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Published in: Optical and Quantum Electronics 13/2023

01-12-2023

Optoelectronic sensor fault detection based predictive maintenance smart industry 4.0 using machine learning techniques

Authors: Chenfeng Zhu, Sihao Shao

Published in: Optical and Quantum Electronics | Issue 13/2023

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Abstract

Production equipment maintenance is essential for maintaining productivity and company continuity. For industrial equipment to operate well and for the efficient planning of demand for in-house maintenance resources, implementation time as well as proper selection of scope of maintenance activities must be determined. The use of artificial intelligence (AI) approaches to method as well as manage maintenance has been explored in a number of research during the past 10 years. This study's objective is to provide a unique method for optoelectronic sensor defect detection using predictive maintenance in an application for smart industry 4.0 based on machine learning (ML) methods. Here, data monitored by an optoelectronic sensor is gathered and processed for noise reduction and normalisation. Then, using a moath quantile convolutional neural network and spatial clustering-based extreme encoder learning, aberrant errors are discovered in the observed data features. In terms of prediction accuracy, precision, recall, F_1 score, and robustness, experimental study was done on a variety of predictive classes and their dataset.

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Literature
go back to reference Alharbi, F., Luo, S., Zhang, H., Shaukat, K., Yang, G., Wheeler, C.A., Chen, Z.: A brief review of acoustic and vibration signal-based fault detection for belt conveyor idlers using machine learning models. Sensors 23(4), 1902 (2023)ADSCrossRef Alharbi, F., Luo, S., Zhang, H., Shaukat, K., Yang, G., Wheeler, C.A., Chen, Z.: A brief review of acoustic and vibration signal-based fault detection for belt conveyor idlers using machine learning models. Sensors 23(4), 1902 (2023)ADSCrossRef
go back to reference Bedi, P., Goyal, S.B., Rajawat, A.S., Bhaladhare, P., Aggarwal, A., Prasad, A.: Feature correlated auto encoder method for industrial 4.0 process inspection using computer vision and machine learning. Procedia Comput. Sci. 218, 788–798 (2023)CrossRef Bedi, P., Goyal, S.B., Rajawat, A.S., Bhaladhare, P., Aggarwal, A., Prasad, A.: Feature correlated auto encoder method for industrial 4.0 process inspection using computer vision and machine learning. Procedia Comput. Sci. 218, 788–798 (2023)CrossRef
go back to reference Dalzochio, J., Kunst, R., Barbosa, J.L.V., Neto, P.C.D.S., Pignaton, E., Caten, C.S.T., & da Penha, A.D.L.T.: Predictive maintenance in the military domain: a systematic review of the literature. ACM Comput. Surv. (2023). Dalzochio, J., Kunst, R., Barbosa, J.L.V., Neto, P.C.D.S., Pignaton, E., Caten, C.S.T., & da Penha, A.D.L.T.: Predictive maintenance in the military domain: a systematic review of the literature. ACM Comput. Surv. (2023).
go back to reference Elsisi, M., Tran, M.Q., Mahmoud, K., Mansour, D.E.A., Lehtonen, M., Darwish, M.M.: Effective IoT-based deep learning platform for online fault diagnosis of power transformers against cyberattacks and data uncertainties. Measurement 190, 110686 (2022)CrossRef Elsisi, M., Tran, M.Q., Mahmoud, K., Mansour, D.E.A., Lehtonen, M., Darwish, M.M.: Effective IoT-based deep learning platform for online fault diagnosis of power transformers against cyberattacks and data uncertainties. Measurement 190, 110686 (2022)CrossRef
