首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Comprehensive evaluation of multisatellite precipitation estimates over India using gridded rainfall data
【24h】

Comprehensive evaluation of multisatellite precipitation estimates over India using gridded rainfall data

机译:使用栅格化降雨数据对印度多卫星降水估计进行综合评估

获取原文
获取原文并翻译 | 示例
           

摘要

This study presents a comprehensive evaluation of five widely used multisatellite precipitation estimates (MPEs) against 1° × 1° gridded rain gauge data set as ground truth over India. One decade observations are used to assess the performance of various MPEs (Climate Prediction Center (CPC)-South Asia data set, CPC Morphing Technique (CMORPH), Precipitation Estimation From Remotely Sensed Information Using Artificial Neural Networks, Tropical Rainfall Measuring Mission’s Multisatellite Precipitation Analysis (TMPA-3B42), and Global Precipitation Climatology Project). All MPEs have high detection skills of rain with larger probability of detection (POD) and smaller “missing” values. However, the detection sensitivity differs from one product (and also one region) to the other. While the CMORPH has the lowest sensitivity of detecting rain, CPC shows highest sensitivity and often overdetects rain, as evidenced by large POD and false alarm ratio and small missing values. All MPEs show higher rain sensitivity over eastern India than western India. These differential sensitivities are found to alter the biases in rain amount differently. All MPEs show similar spatial patterns of seasonal rain bias and root-mean-square error, but their spatial variability across India is complex and pronounced. The MPEs overestimate the rainfall over the dry regions (northwest and southeast India) and severely underestimate over mountainous regions (west coast and northeast India), whereas the bias is relatively small over the core monsoon zone. Higher occurrence of virga rain due to subcloud evaporation and possible missing of small-scale convective events by gauges over the dry regions are the main reasons for the observed overestimation of rain by MPEs. The decomposed components of total bias show that the major part of overestimation is due to false precipitation. The severe underestimation of rain along the west coast is attributed to the predominant occurrence of shallow rain and underestimation of moderate to heavy rain by MPEs. The decomposed components suggest that the missed precipitation and hit bias are the leading error sources for the total bias along the west coast. All evaluation metrics are found to be nearly equal in two contrasting monsoon seasons (southwest and northeast), indicating that the performance of MPEs does not change with the season, at least over southeast India. Among various MPEs, the performance of TMPA is found to be better than others, as it reproduced most of the spatial variability exhibited by the reference.
机译:这项研究针对印度的地面实况,针对1°×1°网格雨量计数据集,对五种广泛使用的多卫星降水估计(MPE)进行了综合评估。十年观测用于评估各种MPE的性能(气候预测中心(CPC)-南亚数据集,CPC变形技术(CMORPH),使用人工神经网络从遥感信息中进行降水估算,热带降雨测量团的多卫星降水分析) (TMPA-3B42)和全球降水气候学项目)。所有MPE都具有较高的雨水检测技能,具有较高的检测概率(POD)和较小的“缺失”值。但是,检测灵敏度从一种产品(以及一个区域)到另一种产品是不同的。 CMORPH对雨水的检测灵敏度最低,而CPC对雨水的检测灵敏度最高,并且常常会过度检测雨水,这可以通过大POD和误报率以及小的缺失值来证明。在印度东部,所有MPE对雨水的敏感性都高于印度西部。发现这些不同的灵敏度可以不同地改变雨量的偏差。所有MPE的季节性降雨偏向和均方根误差都表现出相似的空间格局,但它们在印度各地的空间变异是复杂而明显的。 MPE高估了干旱地区(印度西北部和东南部)的降雨量,而低估了山区地区(印度西海岸和印度东北部)的降雨量,而核心季风区的偏向相对较小。观测到的MPE高估了降雨的主要原因,这是由于亚云蒸发所致的维加雨的发生率更高,以及在干燥地区雨量计可能缺少小尺度对流事件。总偏差的分解成分表明,高估的主要部分是由于虚假的降水造成的。西海岸地区降雨的严重低估是由于MPE造成的浅雨的普遍发生以及中度到重度降雨的低估。分解的分量表明,错过的降水和命中偏差是西海岸总偏差的主要误差来源。在两个截然不同的季风季节(西南和东北)中,所有评估指标均几乎相等,这表明MPE的性能不会随季节而变化,至少在印度东南部是这样。在各种MPE中,发现TMPA的性能优于其他MPE,因为它再现了参考文献显示的大多数空间变异性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号