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Solar-energy potential in Turkey

机译:土耳其的太阳能潜力

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In this study, a new formula based on meteorological and geographical data was developed to determine the solar-energy potential in Turkey using artificial neural-networks (ANNs). Scaled conjugate gradient (SCG) and Levenberg-Marquardt (LM) learning algorithms and a logistic sigmoid transfer function were used in the network. Meteorological data for the last four years (2000 → 2003) from 18 cities (Bilecik, Kirsehir, Akhisar, Bingol, Batman, Bodrum, Uzunkoeprue, sile, Bartin, Yalova, Horasan, Polatli, Malazgirt, Koeycegiz, Manavgat, Doertyol, Karatas and Birecik) spread over Turkey were used as data in order to train the neural network. Meteorological and geographical data (latitude, longitude, altitude, month, mean sunshine duration, and mean temperature) were used in the input layer of the network. Solar radiation is the output layer. One-month test data for each city was used, and these months data were not used for training. The results show that the maximum mean absolute percentage error (MAPE) was found to be 3.448% and the R~2 value 0.9987 for Polath. The best approach was found for Kirsehir (MAPE =1.2257, R~2 = 0.9998). The MAPE and R~2 for the testing data were 3.3477 and 0.998534, respectively. The ANN models show greater accuracy for evaluating solar-resource possibilities in regions where a network of monitoring stations has not been established in Turkey. This study confirms the ability of the ANN to predict solar-radiation values precisely.
机译:在这项研究中,开发了一种基于气象和地理数据的新公式,可以使用人工神经网络(ANN)确定土耳其的太阳能潜力。网络中使用了比例共轭梯度(SCG)和Levenberg-Marquardt(LM)学习算法以及Logistic乙状结肠传递函数。最近四年(2000→2003)的气象数据来自18个城市(比勒奇克,基尔希尔,阿克希萨尔,宾戈尔,蝙蝠侠,博德鲁姆,Uzunkoeprue,西勒,巴丁,雅洛瓦,霍拉桑,波拉特利,马拉兹捷尔特,科伊奇吉兹,马纳夫加特,多尔蒂奥尔,卡拉塔斯和为了研究神经网络,使用分布在土耳其的Birecik作为数据。在网络的输入层中使用了气象和地理数据(纬度,经度,海拔,月份,平均日照时间和平均温度)。太阳辐射是输出层。每个城市使用了一个月的测试数据,而这些月的数据并未用于培训。结果表明,Polath的最大平均绝对百分比误差(MAPE)为3.448%,R〜2值为0.9987。发现最佳的方法是Kirsehir(MAPE = 1.2257,R〜2 = 0.9998)。测试数据的MAPE和R〜2分别为3.3477和0.998534。人工神经网络模型显示了在尚未建立土耳其监测站网络的地区评估太阳能资源的准确性。这项研究证实了人工神经网络能够准确预测太阳辐射值的能力。

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