Performance Analysis of Group Based Detection for Sparse Sensor Networks

Jingbin Zhang, Gang Zhou, S. Son, J. Stankovic, K. Whitehouse
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引用次数: 8

Abstract

In this paper, we analyze the performance of group based detection in sparse sensor networks, when the system level detection decision is made based on the detection reports generated from multiple sensing periods. Sparse deployment is essential for reducing cost of large scale sensor networks, which cover thousands of square miles. In a sparse deployment, the sensor field is only partially covered by sensorspsila sensing ranges, resulting in void sensing areas in the region, but all nodes are connected through multi-hop networking. Further, due to the unavoidable false alarms generated by a single sensor in a network, many deployed systems use group based detection to reduce system level false alarms. Despite the popularity of group based detection, few analysis works in the literature deal with group based detection. In this paper, we propose a novel approach called Markov chain based Spatial approach (MS-approach) to model group based detection in sensor networks. The M-S-approach successfully overcomes the complicated conditional detection probability of a target in each sensing period, and reduces the execution time of the analysis from many days to 1 minute. The analytical model is validated through extensive simulations. This analytical work is important because it provides an easy way to understand the performance of a system that uses group based detection without running countless simulations or deploying real systems.
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稀疏传感器网络中基于组的检测性能分析
本文分析了稀疏传感器网络中基于多个感知周期生成的检测报告进行系统级检测决策时基于群体的检测性能。稀疏部署对于降低覆盖数千平方英里的大规模传感器网络的成本至关重要。在稀疏部署中,传感器场仅部分被传感器感知范围覆盖,导致该区域存在空白感知区域,但所有节点都通过多跳网络连接。此外,由于网络中单个传感器不可避免地会产生虚警,因此许多已部署的系统使用基于组的检测来减少系统级虚警。尽管基于群体的检测很受欢迎,但文献中很少有分析工作涉及基于群体的检测。在本文中,我们提出了一种新的方法,称为基于马尔可夫链的空间方法(ms方法)来模拟传感器网络中基于组的检测。m - s方法成功地克服了目标在每个感知周期内复杂的条件检测概率,将分析的执行时间从许多天缩短到1分钟。通过大量的仿真验证了分析模型的正确性。这种分析工作很重要,因为它提供了一种简单的方法来了解使用基于组的检测系统的性能,而无需运行无数的模拟或部署真实的系统。
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