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Fertiliser use efficiency, production risks and profitability of maize on smallholder farms in East Africa

Published online by Cambridge University Press:  13 July 2022

Abednego Kiwia
Affiliation:
Alliance for Green Revolution in Africa (AGRA), West End Towers, Kanjata Road, Off Waiyaki Way, Nairobi, P.O. Box 66773 Westlands 00800, Kenya
David Kimani
Affiliation:
Trade Mark East Africa (TMEA), 2nd Floor, Equatorial Fidelity Centre, Waiyaki Way, Westlands, Nairobi, P.O. Box 313-00606, Kenya
Rebbie Harawa
Affiliation:
International Crops Research Institute for the Semi-Arid Tropics (ICRISAT), Nairobi, P.O. Box 39063, Kenya
Bashir Jama
Affiliation:
Islamic Development Bank, 8111 King Khalid St., Al Nuzlah Al Yamania Dist. Unit No. 1, Jeddah, 22332-2444, Kingdom of Saudi Arabia
Gudeta W. Sileshi*
Affiliation:
Department of Plant Biology and Biodiversity Management, Addis Ababa University, Addis Ababa, Ethiopia School of Agricultural, Earth and Environmental Sciences, University of KwaZulu-Natal, Pietermaritzburg, South Africa
*
*Corresponding author. Email: sileshigw@gmail.com
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Abstract

The use of fertilisers in maize production has been the focus for many years of agronomic studies on research stations in East Africa. However, information on production risks and profitability of fertiliser use on smallholder farms is generally lacking because most of the early studies have focused on mean yields and yield components on research stations. This study applied rigorous analyses to determine conditions under which (1) production risks are low; (2) the recommended nitrogen (N) and phosphorus (P) fertiliser rates achieve a yield target of ≥3 t ha−1 believed to be a necessary condition to kick start a smallholder-led ‘green revolution’ in Africa and (3) N and P fertiliser use is profitable on smallholder farms in East Africa. Analysis of data from 464 on-farm trials in Kenya, Rwanda, Tanzania and Uganda revealed significant variations in production risks and nutrient use efficiency with season and soil type. On most sites, except in Uganda, production risks were lower with the recommended N and P fertilisers than the control during both the short and long rains. Production risks were three to four times higher with N and P fertiliser relative to the control on Lixisols and Ferralsols, but such risks were much lower on Nitisols, Leptosols, Vertisols, Plinthosols and Cambisols. The probability of exceeding grain yields of 3 t ha−1 with the recommended N and P rates was over 0.60 on Nitisols and Leptosols, but less than 0.20 on Lixisols and Plinthosols. The agronomic use efficiencies of N (AEN), P (AEP) and value cost ratios (VCR) were highest on Cambisols and lowest on Plinthosols. The VCR increased linearly with increase in AEN (R2 = 0.92) and AEP (R2 = 0.87) and less so with increase in grain yields (R2 = 0.47–0.60). Net present values indicated profitably of N and P fertiliser over the long term in only 30% of the site by season combinations in Uganda compared with 69% in Kenya, 81% in Rwanda and 84% in Tanzania. Patterns of N use efficiencies were different from P use efficiencies across soil types. Therefore, we recommend that N and P fertilisers should be appropriately targeted to soils where applied nutrients are used efficiently by maize crops.

Type
Research Article
Creative Commons
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This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2022. Published by Cambridge University Press

Introduction

Maize (Zea mays L.) is one of the staple crops and a source of income for many households in East Africa (Abate et al., Reference Abate, Shiferaw, Menkir, Wegary, Kebede, Tesfaye, Kassie, Bogale, Tadesse and Keno2015; Wambugu et al., Reference Wambugu, Mathenge, Auma and vanRheenen2012). Much of the maize production in East Africa occurs under rain-fed conditions, which makes it vulnerable to climate variability (Omoyo et al., Reference Omoyo, Wakhungu and Oteng2015; Shi and Tao, Reference Shi and Tao2014). Extreme weather events such as droughts and heat, which are predicted to become more frequent under climate change in East Africa, can affect both yields and total production (Lyon and DeWitt, 2012; Mutegi et al., Reference Mutegi, Ameru, Harawa, Kiwia and Njue2018). Since 1996, there has been a decline in rainfall of 50–150 mm per season and a corresponding decline in yields of long-cycle crops (e.g., slow-maturing varieties of maize) across most parts of Eastern Africa (Shi and Tao, Reference Shi and Tao2014).

