The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis

Information on soil properties is crucial for soil preservation, the improvement of food security, and the provision of ecosystem services. In particular, for the African continent, spatially explicit information on soils and their ability to sustain these services is still scarce. To address data g...

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Autores principales: Summerauer, L., Baumann, P., Ramírez Lopez, L., Barthel, M., Bauters, M., Bukombe, B., Reichenbach, M., Boeckx, P., Kearsley, E., Oost, K. van, Vanlauwe, Bernard, Chiragaga, D., Heri-Kazi, A., Moonen, P., Sila, A., Shepherd, K ., Mujinya, B.B., Ranst, E. van, Baert, G., Doetterl, S., Six, Johan
Formato: Journal Article
Lenguaje:Inglés
Publicado: Copernicus GmbH 2021
Materias:
Acceso en línea:https://hdl.handle.net/10568/116345
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author Summerauer, L.
Baumann, P.
Ramírez Lopez, L.
Barthel, M.
Bauters, M.
Bukombe, B.
Reichenbach, M.
Boeckx, P.
Kearsley, E.
Oost, K. van
Vanlauwe, Bernard
Chiragaga, D.
Heri-Kazi, A.
Moonen, P.
Sila, A.
Shepherd, K .
Mujinya, B.B.
Ranst, E. van
Baert, G.
Doetterl, S.
Six, Johan
author_browse Baert, G.
Barthel, M.
Baumann, P.
Bauters, M.
Boeckx, P.
Bukombe, B.
Chiragaga, D.
Doetterl, S.
Heri-Kazi, A.
Kearsley, E.
Moonen, P.
Mujinya, B.B.
Oost, K. van
Ramírez Lopez, L.
Ranst, E. van
Reichenbach, M.
Shepherd, K .
Sila, A.
Six, Johan
Summerauer, L.
Vanlauwe, Bernard
author_facet Summerauer, L.
Baumann, P.
Ramírez Lopez, L.
Barthel, M.
Bauters, M.
Bukombe, B.
Reichenbach, M.
Boeckx, P.
Kearsley, E.
Oost, K. van
Vanlauwe, Bernard
Chiragaga, D.
Heri-Kazi, A.
Moonen, P.
Sila, A.
Shepherd, K .
Mujinya, B.B.
Ranst, E. van
Baert, G.
Doetterl, S.
Six, Johan
author_sort Summerauer, L.
collection Repository of Agricultural Research Outputs (CGSpace)
description Information on soil properties is crucial for soil preservation, the improvement of food security, and the provision of ecosystem services. In particular, for the African continent, spatially explicit information on soils and their ability to sustain these services is still scarce. To address data gaps, infrared spectroscopy has achieved great success as a cost-effective solution to quantify soil properties in recent decades. Here, we present a mid-infrared soil spectral library (SSL) for central Africa (CSSL) that can predict key soil properties, allowing for future soil estimates with a minimal need for expensive and time-consuming wet chemistry. Currently, our CSSL contains over 1800 soil samples from 10 distinct geoclimatic regions throughout the Congo Basin and along the Albertine Rift. For the analysis, we selected six regions from the CSSL, for which we built predictive models for total carbon (TC) and total nitrogen (TN) using an existing continental SSL (African Soil Information Service, AfSIS SSL; n=1902) that does not include central African soils. Using memory-based learning (MBL), we explored three different strategies at decreasing degrees of geographic extrapolation, using models built with (1) the AfSIS SSL only, (2) AfSIS SSL combined with the five remaining central African regions, and (3) a combination of AfSIS SSL, the remaining five regions, and selected samples from the target region (spiking). For this last strategy we introduce a method for spiking MBL models. We found that when using the AfSIS SSL only to predict the six central African regions, the root mean square error of the predictions (RMSEpred) was between 3.85–8.74 and 0.40–1.66 g kg−1 for TC and TN, respectively. The ratio of performance to the interquartile distance (RPIQpred) ranged between 0.96–3.95 for TC and 0.59–2.86 for TN. While the effect of the second strategy compared to the first strategy was mixed, the third strategy, spiking with samples from the target regions, could clearly reduce the RMSEpred to 3.19–7.32 g kg−1 for TC and 0.24–0.89 g kg−1 for TN. RPIQpred values were increased to ranges of 1.43–5.48 and 1.62–4.45 for TC and TN, respectively. In general, predicted TC and TN for soils of each of the six regions were accurate; the effect of spiking and avoiding geographical extrapolation was noticeably large. We conclude that our CSSL adds valuable soil diversity that can improve predictions for the Congo Basin region compared to using the continental AfSIS SSL alone; thus, analyses of other soils in central Africa will be able to profit from a more diverse spectral feature space. Given these promising results, the library comprises an important tool to facilitate economical soil analyses and predict soil properties in an understudied yet critical region of Africa. Our SSL is openly available for application and for enlargement with more spectral and reference data to further improve soil diagnostic accuracy and cost-effectiveness.
