首页> 外文会议>Proceedings of the Third IASTED International Conference on Advances in Computer Science and Technology >ABNORMALITIES AND FRAUD ELECTRIC METER DETECTION USING HYBRID SUPPORT VECTOR MACHINE GENETIC ALGORITHM
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ABNORMALITIES AND FRAUD ELECTRIC METER DETECTION USING HYBRID SUPPORT VECTOR MACHINE GENETIC ALGORITHM

机译:混合支持向量机和遗传算法的异常与欺诈电表检测

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This paper presents an intelligent system to reduce Non Technical Loss (NTL) using hybrid Support Vector Machine (SVM) and Genetic Algorithm (GA). The main motivation for this research is to assist Sabah Electricity Sdn. Bhd. (SESB) to reduce their distribution loss, estimated around 15% at present in Sabah State, Malaysia. The hybrid algorithm is able to preselect customers to be inspected on-site for abnormalities or potential fraud according to their consumption patterns. SVM is a classification technique developed by Vapnik [1] but a practical difficulty of using SVM is the selection of parameters such as C and kernel parameter, σ in Gaussian RBF kernel. The purpose of choosing parameters is to get the best generalization performance. Genetic Algorithm (GA) is used to search for the best parameter of SVM classification by using combination of random and pre-populated genomes from Pre-Populated Database (PPD). It provides an increased convergence and globally optimized solutions. The algorithm has been tested using actual customer consumption data from SESB. 10 fold cross validation method is used to confirm the consistency of the detection accuracy. The paper also highlights comparison results between typical SVM and SVM-GA. The highest fraud detection accuracy for SVMGA is 94%.
机译:本文提出了一种使用混合支持向量机(SVM)和遗传算法(GA)来减少非技术损失(NTL)的智能系统。这项研究的主要动机是协助沙巴电力有限公司。 Bhd。(SESB)减少其分销损失,目前估计在马来西亚沙巴州约占15%。混合算法能够根据客户的消费模式预先选择要现场检查的客户是否存在异常或潜在欺诈行为。 SVM是Vapnik [1]开发的一种分类技术,但是使用SVM的一个实际困难是在高斯RBF内核中选择诸如C和内核参数σ之类的参数。选择参数的目的是获得最佳的泛化性能。遗传算法(GA)用于通过结合预填充数据库(PPD)中的随机和预填充基因组来搜索SVM分类的最佳参数。它提供了增强的融合和全局优化的解决方案。该算法已使用来自SESB的实际客户消费数据进行了测试。 10倍交叉验证法用于确认检测精度的一致性。本文还重点介绍了典型SVM和SVM-GA之间的比较结果。 SVMGA的最高欺诈检测准确性为94%。

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