ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing
In Industry 4.0, predictive maintenance (PdM) is one of the most important applications pertaining to the Internet of Things (IoT). Machine learning is used to predict the possible failure of a machine before the actual event occurs. However, main challenges in PdM are: (a) lack of enough data f...
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sg-ntu-dr.10356-1061022019-12-06T22:04:36Z ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing Bose, Sumon Kumar Kar, Bapi Roy, Mohendra Gopalakrishnan, Pradeep Kumar Basu, Arindam School of Electrical and Electronic Engineering 2019 24th Asia and South Pacific Design Automation Conference Anomaly Detection Approximate Computing Engineering::Electrical and electronic engineering In Industry 4.0, predictive maintenance (PdM) is one of the most important applications pertaining to the Internet of Things (IoT). Machine learning is used to predict the possible failure of a machine before the actual event occurs. However, main challenges in PdM are: (a) lack of enough data from failing machines, and (b) paucity of power and bandwidth to transmit sensor data to cloud throughout the lifetime of the machine. Alternatively, edge computing approaches reduce data transmission and consume low energy. In this paper, we propose Anomaly Detection based Power Saving (ADEPOS) scheme using approximate computing through the lifetime of the machine. In the beginning of the machine’s life, low accuracy computations are used when machine is healthy. However, on detection of anomalies as time progresses, system is switched to higher accuracy modes. We show using the NASA bearing dataset that using ADEPOS, we need 8.8X less neurons on average and based on post-layout results, the resultant energy savings are 6.4-6.65X. NRF (Natl Research Foundation, S’pore) Accepted version 2019-07-08T02:06:31Z 2019-12-06T22:04:36Z 2019-07-08T02:06:31Z 2019-12-06T22:04:36Z 2019-01-01 2019 Conference Paper Bose, S. K., Kar, B., Roy, M., Gopalakrishnan, P. K., & Basu, A. (2019). ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing. 2019 24th Asia and South Pacific Design Automation Conference. doi:10.1145/3287624.3287716 https://hdl.handle.net/10356/106102 http://hdl.handle.net/10220/49166 https://doi.org/10.1145/3287624.3287716 210466 en © 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works. The published version is available at: https://doi.org/10.1145/3287624.3287716 6 p. application/pdf |
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Anomaly Detection Approximate Computing Engineering::Electrical and electronic engineering Bose, Sumon Kumar Kar, Bapi Roy, Mohendra Gopalakrishnan, Pradeep Kumar Basu, Arindam ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing |
description |
In Industry 4.0, predictive maintenance (PdM) is one of the most
important applications pertaining to the Internet of Things (IoT).
Machine learning is used to predict the possible failure of a machine
before the actual event occurs. However, main challenges
in PdM are: (a) lack of enough data from failing machines, and
(b) paucity of power and bandwidth to transmit sensor data to
cloud throughout the lifetime of the machine. Alternatively, edge
computing approaches reduce data transmission and consume low
energy. In this paper, we propose Anomaly Detection based Power
Saving (ADEPOS) scheme using approximate computing through
the lifetime of the machine. In the beginning of the machine’s
life, low accuracy computations are used when machine is healthy.
However, on detection of anomalies as time progresses, system
is switched to higher accuracy modes. We show using the NASA
bearing dataset that using ADEPOS, we need 8.8X less neurons
on average and based on post-layout results, the resultant energy
savings are 6.4-6.65X. |
author2 |
School of Electrical and Electronic Engineering |
author_facet |
School of Electrical and Electronic Engineering Bose, Sumon Kumar Kar, Bapi Roy, Mohendra Gopalakrishnan, Pradeep Kumar Basu, Arindam |
format |
Conference or Workshop Item |
author |
Bose, Sumon Kumar Kar, Bapi Roy, Mohendra Gopalakrishnan, Pradeep Kumar Basu, Arindam |
author_sort |
Bose, Sumon Kumar |
title |
ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing |
title_short |
ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing |
title_full |
ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing |
title_fullStr |
ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing |
title_full_unstemmed |
ADEPOS : anomaly detection based power saving for predictive maintenance using edge computing |
title_sort |
adepos : anomaly detection based power saving for predictive maintenance using edge computing |
publishDate |
2019 |
url |
https://hdl.handle.net/10356/106102 http://hdl.handle.net/10220/49166 https://doi.org/10.1145/3287624.3287716 |
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1681043275607179264 |