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Scenario Reduction for Stochastic Day-Ahead Scheduling: A Mixed Autoencoder Based Time-Series Clustering Approach

机译:随机日期调度的情景减少:基于混合的AutoEncoder的时间序列聚类方法

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摘要

Scenario based stochastic scheduling has drawn a tremendous amount of interests worldwide in tackling the uncertainty of renewable energy and accounting for risks. It is important to generate representative time-series scenarios of renewable energy, while keeping the dimensionality of the scenario set tractable. This article presents a mixed autoencoder based clustering approach to select a reduced scenario set from high-dimensional time series. In contrast to other techniques targeting on minimizing different probability distances, the proposed architecture accounts for the pattern recognition within a large set of scenarios. The effectiveness of the model is verified in the case studies, where the data sets from the Bonneville Power Administration and Elia are used. The numerical results show that the model outperforms the state of the art, in terms of statistical metrics and through empirical analysis.
机译:基于场景的随机调度,在解决可再生能源的不确定性和核算风险时,全世界都造成了巨大的兴趣。 重要的是要生成可再生能源的代表时间序列情景,同时保持场景设置的维度的维度。 本文介绍了一种基于混合的AutoEncoder的聚类方法,可选择从高维时间序列中的减少方案。 与靶向最小化不同概率距离的其他技术相反,所提出的架构考虑了大量方案中的模式识别。 在案例研究中验证了模型的有效性,其中使用来自Bonneville Power Implation和ELIA的数据集。 数值结果表明,在统计指标和经验分析方面,该模型优于现有技术。

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