根据偶然获得的传感器数据推断占用率

L. Yang, Kevin Ting, M. Srivastava
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引用次数: 51

摘要

商业和住宅建筑通常配备仪表和传感器,这些仪表和传感器作为公用事业基础设施的一部分部署,由提供电、水、气、安全、电话等服务的公司安装。作为其正常操作的一部分,这些服务提供商可以直接访问来自传感器和仪表的信息。一个值得关注的问题是,供应商收集的感官信息虽然是粗粒度的,但可以进行分析,从而揭示有关建筑物用户的私人信息。通常,同一家公司提供多种服务,在这种情况下,私人信息泄露的可能性增加了。我们的研究旨在调查在多大程度上容易获得的感官信息可能被外部服务提供者用来做出与占用相关的推断。我们特别关注来自两个不同来源的推论:由保安公司安装和监控的运动传感器,以及由电力公司部署用于计费和需求响应管理的智能电表。我们在一个三人的单户家庭中探索运动传感器场景,在一个12人的大学实验室中探索电表场景。我们对各种推理方法的探索表明,服务提供商可用的感官信息可以使他们做出不希望的占用相关推断,例如占用水平甚至当前占用者的身份,这明显优于不利用传感器信息的朴素预测策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inferring occupancy from opportunistically available sensor data
Commercial and residential buildings are usually instrumented with meters and sensors that are deployed as part of a utility infrastructure installed by companies that provide services such as electricity, water, gas, security, phone, etc. As part of their normal operation, these service providers have direct access to information from the sensors and meters. A concern arises that the sensory information collected by the providers, although coarse-grained, can be subject to analysis that reveals private information about the users of the building. Oftentimes, multiple services are provided by the same company, in which case the potential for leakage of private information increases. Our research seeks to investigate the extent to which easily available sensory information may be used by external service providers to make occupancy-related inferences. Particularly, we focus on inferences from two different sources: motion sensors, which are installed and monitored by security companies, and smart electric meters, which are deployed by electric companies for billing and demand-response management. We explore the motion sensor scenario in a three-person single-family home and the electric meter scenario in a twelve-person university lab. Our exploration with various inference methods shows that sensory information available to service providers can enable them to make undesired occupancy related inferences, such as levels of occupancy or even the identities of current occupants, significantly better than naive prediction strategies that do not make use of sensor information.
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