Outlier Detection in Smart Environment Structured Power Datasets

Vikramaditya R. Jakkula, D. Cook
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引用次数: 62

Abstract

Household electricity consumption is a direct contributor to household expenses. Electricity acts as a backbone for a strong economy [1]. The rise in the energy consumption is clearly observed in this past decade, and so is the rise in the need for energy efficiency and conservation [2]. Monitoring power consumption by using various devices and instruments is on the rise; however a smart environment scenario needs more than just real-time monitoring. The need for identifying abnormal power consumption is clearly present. In this paper, we introduce our work on building novel outlier detection algorithms which uses statistical techniques to identify outliers and anomalies in power datasets collected in smart environments. We also experiment clustering techniques on the same dataset and report the results found.
智能环境结构化电力数据集的离群点检测
家庭用电是家庭开支的直接来源。电力是强大经济的支柱[1]。在过去的十年中,能源消耗的增加是显而易见的,能源效率和节约的需求也在增加[2]。通过使用各种设备和仪器来监测功耗正在上升;然而,智能环境场景需要的不仅仅是实时监控。显然,需要识别异常的功耗。在本文中,我们介绍了我们在构建新颖的离群检测算法方面的工作,该算法使用统计技术来识别智能环境中收集的电力数据集中的离群值和异常。我们还在相同的数据集上实验聚类技术,并报告发现的结果。
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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