Dynamic Optimization Solution for Green Service Migration in Data Centres

While many aspects of the Future Internet are uncertain, one thing that is clear is that service demand will continue to rise. Also, advances in mobile devices and service technology will almost certainly cause service usage patterns to vary considerably. Another issue that the Future Internet community must be acutely aware of is the huge movement towards more sustainable forms of computing and communications technology. With the recent attention that has been put on IT energy consumption (data-centres in particular), all computing and communications systems need to consider their environmental impact from the outset. With that in mind, we propose a solution for determining the optimal placement of services in data-centre network, in order to maximize the overall renewable energy usage and minimize the cooling energy consumption. We then perform a series of experiments in order to evaluate our solution, incorporating dynamic service request profiles and actual weather and renewable energy production values.

[1]  Claudio Scordino,et al.  Energy-Efficient Real-Time Heterogeneous Server Clusters , 2006, 12th IEEE Real-Time and Embedded Technology and Applications Symposium (RTAS'06).

[2]  Rajarshi Das,et al.  Autonomic multi-agent management of power and performance in data centers , 2008, AAMAS.

[3]  Jeffrey S. Chase,et al.  Balance of power: dynamic thermal management for Internet data centers , 2005, IEEE Internet Computing.

[4]  Jeffrey S. Chase,et al.  Making Scheduling "Cool": Temperature-Aware Workload Placement in Data Centers , 2005, USENIX Annual Technical Conference, General Track.

[5]  Xi He,et al.  Towards Thermal Aware Workload Scheduling in a Data Center , 2009, 2009 10th International Symposium on Pervasive Systems, Algorithms, and Networks.

[6]  Richard E. Brown,et al.  Report to Congress on Server and Data Center Energy Efficiency: Public Law 109-431 , 2008 .

[7]  George Forman,et al.  Cool Job Allocation: Measuring the Power Savings of Placing Jobs at Cooling-Efficient Locations in the Data Center , 2007, USENIX Annual Technical Conference.

[8]  Bruce M. Maggs,et al.  Cutting the electric bill for internet-scale systems , 2009, SIGCOMM '09.

[9]  Chandrakant D. Patel,et al.  Energy Aware Grid: Global Workload Placement Based on Energy Efficiency , 2003 .

[10]  Raffaela Mirandola,et al.  A Bio-inspired Algorithm for Energy Optimization in a Self-organizing Data Center , 2009, SOAR.

[11]  Richard E. Harper,et al.  Workload-based power management for parallel computer systems , 2003, IBM J. Res. Dev..

[12]  Thomas F. Wenisch,et al.  PowerNap: eliminating server idle power , 2009, ASPLOS.

[13]  Rajkumar Buyya,et al.  Environment-conscious scheduling of HPC applications on distributed Cloud-oriented data centers , 2011, J. Parallel Distributed Comput..

[14]  Dmitri Botvich,et al.  Application of Genetic Algorithm to Maximise Clean Energy Usage for Data Centres , 2010, BIONETICS.