© The Institution of Engineering and Technology
This study presents an architecture of green sensor mobile cloud computing which integrates sensor network and mobile network with cloud computing. In the proposed scheme, the sensor data are transmitted to the cloud through a mobile device. To develop the proposed architecture both the indoor and outdoor region are considered. For indoor region light weight access point and home node base station are used by the mobile device for sensor data transmission to the cloud, whereas for outdoor region macrocell and microcell base stations are used. Simulation results present that using home node base station the power consumption at indoor region can be reduced by ∼10% than the light weight access point, and using microcell base station at outdoor region the power consumption can be reduced by ∼30% than the macrocell base station. Hence, using home node base station and microcell base station green sensor mobile cloud computing can be obtained at indoor and outdoor regions, respectively. In this study, an experimental analysis of the proposed architecture is also performed.
References
-
-
1)
-
26. Verbelen, T., Simoens, P., De Turck, F.: ‘Cloudlets: bringing the cloud to the mobile user’. Proc. of Third ACM Workshop on Mobile Cloud Computing and Services, 2012, pp. 29–36.
-
2)
-
16. De, D., Mukherjee, A.: ‘Femto-cloud based secure and economic distributed diagnosis and home health care system’, Journal of Medical Imaging and Health Informatics, American Scientific Publishers, 2015, 5, (3), pp. 435–447 (doi: 10.1166/jmihi.2015.1437).
-
3)
-
3. Ray, A., De, D.: ‘Energy efficient clustering algorithm for multi-hop green wireless sensor network using gateway node’, Adv. Sci. Eng. Med., 2013, 5, (11), pp. 1199–1204 (doi: 10.1166/asem.2013.1412).
-
4)
-
1. Jennifer, Y., Biswanath, M., Dipak, G.: ‘Wireless sensor network survey’, Elsevier J. Comput. Netw., 2008, 52, (12), pp. 2292–2330 (doi: 10.1016/j.comnet.2008.04.002).
-
5)
-
13. Sanaei, Z., Abolfazli, S., Gani, A.: ‘Heterogeneity in mobile cloud computing: taxonomy and open challenges’, IEEE Commun. Surv. Tutor., 2014, 16, (1), pp. 369–392 (doi: 10.1109/SURV.2013.050113.00090).
-
6)
-
20. Mukherjee, A., De, D.: ‘Femtocell based green health monitoring strategy’. IEEE URSIGA, 2014, pp. 1–4.
-
7)
-
21. Su, K., Li, J., Fu, H.: ‘Smart city and the applications’. Int. Conf. on Electronics, Communications and Control, 2011, pp. 1028–1031.
-
8)
-
25. Dunleavy, M., Dede, C.: ‘Augmented reality teaching and learning’, inSpector, J.M., Merrill, M.D., Elen, J., Bishop, M.J. (Eds.): ‘Handbook of research on educational communications and technology’ (Springer, New York, 2014), pp. 735–745.
-
9)
-
27. Murioz, O.M., Pascual-Iserte, A., Vidal, J.: ‘Joint allocation of radio and computational resources in wireless application offloading’. IEEE Future Network and Mobile Summit, 2013, pp. 1–10.
-
10)
-
2. Bhatti, S., Xu, J., Memon, M.: ‘Clustering and fault tolerance for target tracking using wireless sensor networks’, IET Wirel. Sens. Syst., 2011, 1, (2), pp. 66–73 (doi: 10.1049/iet-wss.2010.0085).
-
11)
-
29. Ye, S., Lin, Y., Li, R.: ‘Energy-aware interleaving for robust image transmission over visual sensor networks’, IET Wirel. Sens. Syst., 2011, 1, (4), pp. 267–274 (doi: 10.1049/iet-wss.2011.0050).
-
12)
-
14. Mukherjee, A., Gupta, P., De, D.: ‘Mobile cloud computing based energy efficient offloading strategies for femtocell network’. Applications and Innovations in Mobile Computing, 2014, pp. 28–35.
-
13)
-
7. Sadiku, M.N., Musa, S.M., Momoh, O.D.: ‘Cloud computing: opportunities and challenges’, IEEE Potentials, 2014, 33, (1), pp. 34–36 (doi: 10.1109/MPOT.2013.2279684).
-
14)
-
18. Mukherjee, A., De, D.: ‘Low power offloading strategy for femto-cloud mobile network’, Eng. Sci. Technol., 2015, 19, (1), pp. 260–270.
