期刊文献+
共找到6篇文章
< 1 >
每页显示 20 50 100
Systematic Cloud-Based Optimization: Twin-Fold Moth Flame Algorithm for VM Deployment and Load-Balancing
1
作者 Umer Nauman Yuhong Zhang +1 位作者 Zhihui Li Tong Zhen 《Intelligent Automation & Soft Computing》 2024年第3期477-510,共34页
Cloud computing has gained significant recognition due to its ability to provide a broad range of online services and applications.Nevertheless,existing commercial cloud computing models demonstrate an appropriate des... Cloud computing has gained significant recognition due to its ability to provide a broad range of online services and applications.Nevertheless,existing commercial cloud computing models demonstrate an appropriate design by concentrating computational assets,such as preservation and server infrastructure,in a limited number of large-scale worldwide data facilities.Optimizing the deployment of virtual machines(VMs)is crucial in this scenario to ensure system dependability,performance,and minimal latency.A significant barrier in the present scenario is the load distribution,particularly when striving for improved energy consumption in a hypothetical grid computing framework.This design employs load-balancing techniques to allocate different user workloads across several virtual machines.To address this challenge,we propose using the twin-fold moth flame technique,which serves as a very effective optimization technique.Developers intentionally designed the twin-fold moth flame method to consider various restrictions,including energy efficiency,lifespan analysis,and resource expenditures.It provides a thorough approach to evaluating total costs in the cloud computing environment.When assessing the efficacy of our suggested strategy,the study will analyze significant metrics such as energy efficiency,lifespan analysis,and resource expenditures.This investigation aims to enhance cloud computing techniques by developing a new optimization algorithm that considers multiple factors for effective virtual machine placement and load balancing.The proposed work demonstrates notable improvements of 12.15%,10.68%,8.70%,13.29%,18.46%,and 33.39%for 40 count data of nodes using the artificial bee colony-bat algorithm,ant colony optimization,crow search algorithm,krill herd,whale optimization genetic algorithm,and improved Lévy-based whale optimization algorithm,respectively. 展开更多
关键词 optimizing cloud computing deployment of virtual machines LOAD-BALANCING twin-fold moth flame algorithm grid computing computational resource distribution data virtualization
下载PDF
Service composition based on discrete particle swarm optimization in military organization cloud cooperation 被引量:2
2
作者 An Zhang Haiyang Sun +1 位作者 Zhili Tang Yuan Yuan 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2016年第3期590-601,共12页
This paper addresses the problem of service composition in military organization cloud cooperation(MOCC). Military service providers(MSP) cooperate together to provide military resources for military service users... This paper addresses the problem of service composition in military organization cloud cooperation(MOCC). Military service providers(MSP) cooperate together to provide military resources for military service users(MSU). A group of atom services, each of which has its level of quality of service(QoS), can be combined together into a certain structure to form a composite service. Since there are a large number of atom services having the same function, the atom service is selected to participate in the composite service so as to fulfill users' will. In this paper a method based on discrete particle swarm optimization(DPSO) is proposed to tackle this problem. The method aims at selecting atom services from service repositories to constitute the composite service, satisfying the MSU's requirement on QoS. Since the QoS criteria include location-aware criteria and location-independent criteria, this method aims to get the composite service with the highest location-aware criteria and the best-match location-independent criteria. Simulations show that the DPSO has a better performance compared with the standard particle swarm optimization(PSO) and genetic algorithm(GA). 展开更多
关键词 service composition cloud cooperation discrete particle swarm optimization(DPSO)
下载PDF
Adaptive Application Offloading Decision and Transmission Scheduling for Mobile Cloud Computing 被引量:6
3
作者 Junyi Wang Jie Peng +2 位作者 Yanheng Wei Didi Liu Jielin Fu 《China Communications》 SCIE CSCD 2017年第3期169-181,共13页
