[1] |
MASDARI M , VALIKARDAN S , SHAHI Z ,et al. Towards workflow scheduling in cloud computing:a comprehensive analysis[J]. Journal of Network and Computer Applications, 2016,66(5): 64-82.
|
[2] |
AWADA U , KEQIU L , YANMING S . Energy consumption in cloud computing data centers[J]. International Journal of Cloud Computing and Services Science, 2014,3(3).
|
[3] |
袁景凌, 钟珞, 杨光 ,等. 绿色数据中心不完备能耗大数据填补及分类算法研究[J]. 计算机学报, 2015,38(12): 2499-2516.
|
|
YUAN J L , ZHONG L , YANG G ,et al. Towards filling and classification of incomplete energy big data for green data centers[J]. Chinese Journal of Computers, 2015,38(12): 2499-2516.
|
[4] |
张鹏, 王桂玲, 徐学辉 . 云计算环境下适于工作流的数据布局方法[J]. 计算机研究与发展, 2013,50(3): 636-647.
|
|
ZHANG P , WANG G L , XU X H . A data placement approach for workflow in cloud[J]. Journal of Computer Research and Development, 2013,50(3): 636-647.
|
[5] |
沈尧, 秦小麟, 鲍芝峰 . 一种云环境中数据流的高效多目标调度方法[J]. 软件学报, 2017,28(3): 579-597.
|
|
SHEN Y , QIN X L , BAO Z F . Effective multi-objective scheduling strategy of dataflow in cloud[J]. Journal of Software, 2017,28(3): 579-597.
|
[6] |
王琳杰 . 云计算中基于生物共生机制改进粒子群优化的任务调度方案[J]. 电信科学, 2016,32(9): 113-119.
|
|
WANG L J . Task scheduling scheme based on improved particle swarm optimization with biological symbiosis mechanism in cloud computing[J]. Telecommunications Science, 2016,32(9): 113-119.
|
[7] |
TOPCUOGLU H , HARIRI S , WU M . Performance-effective and low-complexity task scheduling for heterogeneous computing[J]. IEEE Transactions on Parallel Distributed Systems, 2002,13(3): 260-274.
|
[8] |
ABRISHAMI S , NAGHIBZADEH M , EPEMA D H . Deadline-constrained workflow scheduling algorithm for infrastructure as a service cloud[J]. Future Generation Computer Systems, 2013,29(1): 158-169.
|
[9] |
ZHENG W , SAKELLARIOU R . Budget-deadline constrained workflow planning for admission control[J]. Journal of Grid Compute, 2013,11(4): 633-651.
|
[10] |
ISRAEL C , JAVID T , RAJIV R ,et al. GA-ETI:an enhanced genetic algorithm for the scheduling of scientific workflows in cloud environments[J]. Future Generation Computer Systems, 2018: 257-271.
|
[11] |
MEENA J , KUMAR M , VARDHAN M . Cost effective genetic algorithm for workflow scheduling in cloud under deadline constraint[J]. IEEE Access, 2016(4): 5065-5082.
|
[12] |
SINGH L , SINGH S . Deadline and cost based ant colony optimization algorithm for scheduling workflow applications in hybrid cloud[J]. Journal of Scientific & Engineering Research, 2014,5(10): 1417-1420.
|
[13] |
RODRIGUEZ M A , BUYYA R . Deadline based resource provisioning and scheduling algorithm for scientific workflows on clouds[J]. IEEE Transactions on Cloud Computing, 2014,2(2): 222-235.
|
[14] |
YASSA S , CHELOUAH R , KADIMA H ,et al. Multi-objective approach for energy-aware workflow scheduling in cloud computing environment[J]. The Science World Journal, 2013: 1-13.
|
[15] |
DENG G S , LI Z M , ZHAO Y M ,et al. MOEA/D for energy-aware scheduling on heterogeneous computing systems[C]// 10th International Conference on Bio-Inspired Computing,Theories and Applications(BIC-TA 2015),Sep 25-28,2015,Hefei,China. Heidelberg:Springer, 2015: 94-106.
|
[16] |
VERMAA , KAUSHAL S . A hybrid multi-objective particle swarm optimization for scientific workflow scheduling[J]. Parallel Computing, 2017(62): 1-19.
|
[17] |
NESMACHNOW S , ITURRIAGA S , DORRONSORO B ,et al. Multiobjective energy-aware workflow scheduling in distributed datacenters[C]// 6th International Conference on High Performance Computer Applications(ISUM 2015),March 9-13,2015,Mexico City,Mexico. Heidelberg:Springer, 2015.
|
[18] |
DURILLO J J , NAE V , PRODAN R . Multi-objective energy-efficient workflow scheduling using list-based heuristics[J]. Future Generation Computer Systems, 2014(36): 221-236.
|
[19] |
PRZYSTALKA P , KATUNIN A . Multi-objective meta-evolution method for large-scale optimization problems[M]// Recent advances in computational optimization. Heidelberg:Springer, 2016: 165-182.
|
[20] |
LEE Y C , ZOMAYAA Y . Energy conscious scheduling for distributed computing systems under different operating conditions[J]. IEEE Transactions on Parallel Distributed System, 2011,22(8): 1374-1381.
|
[21] |
GARG R , SINGHAK . Multi-objective workflow grid scheduling using ε-fuzzy dominance sort based discrete particle swarm optimization[J]. Journal of Supercomputing, 2014,68(2): 709-732.
|
[22] |
胡旺, YEN G G , 张鑫 . 基于Pareto熵的多目标粒子群优化算法[J]. 软件学报, 2014,25(5): 1025-1050.
|
|
HU W , YEN G G , ZHANG X . Multi-objective particle swarm optimization based on Pareto entropy[J]. Journal of Software, 2014,25(5): 1025-1050.
|
[23] |
PADMAVENI K , ARAVINDHAR D J . Hybrid memetic and particle swarm optimization for multi objective scientific workflows in cloud[C]// IEEE International Conference on Cloud Computing in Emerging Markets,Oct 19-21,2016,Bangalore,India. Piscataway:IEEE Press, 2016: 66-72.
|
[24] |
DOGAN A , OZGUNER F . Biobjective scheduling algorithms for execution time-reliability trade-off in heterogeneous computing systems[J]. Journal of Computer, 2013,48(3): 300-314.
|
[25] |
CHEN W , DEELMAN E . WorkflowSim:a tool kit for simulating scientific workflows in distributed environment[C]// International Conference on E-Science,Oct 8-12,2012,Chicago,IL,USA. Washington DC:IEEE Computer Society, 2012: 1-8.
|
[26] |
LI H , ZHANG Q F . Multiobjective optimization problems with complicated pareto sets,MOEA/D and NSGA-II[J]. IEEE Transactions on Evolutionary Computation, 2008,13(2): 284-302.
|
[27] |
包晓安, 魏雪, 陈磊 ,等. 基于 mean-variance 的服务集群负载均衡方法[J]. 电信科学, 2017,33(1): 6-13.
|
|
BAO X A , WEI X , CHEN L ,et al. Load balancing method of service cluster based on mean-variance[J]. Telecommunications Science, 2017,33(1): 6-13.
|