Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

QoS and QoE aware multi objective resource allocation algorithm for cloud gaming

View through CrossRef
Cloud gaming is an innovative model that congregates video games. The user may have different Quality-of-Experience (QoE), which is a term used to measure a user’s level of satisfaction and enjoyment for a particular service. To guarantee general satisfaction for all users with limited cloud resources, it becomes a major issue in the cloud. This paper leverages a game theory in the cloud gaming model with resource optimization to discover optimal solutions to resolve resource allocation. The Rider-based harmony search algorithm (Rider-based HSA), which is the combination of Rider optimization algorithm (ROA) and Harmony search algorithm (HSA), is proposed for resource allocation to improve the cloud computing system’s efficiency. The fitness function is newly devised considering certain QoE parameters, which involves fairness index, Quantified experience of players (QE), and Mean Opinion Score (MOS). The proposed Rider-based HSA showed better performance compared to Potential game-based optimization algorithm, Proactive resource allocation algorithm, QoE-aware resource allocation algorithm, Distributed algorithm, and Yusen Li et al., with maximal fairness of 0.999, maximal MOS of 0.873, and maximal QE of 1.
Title: QoS and QoE aware multi objective resource allocation algorithm for cloud gaming
Description:
Cloud gaming is an innovative model that congregates video games.
The user may have different Quality-of-Experience (QoE), which is a term used to measure a user’s level of satisfaction and enjoyment for a particular service.
To guarantee general satisfaction for all users with limited cloud resources, it becomes a major issue in the cloud.
This paper leverages a game theory in the cloud gaming model with resource optimization to discover optimal solutions to resolve resource allocation.
The Rider-based harmony search algorithm (Rider-based HSA), which is the combination of Rider optimization algorithm (ROA) and Harmony search algorithm (HSA), is proposed for resource allocation to improve the cloud computing system’s efficiency.
The fitness function is newly devised considering certain QoE parameters, which involves fairness index, Quantified experience of players (QE), and Mean Opinion Score (MOS).
The proposed Rider-based HSA showed better performance compared to Potential game-based optimization algorithm, Proactive resource allocation algorithm, QoE-aware resource allocation algorithm, Distributed algorithm, and Yusen Li et al.
, with maximal fairness of 0.
999, maximal MOS of 0.
873, and maximal QE of 1.

Related Results

Identifying and diagnosing video streaming performance issues
Identifying and diagnosing video streaming performance issues
On-line video streaming is an ever evolving ecosystem of services and technologies, where content providers are on a constant race to satisfy the users' demand for richer content a...
Energy‐aware cross‐layer resource allocation in mobile cloud
Energy‐aware cross‐layer resource allocation in mobile cloud
SummaryThis paper proposed an energy‐aware cross‐layer mobile cloud resource allocation approach. In this paper, a hybrid cloud architecture is adopted for provisioning mobile serv...
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Cloud computing has become a critical component of modern IT infrastructure, offering businesses scalability, flexibility, and cost efficiency. Unoptimized cloud migration strategi...
Enhancing Cloud Gaming QoE Estimation by Stacking Learning
Enhancing Cloud Gaming QoE Estimation by Stacking Learning
Abstract The Cloud Gaming sector is burgeoning with an estimated annual growth of morethan 50%, poised to reach a market value of $22 billion by 2030, and notably, GeForce ...
QoS Support in Wireless Networks
QoS Support in Wireless Networks
Wireless communication has gained a great deal of attention in the last few years from both industry and academia. Nowadays, most computerized devices are equipped with wireless po...
A QoE Evaluation Method for RT-HDMV Based on Multipath Relay Service
A QoE Evaluation Method for RT-HDMV Based on Multipath Relay Service
Multipath diversity leads to a possible higher performance for real-time high definition video, especially for medical video transmission, which would improve the stability of mult...
Energy and Quality Aware Multi-Objective Resource Allocation Algorithm in Cloud
Energy and Quality Aware Multi-Objective Resource Allocation Algorithm in Cloud
Cloud gaming has become the new service provisioning prototype that hosts the video games in the cloud and broadcasts the interactive game streaming to the players through the Inte...
QoE for Mobile TV Services
QoE for Mobile TV Services
This chapter discusses the various issues that surround the development stage of mobile TV services. It highlights the importance of Quality of Experience (QoE), which is a shift i...

Back to Top