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Identifying topology in power networks in the absence of breaker status sensor signals

机译:在没有断路器状态传感器信号的情况下识别电网中的拓扑

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This paper presents the concept of a tapered deep neural network, subject to unsupervised training layer by layer, under a criterion of maximum entropy, to perform the estimation of breaker status in the absence of a specific sensor signal. The almost perfect prediction power of the model confirms the conjecture that the knowledge of the topology of a network is hidden in the electric measurement values in the network. A test case is presented with computing speed accelerated by using a GPU (graphics processing unit). The comparison with a previous model illustrates the superiority of the novel approach.
机译:本文介绍了锥形深神经网络的概念,在最大熵的标准下通过层进行无监督训练层,以在不存在特定传感器信号的情况下执行断路器状态的估计。该模型的几乎完美的预测能力确认了猜想网络的拓扑知识隐藏在网络中的电测量值中。通过使用GPU(图形处理单元)加速计算速度来提出测试用例。与先前模型的比较说明了新方法的优越性。

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