Norouzi Ali, Zaim A Halim
Computer Engineering Department, Istanbul University, 34320 Istanbul, Turkey.
ScientificWorldJournal. 2014 Feb 16;2014:286575. doi: 10.1155/2014/286575. eCollection 2014.
There are several applications known for wireless sensor networks (WSN), and such variety demands improvement of the currently available protocols and the specific parameters. Some notable parameters are lifetime of network and energy consumption for routing which play key role in every application. Genetic algorithm is one of the nonlinear optimization methods and relatively better option thanks to its efficiency for large scale applications and that the final formula can be modified by operators. The present survey tries to exert a comprehensive improvement in all operational stages of a WSN including node placement, network coverage, clustering, and data aggregation and achieve an ideal set of parameters of routing and application based WSN. Using genetic algorithm and based on the results of simulations in NS, a specific fitness function was achieved, optimized, and customized for all the operational stages of WSNs.
无线传感器网络(WSN)有多种已知的应用,如此多样的应用需要改进当前可用的协议和特定参数。一些值得注意的参数是网络寿命和路由能耗,它们在每个应用中都起着关键作用。遗传算法是非线性优化方法之一,由于其在大规模应用中的效率以及最终公式可由算子修改,因此是相对较好的选择。本综述试图对WSN的所有操作阶段进行全面改进,包括节点放置、网络覆盖、聚类和数据聚合,并实现基于路由和应用的WSN的理想参数集。利用遗传算法并基于NS中的模拟结果,为WSN的所有操作阶段实现、优化并定制了一个特定的适应度函数。