Predictive Maintenance of Machinery with Rotating Parts Using Convolutional Neural Networks
Abstract
:1. Introduction
2. Literature Review
3. Fundamental Concepts
3.1. Maintenance Strategies
3.2. Convolutional Neural Networks—An Overview
3.2.1. CNN Architecture
3.2.2. CNN Training
4. Experimental Results of the Proposed CNN
4.1. Experimental Setup
4.2. CWRU Dataset
4.3. Architecture Design
4.4. Evaluation Results
- The network demonstrates an overall response ranging from 78.8% to 100%, with the exception of detecting signals 14_0_BN and 21_0_IR;
- For signals 14_0_BN and 21_0_IR, the network’s response is 25% and 20%, respectively. It is worth noting that incorrect predictions are not related to the type of damage but rather to load. The network misinterprets a 0 Hp sample as 1 Hp. Nonetheless, this is not considered an error since the network successfully recognizes the type of fault;
- Remarkably, the network achieves a 100% accuracy in distinguishing between damage and non-damage. This is particularly surprising considering the simplicity of the network and the circumstances under which it was tested and trained within the context of our work;
- As previously mentioned, the data used for testing the model consist of measurements ranging from 2000 to 15,000, corresponding to signals of 44 to 330 milliseconds at a 45 kHz sampling rate. It is important to note that these measurements are relatively small compared to real-world scenarios where measurements of several seconds are typically used. This further highlights the network’s success in its response.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
- Our Economy Relies on Shipping Containers. This Is What Happens When They’re ’Stuck in the Mud’. Available online: https://www.weforum.org/agenda/2021/10/global-shortagof-shipping-containers/ (accessed on 9 September 2023).
- Number of Ships in the World Merchant Fleet as of January 1, 2022, by Type. Available online: https://www.statista.com/statistics/264024/number-of-merchant-ships-worldwide-by-type/ (accessed on 9 September 2023).
- Welcome to the Case Western Reserve University Bearing Data Center Website. Available online: https://engineering.case.edu/bearingdatacenter/welcome (accessed on 9 September 2023).
- Han, T.; Yang, B.-S.; Yin, Z.-J. Feature-based fault diagnosis system of induction motors using vibration signal. J. Qual. Maint. Eng. 2007, 13, 163–175. [Google Scholar] [CrossRef]
- Chen, Ζ.; Li, C.; Sanchez, R.-V. Gearbox Fault Identification and Classification with Convolutional Neural Networks. Shock Vib. 2015, 2015, 390134. [Google Scholar] [CrossRef]
- Janssens, O.; Slavkovikj, V.; Vervisch, B.; Stockman, K.; Loccufier, M.; Verstockt, S.; Van de Walle, R.; Van Hoecke., S. Convolutional Neural Network Based Fault Detection for Rotating Machinery. J. Sound. Vib. 2016, 377, 331–345. [Google Scholar] [CrossRef]
- Guo, X.; Chen, L.; Shen, C. Hierarchical adaptive deep convolution neural network and its application to bearing fault diagnosis. Measurement 2016, 93, 490–502. [Google Scholar] [CrossRef]
- Zhang, W.; Li, C.; Peng, G.; Chen, Y.; Zhang, Z. A deep convolutional neural network with new training methods for bearing fault diagnosis under noisy environment and different working load. Mech. Syst. Signal Pr. 2017, 100, 439–453. [Google Scholar] [CrossRef]
- Guo, S.; Yang, T.; Gao, W.; Zhang, C. A Novel Fault Diagnosis Method for Rotating Machinery Based on a Convolutional Neural Network. Sensors 2018, 18, 1429. [Google Scholar] [CrossRef]
- Wu, C.; Jiang, P.; Ding, C.; Feng, F.; Chen, T. Intelligent fault diagnosis of rotating machinery based on one-dimensional convolutional neural network. Comput. Ind. 2019, 108, 53–61. [Google Scholar] [CrossRef]
- Abdeljaber, O.; Sassi, S.; Avci, O.; Kiranyaz, S.; Aly Ibrahim, A.; Gabbouj, M. Fault Detection and Severity Identification of Ball Bearings by Online Condition Monitoring. IEEE Trans. Ind. Electron. 2019, 66, 8136–8147. [Google Scholar] [CrossRef]
