In cloud computing system,it is a hot and hard issue to find the optimal task scheduling method that makes the processing cost and the running time minimum. In order to deal with the task assignment,a task interaction...In cloud computing system,it is a hot and hard issue to find the optimal task scheduling method that makes the processing cost and the running time minimum. In order to deal with the task assignment,a task interaction graph was used to analyze the task scheduling; a modeling for task assignment was formulated and a particle swarm optimization (PSO)algorithm embedded in the variable neighborhood search (VNS) to optimize the task scheduling was proposed. The experimental results show that the method is more effective than the PSO in processing cost,transferring cost, and running time. When the task is more complex,the effect is much better. So,the algorithm can resolve the task scheduling in cloud computing and it is feasible,valid,and efficient.展开更多
The simulation on benchmarks is a very simple and efficient method to evaluate the performance of the algorithm for solving flexible job shop scheduling model.Due to the assignment and scheduling decisions,flexible jo...The simulation on benchmarks is a very simple and efficient method to evaluate the performance of the algorithm for solving flexible job shop scheduling model.Due to the assignment and scheduling decisions,flexible job shop scheduling problem(FJSP)becomes extremely hard to solve for production management.A discrete multi-objective particle swarm optimization(PSO)and simulated annealing(SA)algorithm with variable neighborhood search is developed for FJSP with three criteria:the makespan,the total workload and the critical machine workload.Firstly,a discrete PSO is designed and then SA algorithm performs variable neighborhood search integrating two neighborhoods on public critical block to enhance the search ability.Finally,the selection strategy of the personal-best individual and global-best individual from the external archive is developed in multi-objective optimization.Through the experimental simulation on matlab,the tests on Kacem instances,Brdata instances and BCdata instances show that the modified discrete multi-objective PSO algorithm is a promising and valid method for optimizing FJSP with three criteria.展开更多
文章针对软硬时间窗共存装卸一体化车辆路径问题(vehicle routing problem with simultaneous delivery and pickup under coexistence of soft and hard time windows,VRPSDPCSHTW)建立了包含车辆固定出行成本、运输成本和惩罚成本的...文章针对软硬时间窗共存装卸一体化车辆路径问题(vehicle routing problem with simultaneous delivery and pickup under coexistence of soft and hard time windows,VRPSDPCSHTW)建立了包含车辆固定出行成本、运输成本和惩罚成本的数学模型,提出了一种混合离散粒子群优化算法。针对基本离散粒子群算法容易早熟收敛而陷入局部最优等问题,内嵌一种变邻域下降局域搜索方法,并在一定概率下执行以加强种群搜索能力,最后通过3个算例的仿真分析进行了算法验证。展开更多
基金National Natural Science Foundation of China(No.61271114)The Key Programs of Science and Technology Research of He'nan Education Committee,China(No.12A520006)
文摘In cloud computing system,it is a hot and hard issue to find the optimal task scheduling method that makes the processing cost and the running time minimum. In order to deal with the task assignment,a task interaction graph was used to analyze the task scheduling; a modeling for task assignment was formulated and a particle swarm optimization (PSO)algorithm embedded in the variable neighborhood search (VNS) to optimize the task scheduling was proposed. The experimental results show that the method is more effective than the PSO in processing cost,transferring cost, and running time. When the task is more complex,the effect is much better. So,the algorithm can resolve the task scheduling in cloud computing and it is feasible,valid,and efficient.
基金supported in part by the National Natural Science Foundation of China(No.61174032)the Public Scientific Research Project of State Administration of Grain(No.201313012)+1 种基金the National Natural Science Foundation of China(Project No:61572238)the National High-tech Research and Development Projects of China(Project No:2014AA041505).
文摘The simulation on benchmarks is a very simple and efficient method to evaluate the performance of the algorithm for solving flexible job shop scheduling model.Due to the assignment and scheduling decisions,flexible job shop scheduling problem(FJSP)becomes extremely hard to solve for production management.A discrete multi-objective particle swarm optimization(PSO)and simulated annealing(SA)algorithm with variable neighborhood search is developed for FJSP with three criteria:the makespan,the total workload and the critical machine workload.Firstly,a discrete PSO is designed and then SA algorithm performs variable neighborhood search integrating two neighborhoods on public critical block to enhance the search ability.Finally,the selection strategy of the personal-best individual and global-best individual from the external archive is developed in multi-objective optimization.Through the experimental simulation on matlab,the tests on Kacem instances,Brdata instances and BCdata instances show that the modified discrete multi-objective PSO algorithm is a promising and valid method for optimizing FJSP with three criteria.
文摘文章针对软硬时间窗共存装卸一体化车辆路径问题(vehicle routing problem with simultaneous delivery and pickup under coexistence of soft and hard time windows,VRPSDPCSHTW)建立了包含车辆固定出行成本、运输成本和惩罚成本的数学模型,提出了一种混合离散粒子群优化算法。针对基本离散粒子群算法容易早熟收敛而陷入局部最优等问题,内嵌一种变邻域下降局域搜索方法,并在一定概率下执行以加强种群搜索能力,最后通过3个算例的仿真分析进行了算法验证。