| Literature DB >> 34393306 |
Mian Ahmad Jan1, Muhammad Zakarya1, Muhammad Khan2, Spyridon Mastorakis3, Varun G Menon4, Venki Balasubramaniam5, Ateeq Ur Rehman1.
Abstract
In the densely populated Internet of Things (IoT) applications, sensing range of the nodes might overlap frequently. In these applications, the nodes gather highly correlated and redundant data in their vicinity. Processing these data depletes the energy of nodes and their upstream transmission towards remote datacentres, in the fog infrastructure, may result in an unbalanced load at the network gateways and edge servers. Due to heterogeneity of edge servers, few of them might be overwhelmed while others may remain less-utilized. As a result, time-critical and delay-sensitive applications may experience excessive delays, packet loss, and degradation in their Quality of Service (QoS). To ensure QoS of IoT applications, in this paper, we eliminate correlation in the gathered data via a lightweight data fusion approach. The buffer of each node is partitioned into strata that broadcast only non-correlated data to edge servers via the network gateways. Furthermore, we propose a dynamic service migration technique to reconfigure the load across various edge servers. We assume this as an optimization problem and use two meta-heuristic algorithms, along with a migration approach, to maintain an optimal Gateway-Edge configuration in the network. These algorithms monitor the load at each server, and once it surpasses a threshold value (which is dynamically computed with a simple machine learning method), an exhaustive search is performed for an optimal and balanced periodic reconfiguration. The experimental results of our approach justify its efficiency for large-scale and densely populated IoT applications.Entities:
Keywords: Data Fusion; Evolutionary Algorithms; Gateway-Edge Configuration; Internet of Things; Load Optimization; Service Migration
Year: 2021 PMID: 34393306 PMCID: PMC8356146 DOI: 10.1016/j.future.2021.03.020
Source DB: PubMed Journal: Future Gener Comput Syst ISSN: 0167-739X Impact factor: 7.307