低压配电网络中考虑到专业消费者的数据驱动型消费阶段识别

IF 3.1 4区 工程技术 Q3 ENERGY & FUELS
Geofrey Mugerwa, Tamer F. Megahed, Maha Elsabrouty, Sobhy M. Abdelkader
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引用次数: 0

摘要

了解正确的相位连接信息对于保持高质量的电能和向终端用户可靠供电具有重要作用。然而,管理低压配电网络的用户相位连接通常成本高昂、容易出现人为错误且耗时长,因为这需要安装昂贵的高精度设备或采用现场方法。此外,电力需求的不断增长和表后资源的激增也增加了利用相位连接问题的复杂性。为了克服上述挑战,本文开发了一个数据驱动模型,利用先进的计量基础设施电压和电流测量来识别终端用户的相位连接。首先,采用线性插值和奇异值分解的预处理方法来提高智能电表数据的质量。然后,利用基尔霍夫电流定律和相关性分析,建立离散卷积优化模型,以唯一识别每个终端用户所连接的相位。所使用的数据集是通过使用 OpenDSS 软件在修改后的 IEEE-906 测试系统上进行电力流模拟获得的。针对数据集大小、缺失的智能电表数据、测量误差以及前消费者的影响,对模型的稳健性进行了测试。结果表明,所提出的方法能正确识别终端用户的相位连接,准确率约为 98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven consumer-phase identification in low-voltage distribution networks considering prosumers

Knowing the correct phase connectivity information plays a significant role in maintaining high-quality power and reliable electricity supply to end-consumers. However, managing the consumer-phase connectivity of a low-voltage distribution network is often costly, prone to human errors, and time-intensive, as it involves either installing expensive high-precision devices or employing field-based methods. Besides, the ever-increasing electricity demand and the proliferation of behind-the-meter resources have also increased the complexity of leveraging the phase connectivity problem. To overcome the above challenges, this paper develops a data-driven model to identify the phase connectivity of end-consumers using advanced metering infrastructure voltage and current measurements. Initially, a preprocessing method that employs linear interpolation and singular value decomposition is adopted to improve the quality of the smart meter data. Then, using Kirchoff’s current law and correlation analysis, a discrete convolution optimization model is built to uniquely identify the phase to which each end-consumer is connected. The data sets utilized are obtained by performing power flow simulations on a modified IEEE-906 test system using OpenDSS software. The robustness of the model is tested against data set size, missing smart meter data, measurement errors, and the influence of prosumers. The results show that the method proposed correctly identifies the phase connections of end-consumers with an accuracy of about 98%.

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来源期刊
Frontiers in Energy
Frontiers in Energy Energy-Energy Engineering and Power Technology
CiteScore
5.90
自引率
6.90%
发文量
708
期刊介绍: Frontiers in Energy, an interdisciplinary and peer-reviewed international journal launched in January 2007, seeks to provide a rapid and unique platform for reporting the most advanced research on energy technology and strategic thinking in order to promote timely communication between researchers, scientists, engineers, and policy makers in the field of energy. Frontiers in Energy aims to be a leading peer-reviewed platform and an authoritative source of information for analyses, reviews and evaluations in energy engineering and research, with a strong focus on energy analysis, energy modelling and prediction, integrated energy systems, energy conversion and conservation, energy planning and energy on economic and policy issues. Frontiers in Energy publishes state-of-the-art review articles, original research papers and short communications by individual researchers or research groups. It is strictly peer-reviewed and accepts only original submissions in English. The scope of the journal is broad and covers all latest focus in current energy research. High-quality papers are solicited in, but are not limited to the following areas: -Fundamental energy science -Energy technology, including energy generation, conversion, storage, renewables, transport, urban design and building efficiency -Energy and the environment, including pollution control, energy efficiency and climate change -Energy economics, strategy and policy -Emerging energy issue
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