论文标题

通过有条件的变异自动编码器模拟电力消耗概况中的关税影响

Simulating Tariff Impact in Electrical Energy Consumption Profiles with Conditional Variational Autoencoders

论文作者

Brégère, Margaux, Bessa, Ricardo J.

论文摘要

实施有效的需求响应(DR)计划对家庭用电量的消耗计划将受益于能够模拟不同关税计划影响的数据驱动方法。本文提出了一种基于条件变异自动编码器(CVAE)的新方法,以从外源性天气和日历变量的情况下产生,从而生成各种群集中消费者的每日消费曲线。首先,根据其消费行为和价格响应性,将大量消费者聚集在集群中。聚类方法基于因果关系模型,该因素模型衡量特定关税对消费水平的影响。然后,为每个带有CVAE的群集生成每日电能消耗曲线。将这种非参数方法与基于通用添加剂模型的半参数数据生成器进行了比较,并利用了能源消耗的先验知识。公开数据集中的实验表明,该方法在生成原始数据的平均值时提出了与半参数相当的性能。这种新方法的主要贡献是在生成的消费概况中重现反弹和副作用的能力。实际上,在时间窗口中使用特殊的电价也可能会影响此时间窗口外的消费。另一个贡献是,聚类方法按照消费者的日常消费概况和对关税变化的弹性进行分段。这两个结果组合与系统运营商,零售商和能源调节器对未来DR政策的前测试非常相关。

The implementation of efficient demand response (DR) programs for household electricity consumption would benefit from data-driven methods capable of simulating the impact of different tariffs schemes. This paper proposes a novel method based on conditional variational autoencoders (CVAE) to generate, from an electricity tariff profile combined with exogenous weather and calendar variables, daily consumption profiles of consumers segmented in different clusters. First, a large set of consumers is gathered into clusters according to their consumption behavior and price-responsiveness. The clustering method is based on a causality model that measures the effect of a specific tariff on the consumption level. Then, daily electrical energy consumption profiles are generated for each cluster with CVAE. This non-parametric approach is compared to a semi-parametric data generator based on generalized additive models and that uses prior knowledge of energy consumption. Experiments in a publicly available data set show that, the proposed method presents comparable performance to the semi-parametric one when it comes to generating the average value of the original data. The main contribution from this new method is the capacity to reproduce rebound and side effects in the generated consumption profiles. Indeed, the application of a special electricity tariff over a time window may also affect consumption outside this time window. Another contribution is that the clustering approach segments consumers according to their daily consumption profile and elasticity to tariff changes. These two results combined are very relevant for an ex-ante testing of future DR policies by system operators, retailers and energy regulators.

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