确保智能建筑中占用变化的私密性

Rijad Alisic, M. Molinari, Philip E. Paré, H. Sandberg
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引用次数: 8

摘要

智能建筑管理系统依靠传感器来优化建筑物的运行。如果未经授权的用户访问这些传感器,就可能发生隐私泄露。本文考虑了智能住宅建筑中这种潜在的隐私泄漏,以及如何通过加性高斯噪声破坏测量来减轻这种泄漏。这种腐败是为了在公寓的居住者发生变化时隐藏起来。导出了用于估计变化时间的任何估计量方差的下界。然后使用边界来分析不同的模型参数如何影响方差。结果表明,信噪比和系统动力学是影响边界的主要因素。这些结果随后在KTH居住实验室测试平台的模拟器上进行了验证,显示出与理论结果良好的对应关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensuring Privacy of Occupancy Changes in Smart Buildings
Smart building management systems rely on sensors to optimize the operation of buildings. If an unauthorized user gains access to these sensors, a privacy leak may occur. This paper considers such a potential leak of privacy in a smart residential building, and how it may be mitigated by corrupting the measurements with additive Gaussian noise. This corruption is done in order to hide when the occupancy changes in an apartment. A lower bound on the variance of any estimator that estimates the change time is derived. The bound is then used to analyze how different model parameters affect the variance. It is shown that the signal to noise ratio and the system dynamics are the main factors that affect the bound. These results are then verified on a simulator of the KTH Live-In Lab Testbed, showing good correspondence with theoretical results.
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