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spelling CGSpace1163452025-11-11T10:35:47Z The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis Summerauer, L. Baumann, P. Ramírez Lopez, L. Barthel, M. Bauters, M. Bukombe, B. Reichenbach, M. Boeckx, P. Kearsley, E. Oost, K. van Vanlauwe, Bernard Chiragaga, D. Heri-Kazi, A. Moonen, P. Sila, A. Shepherd, K . Mujinya, B.B. Ranst, E. van Baert, G. Doetterl, S. Six, Johan soil properties food security soil analysis spectral analysis Information on soil properties is crucial for soil preservation, the improvement of food security, and the provision of ecosystem services. In particular, for the African continent, spatially explicit information on soils and their ability to sustain these services is still scarce. To address data gaps, infrared spectroscopy has achieved great success as a cost-effective solution to quantify soil properties in recent decades. Here, we present a mid-infrared soil spectral library (SSL) for central Africa (CSSL) that can predict key soil properties, allowing for future soil estimates with a minimal need for expensive and time-consuming wet chemistry. Currently, our CSSL contains over 1800 soil samples from 10 distinct geoclimatic regions throughout the Congo Basin and along the Albertine Rift. For the analysis, we selected six regions from the CSSL, for which we built predictive models for total carbon (TC) and total nitrogen (TN) using an existing continental SSL (African Soil Information Service, AfSIS SSL; n=1902) that does not include central African soils. Using memory-based learning (MBL), we explored three different strategies at decreasing degrees of geographic extrapolation, using models built with (1) the AfSIS SSL only, (2) AfSIS SSL combined with the five remaining central African regions, and (3) a combination of AfSIS SSL, the remaining five regions, and selected samples from the target region (spiking). For this last strategy we introduce a method for spiking MBL models. We found that when using the AfSIS SSL only to predict the six central African regions, the root mean square error of the predictions (RMSEpred) was between 3.85–8.74 and 0.40–1.66 g kg−1 for TC and TN, respectively. The ratio of performance to the interquartile distance (RPIQpred) ranged between 0.96–3.95 for TC and 0.59–2.86 for TN. While the effect of the second strategy compared to the first strategy was mixed, the third strategy, spiking with samples from the target regions, could clearly reduce the RMSEpred to 3.19–7.32 g kg−1 for TC and 0.24–0.89 g kg−1 for TN. RPIQpred values were increased to ranges of 1.43–5.48 and 1.62–4.45 for TC and TN, respectively. In general, predicted TC and TN for soils of each of the six regions were accurate; the effect of spiking and avoiding geographical extrapolation was noticeably large. We conclude that our CSSL adds valuable soil diversity that can improve predictions for the Congo Basin region compared to using the continental AfSIS SSL alone; thus, analyses of other soils in central Africa will be able to profit from a more diverse spectral feature space. Given these promising results, the library comprises an important tool to facilitate economical soil analyses and predict soil properties in an understudied yet critical region of Africa. Our SSL is openly available for application and for enlargement with more spectral and reference data to further improve soil diagnostic accuracy and cost-effectiveness. 2021 2021-11-26T09:55:19Z 2021-11-26T09:55:19Z Journal Article https://hdl.handle.net/10568/116345 en Open Access application/pdf Copernicus GmbH Summerauer, L., Baumann, P., Ramirez-Lopez, L., Barthel, M., Bauters, M., Bukombe, B., ... & Six, J. (2021). The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis. Soil, 7(2), 693-715.
spellingShingle soil properties
food security
soil analysis
spectral analysis
Summerauer, L.
Baumann, P.
Ramírez Lopez, L.
Barthel, M.
Bauters, M.
Bukombe, B.
Reichenbach, M.
Boeckx, P.
Kearsley, E.
Oost, K. van
Vanlauwe, Bernard
Chiragaga, D.
Heri-Kazi, A.
Moonen, P.
Sila, A.
Shepherd, K .
Mujinya, B.B.
Ranst, E. van
Baert, G.
Doetterl, S.
Six, Johan
The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis
title The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis
title_full The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis
title_fullStr The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis
title_full_unstemmed The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis
title_short The central African soil spectral library: a new soil infrared repository and a geographical prediction analysis
title_sort central african soil spectral library a new soil infrared repository and a geographical prediction analysis
topic soil properties
food security
soil analysis
spectral analysis
url https://hdl.handle.net/10568/116345
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