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Prediction of mean monthly wind speed and optimization of wind power by artificial neural networks using geographical and atmospheric variables: case of Aegean Region of Turkey

机译:地理和大气变量的人工神经网络预测平均月度风速和风力优化 - 土耳其爱琴海区案例

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Although there are many locations suitable to construct new wind turbines, wind speeds in those areas are not always available, which makes it difficult to plan and develop a proper wind energy conversion system. This paper proposes an approach to determine the wind speeds corresponding to locations without any past wind speed data. First, monthly mean wind speed was modeled as a function of geographical variables (latitude, longitude and elevation), atmospheric variables (ambient temperature, atmospheric pressure, percent relative humidity), and the month of the year for a case location (Aegean Region of Turkey) by artificial neural networks (ANNs) trained by the data supplied by 55 wind speed measuring stations throughout the region (660 data points). Then, the prediction ability of the ANN model was tested: The wind speed data of each station was excluded from the database, and an ANN model trained by the data of the rest of the wind stations was used to forecast the excluded data. Finally, a grid search algorithm was applied to the entire region to search for the optimum location for the maximum average annual wind speed which was found to be 10.6m/s. A generic wind turbine was considered at this location and a power of 1.79MW was achieved.
机译:虽然有许多适合于构建新风力涡轮机的地点,但这些区域的风速并不总是可用的,这使得难以规划和开发适当的风能转换系统。本文提出了一种确定与没有任何过去风速数据的位置的风速的方法。首先,月平均风速被建模为地理变量(纬度,经度和高度),大气变量(环境温度,大气压,相对湿度百分比)以及案例地点的月份(Aegean地区)土耳其)通过通过整个区域(660个数据点)提供的55个风速测量站提供的数据训练的人工神经网络(ANN)。然后,测试了ANN模型的预测能力:从数据库中排除了每个站的风速数据,并且使用由风站的其余部分的数据训练的ANN模型来预测排除的数据。最后,将网格搜索算法应用于整个区域以搜索最大年平均风速的最佳位置,该速度被发现为10.6m / s。在该位置考虑了一般风力涡轮机,实现了1.79mW的功率。

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