Offloading application to cloud can augment mobile devices' computation capabilities for the emerging resource-hungry mobile application, however it can also consume both much time and energy for mobile device off... Offloading application to cloud can augment mobile devices' computation capabilities for the emerging resource-hungry mobile application, however it can also consume both much time and energy for mobile device offloading application remotely to cloud. In this paper, we develop a newly adaptive application offloading decision-transmission scheduling scheme which can solve above problem efficiently. Specifically, we first propose an adaptive application offloading model which allows multiple target clouds coexisting. Second, based on Lyapunov optimization theory, a low complexity adaptive offloading decision-transmission scheduling scheme has been proposed. And the performance analysis is also given. Finally, simulation results show that,compared with that all applications are executed locally, mobile device can save 68.557% average execution time and 67.095% average energy consumption under situations. 展开更多
关键词 mobile cloud computing application offloading decision transmission scheduling scheme Lyapunov optimization
下载PDF
Heuristic Virtual Machine Allocation for Multi-Tier Ambient Assisted Living Applications in a Cloud Data Center
4
作者 Jing Bi Haitao Yuan +1 位作者 Ming Tie Xiao Song 《China Communications》 SCIE CSCD 2016年第5期56-65,共10页
Cloud computing provides the essential infrastructure for multi-tier Ambient Assisted Living(AAL) applications that facilitate people's lives. Resource provisioning is a critically important problem for AAL applic... Cloud computing provides the essential infrastructure for multi-tier Ambient Assisted Living(AAL) applications that facilitate people's lives. Resource provisioning is a critically important problem for AAL applications in cloud data centers(CDCs). This paper focuses on modeling and analysis of multi-tier AAL applications, and aims to optimize resource provisioning while meeting requests' response time constraint. This paper models a multi-tier AAL application as a hybrid multi-tier queueing model consisting of an M/M/c queueing model and multiple M/M/1 queueing models. Then, virtual machine(VM) allocation is formulated as a constrained optimization problem in a CDC, and is further solved with the proposed heuristic VM allocation algorithm(HVMA). The results demonstrate that the proposed model and algorithm can effectively achieve dynamic resource provisioning while meeting the performance constraint. 展开更多
关键词 ambient assisted living cloud computing resource provisioning virtual machine heuristic optimization
下载PDF
Mobile-agent-based energy-efficient scheduling with dynamic channel acquisition in mobile cloud computing
5
作者 Xing Liu Chaowei Yuan +1 位作者 Zhen Yang Zengping Zhang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2016年第3期712-720,共9页
Mobile cloud computing(MCC) combines mobile Internet and cloud computing to improve the performance of mobile applications. However, MCC faces the problem of energy efficiency because of randomly varying channels. A... Mobile cloud computing(MCC) combines mobile Internet and cloud computing to improve the performance of mobile applications. However, MCC faces the problem of energy efficiency because of randomly varying channels. A scheduling algorithm is proposed by introducing the Lyapunov optimization, which can dynamically choose users to transmit data based on queue backlog and channel statistics. The Lyapunov analysis shows that the proposed scheduling algorithm can make a tradeoff between queue backlog and energy consumption in the channel-aware mobile cloud computing system. The simulation results verify the effectiveness of the proposed algorithm. 展开更多
关键词 mobile cloud computing mobile Internet queueing energy efficiency Lyapunov optimization
下载PDF
基于COG、Hadoop和Spark的海量影像快速可视化共享方法 被引量:1
6
作者 杨立业 《河北省科学院学报》 CAS 2022年第3期25-31,共7页
随着遥感技术的飞速发展,海量遥感影像及时、高效、波段可灵活组合可视化共享需求强烈,针对影响海量影像快速可视化共享服务显示速度及预处理时间长的关键问题,提出了基于COG(Cloud Optimized GeoTIFF)技术、Hadoop分布式存储技术和Spar... 随着遥感技术的飞速发展,海量遥感影像及时、高效、波段可灵活组合可视化共享需求强烈,针对影响海量影像快速可视化共享服务显示速度及预处理时间长的关键问题,提出了基于COG(Cloud Optimized GeoTIFF)技术、Hadoop分布式存储技术和Spark并行运算技术的解决方案,解决了传统金字塔栅格瓦片时效性差、不支持波段组合显示等问题,已在项目和实际生产服务中得到应用验证。 展开更多
关键词 cloud Optimized GeoTIFF HDFS分布式存储 SPARK Scala语言 可视化显示 波段组合
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部