Much of East Africa has been subjected to land degradation through decades of nutrient mining and soil erosion (Mulinge et al., Reference Mulinge, Gicheru, Murithi, Maingi, Kihiu, Kirui, Mirzabaev and Nkonya2016). Consequently, nutrient deficiencies, especially those of nitrogen (N) and phosphorus (P), severely constrain maize productivity in this region (Kihara et al., Reference Kihara, Huising, Nziguheba, Waswa, Njoroge, Kabambe, Iwuafor, Kibunja, Esilaba and Coulibaly2016; Kiwia, et al., Reference Kiwia, Kimani, Harawa, Jama and Sileshi2019; Mutegi et al., Reference Mutegi, Ameru, Harawa, Kiwia and Njue2018; Sileshi et al., Reference Sileshi, Jama, Vanlauwe, Negassa, Harawa, Kiwia and Kimani2019). P limitation is severe in some parts where the parent materials have inherently low levels of P or on soils with high P-retention capacity (Batjes, Reference Batjes2011). However, most smallholder farmers in East Africa rarely apply the recommended fertiliser rate (Duflo et al., Reference Duflo, Kremer and Robinson2008; Kiwia et al., Reference Kiwia, Kimani, Harawa, Jama and Sileshi2019; Sileshi et al., Reference Sileshi, Jama, Vanlauwe, Negassa, Harawa, Kiwia and Kimani2019). One of the reasons for under-investment in fertiliser by farmers is perception of production risk (Simtowe, Reference Simtowe2006). Inefficient use of nutrients by crops during times of moisture stress (Snapp et al., Reference Snapp, Blackie and Donovan2003) often results in considerable variability in profitability of fertiliser use (Shiferaw et al., Reference Shiferaw, Tesfaye, Kassie, Abate, Prasanna and Menkir2014).

Landscape-scale modelling results, field trials and policy experiments all demonstrate that small increases in inputs, coupled with good agronomic practices, are sufficient to double maize yields in many parts of Africa (Kisinyo et al., Reference Kisinyo, Opala, Palapala, Gudu, Othieno and Ouma2015; Kiwia et al., Reference Kiwia, Kimani, Harawa, Jama and Sileshi2019; Mourice et al., Reference Mourice, Rweyemamu, Nyambilila and Tumbo2014). However, the blanket fertiliser recommendations mostly derived using data from research stations are often not adopted by smallholder farmers in East Africa. The high diversity of soils and farmers’ endowment in East Africa means that the application of blanket fertiliser recommendations is not likely to be effective in addressing declining land productivity (Snapp et al., Reference Snapp, Blackie and Donovan2003). This may also prove unprofitable on some farms. It is, therefore, important to determine the production risks faced by farmers and the financial benefits of applying recommended rates of fertiliser at the scale of typical smallholder farms. It is also important to determine the conditions under which fertiliser use becomes unprofitable.

The prevailing maize yields are low (usually 1–2 t ha−1 per season) in many parts of East Africa (Sánchez, Reference Sánchez2015; Shi and Tao Reference Shi and Tao2014). Agricultural experts in general concur that a yield target of 3 t ha−1 would be necessary to kick start a smallholder-led ‘green revolution’ in Africa (UN Millennium Project, 2005; Sánchez, Reference Sánchez2015). In that spirit, the Alliance for Green Revolution in Africa (AGRA) supported several partners to establish participatory trials to create awareness on the use of fertilisers and improved seeds among farmers. These trials have generated valuable data that can be used to inform policymakers and improve the existing recommendations. These results can be used to fill the information gaps in terms of returns to investment in fertiliser and where such investment may face production risks in maize growing regions of East Africa. This kind of information is useful to farmers in making decisions based on improved fertiliser recommendations which improve incomes and minimise risks associated with its use. Insurance companies could also benefit from these findings using fertiliser use rate as basis of computing potential production risks and the corresponding payoff. It is also useful to policymakers in targeting government subsidy programmes and other incentives in the effort to improve fertiliser use by farmers. Therefore, the objective of this analysis was to determine conditions under which (1) production risks are low; (2) N and P fertiliser rates achieve a yield target of ≥3 t ha−1 believed to be a necessary condition to kick start a smallholder-led green revolution in Africa and (3) NP fertiliser is profitable on smallholder farms in East Africa. Given the above, the key research questions were (1) where and on which soils can the threshold yield target of 3 t ha−1 be realised with minimal financial risks and (2) which soil types carry greater production risks?

Materials and Methods

Study areas

This analysis covered data from more than 464 on-farm trials across Kenya, Rwanda, Uganda and northern Tanzania (Supplementary Table S1). The trial sites were purposefully selected to fall within the maize production zones of the four countries. The selection was informed by the local knowledge of researchers and extension staff in each country. Within each location, the specific sites were selected based on their potential to facilitate learning by farmers and extension staff.

Across the study sites, rainfall is characterised by a bimodal annual cycle, with the major rainy season (often called the long rains) occurring during March–May and the short rains during October–December (Yang et al., Reference Yang, Seager, Cane and Lyon2014). Therefore, two maize harvests are possible. The major soil types in the study areas classified based on the harmonised soil atlas of Africa following the World Reference Base for Soil Resources (WRB) (Dewitte et al., Reference Dewitte, Jones, Spaargaren, Breuning-Madsen, Brossard, Dampha, Deckers, Gallali, Hallett, Jones, Kilasara, Le Roux, Michéli, Montanarella, Thiombiano, van Ranst, Yemefack and Zougmore2013; Jones et al., Reference Jones, Breuning-Madsen, Brossard, Dampha, Deckers, Dewitte, Hallett, Jones, Kilasara, Le Roux, Micheli, Montanarella, Spaargaren, Tahar, Thiombiano, van Ranst, Yemefack and Zougmore2013) are Acrisols, Cambisols, Ferralsols, Leptosols, Lixisols, Nitisols, Plinthosols and Vertisols (Supplementary Table S1).

