A novel method of baseband pool resource allocation in Cloud Radio Access Network system

In order to improve the resource utilization and the operating revenue, also to reduce the power consumption and the total delay, the baseband pool resource management of CRAN (Cloud Radio Access Network) is studied in this paper. The baseband pool resources are divided into shared resources and fixed resources. Based on this classification, with the goal of maximizing the revenue, a novel resource allocation model is established, where the fixed resources are used preferentially when the available resource is sufficient to provide service to users, and when the system load is large, the shared resources will be utilized and the control center will allocate resources according to the priority of users and the current usage of the resources. Finally, the simulation results show the superiority of the proposed method.

[1]  Jean-Marc Menaud,et al.  Autonomic virtual resource management for service hosting platforms , 2009, 2009 ICSE Workshop on Software Engineering Challenges of Cloud Computing.

[2]  Weiping Zheng,et al.  A Qos Guided Task Scheduling Model in Cloud Computing Environment , 2013, 2013 Fourth International Conference on Emerging Intelligent Data and Web Technologies.

[3]  Jean-Marc Menaud,et al.  SLA-Aware Virtual Resource Management for Cloud Infrastructures , 2009, 2009 Ninth IEEE International Conference on Computer and Information Technology.

[4]  Seung-Hyun Lee,et al.  Development of scheduling model for earth work using genetic algorithm , 2014 .

[5]  Jun Fang,et al.  VMCTune: A Load Balancing Scheme for Virtual Machine Cluster Using Dynamic Resource Allocation , 2010, 2010 Ninth International Conference on Grid and Cloud Computing.

[6]  Zhang Rui,et al.  A hybrid of real coded genetic algorithm and artificial fish swarm algorithm for short-term optimal hydrothermal scheduling , 2014 .

[7]  Kenneth F. Reinschmidt,et al.  Construction scheduling using Genetic Algorithm based on Building Information Model , 2014, Expert Syst. Appl..

[8]  Xi He,et al.  Power-aware scheduling of virtual machines in DVFS-enabled clusters , 2009, 2009 IEEE International Conference on Cluster Computing and Workshops.

[9]  Xavier Lorca,et al.  Entropy: a consolidation manager for clusters , 2009, VEE '09.

[10]  N. Nagaveni,et al.  Design and Implementation of an Efficient Two-level Scheduler for Cloud Computing Environment , 2009, 2009 International Conference on Advances in Recent Technologies in Communication and Computing.

[11]  Vuk Marojevic Computing resource management in software-defined and cognitive radios , 2010 .

[12]  Djamal Zeghlache,et al.  Energy Efficient VM Scheduling for Cloud Data Centers: Exact Allocation and Migration Algorithms , 2013, 2013 13th IEEE/ACM International Symposium on Cluster, Cloud, and Grid Computing.

[13]  Bin Guo,et al.  CPRI compression transport for LTE and LTE-A signal in C-RAN , 2012, 7th International Conference on Communications and Networking in China.