基于分布感知时间池的多用户个体负荷预测

Eunju Yang, Chan-Hyun Youn
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引用次数: 4

摘要

对于智能电网服务,准确的个体负荷预测是必不可少的因素。在训练针对多客户的个体预测模型时,应考虑客户间数据分布的差异;有两种简单的方法来构建考虑多客户的模型:单独构建每个模型或作为包含多客户的一个模型进行训练。独立方法比后者具有更高的精度。然而,它部署了大量的模型,导致资源/管理效率低下;后者恰恰相反。两者之间的一种折衷可能是基于聚类的预测。然而,以往的研究在应用于个体预测方面存在局限性,因为它们关注的是总体负荷,而没有考虑随着时间的推移而降低准确性的概念漂移。因此,我们提出了一种基于分布感知的时间池框架,该框架增强了基于聚类的预测。对于聚类,我们提出了一种分布感知方式的变分循环深度嵌入(VaRDE),因此适合处理单个负载。它每次都将集群分配给客户,因此客户所在的集群会动态更改,以解决分布更改问题。我们用真实的数据进行了实验评估,结果显示出比以往的研究更好的性能,特别是对于未见过的数据也有一些模型,具有很高的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Individual Load Forecasting for Multi-Customers with Distribution-aware Temporal Pooling
For smart grid services, accurate individual load forecasting is an essential element. When training individual forecasting models for multi-customers, discrepancies in data distribution among customers should be considered; there are two simple ways to build the models considering multi-customers: constructing each model independently or training as one model encompassing multi-customers. The independent approach shows higher accuracy than the latter. However, it deploys copious models, causing resource/management inefficiency; the latter is the opposite. A compromise between these two could be clustering-based forecasting. However, the previous studies are limited in applying to individual forecasting in that they focus on aggregated load and do not consider concept drift, which degrades accuracy over time. Therefore, we propose a distribution-aware temporal pooling framework that is enhanced clustering-based forecasting. For the clustering, we propose Variational Recurrent Deep Embedding (VaRDE) working in a distribution-aware manner, so it is suitable to process individual load. It allocates clusters to customers every time, so the clusters, where customers are assigned, are dynamically changed to resolve distribution change. We conducted experiments with real data for evaluation, and the result showed better performance than previous studies, especially with a few models even for unseen data, leading to high scalability.
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