-
15)
-
15. Mukherjee, A., De, D.: ‘Congestion detection, prevention and avoidance strategies for an intelligent, energy and spectrum efficient green mobile network’, Journal of Computational Intelligence and Electronic Systems, American Scientific Publishers, 2013, 2, (1), pp. 1–19 (doi: 10.1166/jcies.2013.1044).
-
16)
-
1. Armbrust, M., Fox, A., Griffith, R., et al: ‘A view of cloud computing’, ACM Commun. Mag., 2010, 53, (4), pp. 50–58 (doi: 10.1145/1721654.1721672).
-
17)
-
24. Carmigniani, J.: ‘Augmented reality technologies, systems and applications’, Multimedia Tools Appl., 2011, 51, (1), pp. 341–377 (doi: 10.1007/s11042-010-0660-6).
-
18)
-
16. Mukherjee, A., De, D., Deb, P.: ‘Interference management in macro-femtocell and micro-femtocell cluster based LTE-advanced green mobile network’, IET Commun., 2015, 10, (5), pp. 468–478 (doi: 10.1049/iet-com.2015.0982).
-
19)
-
9. Hassan, M.M., Song, B., Huh, E.N.: ‘A framework of sensor-cloud integration opportunities and challenges’. Proc. Third International Conference on Ubiquitous Information Management and Communication, 2009, pp. 618–626.
-
20)
-
8. Rajesh, V., Gnanasekar, J.M., Ponmagal, R.S.: ‘Integration of wireless sensor network with cloud’. IEEE Int. Conf. on Recent Trends in Information, Telecommunication and Computing, 2010, pp. 321–323.
-
21)
-
10. Madria, S., Kumar, V., Dalvi, R.: ‘Sensor cloud: a cloud of virtual sensors’, IEEE Softw., 2014, 31, (2), pp. 70–77 (doi: 10.1109/MS.2013.141).
-
22)
-
14. Mukherjee, A., Bhattacherjee, S., Pal, S., et al: ‘Femtocell based green power consumption methods for mobile network’, Computer Networks, Elsevier, 2013, 57, (1), pp. 162–178 (doi: 10.1016/j.comnet.2012.09.007).
-
23)
-
1. Li, W., Zhang, W.: ‘Sensor selection for improving accuracy of target localization in wireless visual sensor networks’, IET Wirel. Sensor Syst., 2012, 2, (4), pp. 293–301 (doi: 10.1049/iet-wss.2012.0033).
-
24)
-
12. De, D.: ‘Mobile cloud computing: architectures, algorithms and applications’ (CRC Press, 2015).
-
25)
-
3. Lu, K., Liu, G., Mao, R., Feng, Y.: ‘Relay node placement based on balancing power consumption in wireless sensor networks’, IET Wirel. Sensor Syst., 2011, 1, (1), pp. 1–6 (doi: 10.1049/iet-wss.2010.0004).
-
26)
-
19. De, D., Mukherjee, A.: ‘Femtocell based economic health monitoring scheme using mobile cloud computing’. Fourth Int. Advance Computing Conf., 2014, pp. 385–390.
-
27)
-
31. De, D., Mukherjee, A., Bhattacherjee, S.: ‘Trusted cloud and femtocell based biometric authentication for mobile network’, in Deka, Ganesh Chandra (Ed.): ‘Handbook of research on securing cloud-based databases with biometric applications’ (IGI Publications, 2014).
-
28)
-
23. Shi, J., Zhang, R., Liu, Y.: ‘Prisense: privacy-preserving data aggregation in people-centric urban sensing systems’. IEEE Proc. of INFOCOM, 2010, pp. 1–9.
-
29)
-
14. Borgia, E., Anastasi, G., Conti, M.: ‘Energy efficient and reliable data delivery in urban sensing applications: A performance analysis’, Comput. Netw., 2013, 57, pp. 3389–3409 (doi: 10.1016/j.comnet.2013.07.025).
-
30)
-
11. Rolim, C.O., Koch, F.L., Westphall, C.B.: ‘A cloud computing solution for patient's data collection in health care institutions’. IEEE Second Int. Conf. on eHealth, Telemedicine, and Social Medicine, 2010, pp. 95–99.
-
31)
-
28. Barbarossa, S., Sardellitti, S., Di Lorenzo, P.: ‘Communicating while computing: distributed mobile cloud computing over 5G heterogeneous networks’, IEEE Signal Process. Mag., 2014, 31, (6), pp. 45–55 (doi: 10.1109/MSP.2014.2334709).
http://iet.metastore.ingenta.com/content/journals/10.1049/iet-wss.2015.0050
Related content
content/journals/10.1049/iet-wss.2015.0050
pub_keyword,iet_inspecKeyword,pub_concept
6
6