| Literature DB >> 33580335 |
Elizabeth Gosling1, Thomas Knoke2, Esther Reith2, Alyna Reyes Cáceres2, Carola Paul3.
Abstract
Models are essential to assess the socio-economic credentials of new agroforestry systems. In this study, we showcase robust optimisation as a tool to evaluate agroforestry's potential to meet farmers' multiple goals. Our modelling approach has three parts. First, we use a discrete land-use model to evaluate two agroforestry systems (alley cropping and silvopasture) and conventional land uses against five socio-economic objectives, focusing on the forest frontier in eastern Panama. Next, we couple the land-use model with robust optimisation, to determine the mix of land uses (farm portfolio) that minimises trade-offs between the five objectives. Here we consider uncertainty to simulate the land-use decisions of a risk-averse farmer. Finally, we assess how the type and amount of agroforestry included in the optimal land-use portfolio changes under different environmental, socio-economic and political scenarios, to explore the conditions that may make agroforestry more attractive for farmers. We identify silvopasture as a promising land use for meeting farmers' goals, especially for farms with less productive soils. The additional labour demand compared to conventional pasture, however, may prove an important barrier to adoption for farms facing acute labour shortages. The selection of agroforestry responded strongly to changes in investment costs and timber prices, suggesting that cost-sharing arrangements and tax incentives could be effective strategies to enhance adoption. We found alley cropping to be less compatible with farmers' risk aversion, but this agroforestry system may still be a desirable complement to the land-use portfolio, especially for farmers who are more profit-oriented and tolerant of risk.Entities:
Keywords: Alley cropping; Goal programming; Panama; Robust optimisation; Scenario analysis; Silvopasture
Year: 2021 PMID: 33580335 PMCID: PMC8106585 DOI: 10.1007/s00267-021-01439-0
Source DB: PubMed Journal: Environ Manage ISSN: 0364-152X Impact factor: 3.266
Fig. 1The three components of the multi-criteria analysis
Description of the seven land uses, l, selected in this study
| Classification | Name | Description | Sources |
|---|---|---|---|
| Productive | Rice Maize | Traditional non-mechanised and non-irrigated system, with the use of fertiliser and pesticides: crops planted and harvested once per year. | MIDA ( |
| Pasture | Cows graze on improved pasture ( | Paul ( | |
| Teak plantation | Monoculture of teak ( | Paul et al. ( | |
| Compromise | Alley cropping | Maize is grown between rows of teak trees, until canopy shading prevents crop cultivation. Teak is planted at a density of 555 trees per hectare, it undergoes two thinnings with a final harvest after 20 years. | Paul et al. ( |
| Silvopasture | Same production system as conventional pasture, but pastures are planted with the native tree species Spanish cedar ( | Paul ( | |
| Protective | Forest | Natural secondary forest of native species. No active management, cannot be used for commercial timber production. | INEC ( |
Classification categories refer to the framework of Odum (1969)
The five indicators, i, used to quantify the contribution of each land use for achieving the five pre-defined socio-economic objectives
| Indicator | Unit | Direction | Rationale | Calculation |
|---|---|---|---|---|
| Net present value (NPV) | $/ha | More is better | Quantifies profitability for the objective of increasing long-term income. Profitability is an important characteristic influencing the adoption of land-use systems (Connelly and Shapiro | Sum of all discounted net cash flows (NCF) over a 20-year period, using a 5% discount rate: |
| Payback period | Years | Less is better | We use payback period, i.e. the time taken to earn back the initial investment, to account for cash flow and access to money (Coomes et al. | As per Knoke et al. ( |
| Food production | Mcal/ ha/yr | More is better | Smallholders’ land-use decisions may be constrained by the need to meet household food needs (Binh et al. | Mean annual energy production over a 20-year period: we convert crop and meat yields to dietary energy (Mcal per hectare) using the USDA ( |
| Labour demand | Days/ ha/yr | Less is better | Labour availability can be a key constraint for land-use decisions of smallholder farmers (Pichón | The mean number of labour days required to implement and manage a given land use per year (averaged over a 20-year period). |
| Investment costs | $/ha | Less is better | Given a lack of capital among smallholder farmers, high investment costs pose a potential barrier to agroforestry adoption (Calle et al. | Sum of all costs incurred in year 0 of the land-use model. |
Direction refers to the desired state of an indicator, i.e., whether higher or lower values are preferable
Thinning and pruning regimes for the three timber land-use systems (following Paul 2014 and Paul et al. 2017)
| Pure plantation | Alley cropping | Silvopasture | |
|---|---|---|---|
| Species | |||
| Planting layout (tree spacing) | 3 × 3 m | 3 × 6 m | 7 × 7 m |
| Initial tree density (stems/ha) | 1110 | 555 | 200 |
| Tree pruning (years after establishment) | 1,2,4 | 1,2,3,5 | 4–7 |
| Thinning | Year 4: 60% Year 10: 50% | Year 5: 50% Year 10: 50% | none |
| Final stem number (stems/ha)a | 222 | 139 | 200 |
aExcluding tree mortality
Mean (predicted) value and standard deviation SD derived from the Monte Carlo simulations for each land use, l, for each indicator, i
| NPV ($/ha) | Payback period (years) | Food production (Mcal/ha/year) | Labour demand (days/ha/year) | Investment costs ($/ha) | |
|---|---|---|---|---|---|
