基于机器学习的先进计量基础设施电能损耗检测与监测系统建模

A. Aniedu, Sandra C. Nwokoye, Chukwunenye S. Okafor, Kingley U. Anyanwu
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引用次数: 0

摘要

非技术损失(NTL)被正确地确定为由于产生的能源而造成的损失,但没有计算在内。它们基本上是由于盗窃和其他围绕非法消耗能源的欺诈活动而发生的。这一损失给公用事业公司和政府带来了巨大的收入损失,人们一致努力减轻这种异常情况,从而节省成本。虽然包含智能电表的先进计量基础设施(AMI)已经围绕智能电网的管理和使用信息的监控提供了一些基本的组织,但它仍然不能准确地检测NTL。因此,本文提出了一种NTL的解决方案,包括部署支持向量机(SVM)作为底层分类器,并集成称为用电量分类器接口(ELUCI)的实时应用接口,用于监控和预处理瞬时用电量时间序列数据。在此配置下,分类准确率达到98.48%,比初始分类模型提高了17.02%,均方根误差(RMSE)为0.0894,f-measure为0.979。开发的系统可以帮助政府和公用事业公司积极监控和追踪能源盗窃,从而提高收入,避免这些活动造成的经济浪费。
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Modelling Machine Learning-based Energy Loss Detection and Monitoring System for Advanced Metering Infrastructure
Non-technical losses (NTL) have rightly been identified as losses arising from energy generated but unaccounted for. They basically occur because of theft and other fraudulent activities surrounding illegal consumption of energy. This loss accounts for massive loss in revenue to utility companies and government and there has been concerted efforts to mitigate such abnormalities thereby saving cost. Although advanced metering infrastructure (AMI) incorporating smart meters have provided some basic organization around management of smart grids and monitoring usage information, it still fails to accurately detect NTL. In this paper therefore a solution to NTL is presented involving the deployment of support vector machines (SVM) as an underlying classifier and integrated with a real-time application interface termed Electricity Usage Classifier interface (ELUCI) for monitoring and pre-processing instantaneous electricity usage time-series data. With this configuration, a classification accuracy of 98.48% was achieved which was a 17.02% improvement over the initial classification models and with a root mean squared error (RMSE) of 0.0894 and an f-measure of 0.979. The developed system can assist governments and utilities to actively monitor and track down energy theft thereby improving revenue and avoiding economic wastages accruing from these activities.
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