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Inversion of atmospheric optical parameters from elastic-backscatter lidar returns using a Kalman filter

机译:使用卡尔曼滤波器从弹性后向散射激光雷达返回反演大气光学参数

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Abstract: Up to now, retrieval of the atmospheric extinction and backscatter has mainly relied on standard straightforward non-memory procedures such as slope-method, exponential- curve fitting and Klett's method. Yet, their performance becomes ultimately limited by the inherent lack of adaptability as they only work with present returns and neither past estimations, nor the statistics of the signals or a prior uncertainties are taken into account. In this work, a first inversion of the backscatter and extinction- to-backscatter ratio from pulsed elastic-backscatter lidar returns is tackled by means of an extended Kalman filter (EKF), which overcomes these limitations. Thus, as long as different return signals income,the filter updates itself weighted by the unbalance between the a priori estimates of the optical parameters and the new ones based on a minimum variance criterion. Calibration errors or initialization uncertainties can be assimilated also. The study begins with the formulation of the inversion problem and an appropriate stochastic model. Based on extensive simulation and realistic conditions, it is shown that the EKF approach enables to retrieve the sought-after optical parameters as time-range-dependent functions and hence, to track the atmospheric evolution, its performance being only limited by the quality and availability of the 'a priori' information and the accuracy of the atmospheric model assumed. The study ends with an encouraging practical inversion of a live-scene measured with the Nd:YAG elastic-backscatter lidar station at our premises in Barcelona. !20
机译:摘要:到目前为止,大气消退和后向散射的恢复主要依靠标准简单的非存储过程,例如坡度方法,指数曲线拟合和克列特方法。然而,由于它们固有的缺乏适应性,因此它们的性能最终受到限制,因为它们仅适用于当前收益,既不考虑过去的估计,也不考虑信号的统计或先前的不确定性。在这项工作中,通过扩展的卡尔曼滤波器(EKF)解决了脉冲弹性后向散射激光雷达回波的后向散射和消光与后向散射比的首次反转,从而克服了这些限制。因此,只要不同的返回信号收入,滤波器就可以根据最小方差标准根据光学参数的先验估计与新估计之间的不平衡来更新加权自身。校准误差或初始化不确定性也可以被吸收。研究始于反演问题的提出和适当的随机模型。基于广泛的仿真和现实条件,结果表明,EKF方法能够检索作为时间范围相关函数的光学参数,从而跟踪大气的演变,其性能仅受质量和可用性的限制。 '先验'信息和假定的大气模型的准确性。这项研究以在我们位于巴塞罗那的工厂使用Nd:YAG弹性后向散射激光雷达站测量的实况进行令人鼓舞的实际反演结束。 !20

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