@article{Jamasheva_Haroon_Al-Tameemi_Alhani_Khudadad_Mohammed_Mansor_Hussein_2024, title={Prediction of Equipment Failure Rates in Power Distribution Networks based on Machine-learning Method}, volume={17}, url={https://oiccpress.com/Majlesi-Journal-of-Electrical-Engineering/article/prediction-of-equipment-failure-rates-in-power-distribution-networks-based-on-machine-learning-method/}, DOI={10.30486/mjee.2023.1994835.1238}, abstractNote={This paper explores the application of a machine learning approach to predict equipment failure rates in power distribution networks, motivated by the significant impact of power outages on citizens’ daily lives and the economy. In this research, data on equipment failure rates and maintenance records were collected from power distribution networks in Baghdad, Iraq. The collected data underwent preprocessing, and features were extracted to train Adaptive Neuro-Fuzzy Inference System (ANFIS) and Periodic Autoregressive Moving Average (PARMA) time series models. To initiate the project, information regarding blackouts that occurred between January 2018 and December 2021 was retrieved from the database. The RMSE index results for the PARMA time series and ANFIS model are 3.518 and 2.264, respectively, demonstrating the superior performance of the ANFIS model in predicting equipment failure rates and its potential for future predictions. This study highlights the ANFIS model’s capacity to anticipate equipment failure rates, potentially enhancing maintenance efficiency and reducing power outages in Baghdad. The error mean square was employed to evaluate the proposed models’ error rate.}, number={3}, journal={Majlesi Journal of Electrical Engineering}, publisher={OICC Press}, author={Jamasheva, Rita and Haroon, Noor Hanoon and Al-Tameemi, Ahmed Read and Alhani, Israa and Khudadad, Ali Murad and Mohammed, Bahira Abdulrazzaq and Mansor, Ali H. O. Al and Hussein, Mustafa Asaad}, year={2024}, month={Feb.}, keywords={Adaptive Neuro-Fuzzy Inference System model, Periodic Autoregressive Moving Average, Machine Learning, Failure Rates} }