Acrisols were the dominant soils on the trial sites in Busia and Kakamega in Kenya, and Gatsibo, Huye, Kamonyi, Kayonza, Kirehe, Muhanga and Nyanza in Rwanda. Acrisols are strongly weathered acid soils with low base saturation (IUSS, 2014). When cultivated for long, they degrade irreversibly through intense acidification, and high Al and Mn toxicity and P fixation (Batjes, Reference Batjes2011). Cambisols dominated the trial sites in Biharamulo, Bukoba and Muleba in Tanzania. These soils consist of medium and fine-textured materials derived from a wide range of rocks. Cambisols generally make good agricultural land because they are richer than associated Acrisols or Ferralsols (IUSS, 2014). Ferralsols were the dominant soils in Apac, Busia and Tororo in Uganda. Ferralsols are the red- and yellow-coloured tropical soils derived from strongly weathered material (IUSS, 2014). Ferralsols have good physical properties, great soil depth, good permeability and stable microstructure, making them less susceptible to erosion (IUSS, 2014). However, they are often characterised by low pH, low nutrient concentrations and high P-retention capacity (Batjes, Reference Batjes2011; IUSS, 2014). Leptosols dominated the trial sites in Arumeru, Kondoa, Misenyi and Muleba in Tanzania and Dokolo in Uganda. Leptosols comprise very thin soils over continuous rock commonly occurring in mountainous regions or hilly areas. They are rich in coarse fragments and prone to erosion (IUSS, 2014). Lixisols dominated the trial sites in Kakamega in Kenya and Busia in Uganda. These soils originate from a wide variety of parent materials, notably in unconsolidated, strongly weathered, fine-textured materials. The low level of plant nutrients and cation retention by Lixisols makes recurrent inputs of fertilisers a precondition for continuous cultivation (IUSS, 2014). Nitisols were the dominant soils in Embu in Kenya and Hai and Moshi in Tanzania. Nitisols are deep, well-drained soils that are far more productive than most other red tropical soils (IUSS, 2014), but they suffer from acidity and P retention (Batjes, Reference Batjes2011). Plinthosols were found in Iganga, Namutumba and Tororo in Uganda. Poor natural soil fertility caused by strong weathering, waterlogging in bottomlands and drought are serious limitations (IUSS, 2014). Vertisols were found in Dokolo in Uganda. Vertisols have considerable agricultural potential due to their good chemical fertility, but they are and susceptible to waterlogging during the rainy season and moisture stress during dry periods (IUSS, 2014).

Trial design and treatments

On each site, a number of treatments were established between 2009 and 2014 using the mother-and-baby participatory trial design described in Snapp et al. (Reference Snapp, Blackie and Donovan2003). This design systematically links a central ‘mother’ trial managed by researchers and extension staff to numerous farmer-managed ‘baby’ trials, facilitating rigorous cross-checking of biological performance with farmer assessment. Mother trials are replicated and managed by researchers to test many different crop technologies on a few farms. Baby trials are not replicated and farmer managed and thus used to test subsets of the technologies on many farms (Kamanga et al., Reference Kamanga, Waddington, Robertson and Giller2010). The ‘mother’ trials plot sizes were 10 × 10 m, while the ‘baby’ trials were 5 × 5 m. In each country and region, trial sites were selected through a consultative process involving researchers, extension staff and other stakeholders. The selection of the specific farms for mounting the demonstrations was informed by their potential to facilitate hosting field days and co-learning by farmers and extension staff. Those farmers with suitable land were selected after careful consideration of factors such as land size to accommodate the required number of plots, slope, absence of termite mounds and other objects that interfere with the demonstration of treatment effects.

For the present analysis, two treatments that were available across almost all sites were used. These are monoculture maize crop that received the recommended rate of N and P fertiliser (hereafter referred to as ‘NP fertiliser’) and maize grown without any external inputs (control). In fertiliser recommendations in some countries (e.g., Kenya), potassium (K) is missing or considered non-limiting. Therefore, the focus of this analysis is on N and P inputs.

In Kenya, the nutrient rates were 60 kg N ha−1 and 20 kg P ha−1 on sites in Kakamega and Busia counties, and 60 kg N ha−1 and 22 kg P ha−1 on sites in Embu County. The nutrient sources on the Kakamega and Embu sites were di-ammonium phosphate (DAP) + urea or DAP + calcium ammonium nitrate (CAN), whereas on sites in Busia, single superphosphate (SSP) + CAN was used. In Uganda, the rates were 80 kg N ha−1 and 15 kg P ha−1 applied as DAP + urea. In Rwanda, the rates were 66 kg N ha−1 and 18 kg P ha−1 on some sites, but 32 kg N ha−1 and 12 kg P ha−1 applied as DAP + urea or NPK + urea. In northern Tanzania, the rates were 60 kg ha−1 N and 20 kg ha−1 P applied as DAP + urea or triple super phosphate + urea. In all cases, fertilisers were applied manually as basal and top dressing close to the plant using 5 ml water bottle cap (lid). Split application of the N fertiliser was done; 30% of the N was applied at planting while the remaining 70% was applied 5 weeks after germination. The nutrient rates applied are close to the national recommendations, and the decision to use them was informed by the local knowledge of researchers and extension staff in the specific areas.

