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首页> 外文期刊>Journal of atmospheric and oceanic technology >Techniques of Wind Vector Estimation from Data Measured with a Scanning Coherent Doppler Lidar
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Techniques of Wind Vector Estimation from Data Measured with a Scanning Coherent Doppler Lidar

机译:利用扫描相干多普勒激光雷达测量数据估算风矢量的技术

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摘要

The results of a theoretical study of the feasibility of wind velocity vector estimation from data, measured with a scanning coherent Doppler lidar, are presented. The estimation techniques considered are (a) the direct sine wave fitting (DSWF) and the filtered sine wave fitting (FSWF), where at first the radial wind velocities are estimated and then the wind vector is estimated from the dependence of the radial velocity versus the azimuth angle of the scanning; and (b) the maximum of the function of accumulated spectra (MFAS) and the maximum likelihood for the wind vector estimation (WV ML), where the wind vector is estimated directly from data measured by a scanning lidar without intermediate estimation of the radial wind velocities. It has been shown that due to strong averaging of noise fluctuations in accumulated spectra, the WV ML and MFAS techniques allow one to estimate the wind vector with acceptable accuracy at an essentially lower signal-to-noise ratio (SNR) than the methods of the sine wave fitting, where noise can be the source of many spurious estimates of the radial wind velocity. The ability to find optimal criterion (in the case of MFAS) for acceptance or rejection of the wind vector estimate has been analyzed. The amount of measured data needed for spectral accumulation in order to realize optimal performance has been calculated.
机译:提出了用扫描相干多普勒激光雷达测得的数据进行风速矢量估算的可行性的理论研究结果。考虑的估算技术为(a)直接正弦波拟合(DSWF)和滤波后的正弦波拟合(FSWF),其中首先估算径向风速,然后根据径向速度与扫描的方位角; (b)累积频谱函数的最大值(MFAS)和风矢量估计的最大可能性(WV ML),其中风矢量是直接由扫描激光雷达测量的数据估算的,而无需中间估算径向风速度。已经表明,由于对累积频谱中的噪声波动进行了平均,WV ML和MFAS技术使人们能够以实质上低于信噪比(SNR)的信噪比(SNR)估算风矢量。正弦波拟合,其中噪声可能是径向风速的许多虚假估计的来源。分析了寻找最佳标准(对于MFAS)以接受或拒绝风矢量估计的能力。为了实现最佳性能,已计算出频谱累积所需的测量数据量。

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