4.6 Article

Discrete Particle Swarm Optimization Routing Protocol for Wireless Sensor Networks with Multiple Mobile Sinks

Journal

SENSORS
Volume 16, Issue 7, Pages -

Publisher

MDPI
DOI: 10.3390/s16071081

Keywords

discrete particle swarm optimization; wireless sensor network with mobile sinks; routing; energy efficiency

Funding

  1. Second Batch of Strategic Emerging Industrial Core Technology Research Project in Guangdong Province [2012A010701005]
  2. Key Lab of cloud computing and big data in Guangzhou [SITGZ [2013]268-6]
  3. Engineering and Technology Research Center of Guangdong Province for Big Data Intelligent Processing [GDDST[2013]1513-1-11]
  4. Key Project of the Combination of Production, Education and Research - Guangdong province and Ministry of Education [2012B091000109]
  5. Science and Technology Program in Guangzhou, China (International Science and Technology Cooperation Program) [2012J5100018]
  6. Natural Science Foudation of Guangdong Province [2014A030313585]
  7. Guang Dong Provincial Natural fund project [2016A030310300]

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Mobile sinks can achieve load-balancing and energy-consumption balancing across the wireless sensor networks (WSNs). However, the frequent change of the paths between source nodes and the sinks caused by sink mobility introduces significant overhead in terms of energy and packet delays. To enhance network performance of WSNs with mobile sinks (MWSNs), we present an efficient routing strategy, which is formulated as an optimization problem and employs the particle swarm optimization algorithm (PSO) to build the optimal routing paths. However, the conventional PSO is insufficient to solve discrete routing optimization problems. Therefore, a novel greedy discrete particle swarm optimization with memory (GMDPSO) is put forward to address this problem. In the GMDPSO, particle's position and velocity of traditional PSO are redefined under discrete MWSNs scenario. Particle updating rule is also reconsidered based on the subnetwork topology of MWSNs. Besides, by improving the greedy forwarding routing, a greedy search strategy is designed to drive particles to find a better position quickly. Furthermore, searching history is memorized to accelerate convergence. Simulation results demonstrate that our new protocol significantly improves the robustness and adapts to rapid topological changes with multiple mobile sinks, while efficiently reducing the communication overhead and the energy consumption.

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