All trials took place with optimal management, including site-specific recommended agronomic practices. Dates of planting, plant density and weeding were performed as per recommendations for the specific site. Improved varieties of maize recommended for the sites were used. All varieties had water-limited yield potential of more than 4 t ha−1 (Supplementary Table S2).

Statistical analysis

This study applied rigorous analyses focusing on grain yield, yield differences, production risk, N and P use efficiency and financial returns. Yield differences refer to increase or decrease due to treatment/intervention relative to the control. Statistical analysis was conducted on data from the baby trials to assess variations with season in each country. In addition, variations in response to fertiliser with soil type were assessed at the aggregate level (across sites and seasons). For the different levels of analyses, a linear mixed effects modelling framework was used because of the imbalance in terms of sample size, non-normality and possible internal correlation (dependence of observations within sites). The procedure used here fits the covariance structure of the data using the method of restricted (residual) maximum likelihood. Treatment, seasons and soil type were held as the fixed effects and site as the random effect. Given the unequal sample sizes between trials, the Kenward–Roger method was used for approximating the degrees of freedom as it is preferable to other approaches (Spilke et al., Reference Spilke, Piepho and Hu2005). In all cases, the 95% confidence intervals (CIs) of estimates were used for statistical inference because CIs provide information about statistical significance as well as the direction and strength of the effect. Means were deemed significantly different from one another only if their 95% CIs were non-overlapping. We also used the width of the 95% CI as an indication of uncertainties around estimated values.

Traditionally, the performance of treatments has been judged based on mean yields. However, inferences based on the mean yields can be misleading if the variance (representing production risk) is large. One of the most commonly used measures of risk is the coefficient of variation (CV); a larger CV reflecting more volatility and risk (Kalkuhl et al., Reference Kalkuhl, von Braun, Torero, Kalkuhl, von Braun and Torero2016). Therefore, the CV in the control (CVc) and the fertiliser treatment (CVf) were calculated. If the ratio (i.e., CVf/CVc) is greater than unity, it was interpreted as indication of higher risk with fertiliser than the control in a given season or soil type. In the context of sustainable intensification, risk is generally measured as either production risk or perceived risk (Smith et al., Reference Smith, Snapp, Chikowo, Thorne, Bekunda and Glover2017). Production risk can be quantified as the probability that sufficient yields are produced to meet the food or nutritional needs of the household (Smith et al., Reference Smith, Snapp, Chikowo, Thorne, Bekunda and Glover2017). Production risk can also be assessed economically as the chance that incomes will exceed expenses (Kamanga et al., Reference Kamanga, Waddington, Robertson and Giller2010; Smith et al., Reference Smith, Snapp, Chikowo, Thorne, Bekunda and Glover2017). Successful reduction of production risk is assumed to stabilise incomes, which can then reduce vulnerability (Kamanga et al., Reference Kamanga, Waddington, Robertson and Giller2010). In this analysis, we apply both the probability of yields falling below certain minimum requirements and incomes from maize production exceeding expenses. In the case of yields, we used the average minimum maize requirement of 1.3 t per household per year for an average family size of five people (Kamanga et al., Reference Kamanga, Waddington, Robertson and Giller2010). NP fertiliser is said to be risky when yields fall below this minimum acceptable yield. In addition, we applied the concept of downside risk which can be measured either as the number of years or sites for which returns or yields are below a target yield (Langemeier, Reference Langemeier2015). For this purpose, the probability of maize yields falling below the target yield of 3 t ha−1 was estimated for the treatment and control. First cumulative probability distributions of yields were generated, and then the probability of exceeding the target yield was obtained by subtracting the cumulative probability from 1.

The efficiency with which N and P were used by the crop was assessed, with a focus on the agronomic efficiency (AE) of N and P. According to Snyder and Bruulsema (Reference Snyder and Bruulsema2007), AE answers the question, ‘How much productivity improvement was gained using this nutrient input?’ In this analysis, AE of N (AEN) and of P (AEP) were calculated as follows:

$$AEN = {{\left( {GY{N_x} - GY{N_0}} \right)} \over {{N_x}}}\,{\rm{and}}\,AEP = {{\left( {GY{P_x} - GY{P_0}} \right)} \over {{P_x}}}$$

where GYNx and GYPx represent the grain yield at a given rate of N (N x) and P (P x), respectively. GYN0 and GYP0 are the grain yield in the plots without N and P input. Thus, AEN and AEP represent how much yield is increased for each unit of added N and P, respectively (Jama et al., Reference Jama, Kimani, Kiwia, Rebbie and Sileshi2017; Kihara and Njoroge, Reference Kihara and Njoroge2013).

