LDSN: Localization scheme for double-head maritime Sensor Networks

Hanjiang Luo, Kaishun Wu, Jiang Xiao, Zhongwen Guo
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引用次数: 4

Abstract

Ocean covers nearly 71% of our planet's surface, yet 95% of the ocean remains unexplored by human being, and wireless sensor networks are envisioned to perform monitoring tasks over the large portion of our world. However, deploying wireless sensor networks on the sea poses many challenges and for maritime surveillance security applications we may need to deploy sensors both on the sea surface and underwater for three-dimensional detection. In this paper, we propose a hybrid ocean sensor networks called Double-head maritime Sensor Networks (DSNs), which combine the advantages of wireless sensor networks and underwater acoustic sensor networks. By leveraging the unique characteristics of DSNs, we design a localization scheme LDSN which is consisted of two algorithms SML and FLA. We first use SML to localize moored anchor nodes as seed nodes. After the underwater sensor networks have been localized, the floating double-head nodes can figure out its instant position via FLA algorithm. We evaluate the scheme by simulations and the results show that the scheme can achieve a high localization accuracy.
LDSN:双头海事传感器网络定位方案
海洋覆盖了地球表面近71%的面积,但95%的海洋仍未被人类开发,无线传感器网络有望在我们世界的大部分地区执行监测任务。然而,在海上部署无线传感器网络带来了许多挑战,对于海上监视安全应用,我们可能需要在海面和水下部署传感器进行三维探测。本文提出了一种结合无线传感器网络和水声传感器网络优点的混合型海洋传感器网络——双头海洋传感器网络(DSNs)。利用dsn的独特特性,设计了一种由SML和FLA两种算法组成的定位方案LDSN。我们首先使用SML将锚节点定位为种子节点。水下传感器网络定位完成后,浮动双头节点可通过FLA算法计算出其瞬间位置。仿真结果表明,该方案具有较高的定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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