Power Profiling:Assessment of Household Energy Footprints

Vindya Wijesinghe, M.T.K. Perera, Chamod Peiris, Praveen Vidyaratne, D. Nawinna, J. Wijekoon
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Abstract

Reduced energy footprint is considered an indicator of efficiency around the world. Having insights into electricity consumption behavior of individuals or families across the day is very useful in efficient management of electricity. In this paper, we present s study that focused on identifying patterns in the monthly electricity consumption profiles of a single household with the K-means clustering algorithm. The data required for this study was collected through a survey in the Sri Lankan context. The survey mainly captured the factors affecting electricity consumption. After proving the demand of electricity is dependable on the data that has been collected, they will be keyed into data models/ profiles that will be built using clustering algorithms. A load profile will be designed using K-means to identify usage patterns of a household on a monthly basis. The parameters that affect the electricity consumption were tested and trained using the SVM algorithm. The outcomes of this study include; identifying the factors contributing to the electricity consumption, identifying electricity consumption patterns, identifying the energy footprint of individuals or families and predicting the future electricity requirements. The results of this study provide many advantages for both consumers and suppliers in efficient management of electricity. It also provides significant impacts in both micro and macro levels through enabling efficient decision-making regarding management of electricity.
电力分析:家庭能源足迹评估
减少能源足迹被认为是世界各地效率的一个指标。了解个人或家庭全天的用电行为对有效管理用电非常有用。在本文中,我们提出了一项研究,重点是用k均值聚类算法识别单个家庭每月用电量分布的模式。本研究所需的数据是通过在斯里兰卡进行的一项调查收集的。调查主要收集影响用电量的因素。在通过收集的数据证明电力需求是可靠的之后,它们将被输入到将使用聚类算法构建的数据模型/配置文件中。将使用K-means设计负荷概况,以确定每个家庭每月的使用模式。利用支持向量机算法对影响电耗的参数进行测试和训练。本研究的结果包括:找出影响用电量的因素,找出用电量模式,找出个人或家庭的能源足迹,并预测未来的用电量需求。这项研究的结果为消费者和供应商在有效管理电力方面提供了许多优势。它还通过实现有关电力管理的有效决策,在微观和宏观层面产生重大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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