Distributed sensor layout optimization for target detection with data fusion

Zhongyue Chen, Wenham Xu, Hui-fang Chen
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引用次数: 1

Abstract

Distributed detection with data fusion has gained great attention in recent years. Collaborative detection improves the performance, and the optimal sensor deployment may change with time. It has been shown that with data fusion less sensors are needed to get the same detection ability when abundant sensors are deployed randomly. However, because of limitations on equipment number and deployment methods, fixed sensor locations may be preferred underwater. In this paper, we try to establish a theoretical framework for finding sensor positions to maximize the detection probability with a distributed sensor network. With joint data processing, detection performance is related to all the sensor locations; as sensor number grows, the optimization problem would become more difficult. To simplify the demonstration, we choose a 1-dimensional line deployment model and present the relevant numerical results.
基于数据融合的目标检测分布式传感器布局优化
基于数据融合的分布式检测技术近年来受到了广泛的关注。协同检测提高了性能,并且最优传感器部署可能随时间而变化。研究表明,在随机部署大量传感器的情况下,采用数据融合技术,只需较少的传感器即可获得相同的检测能力。然而,由于设备数量和部署方法的限制,固定的传感器位置可能更适合水下。在本文中,我们试图建立一个寻找传感器位置的理论框架,以最大限度地提高分布式传感器网络的检测概率。通过联合数据处理,检测性能与所有传感器位置相关;随着传感器数量的增加,优化问题将变得更加困难。为了简化演示,我们选择了一维线展开模型并给出了相应的数值结果。
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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