Cost-benefit analysis was conducted to determine benefits of fertiliser use from the perspective of a farm. Data on input prices (costs of fertiliser, labour and transport) and output (selling prices of maize) were acquired through market surveys in each country. Using these data, the value cost ratio (VCR) and marginal rates of return (MRR) were calculated to determine the short-term profitability of fertiliser use by farmers. The use of VCR is preferred over other measures of profitability if data on full production costs are unavailable (Jama et al., Reference Jama, Kimani, Kiwia, Rebbie and Sileshi2017; Kihara et al., Reference Kihara, Huising, Nziguheba, Waswa, Njoroge, Kabambe, Iwuafor, Kibunja, Esilaba and Coulibaly2016; Xu et al., Reference Xu, Guan, Jayne and Black2009). The VCR was calculated as a ratio of value of increased crop output to the cost of fertiliser applied:

$$VCR = {{{P_c} \times {Q_c}} \over {{P_f}\; \times {Q_f}}}$$

where Pc is the price of crop and Qc is the quantity of additional crop yield, and Pf is the price of fertiliser and Qf is the quantity of fertiliser applied (Jama et al. (Reference Jama, Kimani, Kiwia, Rebbie and Sileshi2017). A VCR value greater than 1 means that the cost of fertiliser is recovered, while a VCR of 2 represents 100% return on the money invested in fertiliser and is enough to warrant investment in fertiliser (Kihara et al., Reference Kihara, Huising, Nziguheba, Waswa, Njoroge, Kabambe, Iwuafor, Kibunja, Esilaba and Coulibaly2016; Xu et al., Reference Xu, Guan, Jayne and Black2009). In high-risk production environments, other studies have proposed VCR >3 as an appropriate threshold (Jama et al., Reference Jama, Kimani, Kiwia, Rebbie and Sileshi2017). African farmers face significant liquidity and risk constraints that limit their uptake of fertiliser unless it is highly profitable (Kelly, Reference Kelly2006). In order to accommodate price and climatic risks with a satisfactory incentive to farmers, VCR > 4 was suggested by some experts as the optimum. In this analysis, VCR ≥ 2 was considered as the minimum but VCR ≥ 4 as more appropriate to guarantee adequate risk coverage against investment in fertiliser on smallholder farms in high-risk areas. To determine the yield level at which fertiliser becomes profitable, scatter plots of VCRs against the corresponding grain yield from fertilised plots were generated. Similarly, scatter plots of VCRs against AEN and AEP were generated. In addition, cumulative probability distributions were generated to estimate the probabilities of exceeding VCRs of 2 and 4.

Acceptability of fertiliser by farmers is best judged by MRR, an approach used to maximise profit (Kelly, Reference Kelly2006). Therefore, MRR was computed as the ratio of the marginal benefit (i.e., the change in net benefit) to the marginal cost (i.e., the change in costs) relative to the control. As a rule of thumb, MRR of 50% is considered the lower threshold for acceptability of a simple technological package to farmers, but MRR must exceed 100% if the package involves significant changes from current farmer practices (ibid.). As the trials involved improved seed, recommended fertiliser rates and all other good agronomic practices, MRR of 100% was set as an acceptable minimum in this analysis.

Because the benefits of investing in P fertiliser can take several years to accrue, the net present values (NPVs) were estimated to determine the long-term profitability of fertiliser use. Crop uptake is generally <20% of the P fertiliser applied in the current year (Batjes, Reference Batjes2011), but residual soil P contributes to crop production with a considerable lag time (Sattari et al., Reference Sattari, Bouwman, Giller and van Ittersum2012). Therefore, a 5-years’ time horizon was considered reasonable for calculating NPV. For discount rates, NPV analyses typically use a fixed value ranging between 10% and 30% or loan interest rates as proxies. The loan interest rate set by the national bank in each country was used as the proxy for the discount rate. During the study period, the loan interest rates were 14–17% in Kenya, 15–17% in Rwanda and Tanzania and 20–23% in Uganda (World Bank, 2015). Therefore, the discount rates used were 17% for Kenya, 16% for Rwanda and Tanzania and 23% for Uganda to reflect the inflation economy of the countries. Fertiliser application was deemed profitable when NPV exceeded the critical minimum of 0; NPV ≤ 0 was deemed unprofitable. The NPV was calculated as follows:

$$NPV = \sum {{{{B_t} - {C_t}} \over {{{\left( {1 + r} \right)}^t}}}} $$

where Bt is the total benefit in year t, Ct is the total costs in year t and r is the discount rate.

Results

Grain yield

NP fertiliser significantly (p < 0.05) increased grain yields over the control in most of the season-site combinations except in Kenya (Figure 1a–d). In the control, the probability of yields falling below the minimum acceptable yield of 1.3 t per year was 0.33 for Kenya, 0.08 for Rwanda, 0.60 for Tanzania and 0.45 for Uganda (Figure 2a–d). In the case of NP fertiliser, the probability of yields falling below this minimum acceptable yield was nil in Rwanda and Tanzania, but 0.17 and 0.19 in Kenya and Uganda, respectively (Figure 2a–d). In Kenya, grain yields with NP fertiliser were low and comparable with those in the control during the 2009 and 2011 short rains (Figure 1a). During the long rains, production risks with NP fertiliser were higher than the control in Rwanda and Uganda (Figure 1e). Across all sites, production risks with NP fertiliser were consistently lower than in the control during the short rains (Figure 1f). Yield gains over the control were generally lower during the short rains compared with the long rains on the sites in Rwanda (Figure 1f) and Uganda (Figure 1h). In Kenya and Tanzania, the differences between the short and long rains were not significant (Figure 1e, 1g). There were also cases where yields were below the control; the risk being 24% during both short and long rains in Kenya (Figure 1e) and 7–12% in Uganda (Figure 1h).

Figure 1. Variation in maize grain yield (t ha−1) (a–d) and its coefficient of variation (e and f) across seasons in each country. (a–d) LR and SR represent the long and short rainy seasons for each year. Error bars represent 95% confidence limits.

