Elazığ İli için Meterolojik Ölçüm Verileri Kullanılarak Rüzgar Hızı Tahmini

Serdal Polat, Nuh Alpaslan, Ibrahim Riza Hallac
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Abstract

As a result of the increasing energy demand and growing environmental concerns, the global significance of renewable energy resources is steadily rising. Wind energy has been increasingly gaining importance in electricity generation in recent years. The accurate prediction of wind speed is crucial for the safe operation of wind turbines. In this study, wind speed prediction performance of different models was examined using data obtained from various regions in the Elazığ province. LSTM, random forest, and XGBoost models were employed in the study. The dataset was decomposed into seasonal and trend components using the STL method, and seasonal components were determined using Fourier transformation. The results indicate that different models perform better in different regions. According to the findings, XGBoost and random forest models exhibit the lowest RMSE and MSE values in Elazığ, Keban, and Sivrice regions, indicating better predictions for these models in these areas.
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利用气象测量数据估算埃拉泽格省的风速
随着能源需求的不断增长和对环境问题的日益关注,可再生能源在全球的重要性正稳步上升。近年来,风能在发电领域的重要性日益凸显。风速的准确预测对于风力涡轮机的安全运行至关重要。本研究利用从埃拉泽省不同地区获得的数据,对不同模型的风速预测性能进行了检验。研究采用了 LSTM、随机森林和 XGBoost 模型。使用 STL 方法将数据集分解为季节成分和趋势成分,并使用傅立叶变换确定季节成分。结果表明,不同模型在不同地区的表现更好。根据研究结果,XGBoost 和随机森林模型在 Elazığ、Keban 和 Sivrice 地区的 RMSE 和 MSE 值最低,表明这些模型在这些地区的预测效果更好。
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