Assessment of Land Desertification in the Brazilian East Atlantic Region Using the Medalus Model and Google Earth Engine

被引:1
|
作者
Macedo, Theilon Henrique de Jesus [1 ]
Tagliaferre, Cristiano [2 ]
da Silva, Bismarc Lopes [3 ]
de Paula, Alessandro [2 ]
Lemos, Odair Lacerda [2 ]
Rocha, Felizardo Adenilson [4 ]
Pinheiro, Rosilene Gomes de Souza [3 ]
Santos Lima, Ana Carolina [3 ]
机构
[1] State Univ Southwestern Bahia, Forest Sci Grad Program, BR-45029000 Vitoria Da Conquista, BA, Brazil
[2] State Univ Southwestern Bahia, Dept Agr Engn & Soils DEAS, BR-45029000 Vitoria Da Conquista, BA, Brazil
[3] State Univ Southwestern Bahia, Grad Program Agron, BR-45029000 Vitoria Da Conquista, BA, Brazil
[4] Fed Inst Bahia, BR-45029000 Vitoria Da Conquista, BA, Brazil
关键词
environmental sensitivity; cloud computing; GIS; land degradation; Brazil; AREAS; RISK; NORTHEAST;
D O I
10.3390/land13010031
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Many factors drive land desertification, especially in arid and semi-arid regions. However, the sheer number of these driving factors of desertification makes analyses computer-intensive. Cloud computing offers a solution to address this problem, especially in developing countries. The objective of this work was to assess the sensitivity of the East Atlantic Basin, Brazil, to desertification using the Mediterranean Desertification and Land Use (MEDALUS) model and Google Earth Engine (GEE). The model is composed of four environmental Quality Indices (QIs) associated with soil (SQI), vegetation (VQI), climate (CQI), and management (MQI), each encompassing factors that influence the desertification process. Digital databases corresponding to these factors were pre-processed and uploaded to GEE for analysis. We report Environmentally Sensitive Areas (ESAs) and Environmentally Critical Factors (ECF) maps of the East Atlantic Basin, which show that most of the basin is in either a critical (49.4%) or fragile (35.7%) state of sensitivity. In contrast, only a smaller portion of the area is unaffected (5%) or potentially affected (10.1%). The analysis also revealed an inverse correlation between desertification sensitivity and the presence of vigorous vegetation. A joint evaluation of ESAs and ECF shed light on the importance of each factor in the sensitivity to desertification. The East Atlantic Basin shows a high degree of sensitivity to desertification, thereby demanding more attention and the establishment of measures to mitigate the negative impacts of the desertification process.
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页数:16
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