCrossRef Goyal, D., Mongia, C., & Sehgal, S. (2021). Applications of digital signal processing in monitoring machining processes and rotary components: A review. IEEE Sensors Journal, 21(7), 8780–8804.ADSCrossRef
go back to reference Gretton, A., Sejdinovic, D., Strathmann, H., Balakrishnan, S., Pontil, M., Fukumizu, K., & Sriperumbudur, B. K. (2012). Optimal kernel choice for large-scale two-sample tests. Advances in Neural Information Processing Systems, 25, 1205–1213. Gretton, A., Sejdinovic, D., Strathmann, H., Balakrishnan, S., Pontil, M., Fukumizu, K., & Sriperumbudur, B. K. (2012). Optimal kernel choice for large-scale two-sample tests. Advances in Neural Information Processing Systems, 25, 1205–1213.
go back to reference Guo, L., Lei, Y., Xing, S., Yan, T., & Li, N. (2019). Deep convolutional transfer learning network: A new method for intelligent fault diagnosis of machines with unlabeled data. IEEE Transactions on Industrial Electronics, 66(9), 7316–7325.CrossRef Guo, L., Lei, Y., Xing, S., Yan, T., & Li, N. (2019). Deep convolutional transfer learning network: A new method for intelligent fault diagnosis of machines with unlabeled data. IEEE Transactions on Industrial Electronics, 66(9), 7316–7325.CrossRef
go back to reference Hsieh, W. H., Lu, M. C., & Chiou, S. J. (2012). Application of backpropagation neural network for spindle vibration-based tool wear monitoring in micro-milling. The International Journal of Advanced Manufacturing Technology, 61(1–4), 53–61.CrossRef Hsieh, W. H., Lu, M. C., & Chiou, S. J. (2012). Application of backpropagation neural network for spindle vibration-based tool wear monitoring in micro-milling. The International Journal of Advanced Manufacturing Technology, 61(1–4), 53–61.CrossRef
go back to reference Huang, Z., Zhu, J., Lei, J., Li, X., & Tian, F. (2020). Tool wear predicting based on multi-domain feature fusion by deep convolutional neural network in milling operations. Journal of Intelligent Manufacturing, 31(4), 953–966.CrossRef Huang, Z., Zhu, J., Lei, J., Li, X., & Tian, F. (2020). Tool wear predicting based on multi-domain feature fusion by deep convolutional neural network in milling operations. Journal of Intelligent Manufacturing, 31(4), 953–966.CrossRef
go back to reference Huang, Z., Zhu, J., Lei, J., Li, X., & Tian, F. (2021). Tool wear monitoring with vibration signals based on short-time Fourier transform and deep convolutional neural network in milling. Mathematical Problems in Engineering, 2021, 9976939.CrossRef Huang, Z., Zhu, J., Lei, J., Li, X., & Tian, F. (2021). Tool wear monitoring with vibration signals based on short-time Fourier transform and deep convolutional neural network in milling. Mathematical Problems in Engineering, 2021, 9976939.CrossRef
go back to reference Javed, K., Gouriveau, R., Li, X., & Zerhouni, N. (2018). Tool wear monitoring and prognostics challenges: A comparison of connectionist methods toward an adaptive ensemble model. Journal of Intelligent Manufacturing, 29(8), 1873–1890.CrossRef Javed, K., Gouriveau, R., Li, X., & Zerhouni, N. (2018). Tool wear monitoring and prognostics challenges: A comparison of connectionist methods toward an adaptive ensemble model. Journal of Intelligent Manufacturing, 29(8), 1873–1890.CrossRef
go back to reference Kouw, W. M., & Loog, M. (2021). A review of domain adaptation without target labels. IEEE Transactions on Pattern Analysis and Machine Intelligence, 43(3), 766–785.CrossRef Kouw, W. M., & Loog, M. (2021). A review of domain adaptation without target labels. IEEE Transactions on Pattern Analysis and Machine Intelligence, 43(3), 766–785.CrossRef
go back to reference Lee, J. Y. (2015). Variable short-time Fourier transform for vibration signals with transients. Journal of Vibration and Control, 21(7), 1383–1397.CrossRef Lee, J. Y. (2015). Variable short-time Fourier transform for vibration signals with transients. Journal of Vibration and Control, 21(7), 1383–1397.CrossRef
go back to reference Lei, Y., Li, N., Guo, L., Li, N., Yan, T., & Lin, J. (2018). Machinery health prognostics: A systematic review from data acquisition to RUL prediction. Mechanical Systems and Signal Processing, 104, 799–834.ADSCrossRef Lei, Y., Li, N., Guo, L., Li, N., Yan, T., & Lin, J. (2018). Machinery health prognostics: A systematic review from data acquisition to RUL prediction. Mechanical Systems and Signal Processing, 104, 799–834.ADSCrossRef
go back to reference Li, X., Lim, B. S., Zhou, J. H., Huang, S., Phua, S. J., Shaw, K. C., & Er, M. J. (2009). Fuzzy neural network modelling for tool wear estimation in dry milling operation. In Annual Conference of the prognostics and health management Society (pp. 1–11). Li, X., Lim, B. S., Zhou, J. H., Huang, S., Phua, S. J., Shaw, K. C., & Er, M. J. (2009). Fuzzy neural network modelling for tool wear estimation in dry milling operation. In Annual Conference of the prognostics and health management Society (pp. 1–11).
