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Wind Speed Prediction of Target Station from Reference Stations Data

机译:根据参考站数据预测目标站的风速

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摘要

The aim of the present study is to apply an artificial neural network method for daily, weekly, and monthly wind speed predictions in some parts of the Aegean and Marmara region of Turkey that demonstrate acceptable cross-correlations. The wind data taken with an interval of one hour were measured by the General Directorate of Electrical Power Resources Survey Administration at four different measuring stations, namely, Gokceada, Foca, Gelibolu, and Bababumu. The wind speeds of three different stations were used as input neurons, while the wind speed of the target station was used as an output neuron in the artificial neural network architecture. The results obtained with this model were compared with the measured data. Errors obtained in this model are within acceptable limits. Results show that the artificial neural network method can successfully predict the daily, weekly, and monthly wind speed of any target station using the measured data of surrounding stations.
机译:本研究的目的是在土耳其的爱琴海和马尔马拉地区的某些地区,将人工神经网络方法应用于每日,每周和每月的风速预测,证明它们具有可接受的互相关性。电力资源调查局总局在Gokceada,Foca,Gelibolu和Bababumu这四个不同的测量站对间隔一小时的风数据进行了测量。在人工神经网络体系结构中,将三个不同站点的风速用作输入神经元,而将目标站点的风速用作输出神经元。用该模型获得的结果与测量数据进行比较。在此模型中获得的误差在可接受的范围内。结果表明,人工神经网络方法可以利用周围站点的实测数据成功预测任何目标站点的日,周和月风速。

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