| Literature DB >> 24668802 |
Philip K Thornton1, Polly J Ericksen, Mario Herrero, Andrew J Challinor.
Abstract
The focus of the great majority of climate change impact studies is on changes in mean climate. In terms of climate model output, these changes are more robust than changes in climate variability. By concentrating on changes in climate means, the full impacts of climate change on biological and human systems are probably being seriously underestimated. Here, we briefly review the possible impacts of changes in climate variability and the frequency of extreme events on biological and food systems, with a focus on the developing world. We present new analysis that tentatively links increases in climate variability with increasing food insecurity in the future. We consider the ways in which people deal with climate variability and extremes and how they may adapt in the future. Key knowledge and data gaps are highlighted. These include the timing and interactions of different climatic stresses on plant growth and development, particularly at higher temperatures, and the impacts on crops, livestock and farming systems of changes in climate variability and extreme events on pest-weed-disease complexes. We highlight the need to reframe research questions in such a way that they can provide decision makers throughout the food system with actionable answers, and the need for investment in climate and environmental monitoring. Improved understanding of the full range of impacts of climate change on biological and food systems is a critical step in being able to address effectively the effects of climate variability and extreme events on human vulnerability and food security, particularly in agriculturally based developing countries facing the challenge of having to feed rapidly growing populations in the coming decades.Entities:
Keywords: agriculture; climate variability; development; food system; poverty; uncertainty; vulnerability
Mesh:
Year: 2014 PMID: 24668802 PMCID: PMC4258067 DOI: 10.1111/gcb.12581
Source DB: PubMed Journal: Glob Chang Biol ISSN: 1354-1013 Impact factor: 10.863
Fig 1The effect of changes in temperature distribution on extremes. Different changes of temperature distributions between present and future climate and their effects on extreme values of the distributions: (a) Effects of a simple shift of the entire distribution towards a warmer climate; (b) effects of an increase in temperature variability with no shift of the mean; (c) effects of an altered shape of the distribution, in this example a change in asymmetry towards the hotter part of the distribution. From IPCC (2012).
Fig 2The relationship between rainfall variability expressed as the 12-month Weighted Anomaly of Standardized Precipitation (WASP) and growth in GDP and agricultural GDP in three countries in sub-Saharan Africa: (a) Ethiopia, (b) Niger, (c) Mozambique. Data sources: World Bank, data.worldbank.org/indicator and the IRI data library, iridl.ldeo.columbia.edu/.
Summary of observed and projected changes of five extremes at a global scale (taken from table 3.1 in IPCC, 2012)
| Variable/phenomenon | Observed changes since 1950 | Attribution of observed changes | Projected changes up to 2100 |
|---|---|---|---|
| Temperature | Very likely | Likely anthropogenic influence on trends in warm/cold days/nights globally. No attribution of trends at a regional scale with a few exceptions. | Virtually certain decrease in frequency and magnitude of unusually cold days and nights. Virtually certain increase in frequency and magnitude of unusually warm days and nights. Very likely increase in length, frequency, and/or intensity of warm spells or heat waves over most land area. |
| Precipitation | Likely statistically significant increases in the number of heavy precipitation events in more regions than those with statistically significant decreases, but strong regional and subregional variations in the trends. | Medium confidence that anthropogenic influences have contributed to intensification of extreme precipitation at the global scale | Likely increase in frequency of heavy precipitation events or increase in proportion of total rainfall from heavy falls over many areas of the globe, in particular in the high latitudes and tropical regions, and in winter in the northern midlatitudes. |
| El Niño and other modes of variability | Medium confidence in past trends towards more frequent central equatorial Pacific El Niño-Southern Oscillation (ENSO) events. Insufficient evidence for more specific statements on ENSO trends. | Anthropogenic influence on trends in North Atlantic Oscillation (NAO) is about as likely as not. No attribution of changes in ENSO. | Low confidence in projections of changes in behaviour of ENSO and other modes of variability because of insufficient agreement of model projections. |
| Droughts | Medium confidence that some regions of the world have experienced more intense and longer droughts, in particular in southern Europe and West Africa, but opposite trends also exist. | Medium confidence that anthropogenic influence has contributed to some observed changes in drought patterns. Low confidence in attribution of changes in drought at the level of single regions due to inconsistent or insufficient evidence. | Medium confidence in projected increase in duration and intensity of droughts in some regions of the world, including southern Europe and the Mediterranean region, central Europe, central North America, Central America and Mexico, northeast Brazil and southern Africa. Overall low confidence elsewhere because of insufficient agreement of projections. |
| Floods | Limited to medium evidence available to assess climate-driven observed changes in the magnitude and frequency of floods at regional scale. There is low agreement in this evidence, and so low confidence at the global scale regarding even the sign of these changes. High confidence in trend towards earlier occurrence of spring peak river flows in snow melt- and glacier-fed rivers. | Low confidence that anthropogenic warming has affected the magnitude or frequency of floods. Medium to high confidence in anthropogenic influence on changes in some components of the water cycle (precipitation, snow melt) affecting floods. | Low confidence in global projections of changes in flood magnitude and frequency because of insufficient evidence. Medium confidence that projected increases in heavy precipitation would contribute to rain-generated local flooding in some catchments or regions. Very likely earlier spring peak flows in snow melt- and glacier-fed rivers. |
Likelihood assessment: virtually certain, 99–100%; very likely, 90–100%; likely, 66–100%; more likely than not, 50–100%; about as likely as not, 33–66%; unlikely, 0–33%; very unlikely, 0–10%; and exceptionally unlikely, 0–1%.
