3-D spatial correlation model for reducing the transmitting nodes in densely deployed WSN

IF 1.9 4区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Microprocessors and Microsystems Pub Date : 2023-10-14 DOI:10.1016/j.micpro.2023.104963
Rajesh Kumar Garg , Surender Kumar Soni , S. Vimal , Gaurav Dhiman
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Abstract

In Wireless Sensor Networks, a large number of sensor nodes are distributed in the monitoring area to increase fault tolerance, coverage and communication range. In highly dense network, many nodes belong to common sensing region and record almost similar data of the event. Base station, however, can also identify the event features from data of a few representative nodes of the sensing region. The battery power of some sensor nodes may be saved by not sending multiple copies of the sensed information. In order to reduce transmitting nodes from the sensing region, an analytical model is presented to segregate the whole network into group of correlated regions. The minimum number of transmitting nodes are selected from probability based deployment of sensor nodes in 3D scenario and rest of the nodes are operated in sleep mode for saving the battery power. Effectiveness of proposed models is demonstrated with established technique of CHEF i.e. Cluster Head Election using Fuzzy Logic. Results show that number of nodes transmitting data from sense region can be reduced considerably with respect to threshold correlation value (ξ), which results in the energy saving of additional nodes and enhancement of network life. With implementation of proposed models, at ξ0.5, maximum transmitting nodes are 87% which saves battery power of at least 13% nodes.

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用于减少密集部署WSN中传输节点的三维空间相关模型
在无线传感器网络中,大量的传感器节点分布在监测区域,以增加容错性、覆盖范围和通信范围。在高密度网络中,许多节点属于公共传感区域,记录的事件数据几乎相似。然而,基站也可以从感测区域的几个代表性节点的数据中识别事件特征。可以通过不发送感测信息的多个副本来节省一些传感器节点的电池功率。为了减少感测区域的传输节点,提出了一个分析模型,将整个网络划分为一组相关区域。从3D场景中基于概率的传感器节点部署中选择最小数量的发射节点,并且其余节点在睡眠模式下操作以节省电池功率。所提出的模型的有效性通过所建立的CHEF技术(即使用模糊逻辑的簇头选择)得到了证明。结果表明,相对于阈值相关值(ξ),从感测区域传输数据的节点数量可以显著减少,从而节省了额外节点的能量,提高了网络寿命。通过实施所提出的模型,在ξ≤0.5时,最大发射节点为87%,这至少节省了13%节点的电池电量。
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来源期刊
Microprocessors and Microsystems
Microprocessors and Microsystems 工程技术-工程:电子与电气
CiteScore
6.90
自引率
3.80%
发文量
204
审稿时长
172 days
期刊介绍: Microprocessors and Microsystems: Embedded Hardware Design (MICPRO) is a journal covering all design and architectural aspects related to embedded systems hardware. This includes different embedded system hardware platforms ranging from custom hardware via reconfigurable systems and application specific processors to general purpose embedded processors. Special emphasis is put on novel complex embedded architectures, such as systems on chip (SoC), systems on a programmable/reconfigurable chip (SoPC) and multi-processor systems on a chip (MPSoC), as well as, their memory and communication methods and structures, such as network-on-chip (NoC). Design automation of such systems including methodologies, techniques, flows and tools for their design, as well as, novel designs of hardware components fall within the scope of this journal. Novel cyber-physical applications that use embedded systems are also central in this journal. While software is not in the main focus of this journal, methods of hardware/software co-design, as well as, application restructuring and mapping to embedded hardware platforms, that consider interplay between software and hardware components with emphasis on hardware, are also in the journal scope.
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