The manyfold capacity magnification promised by dense 5G networks will make possible the provisioning of broadband multimedia services, including virtual reality, augmented reality, and mobile immersive video, to name a few. These new applications will coexist with classic ones and contribute to the exponential growth of multimedia services in mobile networks. At the same time, the different requirements of past and old services pose new challenges to the effective usage of 5G resources. In response to these challenges, a novel Stochastic Optimization framework for Green Multimedia Services named SOGMS is proposed herein that targets the maximization of system throughput and the minimization of energy consumption in data delivery. In particular, Lyapunov optimization is leveraged to face this optimization objective, which is formulated and decomposed into three tractable subproblems. For each subproblem, a distinct algorithm is conceived, namely quality of experience--based admission control, cooperative resource allocation, and multimedia services scheduling. Finally, extensive simulations are carried out to evaluate the proposed method against state-of-art solutions in dense 5G networks.

Stochastic Optimization for Green Multimedia Services in Dense 5G Networks / Cao, Tengfei; Xu, Changqiao; Wang, Mu; Jiang, Zhongbai; Chen, Xingyan; Zhong, Lujie; Grieco, Luigi Alfredo. - In: ACM TRANSACTIONS ON MULTIMEDIA COMPUTING, COMMUNICATIONS AND APPLICATIONS. - ISSN 1551-6857. - STAMPA. - 15:3(2019). [10.1145/3328996]

Stochastic Optimization for Green Multimedia Services in Dense 5G Networks

Grieco, Luigi Alfredo
2019-01-01

Abstract

The manyfold capacity magnification promised by dense 5G networks will make possible the provisioning of broadband multimedia services, including virtual reality, augmented reality, and mobile immersive video, to name a few. These new applications will coexist with classic ones and contribute to the exponential growth of multimedia services in mobile networks. At the same time, the different requirements of past and old services pose new challenges to the effective usage of 5G resources. In response to these challenges, a novel Stochastic Optimization framework for Green Multimedia Services named SOGMS is proposed herein that targets the maximization of system throughput and the minimization of energy consumption in data delivery. In particular, Lyapunov optimization is leveraged to face this optimization objective, which is formulated and decomposed into three tractable subproblems. For each subproblem, a distinct algorithm is conceived, namely quality of experience--based admission control, cooperative resource allocation, and multimedia services scheduling. Finally, extensive simulations are carried out to evaluate the proposed method against state-of-art solutions in dense 5G networks.
2019
Stochastic Optimization for Green Multimedia Services in Dense 5G Networks / Cao, Tengfei; Xu, Changqiao; Wang, Mu; Jiang, Zhongbai; Chen, Xingyan; Zhong, Lujie; Grieco, Luigi Alfredo. - In: ACM TRANSACTIONS ON MULTIMEDIA COMPUTING, COMMUNICATIONS AND APPLICATIONS. - ISSN 1551-6857. - STAMPA. - 15:3(2019). [10.1145/3328996]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11589/194046
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