Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms?

The rapid assessment of maize yields in a smallholder farming system is important for understanding its spatial and temporal variability and for timely agronomic decision-support. We assessed the predictability of maize grain yield using unmanned aerial/air vehicle (UAV)-derived vegetation indices (...

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Autores principales: Adewopo, Julius, Peter, H., Mohammed, I., Craufurd, Peter Q., Vanlauwe, Bernard
Formato: Journal Article
Lenguaje:Inglés
Publicado: MDPI 2020
Materias:
Acceso en línea:https://hdl.handle.net/10568/111335
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author Adewopo, Julius
Peter, H.
Mohammed, I.
Craufurd, Peter Q.
Vanlauwe, Bernard
author_browse Adewopo, Julius
Craufurd, Peter Q.
Mohammed, I.
Peter, H.
Vanlauwe, Bernard
author_facet Adewopo, Julius
Peter, H.
Mohammed, I.
Craufurd, Peter Q.
Vanlauwe, Bernard
author_sort Adewopo, Julius
collection Repository of Agricultural Research Outputs (CGSpace)
description The rapid assessment of maize yields in a smallholder farming system is important for understanding its spatial and temporal variability and for timely agronomic decision-support. We assessed the predictability of maize grain yield using unmanned aerial/air vehicle (UAV)-derived vegetation indices (VI) with (out) biophysical variables on smallholder farms. High-resolution imageries were acquired with UAV-borne multispectral sensor at four and eight weeks after sowing (WAS) on 31 farmer managed fields (FMFs) and 12 nearby nutrient omission trials (NOTs) sown with two genotypes (hybrid and open-pollinated maize) across five locations within the core maize region of Nigeria. Acquired multispectral imageries were post-processed into three VIs, normalized difference VI (NDVI), normalized difference red-edge (NDRE), and green-normalized difference VI (GNDVI) while plant height (Ht) and percent canopy cover (CC) were measured within georeferenced plot locations. Result shows that the nutrient status had a significant effect on the grain yield (and variability) in NOTs, with a maximum grain yield of 9.3 t/ha, compared to 5.4 t/ha in FMFs. Generally, there was no relationship between UAV-derived VIs and grain yield at 4WAS (r < 0.02, p > 0.1), but significant correlations were observed at 8WAS (r ≤ 0.3; p < 0.001). Ht was positively correlated with grain yield at 4WAS (r = 0.5, R2 = 0.25, p < 0.001) and more strongly at 8WAS (r = 0.7, R2 = 0.55, p < 0.001), while the relationship between CC and yield was only significant at 8WAS. By accounting for within- and between-field variations in NOTs and FMFs (separately), predictability of grain yield from UAV-derived VIs was generally low (R2 ≤ 0.24); however, the inclusion of ground-measured biophysical variable (mainly Ht) improved the explained yield variability (R2 ≥ 0.62, Root Mean Square Error of Prediction, RMSEP ≤ 0.35) in NOTs but not in FMFs. We conclude that yield prediction with UAV-acquired imageries (before harvest) is more reliable under controlled experimental conditions (NOTs), compared to actual farmer managed fields where various confounding agronomic factors can amplify noise-signal ratio.
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spelling CGSpace1113352025-11-11T10:31:26Z Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms? Adewopo, Julius Peter, H. Mohammed, I. Craufurd, Peter Q. Vanlauwe, Bernard multispectral imageries maize drones tirals small farmers farming systems The rapid assessment of maize yields in a smallholder farming system is important for understanding its spatial and temporal variability and for timely agronomic decision-support. We assessed the predictability of maize grain yield using unmanned aerial/air vehicle (UAV)-derived vegetation indices (VI) with (out) biophysical variables on smallholder farms. High-resolution imageries were acquired with UAV-borne multispectral sensor at four and eight weeks after sowing (WAS) on 31 farmer managed fields (FMFs) and 12 nearby nutrient omission trials (NOTs) sown with two genotypes (hybrid and open-pollinated maize) across five locations within the core maize region of Nigeria. Acquired multispectral imageries were post-processed into three VIs, normalized difference VI (NDVI), normalized difference red-edge (NDRE), and green-normalized difference VI (GNDVI) while plant height (Ht) and percent canopy cover (CC) were measured within georeferenced plot locations. Result shows that the nutrient status had a significant effect on the grain yield (and variability) in NOTs, with a maximum grain yield of 9.3 t/ha, compared to 5.4 t/ha in FMFs. Generally, there was no relationship between UAV-derived VIs and grain yield at 4WAS (r < 0.02, p > 0.1), but significant correlations were observed at 8WAS (r ≤ 0.3; p < 0.001). Ht was positively correlated with grain yield at 4WAS (r = 0.5, R2 = 0.25, p < 0.001) and more strongly at 8WAS (r = 0.7, R2 = 0.55, p < 0.001), while the relationship between CC and yield was only significant at 8WAS. By accounting for within- and between-field variations in NOTs and FMFs (separately), predictability of grain yield from UAV-derived VIs was generally low (R2 ≤ 0.24); however, the inclusion of ground-measured biophysical variable (mainly Ht) improved the explained yield variability (R2 ≥ 0.62, Root Mean Square Error of Prediction, RMSEP ≤ 0.35) in NOTs but not in FMFs. We conclude that yield prediction with UAV-acquired imageries (before harvest) is more reliable under controlled experimental conditions (NOTs), compared to actual farmer managed fields where various confounding agronomic factors can amplify noise-signal ratio. 2020-12-09 2021-02-16T11:29:09Z 2021-02-16T11:29:09Z Journal Article https://hdl.handle.net/10568/111335 en Open Access application/pdf MDPI Adewopo, J., Peter, H., Mohammed, I., Craufurd, P. & Vanlauwe, B. (2020). Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms?. Agronomy, 10(12), 1934: 1-21.
spellingShingle multispectral imageries
maize
drones
tirals
small farmers
farming systems
Adewopo, Julius
Peter, H.
Mohammed, I.
Craufurd, Peter Q.
Vanlauwe, Bernard
Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms?
title Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms?
title_full Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms?
title_fullStr Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms?
title_full_unstemmed Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms?
title_short Can a combination of UAV-derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms?
title_sort can a combination of uav derived vegetation indices with biophysical variables improve yield variability assessment in smallholder farms
topic multispectral imageries
maize
drones
tirals
small farmers
farming systems
url https://hdl.handle.net/10568/111335
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