Emilio J. Palacios-Garcia, Vladimir Vrabel, Geert Deconinck
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引用次数: 0
摘要
随着可再生能源的部署量不断增加,分布式资产提供的灵活性保证了电力系统的稳定运行。然而,在考虑表后资源的情况下,验证是否提供了足够的灵活性具有挑战性。除专用计量装置外,一种具有成本效益的替代方法是使用智能电表进行测量。但是,必须将灵活性激活与家庭中的其他负载区分开来。此外,由于用电量中包含个人数据,隐私问题也随之而来。作者通过开发一种数据驱动的隐私友好型验证算法来解决这两个问题,该算法用于参与频率控制储备(FCR)。我们的方法评估了本地部署的三个机器学习(ML)分类模型,并输入总用电量测量值和激活集点来验证用户的参与情况。从低粒度功率测量到简单的合规指标,离开场所的信息量有所减少。使用真实的家庭数据集对这些模型进行了训练和评估,其中 FCR 由表后电池提供,结果准确度接近 0.90。在实际情况下,采用了概念验证设置来测试算法。即使有几个背景负载,也能观察到高达 0.83 的准确率,考虑到隐私友好功能、使用简单的 ML 模型和嵌入式部署,结果令人满意。
Local privacy-friendly verification of customer participation in frequency regulation services using smart meter data
The delivery of flexibility from distributed assets guarantees the stable operation of the power system as increasing volumes of renewable energy are deployed. Nevertheless, verifying the adequate provision is challenging when considering behind-the-meter resources. A cost-effective alternative to dedicated metring is using measurements from smart meters. However, flexibility activations must be discerned from the rest of the loads in the household. Furthermore, privacy issues arise since electricity consumption contains personal data. The authors tackle both issues by developing a data-driven privacy-friendly verification algorithm for participation in frequency containment reserves (FCRs). Our methodology evaluated three machine learning (ML) classification models, deployed locally, and fed with total consumption measurements and activation set points to verify users' participation. The amount of information that leaves the premises was reduced from low-granularity power measurements to simple compliance indicators. The models were trained and evaluated using a real dataset of households, where FCR was delivered by behind-the-meter batteries, resulting in an accuracy close to 0.90. A proof-of-concept setup was employed to test the algorithms under real circumstances. Even with several background loads, an accuracy of up to 0.83 was observed, promising results considering the privacy-friendly features, use of simple ML models, and embedded deployment.