Type: Conference Paper
Load Balancing of Servers in Software-defined Internet of Multimedia Things using the Long Short-Term Memory Prediction Algorithm
Journal: ()Year: 2024Volume: Issue: Pages: 291 - 296
DOI:10.1109/ICWR61162.2024.10533321Language: English
Abstract
The increase of traffic in Internet-of multimedia Things networks leads to additional load on servers; therefore, this paper focuses on server load balancing in multimedia Internet-of-Things networks. Software-defined networking technology has been used to achieve load balancing in these networks, as software-defined networks with new features have improved load balancing in multimedia Internet-of-Things networks. In this study, the short-term and long-term recurrent neural network algorithm is used to predict the server load, and then a fuzzy system is used to accurately determine the server levels. Also, this article saves energy and also reduces server overhead. © 2024 IEEE.
Author Keywords
Fuzzy systemInternet of Multimedia ThingsLSTMServer load balancingSoftware-defined network
Other Keywords
Internet of thingsLong short-term memorySoftware defined networkingAdditional loadsInternet of multimedium thingLoad-BalancingLSTMMultimedia internetPrediction algorithmsServer load balancingServer loadsSoftware-defined networkingsSoftware-defined networksFuzzy systems