- Ma, S.; Cai, W.; Liu, W.; Shang, Z.; Liu, G. A Lighted Deep Convolutional Neural Network Based Fault Diagnosis of Rotating Machinery. Sensors 2019, 19, 2381. [Google Scholar] [CrossRef]
- Zhao, Z.; Li, F.; Wu, J.; Sun, C.; Wang, S.; Yan, R.; Chen, X. Deep learning algorithms for rotating machinery intelligent diagnosis: An open source benchmark study. ISA Trans. 2020, 107, 224–255. [Google Scholar] [CrossRef]
- Souza, R.M.; Nascimento, E.G.S.; Miranda, U.A.; Silva, W.J.D.; Lepikson, H.A. Deep learning for diagnosis and classification of faults in industrial rotating machinery. Comput. Ind. Eng. 2021, 153, 107060. [Google Scholar] [CrossRef]
- Kiranyaz, S.; Avci, O.; Abdeljaber, O.; Ince, T.; Gabbouj, M.; Inman, D.J. 1D convolutional neural networks and applications: A survey. Mech. Syst. Signal Process. 2021, 151, 107398. [Google Scholar] [CrossRef]
- Tama, B.A.; Vania, M.; ·Lee, S.; Lim, S. Recent advances in the application of deep learning for fault diagnosis of rotating machinery using vibration signals. Artif. Intell. Rev. 2023, 56, 4667–4709. [Google Scholar] [CrossRef]
- Mushiri, T.; Mbohwa, C. Machinery Maintenance Yesterday, Today and Tomorrow in the Manufacturing Sector. In Proceedings of the World Congress on Engineering Vol II, WCE 2015, London, UK, 1–3 July 2015. [Google Scholar]
- Coanda, P.; Avram, M.; Constantin, V. A state of the art of predictive maintenance techniques. In Proceedings of the OP Conference Series: Materials Science and Engineering 997, Iași, Romania, 4–5 June 2020. [Google Scholar]
- Jasiulewicz-Kaczmarek, M.; Gola, A. Maintenance 4.0 Technologies for Sustainable Manufacturing—An Overview. IFAC-PapersOnLine 2019, 52, 91–96. [Google Scholar] [CrossRef]
- Ibrahim, Y.M.; Hami, N.; Othman, S.N. Integrating Sustainable Maintenance into Sustainable Manufacturing Practices and its Relationship with Sustainability Performance: A Conceptual Framework. Int. J. Energy Econ. Policy 2019, 9, 30–39. [Google Scholar] [CrossRef]
- Bányai, A. Energy Consumption-Based Maintenance Policy Optimization. Energies 2021, 14, 5674. [Google Scholar] [CrossRef]
- Orošnjak, M.; Jocanović, M.; Čavić, M.; Karanović, V.; Penčić, M. Industrial maintenance 4(.0) Horizon Europe: Consequences of the Iron Curtain and Energy-Based Maintenance. J. Clean. Prod. 2021, 314, 128034. [Google Scholar] [CrossRef]
- Orošnjak, M.; Brkljač, N.; Šević, D.; Čavić, M.; Oros, D.; Penčić, M. From predictive to energy-based maintenance paradigm: Achieving cleaner production through functional-productiveness. J. Clean. Prod. 2023, 408, 137177. [Google Scholar] [CrossRef]
- EN 13306:2010; Maintenance Terminology. CEN (European Committee for Standardization): Brussels, Belgium, 2010.
- Konrad, E.; Schnürmacher, C.; Adolphy, S.; Stark, R. Proactive maintenance as success factor for use-oriented Product-Service Systems. Procedia CIRP 2017, 64, 330–335. [Google Scholar]
- Poór, P.; Ženíšek, D.; Basl, J. Historical Overview of Maintenance Management Strategies: Development from Breakdown Maintenance to Predictive Maintenance in Accordance with Four Industrial Revolutions. In Proceedings of the International Conference on Industrial Engineering and Operations Management, Pilsen, Czech Republic, 23–26 July 2019. [Google Scholar]
- Ahmad, R.; Kamaruddin, S. An overview of time-based and condition-based maintenance in industrial application. Comput. Ind. Eng. 2012, 63, 135–149. [Google Scholar] [CrossRef]
- Bloch, H.P.; Geitner, F.K. Machinery Failure Analysis and Troubleshooting; Gulf Publishing Company: Houston, TX, USA, 1983. [Google Scholar]
- Lecun, Y.; Bottou, L.; Bengio, Y.; Haffner, P. Gradient Based Learning Applied to Document Recognition. Proc. IEEE 1998, 86, 2278–2324. [Google Scholar] [CrossRef]
- Yann LeCun: An Early AI Prophet. Available online: https://www.historyofdatascience.com/yann-lecun/ (accessed on 9 September 2023).
