Dynamics of Irrigated Land Expansion in the Ouémé River Basin Using Field and Remote Sensing Data in the Google Earth Engine

被引:0
|
作者
Ahoton, David Houewanou [1 ,2 ,3 ]
Bacharou, Taofic [4 ]
Bossa, Aymar Yaovi [2 ,3 ]
Sintondji, Luc Ollivier [2 ,3 ]
Bonkoungou, Benjamin [1 ,2 ,3 ]
Alofa, Voltaire Midakpo [1 ,2 ,3 ]
机构
[1] Univ Abomey Calavi, Doctoral Sch Agr & Water Sci DSAWS, Cotonou 01 BP 526, Abomey Calavi, Benin
[2] Univ Abomey Calavi, Natl Water Inst, Cotonou 01 BP 526, Abomey Calavi, Benin
[3] Univ Abomey Calavi, Ctr Excellence Afrique pour Eau Assainissement C2E, Cotonou 01 BP 526, Abomey Calavi, Benin
[4] Univ Abomey Calavi, Polytech Sch Abomey Calavi, Cotonou 01 BP 2009, Abomey Calavi, Benin
关键词
random forest; irrigated land; agricultural areas; Ts; NDVI; Ou & eacute; m & eacute; River basin; AREAS; OPPORTUNITIES; DEMAND;
D O I
10.3390/land13111926
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The availability of reliable and quantified information on the spatiotemporal distribution of irrigated land at the river basin scale is an essential step towards sustainable management of water resources. This research aims to assess the spatiotemporal extent of irrigated land in the Ou & eacute;m & eacute; River basin using Landsat multi-temporal images and ground truth data. A methodology was built around the use of supervised classification and the application of an algorithm based on the logical expression and thresholding of a combination of surface temperature (Ts) and normalized difference vegetation index (NDVI). The findings of the supervised classification showed that agricultural areas were 16,003 km2, 19,732 km2, and 22,850 km2 for the years 2014, 2018, and 2022, respectively. The irrigated land areas were 755 km2, 1143 km2, and 1883 km2 for the same years, respectively. A significant increase in irrigated areas was recorded throughout the study period. The overall accuracy values of 79%, 82%, and 83% obtained during validation of the irrigated land maps indicate a good performance of the algorithm. The results suggest a promising application of the algorithm to obtain up-to-date information on the distribution of irrigated land in several regions of Africa.
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页数:17
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