首页> 外文会议>Proceedings of the ITI 2011 33rd International Conference on Information Technology Interfaces >Detection of suspicious patterns of energy consumption using neural network trained by generated samples
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Detection of suspicious patterns of energy consumption using neural network trained by generated samples

机译:使用由生成的样本训练的神经网络检测能源的可疑模式

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In this paper two different methods for non-technical losses (NTL) detection are analyzed and new approach is proposed, based on the noticed drawbacks. It is shown that NTL can be successfully detected by a neural network trained by “artificial”, i.e., generated samples. This approach eliminates the need for many hard-to-obtain real life samples and the network can easily be trained to detect some new, non-typical occurrences in the system. This makes the proposed solution suitable for large companies that supply many different consumers who possibly change their consumption habits.
机译:本文分析了两种非技术性损失(NTL)的检测方法,并针对存在的弊端提出了一种新的检测方法。结果表明,可以通过由“人工”(即生成的样本)训练的神经网络成功检测NTL。这种方法消除了对许多难以获得的现实生活样本的需求,并且可以轻松地训练网络来检测系统中一些新的非典型事件。这使建议的解决方案适用于为许多可能会改变其消费习惯的不同消费者提供服务的大公司。

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