Abstract
Wireless Mesh Networking (WMN) is the latest Internet framework that provides a comprehensive range for Subsequent Internet (SI) prototype. Despite significant advantages provided by WMN, its practical distribution to connect Internet of Things (IoT) networks caused exorbitant congestion and restricted bandwidth. Motivated by this, a novel mechanism that ensures control in the manifestation of mobbing, end-to-end delay, energy consumption for enhancing the network performance of IoT-enabled WMN is presented. The proposed method is called as an Integrated Markov State Transition and Open Loop Smart Caching (MST-OLSC) for congestion control in IoT-enabled WMN. The proposed method uses Markov state transition scheduling model to differentiate the states of the incoming data packets from the host computer. This is performed by applying the State Betweenness centrality. Next, Congestion Control Token Caching mechanism is applied with the objective of controlling the congestion by means of caching via overflow with well-balanced isolation between regulated and unregulated flow of data packet. Finally, Open Loop Smart Caching is presented to ensure constant data rate, thereby providing fair inflow and outflow between the incoming and outgoing data packets. The evaluation results of MST-OLSC ensure higher network performance with minimum end-to-end delay, energy consumption and higher packet delivery rate is achieved with respect to inflated IoT nodes in WMN.
Similar content being viewed by others
References
ArturRataj, “Random Neural Networks with Hierarchical Committees for Improved Routing in Wireless Mesh Networks with Interference”, Springer Nature Computer Science, Oct 2019 – Hierarchical RNN
Ahmed Al-Saadi, Rossitza Setchi, Yulia Hicks, Stuart M. Allen,” Routing Protocol for Heterogeneous Wireless Mesh Networks”, IEEE Transactions on Vehicular Technology, Vol. 65, No. 12, Dec 2016 – Cognitive Heterogeneous Routing (CHR)
Armir Bujari, Andrea Marin, Claudio E. Palazzi,Sabina Rossi, “Smart-RED: a novel congestion control mechanism forHigh throughput and low queuing delay”, Wireless Communications and Mobile Computing, Wiley, 2019
Yuvraj Sahni, Jiannong Cao, Shigeng Zhang, Lei Yang, “edge mesh: a new paradigm to EnableDistributed intelligence in internet of things”, IEEE Access, Sep 2017
Junseok Kim, Seongwon Kim, Tarik Taleb, Sunghyun Choi, “RAPID:contention resolution-based random Accessusing context ID for IoT”, IEEE Transactions on Vehicular Technology, Jul 2015
JongGwan An, Wenbin Li, Franck Le Gall, Ernoe Kovac, Jaeho Kim, Tarik Taleb, Jae Seung Song, “EiF: toward elastic IoT fog framework for AIServices”, IEEE Communications Magazine, 2019
Hichem Sedjelmaci, Sidi Mohamed Senouci, Tarik Taleb, “An Accurate Security Game for Low-Resource IoT Devices”, IEEE Transactions on Vehicular Tecnology, Vol. 6, No. 10, 2017
Wei Li, Fan Zhou, Kaushik Chowdhury, Waleed Meleis, “QTCP: Adaptive Congestion Control with Reinforcement Learning”, IEEE Transactions on Network Science and Engineering (Volume: 6, Issue: 3, 2019)
N. Akkari, P. Wang, J. M. Jornet, E. Fadel, L. Elrefaei, M. G. A. Malik, S. Almasri, I. F. Akyildiz, “Distributed timely-throughput optimal scheduling for the internet of Nano-things”, IEEE Internet of Things Journal ( volume: 3 , Issue: 6 , 2016 )
Juan Pablo Astudillo León, Luis J. de la Cruz Llopis, “Emergency aware congestion control for smart grid neighborhood area networks”, Ad Hoc Networks, Elsevier, 2019
Wonyong Yoon, Dongman Lee, Byoungheon Shin, SeonYeong Han, “Price-based congestion control and local channel-link assignment for multi-radio wireless mesh networks”, Computers and Electrical Engineering, Elsevier, 2013
Simone Bolettieri, GiacomoTanganelli, Carlo Vallati, EnzoMingozzi, “pCoCoA: a precise congestion control algorithm for CoAP”, Ad Hoc Networks, Elsevier, 2018
Md. EmdadulHaque, Faisal Tariq, Laurence Dooley, Ben Allen, Yan Sun, “Efficient congestion minimisation by successive load shifting in multilayer wireless networks”, Computers and Electrical Engineering, Elsevier, 2018
Maheen Islam, Md. AbdurRazzaque, Md. Mamun-Or-Rashid, Mohammad Mehedi Hassan, Ahmad Almogren, Abdulhameed Alelaiwi, “Dynamic traffic engineering for high-throughput data forwarding in wireless mesh networks”, Computers and Electrical Engineering, Elsevier, 2016
JieJia, Qiusi Lin, Jian Chen, Chunyu Li, Xingwei Wang, “Congestion aware channel allocation with route scheduling in wireless cognitive radio mesh network”, Computers and Electrical Engineering, Elsevier, 2013
Ihsan Ayyub Qazi, Taieb Znati, “On the design of load factor based congestion control protocols for next-generation networks”, Computer Networks, Elsevier, Jun 2011
Weiqi Chen Quansheng Guan, Shengming Jiang, Quanxue Guan, Tiancheng Huang, “Joint QoS provisioning and congestion control for multi-hop wireless networks”, EURASIP journal on wireless communication and networking, Springer, 2016
Luís Barreto, “XCP-Winf and RCP-Winf: Improving Explicit Wireless Congestion Control”, Journal of Computer Networks and Communications, Hindawi, 2014
Adel A. Ahmed Waleed Ali, “A lightweight reliability mechanism proposed for datagram congestion control protocol over wireless multimedia sensor networks”, Wiley, 2018
“NS-3 simulator, version 3.26,” 2018, https://www.nsnam.org/ releases/ns-allinone-3.26.tar.bz2
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher’s note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
N, Y., G, S. Markov transition and smart cache congestion control for IoT enabled wireless mesh networks. Peer-to-Peer Netw. Appl. 14, 58–68 (2021). https://doi.org/10.1007/s12083-020-00969-4
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12083-020-00969-4