@article{Sakti_Rahman_Alfi_Prasetyo_2021, title={Predicting Wind Turbine Scheduling Maintenance Using Artificial Neural Network for Preventing Blade Breakage: Case Study Baron Techno-Park}, volume={3}, url={https://journal.uty.ac.id/index.php/IJETS/article/view/115}, DOI={10.46923/ijets.v3i1.115}, abstractNote={<p>One of the main issue that Baron Techno-Park (hybrid power plant) is facing are the practices of finding a suitable maintenance strategy. Operation and maintenance (O&amp;M) of wind turbines are heavily affected by weather condition, particularly wind conditions. Blade failures, such as blade breakages, can lead to catastrophic consequences. The causes of blade breakages in Baron Techno-Park is due to unpredictable high wind speed from different directions. A technique that this research propose to implement a maintenance strategy in order to create an efficient O&amp;M and also prevent the breakage of the wind turbine blades, is by using the Artificial Neural Network (ANN). ANN performance is satisfactory with the wind speed error of 30.25 % and wind direction error of 13.74 %. Also, R2 has a highest prediction of 0.998. Analyzing the survival wind speed of 60 m/s which is specify in the wind turbine specification. Analyzing the prediction results. It is safe to say that during the month of July 2021, it is not necessary for a maintenance schedule.</p&gt;}, number={1}, journal={International Journal of Engineering Technology and Natural Sciences}, author={Sakti, Fredi Prima and Rahman, Haidar and Alfi, Ikrima and Prasetyo, Ridwan Budi}, year={2021}, month={Jul.}, pages={23 - 26} }