Estimating nutrient concentrations and uptake in rice grain in sub-Saharan Africa using linear mixed-effects regression

被引:3
|
作者
Rakotoson, Tovohery [1 ,2 ,8 ]
Senthilkumar, Kalimuthu [2 ]
Johnson, Jean-Martial [3 ,4 ]
Ibrahim, Ali [5 ]
Kihara, Job [6 ]
Sila, Andrew [7 ]
Saito, Kazuki [3 ]
机构
[1] Univ Antananarivo, Lab RadioIsotopes LRI, BP 3383,Route Andraisoro 10, Antananarivo, Madagascar
[2] Africa Rice Ctr AfricaRice, POB 1690 Ampandrianomby, Antananarivo, Madagascar
[3] Africa Rice Ctr AfricaRice, 01 BP 2551, Bouake, Cote Ivoire
[4] Univ Bonn, Inst Crop Sci & Resource Conservat INRES, D-53115 Bonn, Germany
[5] Africa Rice Ctr AfricaRice, Reg Stn Sahel, BP 96, St Louis, Senegal
[6] Alliance Biovers Int & Int Ctr Trop Agr, ICIPE Duduville Complex,Kasarani Rd,POB 823-00621, Nairobi, Kenya
[7] World Agroforestry Ctr ICRAF, POB 30677, Nairobi 00100, Kenya
[8] Univ Antananarivo, Lab RadioIsotopes LRI, BP 3383,Route Andraisoro 101, Antananarivo, Madagascar
关键词
Agro-ecological zone (AEZ); Production systems; Mineral fertilizer; Soil properties; NITROGEN-FERTILIZER LEVELS; REFLECTANCE SPECTROSCOPY; MICRONUTRIENT DENSITY; SOIL; YIELD; PHOSPHORUS; IRON; MACRONUTRIENTS; ACCUMULATION; MANAGEMENT;
D O I
10.1016/j.fcr.2023.108987
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Context or problem: Quantification of nutrient concentrations in rice grain is essential for evaluating nutrient uptake, use efficiency, and balance to develop fertilizer recommendation guidelines. Accurate estimation of nutrient concentrations without relying on plant laboratory analysis is needed in sub-Saharan Africa (SSA), where farmers do not generally have access to laboratories.Objective or research question: The objectives are to 1) examine if the concentrations of macro-(N, P, K, Ca, Mg, S) and micronutrients (Fe, Mn, B, Cu) in rice grain can be estimated using agro-ecological zones (AEZ), production systems, soil properties, and mineral fertilizer application (N, P, and K) rates as predictor variables, and 2) to identify if nutrient uptakes estimated by best-fitted models with above variables provide improved prediction of actual nutrient uptakes (predicted nutrient concentrations x grain yield) compared to average-based uptakes (average nutrient concentrations in SSA x grain yield).Methods: Cross-sectional data from 998 farmers' fields across 20 countries across 4 AEZs (arid/semi-arid, humid, sub-humid, and highlands) in SSA and 3 different production systems: irrigated lowland, rainfed lowland, and rainfed upland were used to test hypotheses of nutrient concentration being estimable with a set of predictor variables among above-cited factors using linear mixed-effects regression models. Results: All 10 nutrients were reasonably predicted [Nakagawa's R2 ranging from 0.27 (Ca) to 0.79 (B), and modeling efficiency ranging from 0.178 (Ca) to 0.584 (B)]. However, only the estimation of K and B concen-trations was satisfactory with a modeling efficiency superior to 0.5. The country variable contributed more to the variation of concentrations of these nutrients than AEZ and production systems in our best predictive models. There were greater positive relationships (up to 0.18 of difference in correlation coefficient R) between actual nutrient uptakes and model estimation-based uptakes than those between actual nutrient uptakes and average -based uptakes. Nevertheless, only the estimation of B uptake had significant improvement among all nutrients investigated. Conclusions: Our findings suggest that with the exception of B associated with high model EF and an improved uptake over the average-based uptake, estimates of the macronutrient and micronutrient uptakes in rice grain can be obtained simply by using average concentrations of each nutrient at the regional scale for SSA.Implications: Further investigation of other factors such as the timing of fertilizer applications, rice variety, occurrence of drought periods, and atmospheric CO2 concentration is warranted for improved prediction ac-curacy of nutrient concentrations.
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页数:17
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