无线传感器网络中传感质量的分析与改进

Edwin F. Palacios Meléndez, L. O. P. Asqui, L. S. Cordova, Tomas G. Bastidas Cabrera, Miguel A. Franco Bayas
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引用次数: 1

摘要

传感器网络的指数增长对传感效率提出了新的要求,即传感质量(QoSensing)。许多研究在覆盖和连通性增强方面对QoSensing进行了改进。但这些工作未能在各种QoSensing指标之间提供平衡。为了解决这个问题,本文简要分析了QoSensing指标,如覆盖、连接、延迟、能源效率和吞吐量。基于批判性分析,本文提出了一种高效的四层(4Tier)方法,该方法由以下四个阶段组成:(i)聚类阶段,(ii)睡眠调度阶段,(iii)覆盖增强阶段和(iv)路由阶段。在聚类阶段,采用基于神经模糊的亲和传播(NFAP)算法对网络中的传感器节点进行聚类。在睡眠调度阶段采用ESLS (Energy Efficient Sleep/Listen Scheduling)算法,提高了能效。为了解决无线传感器网络的覆盖问题,在第三阶段引入了混合层次分析法(HAHP)。为了提高数据传输效率,在路由阶段引入了延迟容忍多径路由(DTMR)算法。四个有效相位的加入提高了WSN的qo感知能力。我们分析了我们提出的4Tier方法在Star和Mesh拓扑结构中,以评估这两种拓扑结构中的QoSensing度量。我们的扩展仿真结果在覆盖率、连接率、能效、延迟和吞吐量方面显示出令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing And Improving Quality Of Sensing In Wireless Sensor Network
Exponential growth of WSN introduces new requirement related to sensing efficiency which is named as Quality of Sensing (QoSensing). Many researches held on QoSensing improvement in terms of coverage and connectivity enhancement. But these works fail to provide balance between various QoSensing metrics. To address this problem, brief analysis of QoSensing metrics such as coverage, connectivity, delay, energy efficiency, and throughput is provided in this paper. Based on critical analysis, this paper presents an efficient Four Tier (4Tier) method which is comprised with following four phases: (i) clustering phase, (ii) sleep scheduling phase, (iii) coverage enhancement phase, and (iv) routing phase. In clustering phase, Neuro-Fuzzy based Affinity Propagation (NFAP) algorithm is involved to cluster sensor nodes in the network. Energy Efficient Sleep/Listen Scheduling (ESLS) algorithm is employed in sleep scheduling phase which results in enhanced energy efficiency. To overcome coverage problem in WSN, Hybrid Analytical Hierarchy Process (HAHP) is involved in third phase. In order to improve data transmission, Delay Tolerance Multipath Routing (DTMR) algorithm is incorporated in routing phase. Involvement of four efficient phases results in improved QoSensing in WSN. We analyzed our prosed 4Tier method in both Star and Mesh topology in order to evaluate the QoSensing metrics in both topologies. Our extended simulation result shows promising results in coverage rate, connectivity ratio, energy efficiency, delay, and throughput.
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