Figure 2. The cumulative probability distribution of grain yield (t ha−1) exceeding a given target (a–d) and yield differences between fertiliser and control (e–h) during the long and short rains (e–h). The dashed and solid red lines in a–d represent the minimum maize requirement of 1.3 t per household per year for an average family size of five people and the African Green Revolution yield target yield of 3 t ha−1, respectively.

Eight out of the 14 maize cultivars used in the study achieved <50% of their yield potential with the recommended NP fertiliser rates (Supplementary Table S2). The probability of grain yields exceeding 3 t ha−1 with NP fertiliser was lowest (0.28) in Uganda, followed by Rwanda (0.46), Kenya (0.59) and Tanzania (0.61) (Figure 2 a–e). The corresponding risks were <5% in Rwanda and Tanzania (Figure 2f, 2g).

Across all sites and seasons, yields significantly varied (p < 0.05) with soil type (Figure 3a). In both fertilised and control plots, the lowest mean yields were recorded on Lixisols, whereas the highest was on Ferralsols. However, response to applied NP fertiliser (relative to the control) was higher by 252% on Cambisols, followed by Leptosols (132%), Lixisols (96%), Nitisols (89%), Acrisols (79%), Vertisols (69%), Plinthosols (64%) and Ferralsols (37%).

Figure 3. Variability in maize grain yield (t ha−1) (a) and its coefficient of variation (CV%) with fertiliser and soil type across East Africa. Error bars represent 95% confidence limits.

With NP fertiliser, the highest production risk was recorded on Lixisols (CV = 62%), followed by Acrisols (CV = 49%); the lowest (CV = 29%) was on Nitisols and Leptosols. The risk of fertiliser use relative to the control was three to four times higher on Lixisols and Ferralsols (Figure 3b), whereas such risks were much lower than in the control on Nitisols, Leptosols, Vertisols, Plinthosols and Cambisols.

The probability of exceeding the target yield of 3 t ha−1 with NP fertiliser was 0.60 on Nitisols and 0.63 on Leptosols, 0.58 on Ferralsols and Vertisols, 0.53 on Cambisols and 0.51 on Acrisols. The corresponding probabilities were very low on Lixisols (0.11) and Plinthosols (0.18). The probabilities of getting yields less than or equal to the control using NP fertiliser were 0.14 on Vertisols, 0.05–0.09 on Leptosols, Nitisols, Plinthosols and Acrisols and nil on Cambisols.

Nutrient use efficiency

Except in Kenya, AEN significantly (p < 0.05) differed with season (Figure 4a) and soil type (Figure 5a). The highest AEN was recorded during the short rains in Tanzania (39 kg grain increase kg−1 N), whereas the lowest was during the long rains in Uganda (10 kg grain increase kg−1 N). Among the soil types (Figure 5a), the highest AEN was recorded on Cambisols (38 kg grain increase kg−1 N), and the lowest was recorded on Plinthosols (9 kg grain increase kg−1 N).

Figure 4. Variation in the agronomic efficiency (AE) of nitrogen (a) and phosphorus (b) with growing season across East Africa. Error bars represent 95% confidence limits.

Figure 5. Effect of soil type on the agronomic efficiency (AE) of nitrogen (a) and phosphorus (b), and value cost ratios (c) across East Africa. Error bars represent 95% confidence limits.

AEP was highest during the short rains in Tanzania (156 kg grain increase kg−1 P) and lowest during the long rains in Rwanda (41 kg grain increase kg−1 N) (Figure 4b). Ferralsols and Lixisols recorded significantly higher AEP compared with all other soils, but the lowest was recorded on Plinthosols (Figure 5b).

Returns to fertiliser use

The VCR and MRR indicated that fertiliser use is profitable in the short term across all sites except those in Uganda (Figure 6). VCR was significantly higher during the short rains than long rains on sites in Tanzania, whereas the reverse was true in Rwanda (Figure 6a). Differences between seasons were not statistically significant across sites in Kenya and Uganda. Across sites and seasons, the probability of exceeding VCR of 2 was highest (0.82) in Tanzania and lowest in Uganda (0.31). The probability of exceeding VCR of 4 was only 0.05 in Uganda, 0.11 in Rwanda, 0.31 in Kenya and 0.40 in Tanzania. Cambisols recorded higher VCR compared with Plinthosols, Vertisols, Acrisols and Nitisols (Figure 5c). The VCR increased linearly with increase in AEN (R2 = 0.92) and AEP (R2 = 0.87) and less so with increases in grain yield (R2 = 0.47–0.60) across site and season combinations. VCR consistently exceeded 2 when grain yields exceeded 3 t ha−1, respectively. Across the countries, the optimum VCR of 4 was consistently achieved when grain yields exceeded 4 t ha−1 or where AEN and AEP exceeded 30 and 130, respectively.

Figure 6. Value cost ratios (VCR), marginal rates of return (MRR) and net present values with N fertiliser use during the long and short rainy seasons across East Africa. Error bars represent 95% confidence limits.

