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Artificial Intelligence Based Congestion Control Mechanism Via Bayesian Networks Under Opportunistic

Author

Listed:
  • Ahthasham Sajid

    (Department of Computer Science, FICT, BUITEMS, Quetta, Baluchistan, PAKISTAN)

  • Muhammad Zaheer

    (Department of Environmental Management & Policy, FOE, BUITEMS, Quetta, Baluchistan, PAKISTAN)

  • Mehwish Baloch

    (Department of Statistics, International Islamic University, Islamabad, PAKISTAN)

  • Javeria Arshad

    (Department of Computer Science, Quaid-e-Azam University, Islamabad, PAKISTAN)

Abstract

Nodes in Mobile Opportunistic Network (MON) must cache packets to deal with the key challenging issue of intermittent connection. Management strategy of handling buffer therefore plays a vital impact on the performance of MON, and it attracts more attention recently. Intermittent connection and lengthy postpone are the key challenges in such networks for this reason the internet congestion control mechanisms aren’t suitable for DTNs. An inefficient buffer management strategy would badly affect the performance of such networks. In recent years, to handle congestion buffer manipulate strategies in MON are considered an active vicinity for research studies.

Suggested Citation

  • Ahthasham Sajid & Muhammad Zaheer & Mehwish Baloch & Javeria Arshad, 2019. "Artificial Intelligence Based Congestion Control Mechanism Via Bayesian Networks Under Opportunistic," Big Data In Agriculture (BDA), Zibeline International Publishing, vol. 1(1), pages 1-2, January.
  • Handle: RePEc:zib:zbnbda:v:1:y:2019:i:1:p:1-2
    DOI: 10.26480/bda.01.2019.01.02
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    Keywords

    DTN; ICN; MON;
    All these keywords.

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