Mao Feiyue, Gong Wei, Li Chen
State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan 430079, China.
Opt Express. 2013 Apr 8;21(7):8286-97. doi: 10.1364/OE.21.008286.
The lidar signal-to-noise ratio decreases rapidly with an increase in range, which severely affects the retrieval accuracy and the effective measure range of a lidar based on the Fernald method. To avoid this issue, an alternative approach is proposed to simultaneously retrieve lidar data accurately and obtain a de-noised signal as a by-product by combining the ensemble Kalman filter and the Fernald method. The dynamical model of the new algorithm is generated according to the lidar equation to forecast backscatter coefficients. In this paper, we use the ensemble sizes as 60 and the factor δ(1/2) as 1.2 after being weighed against the accuracy and the time cost based on the performance function we define. The retrieval and de-noising results of both simulated and real signals demonstrate that our method is practical and effective. An extensive application of our method can be useful for the long-term determining of the aerosol optical properties.
随着探测距离的增加,激光雷达的信噪比迅速下降,这严重影响了基于费尔纳德方法的激光雷达的反演精度和有效测量范围。为避免这一问题,本文提出了一种将集合卡尔曼滤波器与费尔纳德方法相结合的方法,该方法可同时精确反演激光雷达数据,并获得去噪信号作为副产品。根据激光雷达方程建立新算法的动力学模型,用于预测后向散射系数。本文基于定义的性能函数,在权衡精度和时间成本后,将集合大小设为60,因子δ(1/2)设为1.2。模拟信号和真实信号的反演及去噪结果表明,该方法实用有效。该方法的广泛应用有助于长期确定气溶胶光学特性。