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Energy-efficient traffic-aware routing in underwater acoustic sensor networks.

机译:水下声传感器网络中的高能效流量感知路由。

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摘要

Underwater acoustic networks are a special type of wireless sensor networks deployed in a harsh oceanic environment for mission critical tasks. In this unique sensor network, energy efficiency is the most critical problem. When Maximum Residual Energy Routing is adopted in actual battery-powered underwater acoustic sensor networks, further improving the energy consumption in this protocol and prolonging the system lifetime becomes a significant problem. In this study, we examine the Maximum Residual Energy Routing Protocol (MREP) and propose a new model for energy utilization by considering the relationship between successful packet sending probability and node-distance. Based on this model, we develop a new method for improving MREP. Compared with previous model, the network energy usage is more uniform in the new model and the result is an increase of 20%∼30% in system lifetime.;The limited bandwidth and power resources as well as the 3-D topology in underwater acoustic sensor networks have made the geographic routing a favorite choice. While most of the detouring strategies in the existing geographic routing do not work well for underwater sensor networks, the spanning tree routing detouring strategy can efficiently find a detour for a packet when greedy forwarding fails. However, the effectiveness of the spanning tree routing depends largely on the quality of the pre-constructed spanning tree. Most of the existing spanning tree construction algorithms build trees in a top-down and centralized fashion and do not consider the traffic load and residual energy level in the network, and therefore is likely to create trees with poor routing performance. In this research, we propose novel spanning trees, namely Distributed Traffic-Aware Routing Tree (TART) and Distributed Energy-Aware Routing Tree (EART) which are constructed completely in a bottom-up fashion with the traffic load and residual energy level in mind. Simulation results show that those spanning trees have very few conflicting hulls, result in much higher path throughput and residual energy level when compared against other spanning trees, leading to a better routing performance in a 3-D underwater sensor network.
机译:水下声学网络是一种特殊类型的无线传感器网络,部署在恶劣的海洋环境中以执行关键任务。在这个独特的传感器网络中,能源效率是最关键的问题。当在实际的电池供电的水下声传感器网络中采用“最大剩余能量路由”时,进一步提高该协议中的能耗并延长系统寿命成为一个重大问题。在这项研究中,我们研究了最大剩余能量路由协议(MREP),并通过考虑成功的数据包发送概率与节点距离之间的关系,提出了一种新的能量利用模型。基于此模型,我们开发了一种改进MREP的新方法。与以前的模型相比,新模型中的网络能耗更加均匀,结果使系统寿命增加了20%〜30%。;有限的带宽和功率资源以及水下声学中的3-D拓扑传感器网络使地理路由成为人们的最爱选择。尽管现有地理路由中的大多数绕行策略在水下传感器网络中均无法正常工作,但是当贪婪转发失败时,生成树路由绕行策略可以有效地找到数据包的绕行路径。但是,生成树路由的有效性在很大程度上取决于预先构建的生成树的质量。大多数现有的生成树构建算法都是以自顶向下和集中式的方式构建树,并且不考虑网络中的流量负载和剩余能量水平,因此很可能创建路由性能较差的树。在这项研究中,我们提出了新颖的生成树,即分布式交通感知路由树(TART)和分布式能源感知路由树(EART),它们完全以自下而上的方式构造,并考虑了交通负荷和剩余能量水平。仿真结果表明,与其他生成树相比,这些生成树具有很少的冲突外壳,从而导致更高的路径吞吐量和剩余能量水平,从而在3-D水下传感器网络中具有更好的路由性能。

著录项

  • 作者

    Zhang, Lei.;

  • 作者单位

    Auburn University.;

  • 授予单位 Auburn University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 135 p.
  • 总页数 135
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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