Advertisement

joc杂志影响因子2019_边缘计算 | SCI期刊JoCCASA诚邀专刊稿件

阅读量:

原标题:边缘计算 | SCI期刊JoCCASA诚邀专刊稿件

期刊基本信息

期刊名称

Journal of Cloud Computing: Advances, Systems and Applications

影响因子

2.14

期刊难度

★ ★

领域

计算机体系结构,并行与分布式计算

JCR分区

大类 : 工程技术 - 3区

小类 : 计算机:信息系统 - 3区

专刊名称

Call for papers: Edge-cloud computing cooperation for task offloading in internet-of-things

专刊简介

With the fast development trend of Internet of Things (IoTs), the demand for User Terminals (UTs) such as smartphones, unmanned aerial vehicles, and wearable devices is increasing dramatically. However, UTs are constrained by limited resources, such as CPU computing power, storage space, energy capacities, environmental awareness and complex computing tasks. To solve the above contradictions, one effective way is to offload complex computing tasks from UTs either to remote cloud servers or nearby edge servers. Compared to cloud servers, edge servers are closer to UTs and thus achieve lower latency; however, edge servers have low computing capacity while cloud servers have relatively sufficient computing power. Therefore, edge computing and cloud computing can cooperate and complement with each other in terms of computing, storage, and communication facilities. The combination of edge and cloud computing will make task execution faster, cheaper, and more stable.

This thematic series is devoted to state-of-the-art research covering concepts of task offloading technologies for IoT applications. It is of great significance to the rapid promotion of collaboration between Mobile Cloud Computing (MCC) and Mobile Edge Computing (MEC). With the continuous development of theory and methods of decision-making and thorough perception of the hybrid task offloading, and further meets the application requirements on UTs, compensates for the lack of computing capacity and limited battery power for IoT systems.

关键日期

Submission Deadline

2020-09-01

征稿主题

Topics of interest include but are not limited to:返回搜狐,查看更多

Computing paradigm frontiers: edge, fog, mist and cloud computing cooperation

Optimization algorithms for edge-cloud computing cooperation

Delay and energy minimization for edge-cloud computing cooperation

Novel techniques and future perspectives for edge-cloud computing cooperation

Energy-efficient task offloading in edge-cloud computing environments

5G-enabled services for task offloading in edge-cloud computing environments

Security and privacy issues for task offloading with hybrid clouds in IoTs

Model and architecture design for computation offloading, resource management and task scheduling in IoTs

Computation and communication integration for task offloading in IoTs

High-performance low-cost communication task offloading in IoTs

Sustainable and green computing for task offloading in IoTs

Deep learning-driven algorithms for task offloading in IoTs

责任编辑:

全部评论 (0)

还没有任何评论哟~