Abstract
With the rapid development of 5G technology in recent years, multimedia communication services, such as live online and short video, have received wide attention and become the important means of people's daily social intercourse. However, the rapid growth of multimedia communication demands pose greater challenges to both the wireless network communication capacity and the network processing capacity. Mobile Edge Computing (MEC) is widely regarded as a promising technology to cope with the above challenges. To satisfy the growing demands and improve the quality of experience for users, it is in urge need to seek the effective and efficient task assignment and computing offloading strategy for MEC networks. In this paper, we focused on the multimedia services which need to be processed, uploaded and shared in the network and research the long-term task assignment and resource coordination problem. We formulate the optimization problem as a stochastic optimization problem with the aim of the minimizing the time-average energy consumption of the system. By using the Lyapunov optimization technique, we decompose the original problem into several subproblems which can be solved with current system information and low computational complexities. On this basis, we propose an online energy-efficient task assignment and computing offloading strategy to adaptively decide the task assignment, coordinate and optimize the wireless and computation resource allocation by taking the dynamic wireless condition and service delay constraints into consideration. Extensive simulation results show that our proposed algorithm can achieve considerate energy consumption and delay performances under different conditions.
Highlights
With the rapid development of 5G technology, multimedia communication and social communication are becoming more and more popular [1], [2], a variety of intelligent applications are emerging, e.g. multimedia services, virtual reality and augmented reality [3]
To solve the above challenges, the existing literatures mainly studied the problem of task assignment and computing offloading problem based on two optimization targets including the service delay reduction and energy consumption minimzation [13]–[17]
2) We develop an online algorithm called energy-efficient task assignment and computing offloading strategy to adaptively decide the the task assignment, coordinate and optimize the wireless and computation resource allocation
Summary
With the rapid development of 5G technology, multimedia communication and social communication are becoming more and more popular [1], [2], a variety of intelligent applications are emerging, e.g. multimedia services, virtual reality and augmented reality [3]. The above goals have posed greater challenges to the task assignment and computing offloading optimization among the user devices and MEC servers in the wireless network. To solve the above challenges, the existing literatures mainly studied the problem of task assignment and computing offloading problem based on two optimization targets including the service delay reduction and energy consumption minimzation [13]–[17]. The authors in [15] considered the performance and energy tradeoffs of multi-core computation offloading problem, and proposed a heuristic algorithm to minimize energy consumption under the completion time constraints of multiple applications. We propose an online energy-efficient task assignment and computing offloading strategy to solve the above problem.
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.