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Privacy-Enhanced Architecture for Occupancy-Based HVAC Control

机译:基于人员的HVAC控制的隐私增强架构

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Large-scale sensing and actuation infrastructures have allowed buildings to achieve significant energy savings; at the same time, these technologies introduce significant privacy risks that must be addressed. In this paper, we present a framework for modeling the trade-off between improved control performance and increased privacy risks due to occupancy sensing. More specifically, we consider occupancy-based HVAC control as the control objective and the location traces of individual occupants as the private variables. Previous studies have shown that individual location information can be inferred from occupancy measurements. To ensure privacy, we design an architecture that distorts the occupancy data in order to hide individual occupant location information while maintaining HVAC performance. Using mutual information between the individual's location trace and the reported occupancy measurement as a privacy metric, we are able to optimally design a scheme to minimize privacy risk subject to a control performance guarantee. We evaluate our framework using real-world occupancy data: first, we verify that our privacy metric accurately assesses the adversary's ability to infer private variables from the distorted sensor measurements; then, we show that control performance is maintained through simulations of building operations using these distorted occupancy readings.
机译:大规模的传感和驱动基础设施使建筑物可以节省大量能源。同时,这些技术带来了必须解决的重大隐私风险。在本文中,我们提出了一个框架,用于建模由于占用感测而导致的改进的控制性能和增加的隐私风险之间的权衡。更具体地说,我们将基于居住者的HVAC控制视为控制目标,并将各个居住者的位置迹线视为私有变量。先前的研究表明,可以从占用率测量中推断出各个位置信息。为了确保隐私,我们设计了一种扭曲占用数据的体系结构,以便在保持HVAC性能的同时隐藏单个占用者的位置信息。使用个人位置跟踪和报告的占用率测量之间的相互信息作为隐私度量,我们能够优化设计一种方案,以最大程度地降低隐私风险,但要保证控制性能。我们使用实际的占用数据评估我们的框架:首先,我们验证我们的隐私权指标能够准确评估对手从变形的传感器测量值推断私人变量的能力;然后,我们表明通过使用这些变形的占用率读数对建筑物的运行进行仿真,可以保持控制性能。

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