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Wavelet-based load profile representation for smart meter privacy

机译:基于小波的负载配置文件表示,可实现智能电表保密

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摘要

A significant portion of (potential) end-users at this point in time are wary about possible disadvantages of smart grid technologies. A critical issue raised by end-users in various studies is the lack of trust in the level of privacy. Smart metering is the component in the end-user domain around which the most intense debate on privacy revolves, because load profiles are made available at high resolutions. Non-intrusive load monitoring (NILM) techniques allow the analysis of these load profiles to infer user behaviour, such as sleep-wake cycles. We investigate and compare the utility of different variants of the wavelet transform for creating a multi-resolution representation of load profiles. In combination with selective encryption, this multi-resolution representation allows end-users to grant or deny access to different resolutions on a “need-to-know” basis. Access to the different resolutions is thereby only granted to parties holding the needed keys. The whole datastream can be transmitted over the smart grid communications network. The lifting implementation of the wavelet transform has computationally low demands and can be run in embedded environments, e.g. on ARM-based architectures, in acceptable time. The proposed approach is evaluated based on the provided level of security, computational demands and feasibility in an economic sense.
机译:此时,很大一部分(潜在)最终用户都对智能电网技术可能存在的弊端保持警惕。最终用户在各种研究中提出的一个关键问题是对隐私级别的缺乏信任。智能计量是最终用户领域中围绕隐私展开最激烈辩论的组件,因为可以以高分辨率获得负载配置文件。非侵入式负载监视(NILM)技术允许对这些负载配置文件进行分析,以推断出用户的行为,例如睡眠-唤醒周期。我们调查并比较了小波变换的不同变体在创建负荷曲线的多分辨率表示中的效用。结合选择性加密,此多分辨率表示允许最终用户基于“需要知道”的基础来授予或拒绝对不同分辨率的访问。因此,仅授予持有所需密钥的各方才能访问不同的决议。整个数据流可以通过智能电网通信网络传输。小波变换的提升实现在计算上要求较低,并且可以在嵌入式环境中运行,例如在可接受的时间内基于ARM的体系结构。在经济意义上,基于提供的安全性,计算需求和可行性对所提出的方法进行了评估。

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