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Feedback-Based Target Localization in Underwater Sensor Networks: A Multisensor Fusion Approach

机译:水下传感器网络中基于反馈的目标定位:一种多传感器融合方法

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This paper investigates the problem of target localization in underwater sensor networks, subjected to limited measurement range and accuracy. The localization process is mainly divided into two phases, i.e., distance estimation and position solving. In the first phase, some sensor nodes cannot acquire the direct distance measurements of target, due to the high-dynamic and strong-noise characteristics of underwater environment. Based on this, we formulate the distance measurement as a closed-loop control problem, and then a proportional-integral estimator is designed for sensors to acquire the distance information through indirect measurements. With the estimated distance information, a consensus-based unscented Kalman filtering (UKF) algorithm is proposed in the second phase to localize the target, where direct and indirect measurements are fused to reduce the influence of malicious data. Moreover, stability conditions are provided to show that the distance estimator can stabilize the closed-loop system, while the boundedness analyses are demonstrated to guarantee the localization accuracy. Finally, simulation results reveal that the proposed distance estimator can extend the measurement range of sensors by comparing with the single direct measurement. Meanwhile, the consensus-based UKF algorithm can effectively improve the localization accuracy.
机译:本文研究了在受限的测量范围和精度的情况下水下传感器网络中目标的定位问题。定位过程主要分为两个阶段,即距离估计和位置求解。在第一阶段,由于水下环境的高动态和高噪声特性,一些传感器节点无法获取目标的直接距离测量值。基于此,我们将距离测量公式化为一个闭环控制问题,然后为传感器设计了比例积分估计器,以通过间接测量来获取距离信息。利用估计的距离信息,第二阶段提出了基于共识的无味卡尔曼滤波(UKF)算法来定位目标,在目标中融合直接和间接测量以减少恶意数据的影响。此外,提供了稳定性条件以表明距离估计器可以使闭环系统稳定,而有界性分析则可以保证定位精度。最后,仿真结果表明,与单次直接测量相比,所提出的距离估计器可以扩展传感器的测量范围。同时,基于共识的UKF算法可以有效地提高定位精度。

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