2024
DOI: 10.3233/ica-230728
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Gap imputation in related multivariate time series through recurrent neural network-based denoising autoencoder

Serafín Alonso,
Antonio Morán,
Daniel Pérez
et al.

Abstract: Technological advances in industry have made it possible to install many connected sensors, generating a great amount of observations at high rate. The advent of Industry 4.0 requires analysis capabilities of heterogeneous data in form of related multivariate time series. However, missing data can degrade processing and lead to bias and misunderstandings or even wrong decision-making. In this paper, a recurrent neural network-based denoising autoencoder is proposed for gap imputation in related multivariate ti… Show more

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