With MRR greater than 100%, fertiliser use during the long rains was found to be highly profitable across Kenya, Rwanda and Tanzania (Figure 6b). During the short rains, the highest MRR (344%) was recorded in Tanzania, and the lowest (28%) was in Rwanda. Thus, Tanzanian farmers can expect to obtain $4.44 for every $1 invested, whereas Rwandan farmers can expect only $1.28 for every $1 invested in purchasing and applying fertiliser during the short season.

The NPVs of NP fertiliser ranged from −326 $ ha−1 in Uganda to 1460 $ ha−1 in Rwanda during the long rains. During the short rains, NPV was lowest (−31 $ ha−1) in Uganda and highest (679 $ ha−1) in Tanzania. In the control, NPV was predominantly negative except during the long rains in Kenya and Rwanda, indicating potential losses in land productivity and profitability in the absence of fertiliser use over the long term.

Discussion

The analyses above demonstrate that farmers in East Africa face large production risks if they do not apply fertiliser, with particularly greater risks (0.45–0.60) in Uganda and Tanzania. With NP fertiliser, this risk can be reduced by over 50%. The application of NP fertiliser can increase maize grain yields by 36–252% over the control depending on the season and soil type. Such increases can improve food security at household level and food production at national level. The analysis has also identified situations where the recommended rates of NP fertiliser carry some risk to the farmer depending on season and soil type. Across sites in Kenya, fertiliser application during the short rains seems to carry slightly more risk than during the long rains. This is probably related to low moisture associated with the successive failure of the short rains in 2010–2011 (Lyon and DeWitt, Reference Lyon and Dewitt2012; Yang et al., Reference Yang, Seager, Cane and Lyon2014). Erratic rainfall distribution and suboptimal precipitation can lead to moisture deficit. Suboptimal rainfall during critical crop growth stages, especially the periods immediately before and after anthesis, can reduce N use efficiency (Calvino et al., Reference Calvino, Andrade and Sdras2003). This is because water availability during critical periods of maize growth determines the utilisation of applied N fertiliser and its translation into grain yield (Calvino et al., Reference Calvino, Andrade and Sdras2003). For example, Calvino et al. (Reference Calvino, Andrade and Sdras2003) found that water availability during the bracketing-flowering stage of maize accounted for over 84% of the variation in maize yield.

Although all the varieties had water-limited yield potentials of 4 t ha−1 or more, the probability of exceeding the yield target of 3 t ha−1 was less than 0.50 in Uganda and Rwanda. Indeed, the average yields achieved on most sites were less than 50% of the yield potentials of the varieties used. The N and P rates applied were deemed adequate to achieve this yield target based on past research that shows that improved cultivars of maize on average use about 20 kg N ha−1 (Ladha et al., Reference Ladha, Pathak, Krupnik, Six and van Kessel2005) and 9 kg P ha−1 (Palm et al., Reference Palm, Myers, Nandwa, Buresh and Calhoun1997) to produce 1 t ha−1 of grain. Nevertheless, the probability of achieving the 3 t ha−1 target yield was very low on some sites, especially on Lixisols and Plinthosols. The relative risk of fertiliser use was also four times higher on Lixisols. This is probably because Lixisols and Plinthosols have poor buffering capacity and low levels of plant nutrients (IUSS, 2014). Plinthosols also suffer from waterlogging in bottomlands and drought in uplands (ibid.). Therefore, these soils need recurrent inputs of fertilisers combined with appropriate soil and water conservation techniques if the desired yield targets are to be achieved. Although yields in the control were highest on Ferralsols, response to fertiliser application was among lowest and production risk was as high as it was on Lixisols. The high yields recorded in the control are probably because Ferralsols have good physical properties and are less susceptible to erosion (ibid.). The low response to fertiliser and high production risk on Ferralsols could be associated with their high P adsorption capacity (Batjes, Reference Batjes2011).

These findings highlight that there are conditions under which production risks are high. Under such conditions, farmers logically become risk averse and minimise their investments on fertilisers (Simtowe, Reference Simtowe2006). Farmers may even forego potentially high-yielding technological packages because such packages may also be riskier (ibid.). Thus, resource-constrained farmers remain in a risk-induced poverty trap. Therefore, it is important to encourage fertiliser use by resource-poor farmers through subsidy schemes or other mechanisms. Additionally, farmers would be advised to pursue a crop mix, including maize where possible, that may reduce their risks to fertiliser use for raising productivity.

The analyses also show that N use efficiency patterns were different from P use efficiency across soil types (Figure 5). The AEN recorded on most of the sites is within range (10–40 kg increase kg−1 N) found on farmers’ fields across southern Africa (Jama et al., Reference Jama, Kimani, Kiwia, Rebbie and Sileshi2017). However, use of NP fertiliser was unprofitable in conditions where AEN falls in the lower range. The high AEN recorded in Tanzania appears to be associated with better crop response on the nutrient-rich Cambisols and Nitisols. On the other hand, Plinthosols (common on Ugandan sites) consistently had low N and P use efficiency.

