期刊文献+

基于蚁群优化算法的云计算调度资源模型 被引量:2

Cloud Computing Scheduling Resource Model Based on Ant Colony Optimization Algorithm
下载PDF
导出
摘要 在云计算过程中,需要不断的大量调用计算机资源,过度调度资源就需要占用大量的存储,造成资源浪费,调度效率低下等问题。针对当前存在的问题,提出建立基于优化蚁群算法的云计算调度资源模型,该模型可以提供较为优化的云计算调度资源方法,解决过度调用资源等问题。该模型使用优化后的蚁群Matlab算法为蚁群计算寻找从出发点到终点最为便捷的道路,并最终实现云计算调度资源模型。通过仿真实验,可以得出该模型可以在最短时间实现在云计算中调用最为合适的资源,达到提高调度效率的作用。 In the process of cloud computing,a large number of computer resources need to be constantly invoked.Excessive scheduling of resources requires a large amount of storage,resulting in resource waste,low scheduling efficiency and other problems.Aiming at the existing problems,a cloud computing scheduling resource model based on optimized ant colony algorithm is proposed,which can provide a more optimized cloud computing scheduling resource method and solve the problem of excessive resource invocation.This model uses the optimized ant colony algorithm to find the most convenient way from the starting point to the end point for ant colony computing,and finally realizes the cloud computing scheduling resource model.Through simulation experiments,it can be concluded that the model can call the most appropriate resources in the cloud computing in the shortest time to improve the scheduling efficiency.
作者 王勃 徐静 孙雪莹 WANG Bo;XU JING;SUN Xueying(College of Computer Science and Software Engineering,Shaanxi Instaitute of Technology,Xi'an 710300;School of Economics and Management,Shaanxi Instaitute of Technology,Xi'an 710300;School of Physics and Optoelectronic Engineering,Xidian University,Xi'an 710071)
出处 《计算机与数字工程》 2020年第5期1009-1012,共4页 Computer & Digital Engineering
基金 国家自然科学基金项目(编号:61575154)资助。
关键词 蚁群优化算法 云计算 调度 资源 模型 ant colony algorithm cloud computing scheduling resources model
  • 相关文献

参考文献13

二级参考文献106

  • 1刘华蓥,林玉娥,王淑云.粒子群算法的改进及其在求解约束优化问题中的应用[J].吉林大学学报(理学版),2005,43(4):472-476. 被引量:33
  • 2黄炳强,曹广益,王占全.强化学习原理、算法及应用[J].河北工业大学学报,2006,35(6):34-38. 被引量:19
  • 3孙岩,马华东,刘亮.一种基于蚁群优化的多媒体传感器网络服务感知路由算法[J].电子学报,2007,35(4):705-711. 被引量:22
  • 4Foster I,Zhao Yong, Raicu I, et al. Cloud computing and grid compu- ting 360 degree compared[ C]//Proceedings of the 2008 Grid Compu- ting Environments Workshop, Washington, DC : IEEE Computer Socie- ty,2008:1 - 10.
  • 5Buyya R,Ranjan R,calheirs R N. Modeling and simulation of scalable cloud computing environment and C|oudSim Toolit:Challenges and op- portunities[ C ]//Proceedings of the .,/;h High Performance Computing and Simulation Conference. New York, USA: 1EEE Pres, 2009:21 -24.
  • 6Xu Baomin, Zhao Chunyan, Hua Enzhao, et al. Job scheduling algorithm based on Berger model in cloud environment [ J ]. Advances in Engi- neering Software,2011,42:419 - 425.
  • 7Nakada H, Hirofuchi T. Toward virtual machine packing optimization based on generic algorithm[C] //Proc of the 10th International Work-Conference on Artificial Neural Networks:Part Ⅱ:Distributed Computing and Ambient Assisted Living. 2009:651-654.
  • 8Nakada H, Hirofuchi T. Eliminating datacenter idle power with dynamic and intelligent VM relocation[C] //Advances in Intelligent and Soft Computing. 2010:645-648.
  • 9Skiena S S. The algorithm design manual[M] . Berlin:Springer, 2008:595-598.
  • 10De la Vega W F, Lueker G S. Bin packing can be solved within epsilon in linear time[J] . Combinatorica, 1981, 1(4):349-355.

共引文献193

同被引文献19

引证文献2

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部