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Adaptive filter solution for processing lidar returns: optical parameter estimation

机译:用于处理激光雷达回波的自适应滤波器解决方案:光学参数估计

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Joint estimation of extinction and backscatter simulated profiles from elastic-backscatter lidar return signals is tackled by means of an extended Kalman filter (EKF). First, we introduced the issue from a theoretical point of view by using both an EKF formulation and an appropriate atmospheric stochastic model; second, it is tested through extensive simulation and under simplified conditions; and, finally, a first real application is discussed. An atmospheric model including both temporal and spatial correlation features is introduced to describe approximate fluctuation statistics in the sought-after atmospheric optical parameters and hence to include apriori information in the algorithm. Provided that reasonable models are given for the filter, inversion errors are shown to depend strongly on the atmospheric condition (i.e., the visibility) and the signal-to-noise ratio along the exploration path in spite of modeling errors in the assumed statistical properties of the atmospheric optical parameters. This is of advantage in the performance of the Kalman filter because they are often the point of most concern in identification problems. In light of the adaptive behavior of the filter and the inversion results, the EKF approach promises a successful alternative to present-day nonmemory algorithms based on exponential-curve fitting or differential equation formulations such as Klett's method. (C) 1998 Optical Society of America. [References: 24]
机译:通过扩展的卡尔曼滤波器(EKF)处理来自弹性后向散射激光雷达返回信号的灭绝和后向散射模拟轮廓的联合估计。首先,我们通过使用EKF公式和适当的大气随机模型从理论的角度介绍了该问题;其次,通过广泛的仿真并在简化的条件下进行测试;最后,讨论了第一个实际应用。引入包括时间和空间相关特征的大气模型,以描述所寻求的大气光学参数中的近似波动统计,从而在算法中包括先验信息。假设为滤波器提供了合理的模型,则尽管假设的统计特性存在建模误差,但反演误差仍显示出强烈依赖于大气条件(即能见度)和沿着勘探路径的信噪比。大气光学参数。这在卡尔曼滤波器的性能上具有优势,因为它们通常是识别问题中最需要关注的问题。鉴于滤波器的自适应行为和反演结果,EKF方法有望成功替代基于指数曲线拟合或微分方程公式(例如Klett方法)的当今非内存算法。 (C)1998年美国眼镜学会。 [参考:24]

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