go back to reference Li, C., Zhang, S., Qin, Y., & Estupinan, E. (2020a). A systematic review of deep transfer learning for machinery fault diagnosis. Neurocomputing, 407, 121–135.CrossRef Li, C., Zhang, S., Qin, Y., & Estupinan, E. (2020a). A systematic review of deep transfer learning for machinery fault diagnosis. Neurocomputing, 407, 121–135.CrossRef
go back to reference Li, J., Lu, J., Chen, C., Ma, J., & Liao, X. (2021). Tool wear state prediction based on feature-based transfer learning. The International Journal of Advanced Manufacturing Technology, 113(11–12), 3283–3301.CrossRef Li, J., Lu, J., Chen, C., Ma, J., & Liao, X. (2021). Tool wear state prediction based on feature-based transfer learning. The International Journal of Advanced Manufacturing Technology, 113(11–12), 3283–3301.CrossRef
go back to reference Li, X., Zhang, W., Xu, N. X., & Ding, Q. (2020b). Deep learning-based machinery fault diagnostics with domain adaptation across sensors at different places. IEEE Transactions on Industrial Electronics, 67(8), 6785–6794.CrossRef Li, X., Zhang, W., Xu, N. X., & Ding, Q. (2020b). Deep learning-based machinery fault diagnostics with domain adaptation across sensors at different places. IEEE Transactions on Industrial Electronics, 67(8), 6785–6794.CrossRef
go back to reference Liu, X., Liu, S., Li, X., Zhang, B., Yue, C., & Liang, S. Y. (2021). Intelligent tool wear monitoring based on parallel residual and stacked bidirectional long short-term memory network. Journal of Manufacturing Systems, 60, 608–619.CrossRef Liu, X., Liu, S., Li, X., Zhang, B., Yue, C., & Liang, S. Y. (2021). Intelligent tool wear monitoring based on parallel residual and stacked bidirectional long short-term memory network. Journal of Manufacturing Systems, 60, 608–619.CrossRef
go back to reference Long, M., Cao, Y., Cao, Z., Wang, J., & Jordan, M. I. (2019). Transferable representation learning with deep adaptation networks. IEEE Transactions on Pattern Analysis and Machine Intelligence, 41(12), 3071–3085.PubMedCrossRef Long, M., Cao, Y., Cao, Z., Wang, J., & Jordan, M. I. (2019). Transferable representation learning with deep adaptation networks. IEEE Transactions on Pattern Analysis and Machine Intelligence, 41(12), 3071–3085.PubMedCrossRef
go back to reference López de Lacalle, L. N., Lamikiz, A., Sánchez, J. A., & Fernández de Bustos, I. (2005). Simultaneous measurement of forces and machine tool position for diagnostic of machining tests. IEEE Transactions on Instrumentation and Measurement, 54(6), 2329–2335.ADSCrossRef López de Lacalle, L. N., Lamikiz, A., Sánchez, J. A., & Fernández de Bustos, I. (2005). Simultaneous measurement of forces and machine tool position for diagnostic of machining tests. IEEE Transactions on Instrumentation and Measurement, 54(6), 2329–2335.ADSCrossRef
go back to reference López de Lacalle, L. N., Lamikiz, A., Sánchez, J. A., & Fernández de Bustos, I. (2006). Recording of real cutting forces along the milling of complex parts. Mechatronics, 16(1), 21–32.CrossRef López de Lacalle, L. N., Lamikiz, A., Sánchez, J. A., & Fernández de Bustos, I. (2006). Recording of real cutting forces along the milling of complex parts. Mechatronics, 16(1), 21–32.CrossRef
go back to reference Martinez-Arellano, G., Terrazas, G., & Ratchev, S. (2019). Tool wear classification using time series imaging and deep learning. The International Journal of Advanced Manufacturing Technology, 104(9), 3647–3662.CrossRef Martinez-Arellano, G., Terrazas, G., & Ratchev, S. (2019). Tool wear classification using time series imaging and deep learning. The International Journal of Advanced Manufacturing Technology, 104(9), 3647–3662.CrossRef
go back to reference Nasir, V., & Sassani, F. (2021). A review on deep learning in machining and tool monitoring: Methods, opportunities, and challenges. The International Journal of Advanced Manufacturing Technology, 115(9–10), 2683–2709.CrossRef Nasir, V., & Sassani, F. (2021). A review on deep learning in machining and tool monitoring: Methods, opportunities, and challenges. The International Journal of Advanced Manufacturing Technology, 115(9–10), 2683–2709.CrossRef
