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Forecasting of Daily Total Horizontal Solar Radiation Using Grey Wolf Optimizer and Multilayer Perceptron Algorithms

机译:灰狼优化器和多层感知器算法预测日总水平太阳辐射

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Solar radiation data is an indispensable input for photovoltaic and solar-thermal systems. In this regard, the consistent solar radiation forecasting is a primary task in solar energy applications. In this paper, grey wolf optimizer algorithm is integrated to the multilayer perceptron algorithm in order to forecast the daily total horizontal solar radiation. In the forecasting phase, air temperature, relative humidity and diffuse horizontal solar radiation parameters are evaluated in 3-tupled and 2-tupled input structure. In addition, the accuracy of the hybrid forecasting model developed is also tested on the basis of the sigmoid, sinus and hyperbolic tangent activation functions employed in the multilayer perceptron algorithm. The forecasting results show that grey wolf optimizer-based multilayer perceptron model is appropriate to predict the daily total horizontal solar radiation, efficiently.
机译:太阳辐射数据是光伏和太阳热能系统必不可少的输入。在这方面,一致的太阳辐射预报是太阳能应用中的首要任务。本文将灰狼优化器算法集成到多层感知器算法中,以预测日总水平太阳辐射。在预测阶段,以三联和二联输入结构评估空气温度,相对湿度和水平水平太阳辐射参数。此外,还基于多层感知器算法中采用的S形,窦形和双曲线切线激活函数,对开发的混合预测模型的准确性进行了测试。预测结果表明,基于灰狼优化器的多层感知器模型适合有效地预测日总水平太阳辐射。

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