首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Improved representation of diurnal variability of rainfall retrieved from the Tropical Rainfall Measurement Mission Microwave Imager adjusted Precipitation Estimation From Remotely Sensed Information Using Artificial Neural Networks (PERSIANN) system
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Improved representation of diurnal variability of rainfall retrieved from the Tropical Rainfall Measurement Mission Microwave Imager adjusted Precipitation Estimation From Remotely Sensed Information Using Artificial Neural Networks (PERSIANN) system

机译:使用人工神经网络(PERSIANN)系统从热带雨量测量任务微波成像仪调整的遥感信息中估计的降水估算中检索到的降水的日变化的改进表示

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Precipitation Estimation from Remotely Sensed Information Using Artificial Neural Networks (PERSIANN) is a satellite infrared-based algorithm that produces global estimates of rainfall at resolutions of 0.25° × 0.25° and a half-hour. In this study the model parameters of PERSIANN are routinely adjusted using coincident rainfall derived from the Tropical Rainfall Measurement Mission Microwave Imager (TMI). The impact of such an adjustment on capturing the diurnal variability of rainfall is examined for the Boreal summer of 2002. General evaluations of the PERSIANN rainfall estimates with/without TMI adjustment were conducted using U.S. daily gauge rainfall and nationwide radar network (weather surveillance radar) 1988 Doppler data. The diurnal variability of PERSIANN rainfall estimates with TMI adjustment is improved over those without TMI adjustment. In particular, the amounts of afternoon and morning maximums in rainfall diurnal cycles improved by 14.9% and 26%, respectively, and the original 2–3 hours of time lag in the phase of diurnal cycles improved by 1–2 hours. In addition, the rainfall estimate with TMI adjustment has higher correlation (0.75 versus 0.63) and reduced bias (+8% versus ?11%) at monthly 0.25° × 0.25° resolution than that without TMI adjustment and consistently shows higher correlation (0.62 versus 0.51) and lower bias (+22% versus ?30%) at daily 0.25° × 0.25° scale. This study provides evidence that the TMI, which measures instantaneous rain rates from the TRMM platform flying on a non-Sun-synchronous orbit, enables PERSIANN to capture more realistic diurnal variations of rainfall. This study also reveals the limitation of current satellite rainfall estimation techniques in retrieving the rainfall diurnal features and suggests that further investigation of precipitation generation in different periods of cloud life cycles might help resolve this limitation.
机译:使用人工神经网络(PERSIANN)从遥感信息中进行降水估算是一种基于卫星红外的算法,可以以0.25°×0.25°半小时的分辨率生成全球降雨量的估算值。在这项研究中,使用来自热带降雨测量任务微波成像仪(TMI)的一致降雨常规调整PERSIANN的模型参数。在2002年的北方夏季,研究了这种调整对捕获降雨量的日变化的影响。使用美国日均降雨量和全国范围的雷达网络(天气监视雷达)对有/没有进行TMI调整的PERSIANN降雨量估算进行了总体评估。 1988年多普勒数据。与没有TMI调整的相比,采用TMI调整的PERSIANN降雨量估计值的日变化性得到了改善。尤其是,降雨昼夜周期中下午和早晨最大值的数量分别增加了14.9%和26%,而昼夜周期阶段中最初的2-3小时的时间延迟改善了1-2小时。此外,与不进行TMI调整的情况相比,采用TMI调整的降雨量估计值在月度0.25°×0.25°分辨率下具有更高的相关性(0.75对0.63)和偏倚减小(+ 8%对?11%),并且始终显示较高的相关性(0.62对每天0.25°×0.25°标度下的偏差为(0.51)和更低的偏差(+ 22%对?30%)。这项研究提供了证据,TMI可以测量TRMM平台在非太阳同步轨道上飞行时的瞬时降雨率,从而使PERSIANN能够捕获更实际的昼夜降雨量变化。这项研究还揭示了当前卫星降雨量估算技术在检索降雨量昼夜特征方面的局限性,并建议进一步研究云生命周期不同时期的降雨产生可能有助于解决这一局限性。

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