2023
DOI: 10.52783/tjjpt.v44.i3.2635
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A Comparative Study on Wind Power Forecasting Models Based on the Use of LSTM

Ali Abdulrhman Salihi, Merdin Danismaz

Abstract: In the context of wind power generation's growing significance, this research tackles the critical problem of improving power system stability by reducing peak load and frequency control pressures using sophisticated wind power forecasting methods. Using the rapidly developing area of artificial intelligence and neural networks in particular, the study explores the efficacy of Long Short-Term Memory (LSTM), a recurrent neural network designed for event forecasting in time series data with long intervals and te… Show more

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