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Estimating Solar Insolation and Power Generation of Photovoltaic Systems Using Previous Day Weather Data

机译:使用前一天天气数据估算光伏系统的太阳能缺失和发电

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摘要

Day-ahead predictions of solar insolation are useful for forecasting the energy production of photovoltaic (PV) systems attached to buildings, and accurate forecasts are essential for operational efficiency and trading markets. In this study, a multilayer feed-forward neural network-based model that predicts the next day’s solar insolation by taking into consideration the weather conditions of the present day was proposed. The proposed insolation model was employed to estimate the energy production of a real PV system located in South Korea. Validation research was performed by comparing the model’s estimated energy production with the measured energy production data collected during the PV system operation. The accuracy indices for the optimal model, which included the root mean squared error, mean bias error, and mean absolute error, were 1.43?kWh/m2/day, ?0.09?kWh/m2/day, and 1.15?kWh/m2/day, respectively. These values indicate that the proposed model is capable of producing reasonable insolation predictions; however, additional work is needed to achieve accurate estimates for energy trading.
机译:未来前方的太​​阳能缺失预测可用于预测附着在建筑物上的光伏(PV)系统的能量生产,准确的预测对于运营效率和交易市场至关重要。在这项研究中,提出了一种基于多层前馈神经网络的模型,其提出了通过考虑到当今天的天气条件来预测第二天的太阳系的太阳缺失。拟议的展示模型用于估算位于韩国的真正光伏系统的能源生产。通过将模型的估计能量产生与PV系统操作期间收集的测量能源生产数据进行比较来执行验证研究。最佳模型的准确性指标,包括根均方误差,平均偏差误差和平均绝对误差为1.43?kWh / m2 /天,?0.09?kWh / m2 /天,1.15?kwh / m2 /一天,分别。这些值表明所提出的模型能够产生合理的缺正预测;但是,需要额外的工作来实现能源交易的准确估计。

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