An Improved Genetic Algorithm for Scheduling Sensor Nodes in WSN

Sami Qawasmeh
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Abstract

The extended lifetime of Wireless Sensor Networks (WSN) is an attractive goal for various types of research. This can be achieved if not all sensor nodes in the network consume their energy; this is because the energy consumption of every sensor node is a vital resource for a WSN. The scheduling techniques have recently enticed the interest of the researchers’ community, as they provide the ability to adjust a set of nodes in sleep mode instead of activating all sensor nodes. However, we consider the sensors that were selected to be in sleep mode, which will not affect network coverage for any target or full connectivity. In this paper, the genetic algorithm has been used to build efficient scheduling for the sensor nodes, which were based on multiple objectives in the fitness function, and we have proposed improved mutation and crossover operations. Then, we evaluate our approaches in a target tracking application compared with previous GA approaches. Our simulations show that we have an optimal chromosome that contains a minimum number of active sensor nodes for scheduling within 3-5 iterations.
用于 WSN 中传感器节点调度的改进遗传算法
延长无线传感器网络(WSN)的使用寿命是各类研究的一个诱人目标。因为每个传感器节点的能耗都是 WSN 的重要资源。最近,调度技术引起了研究人员的兴趣,因为这些技术能够在睡眠模式下调整一组节点,而不是激活所有传感器节点。不过,我们考虑的是被选中处于睡眠模式的传感器,这不会影响对任何目标的网络覆盖或全面连接。本文使用遗传算法为传感器节点建立高效调度,该算法基于适配函数中的多个目标,我们还提出了改进的突变和交叉操作。然后,我们在目标跟踪应用中评估了我们的方法,并与之前的 GA 方法进行了比较。我们的模拟结果表明,在 3-5 次迭代内,我们获得了包含最少活动传感器节点的最佳染色体,从而实现了调度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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