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Estimation of daily global solar radiation using temperature, relative humidity and seasons with ANN for Indian stations

机译:利用温度,相对湿度和季节用ANN估算印度站的每日全球太阳辐射量

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Global solar radiation (GSR) is an important parameter in the design of photovoltaic systems. An accurate knowledge of the GSR of a location is essential for the efficient design and utilization of photovoltaic systems. The main objective of the paper is to predict the daily GSR under clear sky conditions of any location on a horizontal surface, based on meteorological variables. The various parameters such as earth skin temperature, relative humidity (simply humidity), date and month of the year are used to estimate the daily GSR. In order to consider the effect of each meteorological variable on daily GSR prediction, six combinations of the meteorological parameters are utilized in training the artificial neural network (ANN). Two cases were considered to train the ANN. In one case three years data of Hyderabad and in other case three years data of three cities (total nine years data) namely Hyderabad, Delhi and Mumbai are used. In both the cases, 90 days of Trichy data is used for testing the network. Accuracy was tested with statistical indicators like root mean square error (RMSE), mean absolute percentage error (MAPE) and mean bias error (MBE). It is found that MAPE value is minimum when date, month, temperature and humidity are considered as input variables.
机译:全球太阳辐射(GSR)是光伏系统设计中的重要参数。准确了解某个位置的GSR对于有效设计和利用光伏系统至关重要。本文的主要目的是根据气象变量预测晴天在水平表面上任何位置的每日GSR。各种参数(例如地球的皮肤温度,相对湿度(简称湿度),日期和一年中的月份)用于估算每日GSR。为了考虑每个气象变量对每日GSR预测的影响,在训练人工神经网络(ANN)时使用了六种气象参数组合。考虑了两个案例来训练人工神经网络。在一种情况下,使用了海得拉巴的三年数据,在其他情况下,则使用了海德拉巴,德里和孟买这三个城市的三年数据(总计九年数据)。在这两种情况下,都将90天的Trichy数据用于测试网络。使用诸如均方根误差(RMSE),平均绝对百分比误差(MAPE)和平均偏差误差(MBE)的统计指标测试准确性。当将日期,月份,温度和湿度作为输入变量时,发现MAPE值最小。

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