Population affected by selected disasters (aggregated from Raleigh & Jordan, 2010)
| Region | Number of disasters | Population affected in 2007 (1000s) | |||||
|---|---|---|---|---|---|---|---|
| Droughts (5%) | Extreme temperatures (5%) | Floods (45%) | Landslides (7%) | Waves, surges (<1%) | Windstorms (37%) | ||
| Americas | 1 850 | 2 264 | 133 | 385 | 10 | 3 | 5 224 |
| Africa | 928 | 5 104 | 333 | 310 | 4 | 28 | 205 |
| Asia | 3 045 | 43 812 | 209 | 9 193 | 73 | 369 | 1 796 |
| Europe | 928 | 1 023 | 18 | 88 | 4 | <1 | 104 |
| Oceania | 387 | 1 206 | 920 | 27 | 2 | 6 | 72 |
Number of disaster entries in the Emergency Events Database (EM-DAT), www.emdat.be, for the period 1970–2007.
Figures in parentheses show the relative frequency of occurrence of each disaster type in the entire database.
Proportion of total calorie availability per person per day from livestock products and from 14 food crops in developing and developed countries, by rainfall variability class
| CV | Mean annual rainfall | Human population | Children underweight | Proportion of calories from 14 Crops | Proportion of calories from livestock |
|---|---|---|---|---|---|
| (a) Developing countries | |||||
| <15% | 2739 | 211 | 16 | 1.8 | 0.2 |
| 15–20% | 1738 | 1318 | 17 | 10.3 | 0.6 |
| 20–25% | 1118 | 1498 | 20 | 7.7 | 11.4 |
| 25–30% | 657 | 808 | 22 | 3.0 | 2.9 |
| 30–35% | 428 | 242 | 20 | 0.7 | 0.1 |
| >35% | 226 | 165 | 19 | 1.1 | 0.1 |
| Total | 4241 | 24.6 | 15.2 | ||
| (b) Developed countries | |||||
| <15% | 1938 | 17 | <1 | 0.1 | 0.1 |
| 15–20% | 1094 | 323 | <1 | 4.6 | 7.0 |
| 20–25% | 662 | 527 | 2 | 17.0 | 2.6 |
| 25–30% | 469 | 221 | 2 | 18.3 | 3.4 |
| 30–35% | 355 | 42 | 3 | 4.7 | 1.4 |
| >35% | 230 | 12 | 5 | 0.5 | 0.6 |
| Total | 1142 | 45.2 | 15.1 | ||
‘Developing countries’ defined here as the countries of the Americas between Mexico in the north and Brazil, Paraguay, Bolivia and Peru in the south, all of Africa, and Asia up to 45°N excluding Japan. ‘Developed countries’ comprise the remainder.
Mean rainfall and coefficient of variation of annual rainfall estimates simulated using methods in Jones & Thornton (2013).
From gridded population of the world version 3 (CIESIN Center for International Earth Science Information Network Columbia University & Centro Internacional de Agricultura Tropical (CIAT), 2005a).
Global subnational prevalence of child malnutrition v1, online at beta.sedac.ciesin.columbia.edu/data/set/povmap-global-subnational-prevalence-child-malnutrition.
Yields and harvested areas from Spatial Production Allocation Model (SPAM) 2000 (You ). Crops included: banana and plantain, barley, beans, cassava, groundnut, maize, millet, other pulses, potato, rice, sorghum, soybean, sweet potato and yam, wheat.
From Herrero .
Fig 3The differential impacts of across-the-board changes in rainfall CV of −1%, +1% and +2% on population distribution by rainfall variability in developing (a) and developed (b) countries.