ACCOUNTING FOR ENERGY CONSUMPTION IN A SIMGRID-BASED CLOUD SYSTEM MODEL

Authors

  • Gaidamako V.V. Kyrgyz-Russian Slavic University named after B.N. Yeltsin

Keywords:

cloud computing, Data Center (DC), energy consumption, modeling, SimGrid, migration.

Abstract

The article discusses methods for accounting energy consumption for computational and network resources when modeling distributed and cloud systems, particularly focusing on a cloud system model created using the SimGrid framework for distributed and cloud system modeling. It describes categories of energy consumption models, approaches to reducing energy consumption, and specifics of energy accounting in data transmission networks. The article also provides an overview of energy consumption modeling in the absence of entities representing network devices within the model.

References

1. Global data center electricity use to double by 2026 - IEA report. https://www.datacenterdynamics.com/en/news/global-data-center-electricity-use-to-double-by-2026-report

2. Kliazovich, D., Bouvry, P., Audzevich, Y., Khan, S.U.: GreenCloud: A Packet-Level

Simulator of Energy-Aware Cloud Computing Data Centers. In: IEEE GLOBECOM (2010)

3. Orgerie, A.C., et al.: Simulation Toolbox for Studying Energy Consumption in

Wired Networks. In: Int. Conf. on Network and Service Management (2017)

4. CloudSim Energy-aware Simulations. URL: https://cloudsimtutorials.online/cloudsim-energy-aware-simulations/ (дата обращения: 10.10.2024).

5. Simulation of Distributed Computer Systems // URL: https://simgrid.org/ (дата об-ращения: 05.10.2024)

6. S. Rivoire, P. Ranganathan, C. Kozyrakis, A comparison of high-level full-system power models, in: Proceedings of the 2008 Conference on Power Aware Computing and Systems, HotPower’08, USENIX Association, Berkeley, CA, USA, 2008, p. 3.

7. R. Joseph, M. Martonosi, Run-time power estimation in high performance microprocessors, in: Proceedings of the 2001 International Symposium on Low Power Electronics and Design, ISLPED ’01, ACM, New York, NY, USA, 2001, pp. 135–140

8. C. Isci, M. Martonosi, Runtime power monitoring in high-end processors: methodology and empirical data, in: Proceedings of the 36th Annual IEEE/ACM International Symposium on Microarchitecture, MICRO 36, IEEE Computer Society, Washington, DC, USA, 2003, p. 93.

9. Guérout, Tom and Monteil, Thierry and DaCosta, Georges and Neves Calheiros, Rodrigo and Buyya, Rajkumarand Alexandru, Mihai Energy-aware simulation with DVFS. (2013)Simulation Modelling Practice and Theory, vol. 39. pp. 76-91. ISSN1569-190X

10. C.C. Keir, C. Clark, K. Fraser, S. Hand, J.G. Hansen, E. Jul, C. Limpach, I. Pratt, A. Warfield, Live migration of virtual machines, in: Proceedings of the 2nd

ACM/USENIX Symposium on Networked Systems Design and Implementation (NSDI), 2005, pp. 273–286.

11. T. Kolpe, A. Zhai, S. Sapatnekar, Enabling improved power management in multicore processors through clustered dvfs, in: Design, Automation Test in

Europe Conference Exhibition (DATE), 2011, pp. 1–6

12. Loic Guegan, Betsegaw Lemma Amersho, Anne-Cécile Orgerie, Martin Quinson. A Large-Scale Wired Network Energy Model for Flow-Level Simulations. AINA 2019 - 33rd International Conference on Advanced Information Networking and Applications, Mar 2019, Matsue, Japan. pp.1047-1058, ff10.1007/978-3-030-15032-7_88ff. ffhal-02020045v2ff

13. Fiandrino, C., Kliazovich, D., Bouvry, P., Zomaya, A.Y.: Performance Metrics for

Data Center Communication Systems. In: IEEE CLOUD (2015)

14. Velho, P., Schnorr, L.M., Casanova, H., Legrand, A.: On the validity of flow-level tcp network models for grid and cloud simulations. ACM Transactions on Modeling and Computer Simulation 23(4) (2013)

Downloads

Published

2024-12-18

Issue

Section

INFORMATION TECHNOLOGY AND INFORMATION PROCESSING

Categories