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Prediction bands for solar energy: New short-term time series forecasting techniques

机译:太阳能预测带:新的短期时间序列预测技术

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摘要

Short-term forecasts and risk management for photovoltaic energy is studied via a new standpoint on time series: a result published by P. Cartier and Y. Perrin in 1995 permits, without any probabilistic and/or statistical assumption, an additive decomposition of a time series into its mean, or trend, and quick fluctuations around it. The forecasts are achieved by applying quite new estimation techniques and some extrapolation procedures where the classic concept of "seasonalities" is fundamental. The quick fluctuations allow to define easily prediction bands around the mean. Several convincing computer simulations via real data, where the Gaussian probability distribution law is not satisfied, are provided and discussed. The concrete implementation of our setting needs neither tedious machine learning nor large historical data, contrarily to many other viewpoints.
机译:通过新的时间序列观点研究光伏能源的短期预测和风险管理:P。Cartier和Y. Perrin在1995年发布的结果允许在没有任何概率和/或统计假设的情况下对时间进行加法分解串联到其均值或趋势中,并围绕其快速波动。这些预测是通过应用相当新的估算技术和一些以“季节性”的经典概念为基础的外推程序来实现的。快速波动允许轻松定义均值附近的预测带。提供并讨论了通过真实数据进行的令人信服的计算机模拟,其中不满足高斯概率分布定律。与许多其他观点相反,我们设置的具体实现既不需要繁琐的机器学习,也不需要大量的历史数据。

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