The Costs of Privacy in Local Energy Markets

Erik Buchmann, Stephan Kessler, P. Jochem, Klemens Böhm
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引用次数: 32

Abstract

Many renewable sources for electricity generation are distributed and volatile by nature, and become inefficient and difficult to coordinate with traditional power transmission paths. As a part of the transition from fossil fuel to renewable sources, local energy markets allow an efficient allocation and distribution of energy from local sources to nearby households. When using a discrete time double auction model, bids in such markets reflect the supply and demand of energy. However, since the energy demand of a household contains personal information, such markets are not in line with privacy legislation. In this paper, we investigate the influence of anonymization methods on local energy markets. In particular, we anonymize the bids of the order book, and we compare the CO2 emissions and the expenses of market participants of this allocation with a non-anonymous one. We have modeled the flows of personal data for a local energy auction platform, and we have developed a model for the supply and demand of electricity of a small town in the near future. Our experiments show that with elementary anonymization methods, the impact of anonymization on the costs and on the CO2 emissions is small.
地方能源市场的隐私成本
许多可再生能源发电具有分布式和不稳定性的特点,效率低下,难以与传统的输电路径相协调。作为从化石燃料向可再生能源过渡的一部分,本地能源市场可以将本地能源有效地分配给附近的家庭。在使用离散时间双重拍卖模型时,此类市场的出价反映了能源的供需情况。然而,由于家庭的能源需求包含个人信息,此类市场不符合隐私法规。在本文中,我们研究了匿名化方法对本地能源市场的影响。特别是,我们对订单簿的出价进行了匿名化,并比较了这种分配方式与非匿名分配方式的二氧化碳排放量和市场参与者的支出。我们对本地能源拍卖平台的个人数据流进行了建模,并建立了一个小镇近期电力供需模型。我们的实验表明,使用基本的匿名化方法,匿名化对成本和二氧化碳排放量的影响很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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