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首页> 外文期刊>Atmospheric research >Development of a novel Weighted Average Least Squares-based ensemble multi-satellite precipitation dataset and its comprehensive evaluation over Pakistan
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Development of a novel Weighted Average Least Squares-based ensemble multi-satellite precipitation dataset and its comprehensive evaluation over Pakistan

机译:新型加权平均最小二乘基于基于卫星降水数据集的开发及其对巴基斯坦的综合评价

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摘要

Ensemble multi-satellite precipitation datasets (ESPDs) are alternative to satellite-based precipitation products (SPs), which tend to reduce the errors, combine advantages of individual SPs, and have higher accuracy for hydrological applications. The current study proposes and evaluates a dynamic WALS-ESPD developed using the Weighted Average Least Square (WALS) algorithm, which has 0.25 degrees spatial and daily temporal resolutions across glacial, humid, arid and hyper-arid regions of Pakistan during 2000-2015. WALS-ESPD is developed using three SPs, Tropical Rainfall Measurement Mission (TRMM) Multi-Satellite Precipitation Analysis (TMPA) 3B42V7, Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks-Climate Data Record (PERSIANN-CDR), Climate Prediction Center MORPHing technique (CMORPH), and one re-analysis product, Era-Interim. Mean Bias (MB), Mean Absolute Error (MAE), unbiased Root Mean Square Error (ubRMSE), Correlation Coefficient (R), Kling-Gupta efficiency (KGE score), and Theil's U are used to evaluate the performance of WALS-ESPD both spatially and temporally. Moreover, the skill scores of statistical metrics are used to assess the WALS-ESPD performance against two previously developed ESPDs, DBMA-ESPD and DCBAESPD. TMPA dominated all SPs with average weights of 0.317, 0.341, 0.314, and 0.326 across the glacial, humid, arid and hyper-arid regions. TMPA dominated pre-monsoon (30.26%) and monsoon (35.82%) seasons, while PERSIANN-CDR dominated post-monsoon (27.58%) and winter (29.82%) seasons. WALS-ESPD performed relatively poor across the glacial and humid regions, and during monsoon and pre-monsoon seasons. Skill scores of WALS-ESPD against DBMA-ESPD show better performance of WALS-ESPD in all four regions, especially across the glacial region with the maximum MB, MAE, and ubRMSE scores of 27.36%, 28.34%, and 27.67%, respectively. Meanwhile, WALS-ESPD performed better than DCBA-ESPD in the whole glacial region and most part of other regions, while DCBA-ESPD dominated WALS-ESPD at few stations across humid, arid, and hyper-arid (south-east) regions.
机译:合奏的多卫星降水数据集(ESPDS)是卫星沉淀产品(SPS)的替代品,其往往会降低误差,组合各个SPS的优点,并具有更高的水文应用精度。目前的研究提出并评估了使用加权平均最小二乘(WALS)算法开发的动态WALS-ESPD,其在2000 - 2015年期间,在巴基斯坦的冰川,潮湿,干旱和超干旱地区具有0.25度的空间和日常时间分辨率。 WALS-ESPD采用三个SPS,热带降雨测量任务(TRMM)多卫星降水分析(TMPA)3B42V7,使用人工神经网络 - 气候数据记录(PERSIANN-CDR),气候预测中心变形(PERSIANN-CDR)的降水估算技术(CMORPH)和一个重新分析产品,ERA临时。平均偏差(MB),平均绝对误差(MAE),无偏见的根均方误差(UBRMSE),相关系数(R),Kling-Gupta效率(KGE得分),而TheIL的U用于评估WALS-ESPD的性能在空间和时间上。此外,统计指标的技能评分用于评估WALS-ESPD性能,针对两个先前开发的ESPD,DBMA-ESPD和DCBAESPD进行评估。 TMPA以平均重量为0.317,0.341,0.314和0.326的所有SP占主导地位,横跨冰水,潮湿,干旱和超干旱地区。 TMPA主导季隆(30.26%)和季风(35.82%)季节,而Persiann-CDR主导季后翁(27.58%)和冬季(29.82%)季节。 WALS-ESPD在冰川和潮湿的地区和季风和季风季季节期间表现得相对较差。 WALS-ESPD对DBMA-ESPD的技能分数显示出所有四个地区的WALS-ESPD的表现更好,特别是在冰川地区的最大MB,MAE和UBRMSE分别分别为27.36%,28.34%和27.67%。同时,沃尔斯-ESPD在整个冰川地区和大部分地区的大部分地区的DCBA-ESPD表现优于DCBA-ESPD,而DCBA-ESPD在潮湿,干旱和超干旱(东南)地区的少数站中占据了WALS-ESPD。

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