...
首页> 外文期刊>Atmospheric research >Satellite-based precipitation estimates using a dense rain gauge network over the Southwestern Brazilian Amazon: Implication for identifying trends in dry season rainfall
【24h】

Satellite-based precipitation estimates using a dense rain gauge network over the Southwestern Brazilian Amazon: Implication for identifying trends in dry season rainfall

机译:基于卫星的降水估计,在巴西亚马逊西南部的致密雨量仪网络估算:识别旱季降雨趋势的含义

获取原文
获取原文并翻译 | 示例
           

摘要

Accurate long-term estimates of rainfall at fine spatial and temporal resolution are vital for hydrometeorology and climatology studies, but such data are often unavailable in remote regions. We assessed the accuracy of three satellite-based precipitation products that have data from 1981 to 2019 over the state of RondoSICnia in the Brazilian Amazon: (a) satellite-only, using the Climate Hazards Group Infrared Precipitation (CHIRP) product, (b) CHIRP with sparse gauge data (CHIRPS), and (c) CHIRPS calibrated with data from a dense rain gauge network (N = 73) (dnCHIRPS). We evaluated the rainfall products using additional validation gauges (N = 55) at the monthly and seasonal time scales and compared their drought events and temporal trends. Both CHIRP (10.0 mm/month mean error (ME), 23.6% percent bias (PB)) and CHIRPS (-0.08ME, 7.4% PB) underestimate high monthly rainfall in the wet season and overestimate low monthly rainfall during the dry season. dnCHIRPS had a lower error in monthly rainfall (-0.01ME, 1.1%PB) compared with CHIRP and CHIRPS, with the largest percentage difference between dnCHIRPS and the other two datasets in the dry season. dnCHIRPS captured decreasing trends in dry season rainfall over agricultural parts of the state, trends that were missed by the other two products. We conclude that a high density of rain gauges is essential for documenting the spatial pattern and trends in rainfall during the dry season and droughts in this important agricultural region of the Amazon basin.
机译:精确的空间和时间分辨率降雨的准确长期估计对于水文理解和气候学研究至关重要,但这些数据通常在偏远地区通常不可用。我们评估了基于三种卫星的降水量的准确性,这些降水量从1981年到2019年的数据到rondo& sic& nia在巴西亚马逊中的nia:(a)仅使用气候危险组红外降水(Chirp)产品,(b)具有稀疏计数据(chirps)的啁啾,并且(c)啁啾校准着来自致密雨量网(n = 73)(dnchirps)的数据。我们在每月和季节性时间尺度上使用额外的验证仪(n = 55)评估降雨产品,并比较流行事件和时间趋势。啁啾(10.0毫米/月平均误差(ME),23.6%偏见(PB))和啁啾(-0.08ME,7.4%PB)低估了湿季节的高每月降雨,在旱季期间高估了低月降雨量。与Chirp和Chirps相比,DNChirps在每月降雨量(-0.01ME,1.1%PB)的误差下降,DNChirps与旱季中的其他两个数据集之间的最大百分比。 DNChirps捕获了旱季降雨量的趋势,在国家的农业部分,其他两种产品遗漏的趋势。我们得出结论,在亚马逊盆地这一重要农业区内的干旱季节和干旱期间,高密度的雨量仪表对于记录降雨量的空间模式和趋势至关重要。

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