go back to reference Pan, S. J., Tsang, I. W., Kwok, J. T., & Yang, Q. (2011). Domain adaptation via transfer component analysis. IEEE Transactions on Neural Networks, 22(2), 199–210.PubMedCrossRef Pan, S. J., Tsang, I. W., Kwok, J. T., & Yang, Q. (2011). Domain adaptation via transfer component analysis. IEEE Transactions on Neural Networks, 22(2), 199–210.PubMedCrossRef
go back to reference Pan, S. J., & Yang, Q. (2010). A survey on transfer learning. IEEE Transactions on Knowledge and Data Engineering, 22(10), 1345–1359.CrossRef Pan, S. J., & Yang, Q. (2010). A survey on transfer learning. IEEE Transactions on Knowledge and Data Engineering, 22(10), 1345–1359.CrossRef
go back to reference Rehorn, A. G., Jiang, J., & Orban, P. E. (2005). State-of-the-art methods and results in tool condition monitoring: A review. The International Journal of Advanced Manufacturing Technology, 26(7–8), 693–710.CrossRef Rehorn, A. G., Jiang, J., & Orban, P. E. (2005). State-of-the-art methods and results in tool condition monitoring: A review. The International Journal of Advanced Manufacturing Technology, 26(7–8), 693–710.CrossRef
go back to reference Rivero, A. D., López de Lacalle, L. N., & Penalva, M. L. (2008). Tool wear detection in dry high-speed milling based upon the analysis of machine internal signals. Mechatronics, 18(10), 627–633.CrossRef Rivero, A. D., López de Lacalle, L. N., & Penalva, M. L. (2008). Tool wear detection in dry high-speed milling based upon the analysis of machine internal signals. Mechatronics, 18(10), 627–633.CrossRef
go back to reference Serin, G., Sener, B., Ozbayoglu, A. M., & Unver, H. O. (2020). Review of tool condition monitoring in machining and opportunities for deep learning. International Journal of Advanced Manufacturing Technology, 109(3–4), 953–974.CrossRef Serin, G., Sener, B., Ozbayoglu, A. M., & Unver, H. O. (2020). Review of tool condition monitoring in machining and opportunities for deep learning. International Journal of Advanced Manufacturing Technology, 109(3–4), 953–974.CrossRef
go back to reference Shi, C., Panoutsos, G., Luo, B., Liu, H., Li, B., & Lin, X. (2019). Using multiple-feature-spaces-based deep learning for tool condition monitoring in ultraprec’s on manufacturing. IEEE Transactions on Industrial Electronics, 66(5), 3794–3803.CrossRef Shi, C., Panoutsos, G., Luo, B., Liu, H., Li, B., & Lin, X. (2019). Using multiple-feature-spaces-based deep learning for tool condition monitoring in ultraprec’s on manufacturing. IEEE Transactions on Industrial Electronics, 66(5), 3794–3803.CrossRef
go back to reference Sun, B., & Saenko, K. (2016). Deep coral: Correlation alignment for deep domain adaptation. European conference on computer vision (pp. 443–450). International Publishing. Sun, B., & Saenko, K. (2016). Deep coral: Correlation alignment for deep domain adaptation. European conference on computer vision (pp. 443–450). International Publishing.
go back to reference Sun, C., Ma, M., Zhao, Z., Tian, S., Yan, R., & Chen, X. (2019). Deep transfer learning based on sparse autoencoder for remaining useful life prediction of tool in manufacturing. IEEE Transactions on Industrial Informatics, 15(4), 2416–2425.CrossRef Sun, C., Ma, M., Zhao, Z., Tian, S., Yan, R., & Chen, X. (2019). Deep transfer learning based on sparse autoencoder for remaining useful life prediction of tool in manufacturing. IEEE Transactions on Industrial Informatics, 15(4), 2416–2425.CrossRef
go back to reference Tzeng, E., Hoffman, J., Zhang, N., Saenko, K., & Darrell, T. (2014). Deep domain confusion: Maximizing for domain invariance. arXiv preprint arXiv:1412.3474. Tzeng, E., Hoffman, J., Zhang, N., Saenko, K., & Darrell, T. (2014). Deep domain confusion: Maximizing for domain invariance. arXiv preprint arXiv:​1412.​3474.
