Probabilistic multivariate electricity price forecasting using implicit generative ensemble post-processing

Tim Janke, Florian Steinke
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引用次数: 6

Abstract

The reliable estimation of forecast uncertainties is crucial for risk-sensitive optimal decision making. In this paper, we propose implicit generative ensemble post-processing, a novel framework for multivariate probabilistic electricity price forecasting. We use a likelihood-free implicit generative model based on an ensemble of point forecasting models to generate multivariate electricity price scenarios with a coherent dependency structure as a representation of the joint predictive distribution. Our ensemble post-processing method outperforms well-established model combination benchmarks. This is demonstrated on a data set from the German day-ahead market. As our method works on top of an ensemble of domain-specific expert models, it can readily be deployed to other forecasting tasks.
基于隐式生成集成后处理的概率多元电价预测
预测不确定性的可靠估计对于风险敏感的最优决策至关重要。本文提出了隐式生成集成后处理,这是一种用于多元概率电价预测的新框架。我们使用基于点预测模型集合的无似然隐式生成模型来生成具有连贯依赖结构的多元电价情景,作为联合预测分布的表示。我们的集成后处理方法优于已建立的模型组合基准。这在德国日前市场的数据集上得到了证明。由于我们的方法是在特定领域专家模型的集合上工作的,因此它可以很容易地部署到其他预测任务中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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