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Detection of suspicious patterns of energy consumption using neural network trained by generated samples

机译:使用产生的样品训练的神经网络检测能耗的可疑模式

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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:本文分析了两种不同技术损失(NTL)检测的不同方法,并提出了新的方法,基于注意的缺点。 结果表明,通过&#x201c训练的神经网络可以成功地检测到NTL;人工”,即生成的样本。 这种方法消除了对许多难以获得的真实生活样本的需求,并且可以轻松培训网络以检测系统中的一些新的非典型出现。 这使得拟议的解决方案适用于供应许多不同消费者的大型公司,这些消费者可能会改变其消费习惯。

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