go back to reference Grünhagen, A., Tropmann-Frick, M., Eichler, A., Fey, G.: Predictive maintenance for the optical synchronization system of the European XFEL: a systematic literature survey. In: BTW 2023 (2023). Grünhagen, A., Tropmann-Frick, M., Eichler, A., Fey, G.: Predictive maintenance for the optical synchronization system of the European XFEL: a systematic literature survey. In: BTW 2023 (2023).
go back to reference Gupta, V., Mitra, R., Koenig, F., Kumar, M., Tiwari, M.K.: Predictive maintenance of baggage handling conveyors using IoT. Comput. Ind. Eng. Ind. Eng. 177, 109033 (2023)CrossRef Gupta, V., Mitra, R., Koenig, F., Kumar, M., Tiwari, M.K.: Predictive maintenance of baggage handling conveyors using IoT. Comput. Ind. Eng. Ind. Eng. 177, 109033 (2023)CrossRef
go back to reference Lazaro, R.C., Souza, E., Frizera, A., Marques, C., Leal-Junior, A.: Optical fiber sensors systems in oil tanks: towards structural health monitoring and liquid level estimation. IEEE Sensors J. Lazaro, R.C., Souza, E., Frizera, A., Marques, C., Leal-Junior, A.: Optical fiber sensors systems in oil tanks: towards structural health monitoring and liquid level estimation. IEEE Sensors J.
go back to reference Massaro, A.: Advanced electronic and optoelectronic sensors, applications, modelling and industry 5.0 perspectives. Appl. Sci. 13(7), 4582 (2023)CrossRef Massaro, A.: Advanced electronic and optoelectronic sensors, applications, modelling and industry 5.0 perspectives. Appl. Sci. 13(7), 4582 (2023)CrossRef
go back to reference Nimmagadda, S.M., Agasthi, S.S., Shai, A., Khandavalli, D.K.R., Vatti, J.R.: Kidney failure detection and predictive analytics for CKD using machine learning procedures. Archiv. Comput. Methods Eng. 30(4), 2341–2354 (2023)CrossRef Nimmagadda, S.M., Agasthi, S.S., Shai, A., Khandavalli, D.K.R., Vatti, J.R.: Kidney failure detection and predictive analytics for CKD using machine learning procedures. Archiv. Comput. Methods Eng. 30(4), 2341–2354 (2023)CrossRef
go back to reference Richardson, W.B., Meyer, J., Von Solms, S.: A business process management model for predictive maintenance and remote monitoring of rural infrastructure supported by 4IR technologies (2022). Richardson, W.B., Meyer, J., Von Solms, S.: A business process management model for predictive maintenance and remote monitoring of rural infrastructure supported by 4IR technologies (2022).
go back to reference Salunke, R., Nobahar, M., Alzeghoul, O.E., Khan, S., La Cour, I., Amini, F.: Near-surface soil moisture characterization in mississippi’s highway slopes using machine learning methods and UAV-captured infrared and optical images. Remote Sens. 15(7), 1888 (2023)ADSCrossRef Salunke, R., Nobahar, M., Alzeghoul, O.E., Khan, S., La Cour, I., Amini, F.: Near-surface soil moisture characterization in mississippi’s highway slopes using machine learning methods and UAV-captured infrared and optical images. Remote Sens. 15(7), 1888 (2023)ADSCrossRef
go back to reference Shahin, M., Chen, F.F., Hosseinzadeh, A., & Zand, N.: Using machine learning and deep learning algorithms for downtime minimization in manufacturing systems: an early failure detection diagnostic service (2023). Shahin, M., Chen, F.F., Hosseinzadeh, A., & Zand, N.: Using machine learning and deep learning algorithms for downtime minimization in manufacturing systems: an early failure detection diagnostic service (2023).
