基于全球eo的降水产品对印度气象部门网格降水的性能评估

Remote. Sens. Pub Date : 2023-07-07 DOI:10.3390/rs15133443
Nitesh Awasthi, J. N. Tripathi, G. Petropoulos, Dileep Kumar Gupta, Ashutosh Kumar Singh, Amar Kumar Kathwas
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引用次数: 2

摘要

监测全球水资源对于预测未来地球上的地质水文灾害至关重要。在本研究中,利用印度气象部门(IMD) 30多年(1990-2021)的网格化降水数据集,对CHIRPS、NASA POWER、ERA-5和PERSIANN-CDR反演的多卫星降水产品在月和年时间尺度上的功能维度进行了区域、分区域和像元水平的评估。研究结果表明,persann - cdr数据集在印度中部、印度东北部和印度西北部的表现明显更好,而NASA-POWER降水产品在印度中部和印度南半岛的表现更好。另外两个降水产品(CHIRPS和ERA-5)在印度各次区域表现中等。CHIRPS和NASA POWER降水产品与IMD网格降水产品的平均值(3.05 mm/天)相比表现不佳,而其他两个产品ERA-5和PERSIANN-CDR在整个印度表现优异。此外,当年平均降雨量在0 ~ 7 mm/d之间时,PERSIANN-CDR在印度中部、印度东北部、印度西北部和南半岛地区表现较好,而在年平均降雨量在0 ~ 7 mm/d之间时,ERA-5在印度中部和南半岛地区表现较好。此外,从调查中得出了一个特殊的观察结果,即各自的数据集能够表征西高止山脉季风期间的降水量。然而,这些产品需要使用基于量具的数据集进行定期校准,以便利用非常密集的雨量计数据改进未来的应用和对未来较长时间内即将到来的水文灾害的预测。预期本研究结果将有助于为区域和区域尺度上的各种研究选择适当和重要的数据集。
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Performance Assessment of Global-EO-Based Precipitation Products against Gridded Rainfall from the Indian Meteorological Department
Monitoring water resources globally is crucial for forecasting future geo-hydro disasters across the Earth. In the present study, an attempt was made to assess the functional dimensionality of multi-satellite precipitation products, retrieved from CHIRPS, NASA POWER, ERA-5, and PERSIANN-CDR with respect to the gridded India Meteorological Department (IMD) precipitation dataset over a period of 30+ years (1990–2021) on monthly and yearly time scales at regional, sub regional, and pixel levels. The study findings showed that the performance of the PERSIANN-CDR dataset was significantly better in Central India, Northeast India, and Northwest India, whereas the NASA-POWER precipitation product performed better in Central India and South Peninsular of India. The other two precipitation products (CHIRPS and ERA-5) showed the intermediate performance over various sub regions of India. The CHIRPS and NASA POWER precipitation products underperformed from the mean value (3.05 mm/day) of the IMD gridded precipitation product, while the other two products ERA-5 and PERSIANN-CDR are over performed across all India. In addition, PERSIANN-CDR performed better in Central India, Northeast India, Northwest India, and the South Peninsula, when the yearly mean rainfall was between 0 and 7 mm/day, while ERA-5 performed better in Central India and the South Peninsula region for a yearly mean rainfall above 0–7 mm/day. Moreover, a peculiar observation was made from the investigation that the respective datasets were able to characterize the precipitation amount during the monsoon in Western Ghats. However, those products needed a regular calibration with the gauge-based datasets in order to improve the future applications and predictions of upcoming hydro-disasters for longer time periods with the very dense rain gauge data. The present study findings are expected to offer a valuable contribution toward assisting in the selection of an appropriate and significant datasets for various studies at regional and zonal scales.
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