Evaluation of multiple gridded precipitation datasets using gauge observations over Indonesia during the Asian-Australian monsoon period

IF 0.7 4区 地球科学 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES MAUSAM Pub Date : 2023-03-29 DOI:10.54302/mausam.v74i2.6006
Donaldi S Permana, Supari Supari, R. Hutauruk, D. Nuryanto, N. Riama
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Abstract

Gridded precipitation datasets are widely available from satellite observations and reanalysis model outputs. However, its performance in specific regions in the world may vary and depends on several factors, such as grid data spatial resolution, rainfall estimation algorithms, geographical location, elevation and regional climate conditions. This study aims to report on 13 gridded precipitation datasets' performance over Indonesia through direct comparisons with rain gauge measurements at various time scales over a 12-year period (2001-2012). The results show that, at daily timescales, the MERRA2 and CPC outperformed other datasets but tended to underestimate the rain gauge data in Indonesia, followed by GPCC. However, MERRA2 has smaller variation and bias than CPC. On monthly and annually timescales, CPC was found to be the best-performing dataset, followed by MERRA2, GPM-IMERG, GPCC and TRMM (TMPA), while JRA55 registered the worst performance at all timescales, followed by ERA-Interim. The performance of all datasets was better during JJA and SON than during DJF and MAM. The best performances were found in the southern (S) region of Indonesia, while the worst were in the northeast (NE) region for all months and datasets. The best performances during DJF (Asian Winter Monsoon) and JJA/SON (Australian Winter Monsoon) were found in the northwest (NW) and southern (S) regions, respectively. Most datasets overestimate the rain gauge data over Indonesia, except for GSMaP, MERRA2, CPC and CMORPH.
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亚洲-澳大利亚季风期印度尼西亚多个网格降水数据集的测量值评估
网格化降水数据集广泛可从卫星观测和再分析模型输出中获得。然而,它在世界特定地区的表现可能会有所不同,并取决于几个因素,如网格数据的空间分辨率、降雨量估计算法、地理位置、海拔和区域气候条件。本研究旨在通过与12年期间(2001-2012年)不同时间尺度的雨量计测量值的直接比较,报告印度尼西亚13个网格降水数据集的表现。结果表明,在日常时间尺度上,MERRA2和CPC的表现优于其他数据集,但往往低估了印度尼西亚的雨量计数据,其次是GPCC。然而,MERRA2比CPC具有更小的变异和偏差。在月度和年度时间尺度上,CPC被发现是表现最好的数据集,其次是MERRA2、GPM-IMERG、GPCC和TRMM(TMPA),而JRA55在所有时间尺度上表现最差,其次是ERA Interim。在JJA和SON期间,所有数据集的性能都优于DJF和MAM期间。在所有月份和数据集中,印度尼西亚南部(S)地区的表现最好,而东北部(NE)地区表现最差。DJF(亚洲冬季风)和JJA/SON(澳大利亚冬季风)期间的最佳表现分别出现在西北(NW)和南部(S)地区。除GSMaP、MERRA2、CPC和CMORPH外,大多数数据集都高估了印度尼西亚的雨量计数据。
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来源期刊
MAUSAM
MAUSAM 地学-气象与大气科学
CiteScore
1.20
自引率
0.00%
发文量
1298
审稿时长
6-12 weeks
期刊介绍: MAUSAM (Formerly Indian Journal of Meteorology, Hydrology & Geophysics), established in January 1950, is the quarterly research journal brought out by the India Meteorological Department (IMD). MAUSAM is a medium for publication of original scientific research work. MAUSAM is a premier scientific research journal published in this part of the world in the fields of Meteorology, Hydrology & Geophysics. The four issues appear in January, April, July & October.
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