| Literature DB >> 20713402 |
Michael Reilly1, Dirk Willenbockel.
Abstract
Complex socio-ecological systems like the food system are unpredictable, especially to long-term horizons such as 2050. In order to manage this uncertainty, scenario analysis has been used in conjunction with food system models to explore plausible future outcomes. Food system scenarios use a diversity of scenario types and modelling approaches determined by the purpose of the exercise and by technical, methodological and epistemological constraints. Our case studies do not suggest Malthusian futures for a projected global population of 9 billion in 2050; but international trade will be a crucial determinant of outcomes; and the concept of sustainability across the dimensions of the food system has been inadequately explored so far. The impact of scenario analysis at a global scale could be strengthened with participatory processes involving key actors at other geographical scales. Food system models are valuable in managing existing knowledge on system behaviour and ensuring the credibility of qualitative stories but they are limited by current datasets for global crop production and trade, land use and hydrology. Climate change is likely to challenge the adaptive capacity of agricultural production and there are important knowledge gaps for modelling research to address.Entities:
Mesh:
Year: 2010 PMID: 20713402 PMCID: PMC2935120 DOI: 10.1098/rstb.2010.0141
Source DB: PubMed Journal: Philos Trans R Soc Lond B Biol Sci ISSN: 0962-8436 Impact factor: 6.237
Main simulation models used in the scenario studies.
| model (affiliation) | type | scenario study | main endogenous variables | main exogenous drivers | spatial scale | sectoral scale | documentation |
|---|---|---|---|---|---|---|---|
| IMAGE 2.2 (RIVM) | integrated assessment | MA | energy use, land use, GHG emissions, climate | population, GDP | 17 regions, biophysical: 0.5o*0.5o grid | 12 agric. commodities | |
| AIM (NIES/Kyoto University) | integrated assessment | MA | land cover, emissions, water use (Asia Pacific) | population, productivity | 15 regions, Water: 2.5o*2.5o grid | 15 production sectors (4 agric. sectors) | |
| IMPACT (IFPRI) | multi-market partial equilibrium | MA | agricultural production, demand, prices and trade, child malnutrition | population, GDP, agric. productivity | 43 regions | 32 agric. commodities | |
| WaterGAP (University of Kassel) | hydrology | MA | water use, water stress | population, GDP, climate, land cover | 150 regions water: 0.5o*0.5o grid | n.a. | |
| ECOPATH/ECOSIM (University of British Columbia) | biophysical | MA | marine ecosystem, biomass | marine species mortality, fishery catch | flexible | n.a. | |
| FAO World Food Model (FAO) | multi-market partial equilibrium | FAO2050 | agricultural production, demand, prices and trade | population, GDP, agric. productivity | 115 regions | 14 agric. commodities | |
| WATERSIM (IWMI/IFPRI) | linked multi-market partial equilibrium and hydrology | CAWMA | agricultural production, demand, prices and trade, water use | population, GDP, agric. productivity, | 282 sub-basins | 32 food commodities | |
| BLS (IIASA) | computable general equilibrium | agricultural production, demand, prices and trade, GDP | population, productivity, climate | 34 regions | 10 production sectors (9 agric sectors) | ||
| Agrobiom (INRA/CIRAD) | biomass | Agrimonde | calorie balances | population, agric. productivity, land use | 149 regions | 5 biomass categories |
Figure 1.Classification of review studies based on scenario typology. Source: modified from Borjeson et al. (2005).
Figure 2.Global water withdrawals for agriculture based on CAWMA scenarios of alternative investment strategies. Source: de Fraiture Reproduced with permission of Earthscan Ltd (http://www.earthscan.co.uk).
Figure 3.Additional millions of people at risk under seven SRES scenarios with and without CO2 fertilization effects, relative to a reference scenario with no climate change. Source: Parry . Blue bars, 2020; yellow bars, 2050; pink bars, 2080.
Figure 4.International cereal prices in the millennium ecosystem assessment (MA) scenarios in 2050. Source: Carpenter . Light grey bars, 1997; dark grey bars, TechnoGarden; white bars, Global Orchestration; medium grey bar, Order from Strength; black bars, Adapting Mosaic. Source: Millennium Ecosystem Assessment 2005 Ecosystems and human well-being: scenarios. Reproduced by permission of Island Press, Washington, DC.
Figure 5.Axes of the MA scenarios. Source: Carpenter . Source: Millennium Ecosystem Assessment 2005 Ecosystems and human well-being: scenarios. Reproduced by permission of Island Press, Washington, DC.
Selected driver assumptions to 2050 from case studies. CAWMA assumes GDP growth from the MA TechnoGarden scenario. Agrimonde 1 crop area growth includes non-food crops. Some figures are annualized to aid comparison; n.a. means figures were not derived for or by the modelling framework or were not published. Source: Parry ; Carpenter ; Alexandratos (2006); de Fraiture ; Chaumet .
| scenario exercise | scenario | population in 2050 (in billions) | GDP growth to 2050 (per annum) % | aggregate food demand in 2050 (kcal per person per day) | cereal productivity growth to 2050 (per annum) % | crop area increase (per annum) % |
|---|---|---|---|---|---|---|
| FAO 2050 (base year 1999/01) | FAO 2050 | 8.9 | 3.1 | 3130 | 0.9 | n.a. |
| CAWMA (base year 2000) | rainfed—high yield | 8.9 | 2.2 | 2970 | 1.4 (rainfed) | 0.14 (rainfed) |
| 0.7 (irrigated) | 0 (irrigated) | |||||
| rainfed—low yield | 0.4 (rainfed) | 1.06 (rainfed) | ||||
| 0.6 (irrigated) | 0 (irrigated) | |||||
| irrigation—area expansion | 0.4 (rainfed) | 0.56 (rainfed) | ||||
| 0.7 (irrigated) | 0.66 (irrigated) | |||||
| irrigation—yield improvement | 0.4 (rainfed) | 0.66 (rainfed) | ||||
| 1.5 (irrigated) | 0.18 (irrigated) | |||||
| trade | 1.2 (rainfed) | 0.44 (rainfed) | ||||
| 0.7 (irrigated) | 0 (irrigated) | |||||
| A1F1 | 8.7 | 3.6 | n.a. | see | n.a. | |
| A2 | 11.3 | 2.3 | ||||
| B1 | 8.7 | 3.1 | ||||
| B2 | 9.3 | 2.8 | ||||
| MA (base year 1997) | Global Orchestration | 8.1 | n.a. | 3580 | 1.0 | 0.01 |
| TechnoGarden | 8.8 | n.a. | 3270 | ∼0.9 | 0.11 | |
| Adapting Mosaic | 9.5 | n.a. | 2970 | ∼0.6 | 0.23 | |
| Order from Strength | 9.6 | n.a. | 3010 | 0.5 | 0.34 | |
| CAWMA (base year 2000) | CAWMA scenario | n.a. | n.a. | 2970 | 1.1 (rainfed) | 0.14 (rainfed) |
| 1.1 (irrigated) | 0.32 (irrigated) | |||||
| Agrimonde (base year 2000) | Agrimonde 1 | 9.1 | n.a. | 3000 | n.a. | 0.78 |