2023
DOI: 10.36253/10.36253/979-12-215-0289-3.93
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Early Detection and Reconstruction of Abnormal Data Using Hybrid VAE-LSTM Framework

Fangli Hou,
Jun Ma,
Jack C. P. Cheng
et al.

Abstract: Early failure detection and abnormal data reconstruction in sensor data provided by building ventilation control systems are critical for public health. Early detection of abnormal data can help prevent failures in crucial components of ventilation systems, which can result in a variety of issues, from energy wastage to catastrophic outcomes. However, conventional fault detection models ignore valuable features of dynamic fluctuations in indoor air quality (IAQ) measurements and early warning signals of faulty… Show more

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