go back to reference Van Der Maaten, L. (2014). Accelerating t-SNE using tree-based algorithms. The Journal of Machine Learning Research, 15(1), 3221–3245.MathSciNet Van Der Maaten, L. (2014). Accelerating t-SNE using tree-based algorithms. The Journal of Machine Learning Research, 15(1), 3221–3245.MathSciNet
go back to reference Wang, Y., Qin, B., Liu, K., Shen, M., & Han, L. (2021). A new multi-task learning method for tool wear condition and part surface quality prediction. IEEE Transactions on Industrial Informatics, 17(9), 6023–6033.CrossRef Wang, Y., Qin, B., Liu, K., Shen, M., & Han, L. (2021). A new multi-task learning method for tool wear condition and part surface quality prediction. IEEE Transactions on Industrial Informatics, 17(9), 6023–6033.CrossRef
go back to reference Wong, S. Y., Chuah, J. H., & Yap, H. J. (2020). Technical data-driven tool condition monitoring challenges for CNC milling: A review. International Journal of Advanced Manufacturing Technology, 107(11–12), 4837–4857.CrossRef Wong, S. Y., Chuah, J. H., & Yap, H. J. (2020). Technical data-driven tool condition monitoring challenges for CNC milling: A review. International Journal of Advanced Manufacturing Technology, 107(11–12), 4837–4857.CrossRef
go back to reference Yan, B., Zhu, L., & Dun, Y. (2021). Tool wear monitoring of TC4 titanium alloy milling process based on multi-channel signal and time-dependent properties by using deep learning. Journal of Manufacturing Systems, 61, 495–508.CrossRef Yan, B., Zhu, L., & Dun, Y. (2021). Tool wear monitoring of TC4 titanium alloy milling process based on multi-channel signal and time-dependent properties by using deep learning. Journal of Manufacturing Systems, 61, 495–508.CrossRef
go back to reference Yu, C., Wang, J., Chen, Y., & Huang, M. (2019). Transfer learning with dynamic adversarial adaptation network. In 2019 IEEE International Conference on Data Mining (pp. 778–786). Yu, C., Wang, J., Chen, Y., & Huang, M. (2019). Transfer learning with dynamic adversarial adaptation network. In 2019 IEEE International Conference on Data Mining (pp. 778–786).
go back to reference Zhao, B., Zhang, X. M., Zhan, Z. H., & Wu, Q. Q. (2021). Deep multi-scale adversarial network with attention: A novel domain adaptation method for intelligent fault diagnosis. Journal of Manufacturing Systems, 59, 565–576.CrossRef Zhao, B., Zhang, X. M., Zhan, Z. H., & Wu, Q. Q. (2021). Deep multi-scale adversarial network with attention: A novel domain adaptation method for intelligent fault diagnosis. Journal of Manufacturing Systems, 59, 565–576.CrossRef
go back to reference Zhao, R., Yan, R., Chen, Z., Mao, K., Wang, P., & Gao, R. X. (2019). Deep learning and its applications to machine health monitoring. Mechanical Systems and Signal Processing, 115, 213–237.ADSCrossRef Zhao, R., Yan, R., Chen, Z., Mao, K., Wang, P., & Gao, R. X. (2019). Deep learning and its applications to machine health monitoring. Mechanical Systems and Signal Processing, 115, 213–237.ADSCrossRef
go back to reference Zhu, Y., Zhuang, F., Wang, J., Chen, J., Shi, Z., Wu, W., & He, Q. (2019). Multi-representation adaptation network for cross-domain image classification. Neural Networks, 119, 214–221.PubMedCrossRef Zhu, Y., Zhuang, F., Wang, J., Chen, J., Shi, Z., Wu, W., & He, Q. (2019). Multi-representation adaptation network for cross-domain image classification. Neural Networks, 119, 214–221.PubMedCrossRef
go back to reference Zhu, Y., Zhuang, F., Wang, J., Ke, G., Chen, J., Bian, J., & He, Q. (2021). Deep subdomain adaptation network for image classification. IEEE Transactions on Neural Networks and Learning Systems, 32(4), 1713–1722.ADSMathSciNetPubMedCrossRef Zhu, Y., Zhuang, F., Wang, J., Ke, G., Chen, J., Bian, J., & He, Q. (2021). Deep subdomain adaptation network for image classification. IEEE Transactions on Neural Networks and Learning Systems, 32(4), 1713–1722.ADSMathSciNetPubMedCrossRef
Metadata
Title
Tool wear condition monitoring across machining processes based on feature transfer by deep adversarial domain confusion network
Authors
Zhiwen Huang
Jiajie Shao
Jianmin Zhu
Wei Zhang
Xiaoru Li
Publication date
07-03-2023
Publisher
Springer US
Published in
Journal of Intelligent Manufacturing / Issue 3/2024
Print ISSN: 0956-5515
Electronic ISSN: 1572-8145
DOI
https://doi.org/10.1007/s10845-023-02088-2

Other articles of this Issue 3/2024

Journal of Intelligent Manufacturing 3/2024 Go to the issue

Premium Partners