The problem of joint radio and cloud resources allocation is studied for heterogeneous mobile cloud computing networks. The objective of the proposed joint resource allocation schemes is to maximize the total utility ...The problem of joint radio and cloud resources allocation is studied for heterogeneous mobile cloud computing networks. The objective of the proposed joint resource allocation schemes is to maximize the total utility of users as well as satisfy the required quality of service(QoS) such as the end-to-end response latency experienced by each user. We formulate the problem of joint resource allocation as a combinatorial optimization problem. Three evolutionary approaches are considered to solve the problem: genetic algorithm(GA), ant colony optimization with genetic algorithm(ACO-GA), and quantum genetic algorithm(QGA). To decrease the time complexity, we propose a mapping process between the resource allocation matrix and the chromosome of GA, ACO-GA, and QGA, search the available radio and cloud resource pairs based on the resource availability matrixes for ACOGA, and encode the difference value between the allocated resources and the minimum resource requirement for QGA. Extensive simulation results show that our proposed methods greatly outperform the existing algorithms in terms of running time, the accuracy of final results, the total utility, resource utilization and the end-to-end response latency guaranteeing.展开更多
Task scheduling in Grid has been proved to be NP-complete problem. In this paper, to solve this problem, a Hybrid Task Scheduling Algorithm in Grid (HTS) has been presented, which joint the advantages of Ant Colony an...Task scheduling in Grid has been proved to be NP-complete problem. In this paper, to solve this problem, a Hybrid Task Scheduling Algorithm in Grid (HTS) has been presented, which joint the advantages of Ant Colony and Genetic Algorithm. Compared with the related work, the result shows that the HTS algorithm significantly surpasses the previous approaches in schedule length ratio and speedup.展开更多
提出一种基于异类蚁群的双种群蚁群(Dual Population Ant Colony Algorithm Basedon Heterogeneous Ant Colonies,DPACBH)算法,算法将两种信息素更新机制不同的蚁群分别独立进行进化求解,并定期交换优良解和信息来改善解的多样性,增强...提出一种基于异类蚁群的双种群蚁群(Dual Population Ant Colony Algorithm Basedon Heterogeneous Ant Colonies,DPACBH)算法,算法将两种信息素更新机制不同的蚁群分别独立进行进化求解,并定期交换优良解和信息来改善解的多样性,增强跳出局部最优的能力,使算法更容易收敛到全局最优解。以TSP(Travel Salesman Problem)问题为例所进行的计算表明,该算法比基本双种群蚁群算法具有更好的收敛速度和准确性。展开更多
基金supported by the National Natural Science Foundation of China (No. 61741102, No. 61471164)China Scholarship Council
文摘The problem of joint radio and cloud resources allocation is studied for heterogeneous mobile cloud computing networks. The objective of the proposed joint resource allocation schemes is to maximize the total utility of users as well as satisfy the required quality of service(QoS) such as the end-to-end response latency experienced by each user. We formulate the problem of joint resource allocation as a combinatorial optimization problem. Three evolutionary approaches are considered to solve the problem: genetic algorithm(GA), ant colony optimization with genetic algorithm(ACO-GA), and quantum genetic algorithm(QGA). To decrease the time complexity, we propose a mapping process between the resource allocation matrix and the chromosome of GA, ACO-GA, and QGA, search the available radio and cloud resource pairs based on the resource availability matrixes for ACOGA, and encode the difference value between the allocated resources and the minimum resource requirement for QGA. Extensive simulation results show that our proposed methods greatly outperform the existing algorithms in terms of running time, the accuracy of final results, the total utility, resource utilization and the end-to-end response latency guaranteeing.
基金Supported by the Specialized Research Fund for the Doctoral Program of Higher Education(No.20030290003)
文摘Task scheduling in Grid has been proved to be NP-complete problem. In this paper, to solve this problem, a Hybrid Task Scheduling Algorithm in Grid (HTS) has been presented, which joint the advantages of Ant Colony and Genetic Algorithm. Compared with the related work, the result shows that the HTS algorithm significantly surpasses the previous approaches in schedule length ratio and speedup.
文摘提出一种基于异类蚁群的双种群蚁群(Dual Population Ant Colony Algorithm Basedon Heterogeneous Ant Colonies,DPACBH)算法,算法将两种信息素更新机制不同的蚁群分别独立进行进化求解,并定期交换优良解和信息来改善解的多样性,增强跳出局部最优的能力,使算法更容易收敛到全局最优解。以TSP(Travel Salesman Problem)问题为例所进行的计算表明,该算法比基本双种群蚁群算法具有更好的收敛速度和准确性。