| Rice | 8310 ± 1756 | 0 ± 0.4 | 6295 ± 143 | 32 ± 0.7 | 949 ± 95 |
| Maize | 8066 ± 2643 | 1 ± 1.6 | 9866 ± 417 | 22 ± 0.5 | 1073 ± 109 |
| Pasture | 3496 ± 522 | 5 ± 1.1 | 976 ± 3 | 8 ± 0.2 | 1433 ± 142 |
| Teak plantation | 5267 ± 2019 | 20 ± 0.0 | 0 ± 0 | 16 ± 0.6 | 2184 ± 218 |
| Alley cropping | 5690 ± 1792 | 8 ± 8.6 | 1551 ± 141 | 12 ± 0.4 | 1835 ± 185 |
| Silvopasture | 4914 ± 696 | 11 ± 2.8 | 814 ± 2 | 14 ± 0.4 | 1970 ± 196 |
| Forest | 0 ± 0 | 0 ± 0.0 | 0 ± 0 | 0 ± 0.0 | 0 ± 0 |
Data represent the socio-economic coefficients used in the baseline scenario of our optimisation
Overview of the scenarios tested in the sensitivity analysis
| Type | Scenario name | Description | Changes in socio-economic coefficients | Justification |
|---|---|---|---|---|
| Assumptions of multi-criteria model | Prioritising individual objectives | The five indicators are no longer weighted equally in the optimisation. Instead we test the impact of making one indicator twice as important as the others. Weighting method described in Section 7 of | None: all values as per Table | Simulates the decision-making of a farmer who has a clear preference for one objective, but still considers the other household goals in their decision-making. Investigates how prioritising individual objectives may promote or hinder agroforestry adoption. |
| Investment constraints | Introduce a constraint to restrict the total investment costs (per hectare) of the optimal portfolio. | None: all values as per Table | In the baseline scenario, the multi-criteria model balances reducing labour demand and investment costs with the other socio-economic objectives. Optimal portfolios may exceed the labour availability and investment capacity of individual farms. For these scenarios, we set a limit for labour demand and investment costs, which the optimal portfolio cannot exceed. This is intended to simulate hard economic constraints. | |
| Labour constraints | Introduce a constraint to restrict the total labour demand (per hectare) of the optimal portfolio. | None: all values as per Table | ||
| Assumptions of land-use model | Lower crop yields | We proportionally decrease the expected yields of rice and maize. Timber and cattle yields remain unchanged. | Lowers NPV and food production and increases payback period of rice, maize and alley cropping. All other coefficients as per Table | Simulates poorer site conditions, where lower yields from annual crops are expected. Sensitivity analysis in case yields in baseline scenario are too optimistic for the study area. |
| Agroforestry subsidy | We proportionally decrease the investment costs of alley cropping and silvopasture. | Increases NPV and decreases payback period and investment costs of alley cropping and silvopasture. All other coefficients as per Table | Simulates financial support from government programs to promote agroforestry establishment. For example, government agencies could provide free tree seedlings and/or fencing materials (for tree guards) to reduce the cost of establishing agroforestry. | |
| Higher timber prices | We proportionally increase the expected (baseline) timber price for teak and cedar. | Increases NPV and decreases payback period of alley cropping and teak plantation, increases NPV of silvopasture. All other coefficients as per Table | Simulates favourable development of wood markets. Could also simulate tax exemptions on timber sales. |
The scenarios can be divided into two groups: those that change the assumptions of the multi-criteria (optimisation) model, and those that change the assumptions of the land-use model
Fig. 2Composition of the optimised farm portfolio (share of land area allocated to each land use, left axis) for three levels of uncertainty: risk neutral (m = 0), moderately risk-averse (m = 1.5), and strongly risk-averse (m = 3.0) under the baseline scenario. The first column represents the current (aggregated) land use of the study area (data from Gosling et al. 2020a). Points represent the Bray–Curtis measure of dissimilarity (BC, right axis) between the current and optimised land-use compositions: lower values indicate that a portfolio is more similar to the current land use
Fig. 3Relative change in the share of agroforestry selected in the optimal portfolio when prioritising one of the five indicators (net present value (NPV), payback periods (PP), Food production, Labour demand, Investment costs), for three levels of risk aversion. Prioritisation (weighting) method outlined in Table 5 and Section 7.1 of the Supplementary material
Fig. 4Composition of the ideal farm (share of land area allocated to each land-use option) for a strongly risk-averse farmer (m = 3.0), when imposing farm-level constraints in the “baseline” (plots A and C) and the “farmer preferences” scenarios (plots B and D), for which farmers’ general preferences are included as an additional indicator in the multi-criteria model (see Section 7.2 of the Supplementary material). In the plots A and B, the total amount of labour available to manage the land-use portfolio is progressively restricted. In plots C and D, the total investment budget for establishing the land-use portfolio is restricted
Fig. 5Share of A alley cropping and B silvopasture selected in the optimal land-use portfolio when changing the assumptions and coefficients of the land-use model. Input variables of the land-use model are progressively increased or decreased under three scenarios: changes to expected crop yields relate to the “lower crop yields” scenario, changes in investment costs to “agroforestry subsidy” and changes in teak and cedar price to “higher timber prices”. These scenarios are described in Table 5. Optimisation carried out from the perspective of a strongly risk-averse decision-maker (m = 3.0)