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Atmospheric boundary-layer height estimation by adaptive Kalman filtering of lidar data

机译:利用激光雷达数据的自适应卡尔曼滤波估算大气边界层高度

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A solution based on a Kalman filter to trace the evolution of the atmospheric boundary layer (ABL) sensed by an elastic backscatter lidar is presented. An erf-like profile is used to model the mixing layer top and the entrainment zone thickness. The extended Kalman filter (EKF) enables to retrieve and track the ABL parameters based on simplified statistics of the ABL dynamics and of the observation noise present in the lidar signal. This adaptive feature permits to analyze atmospheric scenes with low signal-to-noise ratios without need to resort to long time averages or range-smoothing techniques, as well as to pave the way for an automated detection method. First EKF results based on synthetic lidar profiles are presented and compared with a typical least-squares inversion for different SNR scenarios.
机译:提出了一种基于卡尔曼滤波器的解决方案,用于跟踪由弹性反向散射激光雷达感测到的大气边界层(ABL)的演化。使用类似erf的轮廓来模拟混合层顶部和夹带区域的厚度。扩展的卡尔曼滤波器(EKF)能够基于ABL动力学和激光雷达信号中存在的观察噪声的简化统计信息来检索和跟踪ABL参数。这种自适应功能允许分析低信噪比的大气场景,而无需求助于长时间平均或范围平滑技术,也为自动检测方法铺平了道路。提出了基于合成激光雷达轮廓的第一个EKF结果,并将其与针对不同SNR情况的典型最小二乘反演进行了比较。

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