MWCSGA-Multi Weight Chicken Swarm Based Genetic Algorithm for Energy Efficient Clustered Wireless Sensor Network

被引:38
作者
Ajmi, Nader [1 ]
Helali, Abdelhamid [1 ]
Lorenz, Pascal [2 ]
Mghaieth, Ridha [1 ]
机构
[1] Univ Monastir, Microoptoelect & Nanostruct Lab LR99ES29, Fac Sci Monastir, Environm St, Monastir 5019, Tunisia
[2] Univ Haute Alsace, IRIMAS Lab GRTC, F-68008 Colmar, France
关键词
wireless sensor networks (WSNs); clustering; chicken swarm optimization (CSO); genetic algorithm (GA); energy efficient;
D O I
10.3390/s21030791
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Nowadays due to smart environment creation there is a rapid growth in wireless sensor network (WSN) technology real time applications. The most critical resource in in WSN is battery power. One of the familiar methods which mainly concentrate in increasing the power factor in WSN is clustering. In this research work, a novel concept for clustering is introduced which is multi weight chicken swarm based genetic algorithm for energy efficient clustering (MWCSGA). It mainly consists of six sections. They are system model, chicken swarm optimization, genetic algorithm, CCSO-GA cluster head selection, multi weight clustering model, inter cluster, and intra cluster communication. In the performance evaluation the proposed model is compared with few earlier methods such as Genetic Algorithm-Based Energy-Efficient Adaptive Clustering Protocol For Wireless Sensor Networks (GA-LEACH), Low energy adaptive Clustering hierarchy approach for WSN (MW-LEACH) and Chicken Swarm Optimization based Genetic Algorithm (CSOGA). During the comparison it is proved that our proposed method performed well in terms of energy efficiency, end to end delay, packet drop, packet delivery ratio and network throughput.
引用
收藏
页码:1 / 21
页数:21
相关论文
共 61 条
[1]   Genetic algorithms for scheduling in a CPU/FPGA architecture with heterogeneous communication delays [J].
Abdallah, Fadel ;
Tanougast, Camel ;
Kacem, Imed ;
Diou, Camille ;
Singer, Daniel .
COMPUTERS & INDUSTRIAL ENGINEERING, 2019, 137
[2]   Single and multiple outputs decision tree classification using bi-level discrete-continues genetic algorithm [J].
Adibi, Mohammad Amin .
PATTERN RECOGNITION LETTERS, 2019, 128 :190-196
[3]   Parallel multi-agent real-coded genetic algorithm for large-scale black-box single-objective optimisation [J].
Akopov, Andranik S. ;
Beklaryan, Levon A. ;
Thakur, Manoj ;
Verma, Bhisham Dev .
KNOWLEDGE-BASED SYSTEMS, 2019, 174 :103-122
[4]   Wireless sensor networks: a survey [J].
Akyildiz, IF ;
Su, W ;
Sankarasubramaniam, Y ;
Cayirci, E .
COMPUTER NETWORKS, 2002, 38 (04) :393-422
[5]   Wireless Sensor Networks for Oceanographic Monitoring: A Systematic Review [J].
Albaladejo, Cristina ;
Sanchez, Pedro ;
Iborra, Andres ;
Soto, Fulgencio ;
Lopez, Juan A. ;
Torres, Roque .
SENSORS, 2010, 10 (07) :6948-6968
[6]   Genetic algorithm for nuclear data evaluation applied to subcritical neutron multiplication inference benchmark experiments [J].
Arthur, Jennifer ;
Bahran, Rian ;
Hutchinson, Jesson ;
Pozzi, Sara A. .
ANNALS OF NUCLEAR ENERGY, 2019, 133 :853-862
[7]   Genetic Algorithm Based Energy Efficient Clusters (GABEEC) in Wireless Sensor Networks [J].
Bayrakli, Selim ;
Erdogan, Senol Zafer .
ANT 2012 AND MOBIWIS 2012, 2012, 10 :247-254
[8]   MOFPL: Multi-objective fractional particle lion algorithm for the energy aware routing in the WSN [J].
Bhardwaj, Reeta ;
Kumar, Dinesh .
PERVASIVE AND MOBILE COMPUTING, 2019, 58
[9]   A genetic algorithm based distance-aware routing protocol for wireless sensor networks [J].
Bhatia, Tarunpreet ;
Kansal, Simmi ;
Goel, Shivani ;
Verma, A. K. .
COMPUTERS & ELECTRICAL ENGINEERING, 2016, 56 :441-455
[10]   A hybrid approach using machine learning and genetic algorithm to inverse modeling for single sphere scattering in a Gaussian light sheet [J].
Cao, Zhaolou ;
Cui, Fenping ;
Xian, Fenglin ;
Zhai, Chunjie ;
Pei, Shixin .
JOURNAL OF QUANTITATIVE SPECTROSCOPY & RADIATIVE TRANSFER, 2019, 235 :180-186