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Analysis of Quality of Surveillance in fusion-based sensor networks

机译:基于融合的传感器网络中的监视质量分析

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摘要

Recent years have witnessed the deployments of wireless sensor networks for mission-critical applications such as battlefield monitoring and security surveillance. These applications often impose stringent Quality of Surveillance (QoSv) requirements including low false alarm rate and short detection delay. In practice, collaborative data fusion techniques that can deal with sensing uncertainty and enable sensor collaboration have been widely employed in sensor systems to achieve stringent QoSv requirements. However, most previous analytical studies on the surveillance performance of wireless sensor networks are based on simplistic models (such as the disc model) that cannot capture the stochastic and collaborative nature of sensing. In this paper, we systematically analyze the fundamental relationship between QoSv, network density, sensing parameters, and target properties. The results show that data fusion is effective in achieving stringent QoSv requirements, especially in the senarios with low signal-to-noise ratios (SNRs). In contrast, the disc model is only suitable when the SNR is sufficiently high. Our results help understand the limitations of disc model and provide insights into improving QoSv of sensor networks using data fusion.
机译:近年来,见证了无线传感器网络在关键任务应用(如战场监控和安全监控)中的部署。这些应用通常会提出严格的监视质量(QoSv)要求,包括较低的误报率和较短的检测延迟。在实践中,可以处理传感不确定性并实现传感器协作的协作数据融合技术已广泛应用于传感器系统中,以达到严格的QoSv要求。但是,以前有关无线传感器网络监视性能的大多数分析研究都基于无法捕获传感的随机性和协作性的简单模型(例如磁盘模型)。在本文中,我们系统地分析了QoSv,网络密度,传感参数和目标属性之间的基本关系。结果表明,数据融合可有效满足严格的QoSv要求,尤其是在信噪比(SNR)低的传感器中。相反,仅当SNR足够高时,光盘模型才适用。我们的结果有助于理解磁盘模型的局限性,并提供有关使用数据融合改善传感器网络QoSv的见解。

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