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A Graph Label Propagation Semi-Supervised Learning-Based Residential User Profiles Identification Method Using Smart Meter Data

机译:图标签传播半监督基于学习的住宅用户配置文件识别方法使用智能仪表数据

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Through extensive interaction between residential users and energy systems, deeper insight into the residential user profiles (e.g. number of residents, have children or not) become an inevitable requirement of energy utilities or retailers to help them provide more efficient and personalized services to targeted residential users. In recent years, supervised learning methods indicate promising performance in identifying residential user profiles from smart meter data when labeled training samples are sufficient, while the accuracies are significantly decrease under the circumstances of insufficient or unavailable of labeled training samples. In practice, the collection of labelled samples and labeling massive unlabeled samples are very difficult, costly and time-consuming. How to reduce the labelled cost while maintaining the identification accuracy is an urgent problem. To address this issue, a graph-based label propagation semi-supervised learning-based residential user profiles identification approach using smart meter data is proposed in this paper. Specifically, a complete and comprehensive feature engineering including feature extraction (78 preliminary features from time-domain and frequency-domain) and feature selection (more relevant features to the targeted labels) is firstly implemented. Furthermore, the final selected features are input the graph-based label propagation semi-supervised learning identification model using limited labelled samples to predict residential user profiles. Case study based on an Irish realistic dataset demonstrate that the proposed method outperforms supervised learning methods especially in the case of limited data.
机译:通过住宅用户和能源系统之间的广泛互动,深入了解住宅用户简介(例如居民人数,让儿童或不)成为能源公用事业或零售商帮助他们提供更高效和个性化的服务的必然要求,为目标住宅用户提供更高效和个性化的服务。近年来,监督学习方法表示在标记训练样本充足时从智能仪表数据识别住宅用户简档的有希望的性能,而在标记的训练样本不足或不可用的情况下,精度显着降低。在实践中,标记样品的集合和标记巨大的未标记样品非常困难,昂贵且耗时。如何降低标记成本,同时保持识别准确性是一个紧急问题。为了解决这个问题,本文提出了一种基于图形的标签传播半监督基于学习的学习的住宅用户配置识别方法。具体地,首先实现了包括特征提取的完整和综合特征工程(来自时域和频域的78个初步特征)和特征选择(对目标标签的更多相关特征)。此外,使用有限标记的样本来输入基于图形的标签传播半监控学习识别模型以预测住宅用户简档。基于爱尔兰现实数据集的案例研究表明,所提出的方法优于受监督的学习方法,特别是在有限的数据的情况下。

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