Authors
Abubakar Bala, Rahimi Zaman Jusoh A Rashid, Idris Ismail, Diego Oliva, Noryanti Muhammad, Sadiq M Sait, Khaled A Al-Utaibi, Temitope Ibrahim Amosa, Kamran Ali Memon
Publication date
2024/4/15
Source
Artificial Intelligence Review
Volume
57
Issue
5
Pages
119
Publisher
Springer Netherlands
Description
Industrial internet of things (IIoT) has ushered us into a world where most machine parts are now embedded with sensors that collect data. This huge data reservoir has enhanced data-driven diagnostics and prognoses of machine health. With technologies like cloud or centralized computing, the data could be sent to powerful remote data centers for machine health analysis using artificial intelligence (AI) tools. However, centralized computing has its own challenges, such as privacy issues, long latency, and low availability. To overcome these problems, edge computing technology was embraced. Thus, instead of moving all the data to the remote server, the data can now transition on the edge layer where certain computations are done. Thus, access to the central server is infrequent. Although placing AI on edge devices aids in fast inference, it poses new research problems, as highlighted in this paper. Moreover …
Scholar articles
A Bala, RZJA Rashid, I Ismail, D Oliva, N Muhammad… - Artificial Intelligence Review, 2024