Abstract
For many applications of multimedia medical devices in clinical and medical issues, cloud computing becomes a very useful way. However, high energy consumption of cloud computing networks for these applications brings forth a large challenge. This paper studies the energy-efficient problem with QoS constraints in large-scale cloud computing networks. We use the sleeping and rate scaling mechanism to propose a link energy consumption model to characterize the network energy consumption. If there is no traffic on a link, we will let it be sleeping. Otherwise, it is activated and we divide its energy consumption into base energy consumption and traffic energy consumption. The former describes the constant energy consumption that exists when the link runs, while the later, which is a quadratic function with respect to the traffic, indicates the relations between link energy consumption and the traffic on the link. Then considering the relation among network energy consumption, number of active links, and QoS constraints, we build the multi-constrained energy efficient model to overcome the high energy consumption in large-scale cloud computing networks. Finally, we exploit the NSF and GEANT network topology to validate our model. Simulation results show that our approach can significantly improve energy efficiency of cloud computing networks.
Similar content being viewed by others
References
Antonakopoulos S, Fortune S, Zhang L (2010) Power-aware routing with rate-adaptive network elements. In: Proc GLOBECOM 2010, pp 1428–1432
Andrews M, Anta A, Zhang L, et al. (2010) Routing for energy minization in the speed scaling model. In: Proc INFOCOM 2010, pp 1–9
Bolla R, Bruschi R, Davoli F, et al. (2009) Energy-aware performance optimization for next-generation green network equipment. In: Proc PRESTO 2009, pp 49–54
Beloglazov A, Buyya R (2015) OpenStack neat: a framework for dynamic and energy-efficient consolidation of virtual machines in OpenStack clouds. Concurrency Comput: Pract Experience 2(5):1310–1333
Cianfrani A, Eramo V, Listanti M, et al. (2010) An energy saving routing algorithm for a green OSPF protocol. In: Proc INFOCOM 2010, pp 1–5
Chiaraviglio L, Mellia M, Neri F (2009) Reducing power consumption in backbone networks. In: Proc ICC 2009, pp 1–6
Cai Y, Yu FR, Bu S (2014) Cloud Computing Meets Mobile Wireless Communications in Next Generation Cellular Networks, IEEE Network, accepted
Chiaraviglio L, Mellia M, Neri F (2011) Minimizing ISP network energy cost: Formulation and solutions. IEEE Trans Netw 20(2):463–476
Dinh HT, Lee C, Niyato D, et al. (2013) A survey of mobile cloud computing: Architecture, applications, and approaches. Wirel Commun Mob Comput 13(1):1587–1611
Dabbagh M, Hamdaoui B, Guizani M, et al. (2015) Toward energy-efficient cloud computing: PervasiveNationiction, consolidation, and overcommitment. IEEE Netw 29(2):56–61
Ge X, Huang X, Wang Y, et al. (2014) Energy-efficiency optimization for MIMO-OFDM Mobile multimedia communication systems with QoS constraints. IEEE Trans Veh Technol 63(5):2127–2138
Guo C, Liu X, Jin M, et al. (2015) The research on optimization of auto supply chain network robust model under macroeconomic fluctuations. Chaos, Solitons & Fractals
Guo C, Guo Q, Jin M, et al. (2015) Dynamic systems based on preference graph and distance. Discrete Contin. Dyn Syst Ser S 8(6):1139–1154
Gattulli M, Tornatore M, Fiandra R, et al. (2012) Low-emissions routing for cloud computing in IP-over-WDM networks with data centers. In: Proc ICC’12, pp 1–5
Gattulli M, Tornatore M, Fiandra R, et al. (2014) Low-emissions routing for cloud computing in IP-over-WDM networks with data centers. IEEE J Sel Areas Commun 32(1):28–38
Heydarikiya F, Haghighat AT, Heydarikiya M (2014) e-STAB: Energy-efficient scheduling for cloud computing applications with traffic load balancing. In: Proc ECDC’14, pp 1–12
Jiang D, Xu Z, Wang W, et al. (2015) A collaborative multi-hop routing algorithm for maximum achievable rate. J Netw Comput Appl 57(2015):182–191
Jiang D, Xu Z, Zhang P, et al. (2014) A transform domain-based anomaly detection approach to network-wide traffic. J Netw Comput Appl 40(2):292–306
Jiang D, Wang Y, Yao C, et al. (2015) An effective dynamic spectrum access algorithm for multi-hop cognitive wireless networks. Comput Netw 84(19):1–16
Jiang D, Xu Z, Chen Z, et al. (2011) Joint time-frequency sparse estimation of large-scale network traffic. Comput Netw 55(10):3533–3547
Jiang D, Xu Z, Li W, et al. (2015) Network coding-based energy-efficient multicast routing algorithm for multi-hop wireless networks. J Syst Softw 104:152–165
Jiang D, Xu Z, Liu J, et al. An optimization-based robust routing algorithm to energy-efficient networks for cloud computing. Telecommunication Systems, March 14, 2015, online available
Kim Y, Lee C, Rhee J (2012) IP-over-WDM cross-layer design for green optical networking with energy proportionality consideration. J Lightwave Technol 30(13)
