将土壤湿度纳入巴西半干旱区干旱监测的重要性:利用JULES模型、现场观测和遥感进行评估

Marcelo Zeri, Karina Williams, Ana Paula M. A. Cunha, Gisleine Cunha-Zeri, Murilo S. Vianna, Eleanor M. Blyth, Toby R. Marthews, Garry D. Hayman, José Maria Costa, José A. Marengo, Regina C. S. Alvalá, Osvaldo L. L. Moraes, Marcelo V. Galdos
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引用次数: 8

摘要

土壤湿度信息对于监测干旱的严重程度、雨季的开始、种植日期和产量损失的早期预警至关重要。本文通过综合360个站点的土壤湿度观测数据、基于陆地表面模型的根区土壤湿度以及基于遥感的植被健康指数,评估了巴西半干旱区干旱的时空变化趋势。土壤湿度数据集来自巴西国家自然灾害监测和预警中心(Cemaden)维护的站点网络。1979年至2018年期间,10至35厘米深度的土壤含水量通过运行JULES陆地表面模型(联合英国土地环境模拟器)获得。模拟的土壤湿度与2015-2018年共同时期的测量结果相关,整个域的平均相关系数为0.48。标准化土壤水分异常(SMA)在该地区众所周知的干旱期,特别是El-Niño年,显示出强烈的负值。SMA在识别雨季和种植季前2个月干旱方面的表现与常用的干旱评估标准降水指数(SPI)相似:两个指数都识别了12-14个事件。最后,利用交叉小波变换评估SMA和SPI与植被健康指数(VHI)的时间关系。结果表明,在年尺度上存在1至1.5个月的滞后相关性,这表明SMA和SPI的负趋势可以作为生长季节产量损失的早期预警。公共政策的干旱评价应考虑多种干旱指标的组合,包括土壤水分异常。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Importance of including soil moisture in drought monitoring over the Brazilian semiarid region: An evaluation using the JULES model, in situ observations, and remote sensing

Soil moisture information is essential to monitoring of the intensity of droughts, the start of the rainy season, planting dates and early warnings of yield losses. We assess spatial and temporal trends of drought over the Brazilian semiarid region by combining soil moisture observations from 360 stations, root zone soil moisture from a leading land surface model, and a vegetation health index from remote sensing. The soil moisture dataset was obtained from the network of stations maintained by the National Center of Monitoring and Early Warning of Natural Disasters (Cemaden), in Brazil. Soil water content at 10 to 35 cm depth, for the period 1979–2018, was obtained from running the JULES land surface model (the Joint UK Land Environment Simulator). The modelled soil moisture was correlated with measurements in the common period of 2015–2018, resulting in an average correlation coefficient of 0.48 across the domain. The standardized soil moisture anomaly (SMA) was calculated for the long-term modelled soil moisture and revealed strong negative values during well-known drought periods in the region, especially during El-Niño years. The performance of SMA in identifying droughts during the first 2 months of the raining and cropping season was similar to the Standardized Precipitation Index (SPI), commonly used for drought assessment: 12–14 events were identified by both indices. Finally, the temporal relationship between both SMA and SPI with the Vegetation Health Index (VHI) was assessed using the cross-wavelet transform. The results indicated lagged correlations of 1 to 1.5 months in the annual scale, suggesting that negative trends in SMA and SPI can be an early warning to yield losses during the growing season. Public policies on drought assessment should consider the combination of multiple drought indices, including soil moisture anomaly.

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