基于多层决策树和数据融合技术的家用智能电表智能负荷识别

M. H. Aldulaimi, Ibrahim Najem, Tabarak Ali Abdulhussein, M. H. Ali, Asaad Shakir Hameed, M. Altaee, Hatira Gunerhan
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引用次数: 0

摘要

DTA-LI系统的融合数据方法在监测设备负荷以提高能源效率和管理方面至关重要。通过对电压和电流变化的分析,智能电表数据可以识别和分类常见的家用电气设备,从而可以测量住宅建筑的能源使用情况。基于决策树算法的负荷识别系统可以根据建筑物居民的能源使用习惯推断其信息。更好的节电率、减载管理和整体电力系统性能是集群捕捉家庭购买模式和地理人口细分的能力的结果。DTA-LI系统的融合数据方法为改善住宅建筑的能源性能和降低其碳足迹提供了一条有前途的途径,特别是在近年来智能电表广泛使用的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Load Identification of Household-Smart Meters Using Multilevel Decision Tree and Data Fusion Techniques
The DTA-LI system's fusion data method is crucial in the monitoring of appliance loads for the purposes of improving energy efficiency and management. Common home electrical devices are identified and classified from smart meter data through the analysis of voltage and current variations, allowing for the measurement of energy usage in residential buildings. A load identification system based on a decision tree algorithm may infer information about the residents of a building based on their energy usage habits. Better power savings rates, load shedding management, and overall electrical system performance are the results of the clusters' ability to capture families' purchasing patterns and geo-Demographic segmentation. The DTA-LI system's fusion data method presents a promising avenue for improving residential buildings' energy performance and lowering their carbon footprint, especially in light of the widespread use of smart meters in recent years.
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