Lightweight Gramian Angular Field Classification for Edge Internet of Energy Applications

Date

2022-08-18

Advisors

Journal Title

Journal ISSN

ISSN

1386-7857

Volume Title

Publisher

Springer

Type

Article

Peer reviewed

Yes

Abstract

With adverse industrial effects on the global landscape, climate change is imploring the global economy to adopt sustainable solutions. The ongoing evolution of energy efficiency targets massive data collection and Artificial Intelligence (AI) for big data analytics. Besides, emerging on the Internet of Energy (IoE) paradigm, edge computing is playing a rising role in liberating private data from cloud centralization. In this direction, a creative visual approach to understanding energy data is introduced. Building upon micro-moments, which are time-series of small contextual data points, the power of pictorial representations to encapsulate rich information in a small twodimensional (2D) space is harnessed through a novel Gramian Angular Fields (GAF) classifier for energy micro-moments. Designed with edge computing efficiency in mind, current testing results on the ODROID-XU4 can classify up to 7 million GAF-converted data points with ~90% accuracy in less than 30 sec, paving the path towards industrial adoption of edge IoE.

Description

The file attached to this record is the author's final peer reviewed version. The Publisher's final version can be found by following the DOI link.

Keywords

Edge computing, Energy efficiency, Artificial Intelligence, Deep learning, Gramian angular fields, Internet of energy

Citation

Alsalemi, A., Amira, A., Malekmohamadi, H. and Diao. K. (2022) Lightweight Gramian Angular Field Classification for Edge Internet of Energy Applications. Cluster Computing,

Rights

Research Institute