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Combining Probability Density Forecasts for Power Electrical Loads

机译:电力电气负荷的概率密度预测组合

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摘要

Researchers have proposed various probabilistic load forecasting models in the form of quantiles, densities, or intervals to describe the uncertainties of future energy demand. Density forecasts can provide more uncertainty information than can be expressed by just the quantile and interval. However, the combining method for density forecasts is seldom investigated. This paper proposes a novel and easily implemented approach to combine density probabilistic load forecasts to further improve the performance of the final probabilistic forecasts. The combination problem is formulated as an optimization problem to minimize the continuous ranked probability score of the combined model by searching the weights of different individual methods. Under the Gaussian mixture distribution assumption of the density forecasts, the problem is cast to a linearly constrained quadratic programming problem and can be solved efficiently. Case studies on the electric load datasets of eight areas verify the effectiveness of the proposed method.
机译:研究人员以分位数,密度或间隔的形式提出了各种概率负荷预测模型,以描述未来能源需求的不确定性。密度预测可以提供比仅由分位数和间隔表示的不确定性更多的信息。但是,很少研究密度预测的组合方法。本文提出了一种新颖且易于实现的方法来结合密度概率负荷预测,以进一步提高最终概率预测的性能。通过搜索不同方法的权重,将组合问题表述为优化问题,以最小化组合模型的连续排名概率分数。在密度预测的高斯混合分布假设下,该问题被转换为线性约束二次规划问题,可以有效地解决。通过对八个区域的电力负荷数据集进行案例研究,验证了该方法的有效性。

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