Energy efficient ant colony algorithms for data aggregation in wireless sensor networks

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摘要

In energy-constrained wireless sensor networks, energy efficiency is critical for prolonging the network lifetime. A family of ant colony algorithms called DAACA for data aggregation are proposed in this paper. DAACA consists of three phases: initialization, packets transmissions and operations on pheromones. In the transmission phase, each node estimates the remaining energy and the amount of pheromones of neighbor nodes to compute the probabilities for dynamically selecting the next hop. After certain rounds of transmissions, the pheromones adjustments are performed, which take the advantages of both global and local merits for evaporating or depositing pheromones. Four different pheromones adjustment strategies which constitute DAACA family are designed to prolong the network lifetime. Experimental results indicate that, compared with other data aggregation algorithms, DAACA shows higher superiority on average degree of nodes, energy efficiency, prolonging the network lifetime, computation complexity and success ratio of one hop transmission. At last, the features of DAACA are analyzed.

论文关键词:Wireless sensor networks,Data aggregation,Ant colony optimization,Energy efficiency,Network lifetime

论文评审过程:Received 19 December 2010, Revised 12 May 2011, Accepted 28 October 2011, Available online 1 December 2011.

论文官网地址:https://doi.org/10.1016/j.jcss.2011.10.017