The AEP recorded in this analysis is within the range (0–210 kg increase kg−1 P) reported for parts of East Africa (Kihara and Njoroge, Reference Kihara and Njoroge2013). However, on some soils AEP values were above 210, which has been cited as the maximum value (ibid.). As shown by Kihara and Njoroge (Reference Kihara and Njoroge2013), AEP values exceeding 210 were recorded where P application rates were low (12–15 kg P ha−1). In situations where AEN and AEP are low, it is important to increase N and P use efficiency through organic matter amendments that enhance both the indigenous nutrient supply and fertiliser N and P recovery efficiency. It is also important to increase P application rates on soils with high P adsorption capacity as a long-term investment. According to Batjes (Reference Batjes2011), a one-time P application of about 600 kg ha−1 can be adequate for growing maize for 7–9 years on residual P. This high input strategy may be beyond the reach of smallholder farmers in East Africa (van der Eijk et al., Reference van der Eijk, Janssen and Oenema2006), but they could be included in government subsidies.

This analysis also indicated conditions whereby the short- and long-term returns to investments in fertiliser can be too low (e.g., where grain yield is less than 3 t ha−1 or AEN and AEP are low) even though average yields may be higher than the control. While increasing crop yield is important for addressing household food security, the ability of farmers to continue to use fertiliser depends on the profitability of the crop. The use of NP fertiliser can benefit the environment because this will reduce the need to convert forests for agricultural use, while increasing soil organic carbon by promoting plant growth and biomass production. Improved varieties that give high yields remove large quantities of nutrient from the soil. Therefore, it is important to build the soil nutrient capital using organic and mineral fertiliser inputs. In addition to the supply of macronutrients (N, P and K), micronutrient deficiencies can also hold back the attainment of high crop yields in the region (Kihara et al., Reference Kihara, Sileshi, Nziguheba, Kinyua, Zingore and Sommer2017). Tailored application of specific nutrients where they are deficient is essential. Simply increasing NP fertiliser rates on some soils such as Plinthosols, Vertisols and Acrisols, however, may not increase yields.

Conclusions

The main conclusions from this analysis are fourfold: (1) application of the recommended NP fertiliser rate can be risky on some soils, particularly on Lixisols and Ferralsols that are either of low fertility and/or physical limitations, (2) fertiliser use is profitable on sites (and seasons) where maize grain yields exceed 3 t ha−1, (3) profitability is associated with increasing the N and P use efficiency of the fertiliser applied and (4) growing maize without N and P inputs can result in reduced land productivity and profitability. Greater productivity growth may be achieved by shifting the emphasis from merely increasing the quantity of NP fertiliser to a more efficient use of nutrients. We recommend increasing N and P use efficiency on farmers’ fields through better targeting of fertilisers to responsive soils, training farmers to correctly time applications and help them adopt other good agronomic practices, including the use of improved seeds. We also recommend greater investments in farmer participatory trials such as the mother-and-baby trial design across different landscape positions as this can be a very effective platform for enhancing experimentation and learning by farmers. Such trials can also generate valuable data and insights into the conditions under which input use can be risky or unprofitable. In addition, this approach can generate the necessary data needed to establish site-specific nutrient recommendations and decision support tools to guide farmers and the extension staff to improve fertiliser use efficiency. This requires greater investment in research on better targeting of fertiliser application within the framework of integrated soil fertility management to improve the profitability of fertiliser use and reduce financial risks associated with use in space and time. Future studies need to close our current knowledge gaps in crop response to fertilisers and nutrient use efficiency on the other soil types and landscape positions.

Supplementary material

To view supplementary material for this article, please visit https://doi.org/10.1017/S001447972200014X

Acknowledgements

We thank all AGRA grantees for their input into the design of the on-farm demonstrations and for managing them well, and the farmers who hosted and managed the trials. We also thank the Bill and Melinda Gates Foundation for the generous funding of this work.

Funding Support

This work was supported, in whole or in part, by the Bill & Melinda Gates Foundation [INV-005460]. Under the grant conditions of the Foundation, a Creative Commons Attribution 4.0 Generic License has already been assigned to the Author Accepted Manuscript version that might arise from this submission.

Conflict of Interest

The authors declare that they have no conflict of interest.

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Figure 0

Figure 1. Variation in maize grain yield (t ha−1) (a–d) and its coefficient of variation (e and f) across seasons in each country. (a–d) LR and SR represent the long and short rainy seasons for each year. Error bars represent 95% confidence limits.

Figure 1

Figure 2. The cumulative probability distribution of grain yield (t ha−1) exceeding a given target (a–d) and yield differences between fertiliser and control (e–h) during the long and short rains (e–h). The dashed and solid red lines in a–d represent the minimum maize requirement of 1.3 t per household per year for an average family size of five people and the African Green Revolution yield target yield of 3 t ha−1, respectively.

Figure 2

Figure 3. Variability in maize grain yield (t ha−1) (a) and its coefficient of variation (CV%) with fertiliser and soil type across East Africa. Error bars represent 95% confidence limits.

Figure 3

Figure 4. Variation in the agronomic efficiency (AE) of nitrogen (a) and phosphorus (b) with growing season across East Africa. Error bars represent 95% confidence limits.

Figure 4

Figure 5. Effect of soil type on the agronomic efficiency (AE) of nitrogen (a) and phosphorus (b), and value cost ratios (c) across East Africa. Error bars represent 95% confidence limits.

Figure 5

Figure 6. Value cost ratios (VCR), marginal rates of return (MRR) and net present values with N fertiliser use during the long and short rainy seasons across East Africa. Error bars represent 95% confidence limits.

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