Optimal self boundary recognition with two-hop information for ad hoc networks

Yen-Hsu Chen, W. Chung, Guo-Kai Ni, Hongke Zhang, S. Kuo
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引用次数: 8

Abstract

The ad hoc network is composed of multiple sensor nodes to serve various applications, such as data collection or environmental monitoring. In many applications, the sensor nodes near the boundary of the deployment region provide biased or low-quality information because they have limited number of neighboring nodes and only partial information is available. Hence, the boundary recognition is an important issue in the ad hoc networks. By the statistical approach in high node density networks, Fekete's pioneer work identified the boundary node by number of neighboring nodes and using a specific threshold. By exploiting the number of nodes in the two-hop region, our proposed algorithm has significant improvement of boundary recognition contrasted with Fekete's algorithm in the low-density network. Given the information topology and the cost function, the analyses provide a framework to obtain the optimal threshold for boundary recognition. Besides, the simulation results reveal the proposed algorithm has greater than 90% detection rate and lower than 10% false alarm rate.
基于二跳信息的ad hoc网络最优自边界识别
自组织网络由多个传感器节点组成,服务于各种应用,如数据收集或环境监测。在许多应用中,靠近部署区域边界的传感器节点提供有偏差或低质量的信息,因为它们的相邻节点数量有限,只能获得部分信息。因此,边界识别是自组织网络中的一个重要问题。Fekete的开创性工作通过统计方法在高节点密度网络中,通过相邻节点的数量和使用特定的阈值来识别边界节点。通过利用两跳区域的节点数量,与Fekete算法相比,该算法在低密度网络下的边界识别能力有了显著提高。在给定信息拓扑和代价函数的情况下,分析提供了一个框架来获得边界识别的最佳阈值。仿真结果表明,该算法具有大于90%的检测率和小于10%的虚警率。
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