An Adaptive Method For Selecting Cluster Head Using Analytical Hierarchy Process(Ahp)

Nor Azimah Khalid, Nadhirah Mohammad Anuar, N. M. Noor
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引用次数: 1

Abstract

Nowadays, Wireless Sensor Network had made a major contribution to surveillance, target tracking and healthcare. Due to the nature of its complex functions in sensing and monitoring the environment at a diverse area, energy efficiency is one of the primary objectives that need to be considered to prolong the network lifetime. Cluster based is one the most common use and suitable protocol in enhancing energy efficiency in WSN. However, an efficient cluster head (CH) selection mechanism is still needed to ensure that the most appropriate CH is selected. Selecting CH based on single criteria could lead to inappropriate decision. Thus, a holistic view of the CH considering multiple criteria is more promising. Four criteria were considered for the CH selection in our approach; number of neighbour nodes (NNN), residual energy (RE), initial energy (IE) and distance of nodes to base station (DTBS). In this paper, we demonstrate that the use of Analytic Hierarchy Process (AHP) helps in CH selection better and we managed to identify the distance as the important criteria in the selection of CH.
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基于层次分析法的簇头自适应选择方法
目前,无线传感器网络在监控、目标跟踪和医疗保健方面做出了重大贡献。由于其在不同区域感知和监测环境的复杂功能,能源效率是延长网络寿命需要考虑的主要目标之一。基于集群的无线传感器网络是提高无线传感器网络能效最常用、最合适的协议之一。然而,仍然需要一个有效的簇头选择机制来确保选择最合适的簇头。基于单一标准选择CH可能导致不适当的决策。因此,综合考虑多个标准的CH整体观点更有希望。在我们的方法中,选择CH考虑了四个标准;邻居节点数(NNN)、剩余能量(RE)、初始能量(IE)和节点到基站的距离(DTBS)。在本文中,我们证明了使用层次分析法(AHP)有助于更好地选择CH,并且我们设法确定了距离作为CH选择的重要标准。
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