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Optimal Sensors Deployment for Tracking Level Curve Based on Posterior Cramer-Rao Lower Bound in Scalar Field

机译:基于标量场中后Cromer-Rao下界的跟踪水平曲线的传感器优化部署

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This paper focuses on discussing the space distance of gliders in a group for level curve tracking task. A developed adaptive space distance algorithm for glider formation based on Posterior Crame'r-Rao Lower Bound (PCRLB) is proposed. For a feature-tracking application with scalar sensors, gliders are adopted to track a level curve in 2D space. In this work, the white noise from the measurement process and oceanic background is taken into account, as well as the effect of omitting the higher order terms in the Taylor series and roughly estimated Hessian Matrix. Since the PCRLB is an effective criterion to quantify the performance of all unbiased nonlinear estimators of the target state, our adaptive space distance algorithm for gliders may be functional when implemented with many kinds of nonlinear filters together. Finally, the performance of the proposed algorithm in this study is evaluated on simulated platforms by applying it with the Extended Kalman Filter(EKF) and Particle Filter.
机译:本文着重讨论一组用于水平曲线跟踪任务的滑翔机的空间距离。提出了一种基于后Crame'r-Rao下界(PCRLB)的滑翔机形成自适应空间距离算法。对于具有标量传感器的特征跟踪应用,采用滑翔机来跟踪2D空间中的水平曲线。在这项工作中,考虑了来自测量过程和海洋背景的白噪声,以及忽略了泰勒级数和粗略估计的Hessian矩阵中的高阶项的影响。由于PCRLB是量化目标状态的所有无偏非线性估计器性能的有效标准,因此当与多种非线性滤波器一起实现时,我们的滑翔机自适应空间距离算法可能会起作用。最后,通过将其与扩展卡尔曼滤波器(EKF)和粒子滤波器一起应用,在模拟平台上评估了该算法的性能。

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