Congestion avoidance in cognitive wireless sensor networks using TOPSIS and response surface methodology

被引:0
作者
M. Gholipour
A. T. Haghighat
M. R. Meybodi
机构
[1] Islamic Azad University,Computer Engineering and Information Technology Department, Qazvin Branch
[2] Amirkabir University of Technology,Computer Engineering and Information Technology Department
来源
Telecommunication Systems | 2018年 / 67卷
关键词
Congestion control; Cognitive network; Routing; Transmission rate; TOPSIS model; Response surface methodology;
D O I
暂无
中图分类号
学科分类号
摘要
Congestion in wireless sensor networks degrades the quality of the channel and network throughput. This leads to packet loss and energy dissipation. To cope with this problem, a two-stage cognitive network congestion control approach is presented in this paper. In the first stage of the proposed strategy, initially downstream nodes calculate their buffer occupancy ratio and estimate congestion degree in the MAC layer. Then, they send the estimated value to both network and transport layers of their upstream nodes. The network layer of the upstream node uses TOPSIS in order to rank all neighbors to select the best one as the next relay node. In the second stage, transport layer of the given node adjusts the transmission rate using an optimized regression analysis by RSM. Extensive simulations demonstrated that the proposed method not only decreases packet loss, but also significantly improves throughput and energy efficiency under different traffic conditions, especially in heavy traffic areas. Also, Tukey test is used to compare performance of algorithms as well as to demonstrate that the proposed method is significantly better than other methods.
引用
收藏
页码:519 / 537
页数:18
相关论文
共 28 条
[1]  
Abdul-Salaam G(2016)A comparative analysis of energy conservation approaches in hybrid wireless sensor networks data collection protocols. Telecommunication Systems 16.1 159-179
[2]  
Gholipour M(2008)LA-mobicast: A learning automata based mobicast routing protocol for wireless sensor networks Sensor Letters 6 305-311
[3]  
Meybodi MR(2016)Aggressive congestion control mechanism for space systems IEEE Aerospace and Electronic Systems Magazine 31.3 28-33
[4]  
Jingjing W(2017)Hop-by-Hop congestion avoidance in wireless sensor networks based on genetic support vector machine Neurocomputing 223 63-76
[5]  
Gholipour M(2013)GRATA: Gradient-based traffic-aware routing for wireless sensor networks Wireless Sensor Systems, IET 3.2 104-111
[6]  
Haghighat AT(2015)Hop-by-hop traffic-aware routing to congestion control in wireless sensor networks EURASIP Journal on Wireless Communications and Networking 2015 1-265
[7]  
Meybodi MR(2009)An algorithm for clock synchronization with the gradient property in sensor networks Journal of Parallel and Distributed Computing 69 261-667
[8]  
Tan DD(2016)Performance of cognitive radio in N* Nakagami cascaded channels Wireless Personal Communications 88 657-119
[9]  
Dinh NQ(2005)Cross-layer design: a survey and the road ahead Communications Magazine, IEEE 43 112-179
[10]  
Kim D-S(2014)State of art surveys of overviews on MCDM/MADM methods Technological and Economic Development of Economy 20 165-1133