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Normalized Residue Analysis for Deep Learning Based Probabilistic Forecasting of Photovoltaic Generations

机译:基于深度学习的光伏发电概率预测的归一化残差分析

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In this study, probabilistic forecasting schemes of day-ahead photovoltaic (PV) generations are investigated with the auto-regressive recurrent neural network model named DeepAR, and are evaluated based on the normalized residues. For PV generations, probabilistic outcomes should be helpful for efficient grid managements to account uncertainties such as sudden changes in the local weather. The tightness of the prediction interval for local PV generations is investigated with DeepAR models with varying input data like the local weather forecasts of the day and historical records of the PV generations. For performance measure, normalized residue with the mean and standard deviation of the predicted traces is compared to the standard normal distribution. For evaluation, local PV generation data captured at Hadong, Korea is tested by the DeepAR models with optional input of local weather forecasts data. The evaluation results of the PV generation tests show that the local weather data provides extra tightness of the prediction interval with the normalized residues close to the standard normal distribution.
机译:在这项研究中,利用称为DeepAR的自回归递归神经网络模型研究日前光伏(PV)世代的概率预测方案,并基于归一化残差进行评估。对于光伏发电,概率结果应有助于有效的电网管理,以解决不确定性,例如当地天气的突然变化。使用DeepAR模型,使用变化的输入数据(如当天的当地天气预报和PV代的历史记录)来研究本地PV代的预测间隔的紧密度。为了进行性能测量,将具有预测迹线的均值和标准差的归一化残差与标准正态分布进行比较。为了进行评估,DeepAR模型对韩国Hadong捕获的本地光伏发电数据进行了测试,并带有可选的本地天气预报数据输入。 PV生成测试的评估结果表明,本地天气数据提供了更好的预测间隔,且归一化残差接近标准正态分布。

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