Open Access

Research on the Application of Intelligent Algorithms in Preventive Damage Prediction and Diagnosis of Power Cable Channels

, , ,  and   
Nov 18, 2024

Cite
Download Cover

Li, S., & Li, J. (2017). Condition monitoring and diagnosis of power equipment: review and prospective. High Voltage, 2(2), 82-91. Search in Google Scholar

Tan, L., Li, P., Tao, F., Miao, A., & Cao, M. (2020). Cable joint fault detection for the ring main unit based on an adaptive TNPE algorithm. Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, 10(1), e1336. Search in Google Scholar

Fikri, M., & Abdul-Malek, Z. (2023). Partial discharge diagnosis and remaining useful lifetime in XLPE extruded power cables under DC voltage: a review. Electrical Engineering, 105(6), 4195-4212. Search in Google Scholar

Kafal, M., Razzaghi, R., Cozza, A., Auzanneau, F., & Hassen, W. B. (2019, May). A review on the application of the time reversal theory to wire network and power system diagnosis. In 2019 IEEE International Instrumentation and Measurement Technology Conference (I2MTC) (pp. 1-6). IEEE. Search in Google Scholar

Zhou, C., Yi, H., & Dong, X. (2017). Review of recent research towards power cable life cycle management. High voltage, 2(3), 179-187. Search in Google Scholar

Rosle, N., Muhamad, N. A., Rohani, M. N. K. H., & Jamil, M. K. M. (2021). Partial discharges classification methods in xlpe cable: A review. IEEE Access, 9, 133258-133273. Search in Google Scholar

Refaat, S. S., & Shams, M. A. (2018, April). A review of partial discharge detection, diagnosis techniques in high voltage power cables. In 2018 IEEE 12th International Conference on Compatibility, Power Electronics and Power Engineering (CPE-POWERENG 2018) (pp. 1-5). IEEE. Search in Google Scholar

Vaish, R., Dwivedi, U. D., Tewari, S., & Tripathi, S. M. (2021). Machine learning applications in power system fault diagnosis: Research advancements and perspectives. Engineering Applications of Artificial Intelligence, 106, 104504. Search in Google Scholar

Bindi, M., Piccirilli, M. C., Luchetta, A., & Grasso, F. (2023). A comprehensive review of fault diagnosis and prognosis techniques in high voltage and medium voltage electrical power lines. Energies, 16(21), 7317. Search in Google Scholar

Daliento, S., Chouder, A., Guerriero, P., Pavan, A. M., Mellit, A., Moeini, R., & Tricoli, P. (2017). Monitoring, diagnosis, and power forecasting for photovoltaic fields: A review. International Journal of Photoenergy, 2017(1), 1356851. Search in Google Scholar

Lu, B., Li, S., Cui, Y., Zhao, X., Zhang, D., Kang, Y., & Dong, H. (2022). Insulation degradation mechanism and diagnosis methods of offshore wind power cables: an overview. Energies, 16(1), 322. Search in Google Scholar

Rodríguez-Serna, J. M., Albarracín-Sánchez, R., Garnacho, F., Álvarez, F., & Ortego, J. (2019, October). Partial discharges measurements for condition monitoring and diagnosis of power transformers: a review. In 2019 6th International Advanced Research Workshop on Transformers (ARWtr) (pp. 83-88). IEEE. Search in Google Scholar

Govindarajan, S., Morales, A., Ardila-Rey, J. A., & Purushothaman, N. (2023). A review on partial discharge diagnosis in cables: Theory, techniques, and trends. Measurement, 216, 112882. Search in Google Scholar

Wong, S. Y., Choe, C. W. C., Goh, H. H., Low, Y. W., Cheah, D. Y. S., & Pang, C. (2021). Power transmission line fault detection and diagnosis based on artificial intelligence approach and its development in uav: A review. Arabian Journal for Science and Engineering, 46(10), 9305-9331. Search in Google Scholar

Contreras-Valdes, A., Amezquita-Sanchez, J. P., Granados-Lieberman, D., & Valtierra-Rodriguez, M. (2020). Predictive data mining techniques for fault diagnosis of electric equipment: A review. Applied Sciences, 10(3), 950. Search in Google Scholar

Jabha, D. J., Joselin, R., & Sowmya, R. (2024). Examining the Use of Acoustic Emission Technique for Evaluating Partial Discharge in Power Cables: A Review. Journal of Failure Analysis and Prevention, 1-11. Search in Google Scholar

Furse, C. M., Kafal, M., Razzaghi, R., & Shin, Y. J. (2020). Fault diagnosis for electrical systems and power networks: A review. IEEE Sensors Journal, 21(2), 888-906. Search in Google Scholar

Roman, D. V., Dickie, R. W., Flynn, D., & Robu, V. (2017). A review of the role of prognostics in predicting the remaining useful life of assets. In 27th European Safety and Reliability Conference 2017 (pp. 897-904). CRC Press. Search in Google Scholar

Song, Y., Chen, W., Wan, F., Zhang, Z., Du, L., Wang, P., ... & Huang, H. (2022). Online multi-parameter sensing and condition assessment technology for power cables: A review. Electric Power Systems Research, 210, 108140. Search in Google Scholar

Abbasi, A. R. (2022). Fault detection and diagnosis in power transformers: a comprehensive review and classification of publications and methods. Electric Power Systems Research, 209, 107990. Search in Google Scholar

Choudhary, M., Shafiq, M., Kiitam, I., Hussain, A., Palu, I., & Taklaja, P. (2022). A review of aging models for electrical insulation in power cables. Energies, 15(9), 3408. Search in Google Scholar

Mahmoud, M. A., Md Nasir, N. R., Gurunathan, M., Raj, P., & Mostafa, S. A. (2021). The current state of the art in research on predictive maintenance in smart grid distribution network: Fault’s types, causes, and prediction methods—A systematic review. Energies, 14(16), 5078. Search in Google Scholar

Li Chenying,Chen Jie,Pu Ziheng,Tao Fengbo,Liu Jianjun,Tan Xiao... & Cao Jingxing. (2022). Research on Fire Prediction Method of High-Voltage Power Cable Tunnel Based on Abnormal Characteristic Quantity Monitoring. Frontiers in Energy Research Search in Google Scholar

Zhongzhe Zhang,Ke Li,Hongyan Guo & Xiao Liang. (2024). Combined prediction model of joint opening-closing deformation of immersed tube tunnel based on SSA optimized VMD, SVR and GRU. Ocean Engineering117933-. Search in Google Scholar

Yang Kai,Wang Yelin,Li Meng,Li Xiteng,Wang Hua & Xiao Qingtai. (2023). Modeling topological nature of gas–liquid mixing process inside rectangular channel using RBF-NN combined with CEEMDAN-VMD. Chemical Engineering Science Search in Google Scholar

Pramod Sunagar,B. J. Sowmya,Dayananda Pruthviraja,S Supreeth,Jimpson Mathew,S Rohith & G Shruthi. (2024). Hybrid RNN Based Text Classification Model for Unstructured Data. SN Computer Science(6),726-726. Search in Google Scholar

Geng Kun Wu,Ruo Yu Li & Da Wei Li. (2024). Research on numerical modeling of two-dimensional freak waves and prediction of freak wave heights based on LSTM deep learning networks. Ocean Engineering(P2),119032-119032. Search in Google Scholar

Language:
English