4.6 Article

A Cluster-Based Energy Optimization Algorithm in Wireless Sensor Networks with Mobile Sink

Journal

SENSORS
Volume 21, Issue 7, Pages -

Publisher

MDPI
DOI: 10.3390/s21072523

Keywords

mobile sink; energy optimization; cluster head selection; adaptive adjustment function

Funding

  1. National Science Foundation Council of China [61771006, 61976080, U1804149, 61701170]
  2. Key research projects of university in Henan province of China [21A413002, 19A413006, 20B510001]
  3. Programs for Science and Technology Development of Henan Province [192102210254]
  4. Talent Program of Henan University [SYL19060110]
  5. Innovation and Quality Improvement ProgramProject for Graduate Education of Henan University [SYL20060143]
  6. Postgraduate Quality Demonstration Courses of Henan University (English Professional Courses) [SYL18030207]

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This paper proposes the CEOMS algorithm, which improves the self-adaptability of cluster head selection, extends network life, reduces data delay, and balances network load through constructing energy density function, motion performance function, and designing adaptive adjustment function.
Aiming at high network energy consumption and data delay induced by mobile sink in wireless sensor networks (WSNs), this paper proposes a cluster-based energy optimization algorithm called Cluster-Based Energy Optimization with Mobile Sink (CEOMS). CEOMS algorithm constructs the energy density function of network nodes firstly and then assigns sensor nodes with higher remaining energy as cluster heads according to energy density function. Meanwhile, the directivity motion performance function of mobile sink is constructed to enhance the probability of remote sensor nodes being assigned as cluster heads. Secondly, based on Low Energy Adaptive Clustering Hierarchy Protocol (LEACH) architecture, the energy density function and the motion performance function are introduced into the cluster head selection process to avoid random assignment of cluster head. Finally, an adaptive adjustment function is designed to improve the adaptability of cluster head selection by percentage of network nodes death and the density of all surviving nodes of the entire network. The simulation results show that the proposed CEOMS algorithm improves the cluster head selection self-adaptability, extends the network life, reduces the data delay, and balances the network load.

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