Multi-Strategy Enhanced Coot Algorithm for Coverage Optimization in
Wireless Sensor Networks
Abstract
An improved coot optimization algorithm is proposed for wireless sensor
networks (WSNs) coverage optimization. To monitor the interest field and
obtain the valid data, a wireless sensor network coverage model is
established. The population is initialized with cubic map and
opposition-based learning strategy. The leader population is reversely
learned dimension by dimension, so as to improve the diversity of the
population and the global optimization ability of the algorithm. The
simplex method is introduced to optimize the local exploration of the
population. The experimental results show that the enhanced coot
optimization algorithm for coverage optimization in wireless sensor
networks can reduce energy consumption and improve network coverage.