基于支持向量机的窃电检测数据分类

S. Depuru, Lingfeng Wang, V. Devabhaktuni
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引用次数: 171

摘要

发展中国家的大多数公用事业公司由于非技术损失(NTL)而遭受重大财务损失。在发展中国家,由于基础设施落后,很难发现和控制NTL的潜在原因。窃电和账单违规构成了NTL的主要部分。这些损失影响到电力供应的质量、发电站的电力负荷以及对真正用户所消耗的电力征收的关税。针对这些问题,本文讨论了电力盗窃检测的潜在问题,以及以前实施的减少盗窃的方法。此外,它还提供了几个涉及盗窃的客户的大致能源消耗模式。比较客户的能源消耗模式是否存在盗窃行为。在历史数据的基础上,建立了客户能耗模式数据集。然后,用从智能电表收集的数据训练支持向量机(svm),这些数据代表了所有可能的盗窃形式,并在几个客户身上进行了测试。根据规则对这些数据进行分类,并对可疑的能源消耗概况进行分组。给出了用电量数据的分类结果。
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Support vector machine based data classification for detection of electricity theft
Most utility companies in developing countries are subjected to major financial losses because of non-technical losses (NTL). It is very difficult to detect and control potential causes of NTL in developing countries due to the poor infrastructure. Electricity theft and billing irregularities form the main portion of NTL. These losses affect quality of supply, electrical load on the generating station and tariffs imposed on electricity consumed by genuine customers. In light of these issues, this paper discusses the problems underlying detection of electricity theft, previously implemented ways for reducing theft. In addition, it presents the approximate energy consumption patterns of several customers involving theft. Energy consumption patterns of customers are compared with and without the presence of theft. A dataset of customer energy consumption pattern is developed based on the historical data. Then, support vector machines (SVMs) are trained with the data collected from smart meters, that represents all possible forms of theft and are tested on several customers. This data is classified based on rules and the suspicious energy consumption profiles are grouped. The classification results of electricity consumption data are also presented.
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