Abstract
Data transmission in ad hoc networks necessitates different quality of services (QoS) for ensuring reliable throughput of the network. This reliability in network performance is achievable through a rate adaptation scheme that aids in effective allocation of resource for ensuring QoS, based on network demand. In this approach, the available bandwidth is forecasted based on Hidden Markov Model for improving the efficacy in resource allocation and the new users are facilitated to utilize the resources based on the estimation of currently available resources determined through rough set theory. The rate of adaptation is forecasted based on the present load condition of the network by Rough set theory, which forms the input of the Hidden Markov Model. The fuzzy Rough set concept is mainly used in this technique as they are reliable in analyzing data that not require any basic or auxiliary information pertaining to data than its fuzzy set theory, Bayesian theory and Shafer–Dempster theory counter parts that necessitate the assignment of probability. Fuzzy Rough set concept determines the rate of adaptation through the estimation of queuing state, queuing delay, channel utilization rate, and bandwidth availability. This fuzzy Rough set concept also considers the resource allocation as the significant entity as the channel allocation in dynamic networks purely relies on the dynamic channel variation that alternates in real time distribution of data.
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Sivanesan, P., Thangavel, S.: An energy efficient overhearing controlled medium access control protocol for multi-hop MANETs. In: 2013 International Conference on Advanced Computing and Communication Systems, 2(1), pp. 23–34 (2013)
Indumathi, G., Murugesan, K.: Throughput maximization in wireless systems using an adaptive cross layer scheduling. In: International Conference on Computational Intelligence and Multimedia Applications (ICCIMA 2007), 1(2), pp. 22–30 (2007)
Wang, K., Yang, F., Zhang, Q., Wu, D.O., Xu, Y.: Distributed cooperative rate adaptation for energy efficiency in IEEE 802.11-based multi-hop networks. IEEE Trans. Veh. Technol. 56(2), 888–898 (2007)
Karaoglu, B., Heinzelman, W.: Cooperative load balancing and dynamic channel allocation for cluster-based mobile ad hoc networks. IEEE Trans. Mob. Comput. 14(5), 951–963 (2015)
Karaoglu, B., Heinzelman, W.: A dynamic channel allocation scheme using spectrum sensing for mobile ad hoc networks. In: 2012 IEEE Global Communications Conference (GLOBECOM), 1(1), pp. 14–21 (2012)
Shun, L., Jian, L.: Delay-aware multipath source routing protocol to providing QoS support for wireless ad hoc networks. In: 2010 IEEE 12th International Conference on Communication Technology, 2(1), pp. 12–19 (2010)
Soundararajan, S., Bhuvaneswaran, R.S.: Multipath rate based congestion control for mobile ad hoc networks. Int. J. Comput. Appl. 55(1), 42–47 (2012)
Gupta, D., Singh, D.: Dynamic queue and TCP based multipath congestion control scheme for wireless network. Int. J. Comput. Appl. 123(10), 45–50 (2015)
Zhang, J., Tan, K., Zhao, J., Wu, H., Zhang, Y.: “A practical SNR-guided rate adaptation” in INFOCOM 2008. In: The 27th IEEE Conference on Computer Communications, pp. 146–150 (2008)
Kazi, C.R., Nazia, Z., Syed, F.H.: Explicit rate-based congestion control for multi-media streaming over mobile ad-hoc networks. Int. J. Electr. Comput. Sci. 4(2), 30–42 (2010)
Bandai, M., Maeda, S., Watanabe, T.: Energy efficient MAC protocol with power and rate control in multi-rate ad hoc networks. In: VTC Spring 2008—IEEE Vehicular Technology Conference, 2(1), pp. 32–40 (2008)
Honggiaung, Z., Chen, X., Fang, Y.: Improving Transport layer performance in multi-hop ad hoc networks by exploiting MAC layer information. IEEE Trans. Wirel. Commun. 6(5), 1692–1701 (2007)
Santhi, S., Sudha Sadasivam, G.: Power aware QoS multipath routing protocol for disaster recovery networks. Int. J. Wirel. Mob. Netw. 3(6), 47–57 (2011)
Ping, Y., Yu, B., Hao, W.: A multipath energy-efficient routing protocol for ad hoc networks. In: 2006 International Conference on Communications, Circuits and Systems, 2(1), pp. 11–18 (2006)
Arulkumaran, G., Gnanamurthy, R.K.: Fuzzy trust approach for detecting black hole attack in mobile adhoc network. J. Mob. Netw. Appl. https://doi.org/10.1007/s11036-017-0912-z (2017)
Sivanesan, P., Thangavel, S.: HMM based resource allocation and fuzzy based rate adaptation technique for MANET. Optik 126(3), 331–336 (2015)
Zhao, S., Liang, S., Liu, H., Ma, M.: CTM based real-time queue length estimation at signalized intersection. Math. Probl. Eng. 2015, 1–12 (2015)
Yoshihiro, T., Noi, T.: Collision-free channel assignment is possible in IEEE802.11-based wireless mesh networks. In: 2017 IEEE Wireless Communications and Networking Conference (WCNC), 2(1), pp. 12–19 (2017)
Barbu, V., Limnios, N.: Hidden Semi-Markov model and estimation. Semi-Markov Chains Hidden Semi-Markov Models Appl. 2(1), 1–48 (2006)
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Suganya, R., Jayashree, L.S. Fuzzy Rough Set Inspired Rate Adaptation and resource allocation using Hidden Markov Model (FRSIRA-HMM) in mobile ad hoc networks. Cluster Comput 22 (Suppl 4), 9875–9888 (2019). https://doi.org/10.1007/s10586-018-1783-1
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DOI: https://doi.org/10.1007/s10586-018-1783-1