Authors
Demetris Trihinas, George Pallis, Marios D Dikaiakos
Publication date
2018/2/23
Journal
IEEE Transactions on Services Computing
Volume
14
Issue
2
Pages
487-501
Publisher
IEEE
Description
Internet-enabled physical devices with “smart” processing capabilities are becoming the tools for understanding the complexity of the global inter-connected world we inhabit. The Internet of Things (IoT) churns tremendous amounts of data flooding from devices scattered across multiple locations to the processing engines of almost all industry sectors. However, as the number of “things” surpasses the population of the technology-enabled world, real-time processing and energy-efficiency are great challenges of the big data era transitioning to IoT. In this article, we introduce a lightweight adaptive monitoring framework suitable for smart IoT devices with limited processing capabilities. Our framework, inexpensively and in place dynamically adjusts the monitoring intensity and the amount of data disseminated through the network based on a low-cost adaptive and probabilistic learning model capable of capturing at …
Total citations
20182019202020212022202320245101612877
Scholar articles
D Trihinas, G Pallis, MD Dikaiakos - IEEE Transactions on Services Computing, 2018