National Technical University of Athens, School of Rural, Surveying and Geoinformatics Engineering, Athens, 157 80, Greece.
Plegma Labs, Marousi, 151 24, Greece.
Sci Data. 2024 Apr 12;11(1):376. doi: 10.1038/s41597-024-03208-0.
The growing availability of smart meter data has facilitated the development of energy-saving services like demand response, personalized energy feedback, and non-intrusive-load-monitoring applications, all of which heavily rely on advanced machine learning algorithms trained on energy consumption datasets. To ensure the accuracy and reliability of these services, real-world smart meter data collection is crucial. The Plegma dataset described in this paper addresses this need bfy providing whole- house aggregate loads and appliance-level consumption measurements at 10-second intervals from 13 different households over a period of one year. It also includes environmental data such as humidity and temperature, building characteristics, demographic information, and user practice routines to enable quantitative as well as qualitative analysis. Plegma is the first high-frequency electricity measurements dataset in Greece, capturing the consumption behavior of people in the Mediterranean area who use devices not commonly included in other datasets, such as AC and electric-water boilers. The dataset comprises 218 million readings from 88 installed meters and sensors. The collected data are available in CSV format.
智能电表数据的日益普及促进了节能服务的发展,如需求响应、个性化能源反馈和非侵入式负载监测应用,所有这些都严重依赖于在能源消耗数据集上训练的先进机器学习算法。为了确保这些服务的准确性和可靠性,现实世界的智能电表数据收集至关重要。本文描述的 Plegma 数据集通过从 13 个不同家庭在一年的时间内以 10 秒的间隔提供整体房屋负荷和设备级消耗测量值,并包括湿度和温度等环境数据、建筑物特征、人口统计信息和用户实践程序,从而实现定量和定性分析。Plegma 是希腊第一个高频电力测量数据集,它捕获了在地中海地区使用其他数据集中通常不包括的设备(如交流和电热水锅炉)的人的消耗行为。该数据集包含来自 88 个安装的仪表和传感器的 2.18 亿个读数。收集的数据以 CSV 格式提供。