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Distributed Particle Swarm Optimization and Simulated Annealing for Energy-efficient Coverage in Wireless Sensor Networks

机译:无线传感器网络中能效覆盖的分布式粒子群优化和模拟退火

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摘要

The limited energy supply of wireless sensor networks poses a great challenge for the deployment of wireless sensor nodes. In this paper, we focus on energy-efficient coverage with distributed particle swarm optimization and simulated annealing. First, the energy-efficient coverage problem is formulated with sensing coverage and energy consumption models. We consider the network composed of stationary and mobile nodes. Second, coverage and energy metrics are presented to evaluate the coverage rate and energy consumption of a wireless sensor network, where a grid exclusion algorithm extracts the coverage state and Dijkstra's algorithm calculates the lowest cost path for communication. Then, a hybrid algorithm optimizes the energy consumption, in which particle swarm optimization and simulated annealing are combined to find the optimal deployment solution in a distributed manner. Simulated annealing is performed on multiple wireless sensor nodes, results of which are employed to correct the local and global best solution of particle swarm optimization. Simulations of wireless sensor node deployment verify that coverage performance can be guaranteed, energy consumption of communication is conserved after deployment optimization and the optimization performance is boosted by the distributed algorithm. Moreover, it is demonstrated that energy efficiency of wireless sensor networks is enhanced by the proposed optimization algorithm in target tracking applications.
机译:无线传感器网络的有限能量供应给无线传感器节点的部署提出了巨大的挑战。在本文中,我们将重点放在具有分布式粒子群优化和模拟退火的节能覆盖上。首先,利用感测覆盖率和能耗模型来制定能效覆盖率问题。我们考虑由固定节点和移动节点组成的网络。其次,提出了覆盖范围和能量度量,以评估无线传感器网络的覆盖率和能耗,其中网格排除算法提取覆盖状态,而Dijkstra算法计算出最低的通信成本路径。然后,采用混合算法对能耗进行优化,将粒子群优化与模拟退火相结合,以分布式方式找到最优部署方案。在多个无线传感器节点上执行模拟退火,其结果可用于校正粒子群优化的局部和全局最佳解决方案。无线传感器节点部署的仿真验证了部署优化后可以保证覆盖性能,节省通信能耗,分布式算法提高了优化性能。此外,证明了所提出的优化算法在目标跟踪应用中提高了无线传感器网络的能效。

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