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Smart-energy group anomaly based behavioral abnormality detection

机译:基于智能能量组异常的行为异常检测

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摘要

Monitoring behavioral abnormality of individuals living independently in their own homes is a key issue for building sustainable healthcare models in smart environments. While most of the efforts have been directed towards building ambient and wearable sensors-assisted activity recognition based behavioral analysis models for remote health monitoring, energy analytics assisted behavioral abnormality prediction have rarely been investigated. In this paper, we propose a data analytic approach that helps detect energy usage anomalies corresponding to the behavioral abnormality of the residents. Our approach relies on detecting everyday appliances usage from smart meter and smart plug data traces in regular activity days and then learning the unique time segment group of each appliance's energy consumption. We focus on detecting behavioral anomalies over a set of energy source data points rather than pinpointing individual odd points. We employ hierarchical probabilistic model-based group anomaly detection [7] to interpret the anomalous behavior and therefore, detect potential tendency towards behavioral abnormality. We apply daily activity logs to evaluate our approach using two realworld energy datasets pertaining to staged functional behaviors, and show that it is possible to detect max. 97% of anomalous days with max. 87% of meaningful micro-behavioral abnormal events generating 1.1% of false alarms. However, we show that our detected abnormality can be meaningfully represented to different stakeholders such as caregivers and family members to understand the nature and severity of abnormal human behavior for sustaining better healthcare.
机译:监视独立生活在自己家里的个人的行为异常是在智能环境中构建可持续医疗模式的关键问题。尽管大多数努力都针对建立基于环境和可穿戴传感器辅助活动识别的行为分析模型以进行远程健康监控,但很少研究能量分析辅助的行为异常预测。在本文中,我们提出了一种数据分析方法,可帮助检测与居民行为异常相对应的能源使用异常。我们的方法依赖于在常规活动日从智能电表和智能插头数据跟踪中检测日常电器的使用情况,然后学习每种电器能耗的独特时间段组。我们专注于检测一组能源数据点上的行为异常,而不是查明单个奇数点。我们采用基于分层概率模型的组异常检测[7]来解释异常行为,因此,检测潜在的行为异常趋势。我们应用日常活动日志,使用与阶段性功能行为有关的两个真实世界的能源数据集来评估我们的方法,并表明可以检测到最大值。最大异常天数的97% 87%的有意义的微行为异常事件产生了1.1%的错误警报。但是,我们表明,我们检测到的异常可以有意义地代表不同的利益相关者,例如看护人和家庭成员,以了解异常人类行为的性质和严重性,以维持更好的医疗保健。

著录项

  • 来源
    《》|2016年|1-8|共8页
  • 会议地点 Bethesda(US)
  • 作者

    Alam; Roy; Petruska; Zemp;

  • 作者单位

    Department of Information Systems University of Maryland, Baltimore County;

    Department of Information Systems University of Maryland, Baltimore County;

    Department of Information Systems University of Maryland, Baltimore County;

    Department of Information Systems University of Maryland, Baltimore County;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Home appliances; Monitoring; Energy consumption; Smart meters; Smart homes; Medical services; Plugs;

    机译:家用电器;监控;能耗;智能仪表;智能家居;医疗服务;插头;

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