Wireless Sensor Network Optimization Using Genetic Algorithm

Aseel B. Alnajjar, Azhar M. Kadim, Ruaa Abdullah Jaber, Najwan Abed Hasan, Ehsan Qahtan Ahmed, M. S. M. Altaei, Ahmed L. Khalaf
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Abstract

Wireless Sensor Network (WSN) is a high potential technology used in many fields (agriculture, earth, environmental monitoring, resources union, health, security, military, and transport, IoT technology). The band width of each cluster head is specific, thus, the number of sensors connected to each cluster head is restricted to a maximum limit and exceeding it will weaken the connection service between each sensor and its corresponding cluster head. This will achieve the research objective which refers to reaching the state where the proposed system energy is stable and not consuming further more cost. The main challenge is how to distribute the cluster heads regularly on a specified area, that’s why a solution was supposed in this research implies finding the best distribution of the cluster heads using a genetic algorithm. Where using an optimization algorithm, keeping in mind the cluster heads positions restrictions, is an important scientific contribution in the research field of interest. The novel idea in this paper is the crossover of two-dimensional integer encoded individuals that replacing an opposite region in the parents to produce the children of new generation. The mutation occurs with probability of 0.001, it changes the type of 0.05 sensors found in handled individual. After producing more than 1000 generations, the achieved results showed lower value of fitness function with stable behavior. This indicates the correct path of computations and the accuracy of the obtained results. The genetic algorithm operated well and directed the process towards improving the genes to be the best possible at the last generation. The behavior of the objective function started to be regular gradually throughout the produced generations until reaching the best product in the last generation where it is shown that all the sensors are connected to the nearest cluster head. As a conclusion, the genetic algorithm developed the sensors’ distribution in the WSN model, which confirms the validity of applying of genetic algorithms and the accuracy of the results.
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基于遗传算法的无线传感器网络优化
无线传感器网络(WSN)是一项高潜力的技术,应用于许多领域(农业、地球、环境监测、资源联盟、健康、安全、军事、交通、物联网技术)。由于每个簇头的带宽是特定的,因此连接到每个簇头的传感器数量被限制在一个最大限度内,超过该带宽将削弱每个传感器与其对应簇头之间的连接服务。这将达到研究目标,即达到所提出的系统能量稳定且不进一步消耗更多成本的状态。主要的挑战是如何在指定区域上有规律地分布簇头,这就是为什么在本研究中假设的解决方案意味着使用遗传算法找到簇头的最佳分布。其中使用优化算法,记住簇头位置的限制,是一个重要的科学贡献在感兴趣的研究领域。本文新颖的思想是二维整数编码个体的交叉,取代父母的相反区域产生新一代的孩子。突变发生的概率为0.001,它改变了处理个体中发现的0.05个传感器的类型。在繁殖1000代以上后,获得的结果表明适应度函数值较低,行为稳定。这表明了计算路径的正确性和所得结果的准确性。遗传算法运行良好,并指导了基因的改进过程,使其在最后一代成为最好的基因。目标函数的行为在生产的几代中逐渐变得有规则,直到最后一代达到最佳产品,即所有传感器都连接到最近的簇头。结果表明,遗传算法得到了传感器在WSN模型中的分布,验证了遗传算法应用的有效性和结果的准确性。
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6.30
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