Abstract
Digital environments most often succumb to system faults, thereby mitigating their resilience and decelerate performance. While there are various methods to identify these system faults, the classification based on certain attributes using deep learning is less explored. The stratification of faults in systems is crucial in order to efficiently maintain the reliability of technological incorporations on a quotidian basis. The existing work relevant to this study delineates the identification of malicious interventions but lacks in scrutinizing the loopholes relevant to transactional process failure, and the usage of real-time data for explicit identification of system faults. This paper proposes to incorporate real-time data for efficient analysis of system fault by comprehending the feature statistics associated, to further delve into loading the dataset to the domain of deep learning networks. This study effectuates the use of pre-trained deep learning models such as the ResNet, DenseNet, and VGG-16 for classifying transaction statuses as either failure or success based on the defined parameters. Although the networks utilized have previously been explored for various research, the novelty of this research remains the leveraging of the real-time dataset into these sophisticated deep networks. The simulation is carried out in MATLAB, and the results indicate that pre-trained networks can significantly accelerate the process of fault identification stratification, thus providing robust solutions for real-time system monitoring and maintenance.
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References
G. Tharun Kumar, A. Tejeswararao, G. Prasanna Lakshmi, Fault detection and classification using deep neural network. IJARIIE 10(3) (2024). ISSN-2395-4396
S. Qiu, X. Cui, Z. Ping, N. Shan, Z. Li, X. Bao, X. Xu, Deep learning techniques in intelligent fault diagnosis and prognosis for industrial systems: a review. Sensors 23(3), 1305 (2023). https://doi.org/10.3390/s23031305
Y. Shen, K. Khorasani, Hybrid multi-mode machine learning-based fault diagnosis strategies with application to aircraft gas turbine engines. Neural Netw. 130, 126–142 (2020)
P. Agarwala, J.I.M. Gonzalezb, A. Elkamelc, H. Budman, Hierarchical deep recurrent neural network based method for fault detection and diagnosis (2020). arXiv:2012.03861v1
J. Zuo, H. Lv, D. Zhou, Q. Xue, L. Jin, W. Zhou, D. Yang, C. Zhang, Deep learning based prognostic framework towards proton exchange membrane fuel cell for automotive application. Appl. Energy 281, 115937 (2021)
R.M. Souza, E.G.S. Nascimento, U.A. Miranda, W.J.D. Silva, H.A. Lepikson, Deep learning for diagnosis and classification of faults in industrial rotating machinery. J. Comput. Ind. Eng. 153 (2021). https://doi.org/10.1016/j.cie.2020.107060
T.-D. Nguyen, H.-C. Nguyen, D.-H. Pham, P.-D. Nguyen, A distinguished deep learning method for gear fault classification using time–frequency representation. Discov. Appl. Sci. 6, 340 (2024). https://doi.org/10.1007/s42452-024-06033-7
M. Abboush, D. Bamal, C. Knieke, A. Rausch, Intelligent fault detection and classification based on hybrid deep learning methods for hardware-in-the-loop test of automotive software systems. Sensors 22(11), 4066 (2022). https://doi.org/10.3390/s22114066
U. Saeed, S.U. Jan, Y.D. Lee, I. Koo, Fault diagnosis based on extremely randomized trees in wireless sensor networks. Reliab. Eng. Syst. Saf. 205, 107284 (2021)
A. Shenfield, M. Howarth, A novel deep learning model for the detection and identification of rolling element-bearing faults. Sensors 20, 5112 (2020)
H. Kaplan, K. Tehrani, M. Jamshidi, A fault diagnosis design based on deep learning approach for electric vehicle applications. Energies 14, 6599 (2021)
J. Duan, T. Shi, H. Zhou, J. Xuan, S. Wang, A novel ResNet-based model structure and its applications in machine health monitoring. J. Vib. Control 27(9–10), 1036–1050 (2021)
S. Asutkar, S. Tallur, Deep transfer learning strategy for efficient domain generalisation in machine fault diagnosis. Sci. Rep. 13, 6607 (2023). https://doi.org/10.1038/s41598-023-33887-5
H.K. Sharma, A. Sar, T. Choudhury, K. Kotecha, S. Dutta, A. Bhattacharya, A novel framework for facial emotion detection using deep learning algorithms for HCI-enabled system, in Cyber Intelligence and Information Retrieval. CIIR 2023. Lecture Notes in Networks and Systems, vol. 1025, ed. by S. Dutta, A. Bhattacharya, C. Shahnaz, S. Chakrabarti (Springer, Singapore, 2024). https://doi.org/10.1007/978-981-97-3594-5_2
S.A. Sai, S.N. Venkatesh, S. Dhanasekaran et al., Transfer learning-based fault detection for suspension system using vibrational analysis and radar plots. Machines 11, 778 (2023)
A. Ibrahim, F. Anayi, M. Packianather, New transfer learning approach based on a CNN for fault diagnosis. Eng. Proc. 24, 16 (2022). https://doi.org/10.3390/IECMA2022-12905
Y. Srinivasa Rao, G. Ravi Kumar, G. Kesava Rao, A new approach for classification of fault in transmission line with combination of wavelet multi resolution analysis and neural networks. Int. J. Power Electron. Drive Syst. (IJPEDS) 8(1), 505–512 (2017)
C. Grover, N. Turk, A novel fault diagnostic system for rolling element bearings using deep transfer learning on bispectrum contour maps. J. Eng. Sci. Technol. 31, 101049 (2022)
G. Cao, K. Zhang, K. Zhou, H. Pan, Y. Xu, J. Liu, (2020) A feature transferring fault diagnosis based on WPDR, FSWT and GoogLeNet. IEEE Int. Instrum. Meas. Technol. Conf. (I2MTC) 1–6 (2020)
N. Somu, A. Sriram, A. Kowli, K. Ramamritham, A hybrid deep transfer learning strategy for thermal comfort prediction in buildings. Build. Environ. 204, 108133 (2021)
S. Asutkar, C. Chalke, K. Shivgan, S. Tallur, Tinyml-enabled edge implementation of transfer learning framework for domain generalization in machine fault diagnosis. Expert Syst. Appl. 213, 119016 (2022)
B.U. Deveci, M. Celtikoglu, O. Albayrak et al., Transfer learning enabled bearing fault detection methods based on image representations of single-dimensional signals. Inf. Syst. Front. (2023). https://doi.org/10.1007/s10796-023-10371-z
G. Liu, W. Shen, L. Gao, A. Kusiak, Knowledge transfer in fault diagnosis of rotary machines. IET Collaborative Intell. Manuf. 4(1), 17–34 (2022)
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Pradheep Arumuham, K., Booba, B. (2026). System Fault Classification and Performance Analysis Using Transfer Learning in Pre-trained Deep Networks. In: Dutta, S., Bhattacharya, A., Bose, S., Polkowski, Z. (eds) Proceedings of International Conference on Computational Intelligence and Information Retrieval. ICCIIR 2025. Lecture Notes in Networks and Systems, vol 1617. Springer, Cham. https://doi.org/10.1007/978-3-032-04539-3_37
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