Enhancement of the data fusion and sensor selection in cloud computing

  • Authors

    • V V. Saikumar
    • M S.R. Rohith Reddy
    • Kumar Narayanan
    • C Swaraj Paul
    • R Anandan
    2018-04-20
    https://doi.org/10.14419/ijet.v7i2.21.12389
  • Cloud computing, ASBP (Adaptive Selecting Belief Propagation), message sending algorithm, MATLAB
  • The IoT is helping individuals to get connected using sensible devices on the large function which is a big thing in past. The most difficult challenge for IoT is large quantity forgetting information generated from the induced devices that are less in number with resources and with missing information which results in the basic failures. By using IoT in collaboration with cloud, we have a function to present a cloud-based answer that takes into process that link quality and function to reduce energy usage by choosing sensors for sampling and dependent data. We have proposed a multi-phase adaptive sensing algorithm which shows belief propagation protocol, which may give high information quality and cut back energy usage by turning on mode with a little variety of nodes within the network. We have proposed a system which retrieves the data when the connection between device and cloud is lost. We will try then to use our message transferring rule for the proposed system. System is calculated support with the information collected from original elements. The basic function is whether maintaining is at the desired level of information quality and future accuracy will give large amount equalization in various sensing elements with success that stores about80% information within the compared object to other cases with all other area unit actively concerned.

     

     

  • References

    1. [1] Cisco, The internet of things, (2011). http://share.cisco.com/internet-of-things.html

      [2] Atzori L, Iera A & Morabito G, “The internet of things: A surveyâ€, Computer. Netw., Vol.54, No.15, (2010), pp.2787–2805.

      [3] Vermesan O, Friess P, Guillemin P, Gusmeroli S, Sundmaeker H, Bassi A, Jubert IS, Mazura M, Harrison M, Eisenhauer M & Doody P, “Internet of things strategic research roadmapâ€, Internet of Things-Global Technological and Societal Trends, (2011), pp.9-52.

      [4] Amaro JP, Ferreira FJ, Cortesão R, Vinagre N & Bras RP, “Low cost wireless sensor network for in-field operation monitoring of induction motorsâ€, IEEE International Conference on Industrial Technology, (2010), pp.1044-1049.

      [5] Madden S, Franklin MJ, Hellerstein JM & Hong W, “Tag: Atiny aggregation service for ad-hoc sensor networksâ€, SIGOPS Oper.Syst. Rev., Vol.36, (2002), pp.131–146.

      [6] Madden S, Szewczyk R, Franklin M & Culler D, “Supporting aggregate queries over ad-hoc wireless sensor networksâ€, Proceedings Fourth IEEE Workshop on Mobile Computing Systems and Applications, (2002), pp.49–58.

      [7] Pearl J, Probabilistic reasoning in intelligent systems: networks ofplausible inference, Morgan Kaufmann, (1988).

      [8] Yedidia JS, Freeman WT & Weiss Y, Exploring artificial intelligence in the new millennium, USA: Morgan Kaufmann Publishers Inc., (2003).

      [9] Jensen FV, Introduction to Bayesian Networks, 1st ed. Secaucus, NJ,USA: Springer-Verlag New York, Inc., (1996).

      [10] Kong L, Jiang D & Wu MY, “Optimizing the spatio-temporal distribution of cyber-physical systems for environment abstractionâ€, IEEE 30th International Conference on Distributed Computing Systems (ICDCS), (2010), pp.179–188.

      [11] Kong L, Xia M, Liu XY, Wu MY & Liu X, “Data loss and reconstruction in sensor networksâ€, IEEE INFOCOM, (2013).

      [12] Rossi F, van Beek P & Walsh T, Handbook of Constraint Programming, Elsevier, (2006).

      [13] Xu LD, “Enterprise systems: State-of-the-art and future trendsâ€, IEEE Transactions on Industrial Informatics, Vol.7, No.4, (2011), pp.630–640.

      [14] Zheng J, Simplot-Ryl D, Bisdikian C & Mouftah H, “The internet of things [guest editorial]â€, IEEE Communications Magazine, Vol.49,No.11, (2011), pp.30–31.

      [15] Palopoli L, Passerone R & Rizano T, “Scalable offline optimizationof industrial wireless sensor networksâ€, IEEE Transactions on Industrial Informatics, Vol.7, No.2, (2011), pp.328–339.

      [16] Haupt J, Bajwa W, Rabbat M & Nowak R, “Compressed sensingfor networked dataâ€, IEEE Signal Processing Magazine, Vol.25, No.2, (2008), pp.92–101.

      [17] Ulusoy A, Gurbuz O & Onat A, “Wireless model-based predictive networked control system over cooperative wireless networkâ€, IEEE Transactions on Industrial Informatics, Vol.7, No.1, (2011), pp.41–51.

      [18] Jongerden M, Mereacre A, Bohnenkamp H, Haverkort B & Katoen J, “Computing optimal schedules of battery usage in embedded systemsâ€, IEEE Transactions on Industrial Informatics, Vol.6, No.3,(2010), pp.276–286.

      [19] Gnawali O, Fonseca R, Jamieson K, Moss D & Levis P, “Collection tree protocolâ€, Proceedings of the Seventh ACM Conference on Embedded Networked Sensor Systems, (2009), pp.1–14.

      [20] Madden SR, Franklin MJ, Hellerstein JM & Hong W, “Tinydb: An acquisitional query processing system for sensor networksâ€, ACMTrans. Database Syst., Vol.30, No.1, (2005), pp.122–173.

  • Downloads

  • How to Cite

    V. Saikumar, V., S.R. Rohith Reddy, M., Narayanan, K., Swaraj Paul, C., & Anandan, R. (2018). Enhancement of the data fusion and sensor selection in cloud computing. International Journal of Engineering & Technology, 7(2.21), 313-315. https://doi.org/10.14419/ijet.v7i2.21.12389