Akin Ilhan, Sergen Tumse, Mehmet Bilgili, Besir Sahin
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Machine learning approaches in predicting the wind power output and turbine rotational speed in a wind farm
Accurate wind energy forecasting has become increasingly important to effectively manage the energy produced by wind turbine power plants and optimize their operational performance. In this study, ...
期刊介绍:
Energy Sources Part A: Recovery, Utilization, and Environmental Effects aims to investigate resolutions for the continuing increase in worldwide demand for energy, the diminishing accessibility of natural energy resources, and the growing impact of energy use on the environment.
You are invited to submit manuscripts that explore the technological, scientific and environmental aspects of:
Coal energy sources
Geothermal energy sources
Natural gas
Nuclear energy sources
Oil shale energy sources
Organic waste from energy use
Petroleum
Solar energy sources
Tar utilization
Sand utilization
Wind energy.