2023
DOI: 10.3390/math11132910
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Functional Subspace Variational Autoencoder for Domain-Adaptive Fault Diagnosis

Abstract: This paper presents the functional subspace variational autoencoder, a technique addressing challenges in sensor data analysis in transportation systems, notably the misalignment of time series data and a lack of labeled data. Our technique converts vectorial data into functional data, which captures continuous temporal dynamics instead of discrete data that consist of separate observations. This conversion reduces data dimensions for machine learning tasks in fault diagnosis and facilitates the efficient remo… Show more

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