LiReD: A Light-Weight Real-Time Fault Detection System for Edge Computing Using LSTM Recurrent Neural Networks
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Title
LiReD: A Light-Weight Real-Time Fault Detection System for Edge Computing Using LSTM Recurrent Neural Networks
Authors
Keywords
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Journal
SENSORS
Volume 18, Issue 7, Pages 2110
Publisher
MDPI AG
Online
2018-07-02
DOI
10.3390/s18072110
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