- Kolar, D.; Lisjak, D.; Payak, M.; Pavkovic, D. Fault Diagnosis of Rotary Machines Using Deep Convolutional Neural Network withWide Three Axis Vibration Signal Input. Sensors 2020, 20, 4017. [Google Scholar] [CrossRef] [PubMed]
- Goodfellow, I.; Bengio, Y.; Courville, A. Deep Learning; The MIT Press: Cambridge, MA, USA, 2016; ISBN 9780262035613. [Google Scholar]
- Li, Z.; Liu, F.; Yang, W.; Peng, S.; Zhou, J. A Survey of Convolutional Neural Networks: Analysis, Applications, and Prospects. IEEE Trans. Neural Netw. Learn. Syst. 2022, 33, 6999–7019. [Google Scholar] [CrossRef] [PubMed]
- Smith, W.A.; Randal, R.B. Rolling element bearing diagnostics using the Case Western Reserve University data: A benchmark study. Mech. Syst. Signal Process. 2015, 64–65, 100–131. [Google Scholar] [CrossRef]
Model: “Sequential_9” | ||
---|---|---|
Layer (Type) | Output Shape | No of Param |
Conv1d_18 (Conv1D) | (None, 401, 128) | 12,928 |
Conv1d_19 (Conv1D) | (None, 352, 64) | 409,664 |
Max_pooling1d_9 (MaxPooling1D) | (None, 88, 64) | 0 |
flatten_9 (Flatten) | (None, 5632) | 0 |
dense_18 (Dense) | (None, 200) | 1,126,600 |
dense_19 (Dense) | (None, 27) | 5427 |
Total params: 1,554,619 Trainable params: 1,554,619 Non-trainable params: 0 |
Epoch Νο. | Execution Time (1 s/Step) | Loss | Accuracy | Validation Loss | Validation Accuracy |
---|---|---|---|---|---|
1 | 32 s | 2.7129 | 0.1744 | 2.2570 | 0.3157 |
2 | 36 s | 1.8781 | 0.4033 | 1.5318 | 0.5392 |
3 | 38 s | 1.1082 | 0.6664 | 0.8049 | 0.7263 |
4 | 38 s | 0.5795 | 0.8183 | 0.6281 | 0.8043 |
5 | 47 s | 0.4406 | 0.8501 | 0.4276 | 0.8555 |
6 | 42 s | 0.2788 | 0.8995 | 0.3097 | 0.8869 |
7 | 42 s | 0.1934 | 0.9360 | 0.2891 | 0.8988 |
8 | 42 s | 0.2184 | 0.9296 | 0.3952 | 0.8602 |
9 | 44 s | 0.2039 | 0.9290 | 0.2341 | 0.9144 |
10 | 45 s | 0.1419 | 0.9538 | 0.3140 | 0.8955 |
11 | 42 s | 0.1154 | 0.9615 | 0.2062 | 0.9250 |
12 | 42 s | 0.0846 | 0.9722 | 0.2252 | 0.9253 |
13 | 43 s | 0.0616 | 0.9810 | 0.2025 | 0.9289 |
14 | 43 s | 0.0694 | 0.9779 | 0.2445 | 0.9170 |
15 | 41 s | 0.0875 | 0.9694 | 0.2773 | 0.9187 |
16 | 40 s | 0.0840 | 0.9719 | 0.2587 | 0.9160 |
17 | 44 s | 0.0586 | 0.9795 | 0.2461 | 0.9283 |
18 | 41 s | 0.0467 | 0.9851 | 0.1934 | 0.9369 |
19 | 46 s | 0.0236 | 0.9943 | 0.2365 | 0.9263 |
20 | 45 s | 0.0195 | 0.9962 | 0.2167 | 0.9352 |
Νο. | Dataset | Data Size | Data | Classification |
---|---|---|---|---|
1 | 7_0_OR1 | 2999 | 6 | 83.3% |
2 | 7_0_IR | 5001 | 11 | 100.0% |
3 | 7_0_OR2 | 15,000 | 21 | 100.0% |
4 | 14_0_IR | 15,000 | 33 | 84.8% |
5 | 14_0_BN | 1999 | 4 | 25.0% |
6 | 21_0_IR | 2500 | 5 | 20.0% |
7 | 21_0_IR | 15,000 | 33 | 78.8% |
8 | 0N | 2000 | 4 | 100.0% |
9 | 1N | 9999 | 22 | 100.0% |
10 | 21_0_OR3 | 10,001 | 22 | 95.4% |
11 | 21_0_OR2 | 4999 | 10 | 90.0% |
12 | 14_0_OR1 | 5003 | 11 | 90.9% |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Apeiranthitis, S.; Zacharia, P.; Chatzopoulos, A.; Papoutsidakis, M. Predictive Maintenance of Machinery with Rotating Parts Using Convolutional Neural Networks. Electronics 2024, 13, 460. https://doi.org/10.3390/electronics13020460
Apeiranthitis S, Zacharia P, Chatzopoulos A, Papoutsidakis M. Predictive Maintenance of Machinery with Rotating Parts Using Convolutional Neural Networks. Electronics. 2024; 13(2):460. https://doi.org/10.3390/electronics13020460
Chicago/Turabian StyleApeiranthitis, Stamatis, Paraskevi Zacharia, Avraam Chatzopoulos, and Michail Papoutsidakis. 2024. "Predictive Maintenance of Machinery with Rotating Parts Using Convolutional Neural Networks" Electronics 13, no. 2: 460. https://doi.org/10.3390/electronics13020460
APA StyleApeiranthitis, S., Zacharia, P., Chatzopoulos, A., & Papoutsidakis, M. (2024). Predictive Maintenance of Machinery with Rotating Parts Using Convolutional Neural Networks. Electronics, 13(2), 460. https://doi.org/10.3390/electronics13020460