Authors
H. Liao, Z. Zhou, X. Zhao, S. Mumtaz, A. Jolfaei, S. H. Ahmed, and A. K. Bashir
Publication date
2020
Journal
IEEE Internet of Things Journal
Publisher
IEEE
Description
Edge computing provides a promising paradigm to support the implementation of Industrial Internet of Things (IIoT) by offloading computational-intensive tasks from resource-limited machine-type devices (MTDs) to powerful edge servers. However, the performance gain of edge computing may be severely compromised due to limited spectrum resources, capacity-constrained batteries, and context unawareness. In this article, we consider the optimization of channel selection that is critical for efficient and reliable task delivery. We aim at maximizing the long-term throughput subject to long-term constraints of energy budget and service reliability. We propose a learning-based channel selection framework with service reliability awareness, energy awareness, backlog awareness, and conflict awareness, by leveraging the combined power of machine learning, Lyapunov optimization, and matching theory. We provide …
Total citations
20192020202120222023202415271606126
Scholar articles
H Liao, Z Zhou, X Zhao, L Zhang, S Mumtaz, A Jolfaei… - IEEE Internet of Things Journal, 2019