2017
DOI: 10.1590/2318-0331.0117160045
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Impact of soil moisture over Palmer Drought Severity Index and its future projections in Brazil

Abstract: Soil moisture is a main factor for the study of drought impacts on vegetation. Drought is a regional phenomenon and affects the food security more than any other natural disaster. Currently, the monitoring of different types of drought is based on indexes that standardize in temporal and regional level allowing, thus, comparison of water conditions in different areas. Therefore, in order to assess the impact of soil moisture during periods of drought, drought Palmer Severity Index was estimated for the entire … Show more

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Cited by 23 publications
(15 citation statements)
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“…A new soil map was elaborated using the available soil profile information from Brazil, Paraguay, Uruguay, and Argentina, and it depicts 18 different soil types. Results indicate that the use of more accurate initial soil moisture conditions and incorporating a new soil map with hydraulic parameters, more representative of South American soils, improve the daily total precipitation forecasts both in quantitative and spatial representations [26]. The spatial resolution of the MUSA is 25 km, with daily information.…”
Section: Lisflood Modelmentioning
confidence: 97%
“…A new soil map was elaborated using the available soil profile information from Brazil, Paraguay, Uruguay, and Argentina, and it depicts 18 different soil types. Results indicate that the use of more accurate initial soil moisture conditions and incorporating a new soil map with hydraulic parameters, more representative of South American soils, improve the daily total precipitation forecasts both in quantitative and spatial representations [26]. The spatial resolution of the MUSA is 25 km, with daily information.…”
Section: Lisflood Modelmentioning
confidence: 97%
“…Also, this SDF framework could couple interdisciplinary studies, with better relationships towards the nexus of water security, energy security and food security. Thus, we recommend future research of SDF framework linked to: Palmer's drought indices (Rossato et al, 2017), modelbased framework to disaster management (Horita et al, 2017), ecosystem-based assessment for water security modeling (Taffarello et al, 2017), effectiveness of drought securitization under climate change scenarios (Mohor and Mendiondo, 2017). Moreover, SDF framework is capable of integrating actions towards: dynamic price incentive programs related to wise human-water co-evolution patterns, water-sensitive programs under deep cultural features, socio-hydrological observatories for water security, feasibility analysis of the economic impacts of implementing new technologies for water economy and flow measurement, leakage control, detecting and legalizing illegal connections and water reuse, among others.…”
Section: Conclusion and Recommendationsmentioning
confidence: 97%
“…Assimilation of soil moisture into land surface models has resulted in increased understanding of processes controlling the energy exchange at the land-atmosphere interface. The spatial distribution and temporal evolution of SM is of central importance to different societal sectors and activities, such as weather forecasting, management of water reservoirs, food security, watershed management, development of climate models, drought monitoring, land slide prediction, flood forecasting and others [1][2][3][4][5][6][7][8][9]. Of particular importance is the use of SM to monitor drought conditions over forest and agricultural sites, either using soil moisture only or in combination with other parameters, such as The objective of this study was to describe soil moisture products developed using the network of sensors established by Cemaden.…”
Section: Introductionmentioning
confidence: 99%