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Point and interval forecasting of solar irradiance with an active Gaussian process

机译:具有活跃高斯过程的太阳辐照度点与间隔预测

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摘要

A Gaussian process regression (GPR) with active learning is proposed for developing the solar irradiance point and interval forecasting models, which consider the spatial-temporal information collected from a targeted site and a number of neighbouring sites. To enhance the performance of the GPR-based model an active learning process is developed for constructing an ad-hoc input feature set, selecting training data points, and optimising hyper-parameters of GPR models. To validate the advantages of the proposed method, a comprehensive computational study is conducted based on solar irradiance data collected from the northwest California area. In the point forecasting, the proposed method beats the state-of-the-art benchmarking methods including classical statistical models and data-driven models according to values of the normalised root mean squared error, normalised mean absolute error, normalised mean bias error, and coefficient of determination. In the interval forecasting, the proposed method outperforms the persistence model, autoregressive model with exogenous inputs, generic GPR, as well as two recently reported forecasting methods, the bootstrap-based extreme learning machine and quantile regression, in terms of the forecasting reliability. Computational results show that the proposed method is more effective than well-known existing benchmarks in the point and interval forecasting of the solar irradiance.
机译:提出了一种具有主动学习的高斯进程回归(GPR),用于开发太阳辐照点和间隔预测模型,其考虑从目标站点和许多相邻站点收集的空间信息。为了增强基于GPR的模型的性能,开发了用于构建Ad-hoc输入功能集,选择培训数据点以及优化GPR模型的超参数的主动学习过程。为了验证所提出的方法的优点,基于从西北加州地区收集的太阳辐照度数据进行了全面的计算研究。在点预测中,该方法击败了最先进的基准方法,包括根据归一化均方方平方误差的值,归一化平均绝对误差,归一化平均偏置误差和数据驱动模型确定系数。在间隔预测中,所提出的方法优于持久性模型,自回归模型与外源性投入,通用GPR,以及最近报道的预测方法,基于引导的最近学习机器和分量回归,在预测可靠性方面。计算结果表明,该方法比太阳辐照度的点和间隔预测中的众所周知的现有基准更有效。

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