比较两种概率负荷预测模型选择框架

Jingrui Xie, Tao Hong
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引用次数: 5

摘要

模型选择是点负荷预测和概率负荷预测的重要步骤。在点负荷预测的文献和实践中,点误差度量,如平均绝对百分比误差(MAPE),经常用于模型选择。另一方面,许多概率负荷预测方法依赖于为点负荷预测而开发的模型选择机制。换句话说,选择概率负荷预测模型是为了最小化点误差度量,而不是概率度量,如分位数得分。直观地说,选择基于点误差测量的概率预测模型的计算强度较低,准确性较低。实际的问题是,我们是否可以通过采用计算更密集的路线来获得显著的准确性。本文分别采用点误差和概率误差度量方法对概率负荷预测模型的选择进行了比较研究。案例研究的数据来自2014年全球能源预测竞赛的负荷预测轨道。我们发现这两种模型选择机制确实返回不同的底层模型。虽然平均而言,基于分位数分数的模型选择方法的模型可以获得更准确的概率预测,但与基于MAPE的模型选择方法相比,改进幅度很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing two model selection frameworks for probabilistic load forecasting
Model selection is an important step for both point and probabilistic load forecasting. In the point load forecasting literature and practices, point error measures, such as mean absolute percentage error (MAPE), are often used for model selection. On the other hand, many probabilistic load forecasting methodologies rely on the model selection mechanism developed for point load forecasting. In other words, the models for probabilistic load forecasting are selected to minimize point error measures rather than probabilistic ones, such as quantile score. Intuitively, selecting models for probabilistic forecasting based on a point error measure is less computationally intensive and less accurate than its counterpart. The practical question is whether we can gain significant accuracy by taking the more computationally intensive route. This paper presents a comparative study on model selection for probabilistic load forecasting, using point and probabilistic error measures respectively. The data for the case study is from the load forecasting track of the Global Energy Forecasting Competition 2014. We find that the two model selection mechanisms indeed return different underlying models. While on average, the models from quantile score based model selection method can lead to more accurate probabilistic forecasts, the improvement over the MAPE based model selection method is marginal.
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