Lian S, Gritzalis S (2015) Innovations in emerging multimedia communication systems. Telecommun Syst 59(3):289–290
Lv Z, Yin T, Han Y, et al. (2011) WebVR11web virtual reality engine based on P2P network. J Netw 6(7):990–998
Lin Y, Yang J, Lv Z, et al. (2015) A self-assessment stereo capture model applicable to the internet of things. Sensors 15(8):20925–20944
Lv Z, Halawani A, Fen S, et al. (2015) Touch-less interactive augmented reality game on vision based wearable device. Pers Ubiquit Comput 19(3):551–567
Lv Z, Tek A, Silva D, et al. (2013) Game on science-how video game technology may help biologists tackle visualization challenges. PloS one 8(3):57990
Larumbe F, Sanso B (2012) Optimal location of data centers and software components in cloud computing network design. In: Proc CCGC’12, pp 1–4
Lange C, Kosiankowski D, Hugo DV, et al. (2014) Analysis of energy consumption in carrier networks. In: Proc ONDM’14, pp 96–101
Marnerides AK, Watson MR, Shirazi N, et al. (2013) Malware analysis in cloud computing: Network and system characteristics. In: Proc Globecom Workshops’13, pp 482–487
Moreno-Vozmediano R, Montero RS, Llorente IM (2012) Key challenges in cloud computing: Enabling the future Internet of services. IEEE Internet Comput 17 (4):18–25
Mastelic T, Brandic I (2015) Recent trends in energy-efficient cloud computing. IEEE Cloud Comput 2(1):40–47
Pickavet M, Vereecken W, Demeyer S, et al. (2008) Worldwide energy needs for ICT: The rise of power-aware networking. In: Proc ANTS 2008, pp 1–3
Qi H, Gani A (2012) Research on mobile cloud computing: Review, trend and perspectives. In: Proc DICTAP, pp 195–202
Sheng G, Dang S, Hossain N, et al. (2015) Modeling of mobile communication systems by electromagnetic theory in the direct and single reflected propagation scenario. Applications and Techniques in Information Security. Springer Berlin Heidelberg, 280–290
Shu W, Wang W, Wang Y (2014) A novel energy-efficient resource allocation algorithm based on immune clonal optimization for green cloud computing, EURASIP Journal on Wireless Communications and Networking, online
Sanaei Z, Abolfazli S, Gani A, et al. (2014) Heterogeneity in mobile cloud computing: Taxonomy and open challenges. IEEE Commun Surv Tutorials 16(1):369–392
Uddin J, Jeong I, Kang M, et al. (2014) Accelerating IP routing algorithm using graphics processing unit for high speed multimedia communication. Multimedia Tools and Applications, online, pp. 1-15
Wang K, Liu NI, Sadooghi I, et al. (2015) Overcoming hadoop scaling limitations through distributed task execution. In: Proc IEEE International Conference on Cluster Computing, pp 236–245
Wang Y, Su Y, Agrawal G (2015) A novel approach for approximate aggregations over arrays. In: proc. the 27th International Conference on Scientific and Statistical Database Management, pp 1–4
Wang C, Wang Q, Ren K, et al. (2012) Toward secure and dependable storage services in cloud computing. IEEE Trans Serv Comput 5(2):220–232
Yan Y, Yang Y, Meng D, et al. (2015) Event oriented dictionary learning for complex event detection. IEEE Trans Image Process, 2015 24(6):1867–1878
Yang J, He S, Lin Y, et al. (2015) Multimedia cloud transmission and storage system based on internet of things. Multimedia Tools and Applications, 1–16
Yang Y, Zhou J, Lv Z, et al. (2015) A real-time monitoring system of industry carbon monoxide based on wireless sensor networks. Sensors 15(11):29535–29546
Yang J, Chen B, Zhou J, et al. (2015) A low-power and portable biomedical device for respiratory monitoring with a stable power source. Sensors 15(8):19618–19632
Zhou H, Liu B, Luan T, et al. (2014) Chaincluster: Engineering a cooperative content distribution framework for highway vehicular communications. IEEE Trans Intell Transp Syst 15(6):2644–2657
Zhang X, Han Y, Hao D, et al. (2015) ARPPS: Augmented reality pipeline prospect system. Neural Information Processing. Springer International Publishing, 647–656
Acknowledgment
This work was supported in part by the National Natural Science Foundation of China (Nos. 61571104, 61071124), the General Project of Scientific Research of the Education Department of Liaoning Province (No. L20150174), the Program for New Century Excellent Talents in University (No. NCET-11-0075), the Fundamental Research Funds for the Central Universities (Nos. N120804004, N130504003), and the State Scholarship Fund (201208210013). The authors wish to thank the reviewers for their helpful comments.
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Jiang, D., Shi, L., Zhang, P. et al. QoS constraints-based energy-efficient model in cloud computing networks for multimedia clinical issues. Multimed Tools Appl 75, 14307–14328 (2016). https://doi.org/10.1007/s11042-015-3239-4
Received:
Revised:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11042-015-3239-4