Abnormal time sequence identification algorithm for power measurement devices based on variational autoencoder and support vector machine
Cunyu Long,
Jieqiong Han,
Wenjing Fan
et al.
Abstract:When identifying abnormal timing of power metering devices, the identification effect is poor due to the diverse attributes of the original power metering device state data. Therefore, a research on abnormal timing identification algorithm of power metering devices based on variational autoencoder and support vector machine is proposed. A VAE-LSTM-DTW model was constructed with a variational autoencoder as the core, which can be mainly divided into two parts. The reconstruction model is composed of a VAE netwo… Show more
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