Entropy Weighted-Based (EWB) I-LEACH Protocol for Energy-Efficient IoT Applications

Prinu C. Philip, Mohammed Abdelhafez
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引用次数: 4

Abstract

The Internet of Things (IoT) is one of the emerging applications in the Wireless Sensor Networks (WSNs). The major concern in WSN is the limited battery power, which can be overcome by selecting the effective cluster head (CH) for the transmission of data in the network. In this paper, an entropy weighted-based I-LEACH protocol is developed for the selection of the CH. The proposed entropy weighted-based I-LEACH protocol is developed by modifying the standard LEACH protocol with the entropy weight. Initially, the IoT nodes are grouped together to form clusters, which is followed by the selection of the cluster head (CH) for the transmission of the data packets to the base station (BS). The CH is selected depending on the threshold value, which is based on the entropy function. The performance metrics, such as number of alive nodes and energy is used for evaluating the effectiveness of the proposed entropy weighted-based (EWB) I-LEACH protocol. The proposed EWB I-LEACH protocol obtained a maximal alive nodes of 11 and maximal energy of 0.1138 J for 50 nodes under dual-slop channel model and obtained a maximal alive nodes of 9 and maximal energy of 0.1116 J for 50 nodes by considering log normal shadowing channel model when compared to the existing protocols.
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基于熵权(EWB)的I-LEACH协议用于节能物联网应用
物联网(IoT)是无线传感器网络(WSNs)的新兴应用之一。无线传感器网络的主要问题是电池电量有限,这可以通过选择有效簇头(CH)来解决。本文提出了一种基于熵权的I-LEACH协议,用于CH的选择。本文提出的基于熵权的I-LEACH协议是通过熵权对标准LEACH协议进行修改而得到的。最初,物联网节点被分组在一起形成集群,然后选择集群头(CH)将数据包传输到基站(BS)。根据阈值选择CH,阈值是基于熵函数的。使用活动节点数和能量等性能指标来评估所提出的基于熵权的I-LEACH协议的有效性。与现有协议相比,在双坡通道模型下,所提出的EWB I-LEACH协议在50个节点上最大活节点为11个,最大能量为0.1138 J;在考虑对数正态阴影通道模型下,该协议在50个节点上最大活节点为9个,最大能量为0.1116 J。
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