基于斯里兰卡Kelani河流域雨量资料的PERSIANN-CCS卫星衍生降雨产品评价

IF 0.4 Q4 ENGINEERING, MULTIDISCIPLINARY
B. Basnayake, U. G. C. R. Madushani
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引用次数: 0

摘要

卫星降雨估计(SREs)具有很高的空间和时间分辨率,对于雨量稀少的地区尤其重要。然而,在申请进行水文研究之前,SREs需要用测量的降雨数据进行评估。利用2004 - 2010年斯里兰卡克拉尼河流域的降水资料,对基于人工神经网络云分类系统(persann - ccs)产品的遥感降水估算在日、月、年和季节尺度上的精度进行了评价。使用连续和分类验证统计对SREs的性能进行评估。persann - ccs降水估计遵循双模态降水模式,在西南季风(SWM)季节(5 - 9月)表现出较大的低估,而在季风间期(IM1)期间(3 - 4月)表现出较大的高估。与季风性降雨相比,persann - ccs更能识别常规降雨和低压降雨。另一方面,高雨季产生的误报比低雨季低。每日分类统计显示高于平均得分(准确率>0.69;荚> 0.65;farfbias - 64%)。校正偏差后的persann - ccs可能成为克拉尼河流域洪水预报应用的高分辨率雨源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of PERSIANN-CCS Satellite Derived Rainfall Product with Raingauge Data over Kelani River Basin, Sri Lanka
Satellite rainfall estimates (SREs) are high in spatial and temporal resolution and particularly important for regions with sparse raingauges. However, SREs are required to evaluate with gauged rainfall data before applying for hydrological studies. In this research, the accuracy of Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks Cloud Classification System (PERSIANN-CCS) product was evaluated at daily, monthly, yearly, and seasonal scale upon the raingauge data of the Kelani River basin of Sri Lanka for the period 2004 to 2010. The performance of the SREs was evaluated using both continuous and categorical verification statistics. PERSIANN-CCS rainfall estimates follow the bi-modal rainfall pattern and showed greater underestimation in South West Monsoon (SWM) season (May-Sep.) and overestimation in InterMonsoon 1 (IM1) period (March-April). PERSIANN-CCS is more capable of recognizing conventional and depressional rains than monsoonal rains. On the other hand, it produces low false alarms in the high rainy season than in the low rainy season. The daily categorical statistics show above average scores (Accuracy>0.69; POD>0.65; FAR<0.34; 0.76>FBias<1.11), however, estimations were with low CC (<0.53) and high bias (<24 & >-64%). Bias corrected PERSIANN-CCS may be a high-resolution rainfall source for flood forecasting applications in the Kelani River basin.
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