go back to reference Sicard, B., Alsadi, N., Spachos, P., Ziada, Y., Gadsden, S.A.: Predictive maintenance and condition monitoring in machine tools: an IoT approach. In: 2022 IEEE International IOT, Electronics and Mechatronics Conference (IEMTRONICS) (pp. 1–9). IEEE (2022). Sicard, B., Alsadi, N., Spachos, P., Ziada, Y., Gadsden, S.A.: Predictive maintenance and condition monitoring in machine tools: an IoT approach. In: 2022 IEEE International IOT, Electronics and Mechatronics Conference (IEMTRONICS) (pp. 1–9). IEEE (2022).
go back to reference Sousa Tomé, E., Ribeiro, R.P., Dutra, I., Rodrigues, A.: An online anomaly detection approach for fault detection on fire alarm systems. Sensors 23(10), 4902 (2023)ADSCrossRef Sousa Tomé, E., Ribeiro, R.P., Dutra, I., Rodrigues, A.: An online anomaly detection approach for fault detection on fire alarm systems. Sensors 23(10), 4902 (2023)ADSCrossRef
go back to reference Usman, A., Zulkifli, N., Salim, M.R., Khairi, K.: Fault monitoring in passive optical network through the integration of machine learning and fiber sensors. Int. J. Commun. Syst. Commun. Syst. 35(9), e5134 (2022)CrossRef Usman, A., Zulkifli, N., Salim, M.R., Khairi, K.: Fault monitoring in passive optical network through the integration of machine learning and fiber sensors. Int. J. Commun. Syst. Commun. Syst. 35(9), e5134 (2022)CrossRef
go back to reference van Dinter, R., Tekinerdogan, B., Catal, C.: Reference architecture for digital twin-based predictive maintenance systems. Comput. Ind. Eng. Ind. Eng. 177, 109099 (2023)CrossRef van Dinter, R., Tekinerdogan, B., Catal, C.: Reference architecture for digital twin-based predictive maintenance systems. Comput. Ind. Eng. Ind. Eng. 177, 109099 (2023)CrossRef
go back to reference Wagner, M., Pietsch, D., Schwarzenberger, M., Jahn, A., Dittrich, D., Stamm, U., et al.: Digitalized laser beam welding for inline quality assurance through the use of multiple sensors and machine learning. Procedia CIRP 111, 518–521 (2022)CrossRef Wagner, M., Pietsch, D., Schwarzenberger, M., Jahn, A., Dittrich, D., Stamm, U., et al.: Digitalized laser beam welding for inline quality assurance through the use of multiple sensors and machine learning. Procedia CIRP 111, 518–521 (2022)CrossRef
go back to reference Wang, L., Liu, Y., Yin, H., Sun, W.: Fault diagnosis and predictive maintenance for hydraulic system based on digital twin model. AIP Adv. 12(6), 065213 (2022)ADSCrossRef Wang, L., Liu, Y., Yin, H., Sun, W.: Fault diagnosis and predictive maintenance for hydraulic system based on digital twin model. AIP Adv. 12(6), 065213 (2022)ADSCrossRef
go back to reference Winkel, F., Deuse-Kleinsteuber, J., Böcker, J.: Run-to-failure relay dataset for predictive maintenance research with machine learning. IEEE Trans. Reliab. (2023) Winkel, F., Deuse-Kleinsteuber, J., Böcker, J.: Run-to-failure relay dataset for predictive maintenance research with machine learning. IEEE Trans. Reliab. (2023)
go back to reference Yang, W., Zimroz, R., Papaelias, M.: Advances in machine condition monitoring and fault diagnosis. Electronics 11(10), 1563 (2022)CrossRef Yang, W., Zimroz, R., Papaelias, M.: Advances in machine condition monitoring and fault diagnosis. Electronics 11(10), 1563 (2022)CrossRef
Metadata
Title
Optoelectronic sensor fault detection based predictive maintenance smart industry 4.0 using machine learning techniques
Authors
Chenfeng Zhu
Sihao Shao
Publication date
01-12-2023
Publisher
Springer US
Published in
Optical and Quantum Electronics / Issue 13/2023
Print ISSN: 0306-8919
Electronic ISSN: 1572-817X
DOI
https://doi.org/10.1007/s11082-023-05410-7

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