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Privacy Preserving in Non-Intrusive Load Monitoring: A Differential Privacy Perspective

机译:非侵入式负荷监测中保留隐私:差异隐私视角

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摘要

Smart meter devices enable a better understanding of the demand at the potential risk of private information leakage. One promising solution to mitigating such risk is to inject noises into the meter data to achieve a certain level of differential privacy. In this article, we cast one-shot non-intrusive load monitoring (NILM) in the compressive sensing framework, and bridge the gap between the NILM inference accuracy and differential privacy's parameters. We then derive the valid theoretical bounds to offer insights on how the differential privacy parameters affect the NILM performance. Moreover, we generalize our conclusions by proposing the hierarchical framework to solve the multi-shot NILM problem. Numerical experiments verify our analytical results and offer better physical insights of differential privacy in various practical scenarios. This also demonstrates the significance of our work for the general privacy preserving mechanism design.
机译:智能仪表设备可以更好地了解私人信息泄漏的潜在风险的需求。 一个有望的解决这些风险的解决方案是将噪声注入仪表数据以实现一定程度的差异隐私。 在本文中,我们在压缩传感框架中施放一次非侵入式负载监测(NILM),并弥合NILM推理精度和差异隐私参数之间的差距。 然后,我们派生了有效的理论界,以了解差异隐私参数如何影响尼芯性能的见解。 此外,我们通过提出分层框架来概括我们的结论来解决多射击尼尔问题。 数值实验验证了我们的分析结果,并在各种实际情况下提供了更好的差异隐私的身体洞察力。 这也证明了我们对普通隐私保存机制设计的重要性的重要性。

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