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Wind scatterometry with improved ambiguity selection and rain modeling.

机译:风散射法,改进了模糊度选择和降雨模型。

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Although generally accurate, the quality of SeaWinds on QuikSCAT scatterometer ocean vector winds is compromised by certain natural phenomena and retrieval algorithm limitations. This dissertation addresses three main contributors to scatterometer estimate error: poor ambiguity selection, estimate uncertainty at low wind speeds, and rain corruption. A quality assurance (QA) analysis performed on SeaWinds data suggests that about 5% of SeaWinds data contain ambiguity selection errors and that scatterometer estimation error is correlated with low wind speeds and rain events.; Ambiguity selection errors are partly due to the “nudging” step (initialization from outside data). A sophisticated new non-nudging ambiguity selection approach produces generally more consistent wind than the nudging method in moderate wind conditions. The non-nudging method selects 93% of the same ambiguities as the nudged data, validating both techniques, and indicating that ambiguity selection can be accomplished without nudging.; Variability at low wind speeds is analyzed using tower-mounted scatterometer data. According to theory, below a threshold wind speed, the wind fails to generate the surface roughness necessary for wind measurement. A simple analysis suggests the existence of the threshold in much of the tower-mounted scatterometer data. However, the backscatter does not “go to zero” beneath the threshold in an uncontrolled environment as theory suggests, but rather has a mean drop and higher variability below the threshold.; Rain is the largest weather-related contributor to scatterometer error, affecting approximately 4% to 10% of SeaWinds data. A simple model formed via comparison of co-located TRMM PR and SeaWinds measurements characterizes the average effect of rain on SeaWinds backscatter. The model is generally accurate to within 3 dB over the tropics. The rain/wind backscatter model is used to simultaneously retrieve wind and rain from SeaWinds measurements. The simultaneous wind/rain (SWR) estimation procedure can improve wind estimates during rain, while providing a scatterometer-based rain rate estimate. SWR also affords improved rain flagging for low to moderate rain rates. QuikSCAT-retrieved rain rates correlate well with TRMM PR instantaneous measurements and TMI monthly rain averages. SeaWinds rain measurements can be used to supplement data from other rain-measuring instruments, filling spatial and temporal gaps in coverage.
机译:尽管通常是准确的,但QuikSCAT散射仪海洋矢量风上的SeaWinds的质量受到某些自然现象和检索算法限制的影响。本文针对散射计估计误差的三个主要贡献因素:模糊度选择不当,低风速下的估计不确定性以及降雨的破坏。对SeaWinds数据进行的质量保证(QA)分析表明,大约5%的SeaWinds数据包含歧义选择误差,并且散射仪估计误差与低风速和降雨事件相关。模糊度选择错误部分归因于“微调”步骤(从外部数据初始化)。在中等风况下,一种复杂的新型非疏-歧义选择方法通常会比疏consistent方法产生更一致的风。非轻推方法选择与轻推数据相同的歧义度的93%,这两种技术均得到验证,并表明无需轻推即可完成歧义选择。使用安装在塔架上的散射仪数据分析低风速下的可变性。根据理论,在阈值风速以下,风无法生成风测量所需的表面粗糙度。一个简单的分析表明,在大多数塔式散射仪数据中都存在阈值。但是,在理论上不受控制的环境中,反向散射不会在阈值以下“归零”,而是在阈值以下具有均值下降和较高的可变性。雨水是与天气有关的最大原因,导致散射仪误差,影响到大约4%至10%的SeaWinds数据。通过比较位于同一地点的TRMM PR和SeaWinds测量结果形成的简单模型可以表征降雨对SeaWinds反向散射的平均影响。该模型在热带地区的精度通常在3 dB以内。雨/风反向散射模型用于从SeaWinds测量中同时获取风和雨。同时进行风/雨(SWR)估计程序可以改善下雨期间的风估计,同时提供基于散射仪的雨率估计。 SWR还为中低降雨率提供了更好的降雨标记。 QuikSCAT回收的降雨率与TRMM PR的瞬时测量值和TMI的每月降雨平均值密切相关。 SeaWinds雨量测量可用于补充其他雨量测量仪器的数据,填补覆盖范围的时空差异。

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