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Innovative Methodology to Identify Errors in Electric Energy Measurement Systems in Power Utilities

机译:创新方法,以识别电力实用程序电能测量系统的错误

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摘要

Many electric utilities currently have a low level of smart meter implementation on traditional distribution grids. These utilities commonly have a problem associated with non-technical energy losses (NTLs) to unidentified energy flows consumed, but not billed in power distribution grids. They are usually due to either the electricity theft carried out by their own customers or failures in the utilities’ energy measurement systems. Non-technical energy losses lead to significant economic losses for electric utilities around the world. For instance, in Latin America and the Caribbean countries, NTLs represent around 15% of total energy generated in 2018, varying between 5 and 30% depending on the country because of the strong correlation with social, economic, political, and technical variables. According to this, electric utilities have a strong interest in finding new techniques and methods to mitigate this problem as much as possible. This research presents the results of determining with the precision of the existing data-oriented methods for detecting NTL through a methodology based on data analytics, machine learning, and artificial intelligence (multivariate data, analysis methods, classification, grouping algorithms, i.e., k-means and neural networks). The proposed methodology was implemented using the MATLAB computational tool, demonstrating improvements in the probability to identify the suspected customer’s measurement systems with error in their records that should be revised to reduce the NTLs in the distribution system and using the information from utilities’ databases associated with customer information (customer information system), the distribution grid (geographic information system), and socio-economic data. The proposed methodology was tested and validated in a real situation as a part of a recent Ecuadorian electric project.
机译:许多电力公司目前在传统的分布网格上具有较低的智能仪表实现。这些实用程序通常具有与非技术性能量损失(NTL)相关的问题,以消耗的未识别能量流量,但未在配电网格中计费。它们通常是由于自己的客户或公用事业能量测量系统中的失败进行的电力盗窃。非技术性能源损失导致世界各地电力公用事业的重大经济损失。例如,在拉丁美洲和加勒比国家,NTLS占2018年产生的总能量的15%,而且由于与社会,经济,政治和技术变量强烈相关,因此在国家而不同的5%至30%。据此,电机实用程序对寻找新技术和方法来尽可能减轻这种问题。本研究介绍了通过基于数据分析,机器学习和人工智能的方法来检测NTL的现有数据导向方法的精度的结果(多变量数据,分析方法,分类,分组算法,即K-手段和神经网络)。所提出的方法是使用MATLAB计算工具实施的,展示了概率的改进,以识别疑似客户的测量系统,其记录中的错误应进行修改,以减少分发系统中的NTLS并使用与相关的公用事业数据库中的信息客户信息(客户信息系统),分发网格(地理信息系统)和社会经济数据。拟议的方法在最近的厄瓜多尔电气项目的一部分中测试并验证了真实情况。

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