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US FOOD SECURITY AND CLIMATE CHANGE:
AGRICULTURE FUTURES
Gene Takle, Iowa State University
Dave Gustafson, Monsanto Company
Roger Beachy, Danforth Plant Science Research Center
Gerald C. Nelson, Daniel Mason-D’Croz, and Amanda Palazzo, International Food PolicyResearch Institute
October 2011DRAFT VERSION, NOT READY FOR CITATION OR DISTRIBUTION
Contents
Introduction ................................................................................................................ 1
Regional impacts of climate change ................................................................................ 2
Agriculture, Food Security and US Development .................................................................... 5
Review of the Current Situation ........................................................................................ 5
Population ............................................................................................................... 5
Income ................................................................................................................... 6
Vulnerability ............................................................................................................ 7
Review of Land Use and Agriculture ................................................................................... 8
Land Use Overview..................................................................................................... 8
Agriculture Overview .................................................................................................. 9
Scenarios for Adaptation ............................................................................................... 16
Biophysical Scenarios ................................................................................................ 16
Climate Scenarios ................................................................................................. 16
Exogenous Rate of Crop Yield Gains for Cotton, Maize, and Soybeans .................................. 19
Crop Physiological Response to Climate Change ............................................................ 19
From biophysical scenarios to socioeconomic consequences: The IMPACT Model .................... 29
Income and Demographic Scenarios .............................................................................. 30
Agricultural Vulnerability Scenarios (Crop-specific) ........................................................... 31
Human Vulnerability Scenarios .................................................................................... 41 Opportunities and Constraints of Adaptation to Climate Change ........................................... 41
Agriculture and Greenhouse Gas Mitigation ........................................................................ 42
Agricultural Emissions History ..................................................................................... 42
Potential for agricultural mitigation.............................................................................. 42
Conclusions ............................................................................................................... 43
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References ................................................................................................................ 45
Table of TablesTable 4.Value of production for leading agricultural commodities, average of 2006-2008 .................. 9 Table 5.Consumption of leading food commodities, average of 2003-2006 .................................. 10 Table 6.GDP and population choices for the three overall scenarios .......................................... 30 Table 7.Average scenario per capita GDP growth rates (percent per year) .................................. 30
Table of FiguresFigure 1Changes in mean annual precipitation between 2000 and 2050 using the A1B scenario (mm peryear). ........................................................................................................................ 3 Figure 2Changes in annual maximum temperature between 2000 and 2050 using the A1B scenario (°C) 4 Figure 4Population scenarios for the US for 2010 to 2050 ......................................................... 6 Figure 5Per capita GDP (constant 2000 US$) and share of GDP from agriculture .............................. 6 Figure 6Poverty (percent below US$2 per day) ...................................................................... 7 Figure 7Well-Being Indicators: Life Expectancy at Birth and under 5 Mortality Rate ......................... 8 Figure 8Land cover, 2000 ................................................................................................ 8 Figure 9Protected areas .................................................................................................. 9 Figure 102000 Yield and harvest area density for main crops: irrigated cotton ............................. 11 Figure 112000 Yield and harvest area density for main crops: rainfed cotton ............................... 11 Figure 12 2000 Yield and harvest area density for main crops: irrigated maize ............................ 12
Figure 132000 Yield and harvest area density for main crops: rainfed maize ................................ 12 Figure 142000 Yield and harvest area density for main crops: irrigated rice ................................. 13 Figure 152000 Yield and harvest area density for main crops: irrigated soybeans .......................... 13 Figure 162000 Yield and harvest area density for main crops: rainfed soybeans ............................ 14 Figure 172000 Yield and harvest area density for main crops: irrigated wheat .............................. 14 Figure 182000 Yield and harvest area density for main crops: rainfed wheat ............................... 15 Figure 19Changes in mean annual precipitation for USA between 2000 and 2050 using the A1B scenario(millimeters) ............................................................................................................. 17 Figure 20Changes in normal annual maximum temperature for USA between 2000 and 2050 using theA1B scenario (°C) ........................................................................................................ 18 Figure 21Observed US cotton yields (1930 to present) ........................................................... 20 Figure 22Observed US maize yields (1930 to present) ............................................................ 20 Figure 23Observed US soybean yields (1930 to present) ......................................................... 21
Figure 24 Mean annual temperatures for cotton, maize, and soybean US production areas (1930 topresent) ................................................................................................................... 21 Figure 25Yield change map under climate change scenarios: irrigated maize ............................... 22 Figure 26Yield change map under climate change scenarios: rainfed maize ................................. 23 Figure 27Yield change map under climate change scenarios: irrigated rice .................................. 24 Figure 28Yield change map under climate change scenarios: irrigated soybeans ........................... 25 Figure 29Yield change map under climate change scenarios: rainfed soybeans ............................. 26 Figure 30Yield change map under climate change scenarios: irrigated wheat ............................... 27 Figure 31Yield change map under climate change scenarios: rainfed wheat................................. 28 Figure 32The IMPACT modeling framework ......................................................................... 29 Figure 33The 281 FPUs in the IMPACT model ....................................................................... 29 Figure 34GDP Per Capita Scenarios................................................................................... 31 Figure 35Scenario outcomes for cotton area, yield, production, net exports, and prices ................. 32
Figure 36Scenario outcomes for maize area, yield, production, net exports, and prices .................. 33 Figure 37Scenario outcomes for other grains area, yield, production, net exports, and prices .......... 34 Figure 38Scenario outcomes for rice area, yield, production, net exports, and prices .................... 35 Figure 39Scenario outcomes for soybeans area, yield, production, net exports, and prices .............. 36 Figure 40Scenario outcomes for wheat area, yield, production, net exports, and prices ................. 37 Figure 41. Changes in US cotton yields (kg/ha) in 2050 under the IMPACT baseline model, and 4different productivity scenarios, while comparing them to the initial value in 2010 (PM – is perfectmitigation or no climate change). .................................................................................... 38
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Figure 42. Changes in US maize yields (kg/ha) in 2050 under the IMPACT baseline model, and 4different productivity scenarios, while comparing them to the initial value in 2010 (PM – is perfectmitigation or no climate change). .................................................................................... 39 Figure 43 Changes in US soybean yields in 2050 under the IMPACT baseline model, and 4 differentproductivity scenarios, while comparing them to the initial value in 2010 (PM – is perfect mitigation orno climate change). ..................................................................................................... 40 Figure 44Average daily kilocalories availability under multiple income and climate scenarios(kilocalories per person per day) ..................................................................................... 41 Figure 45GHG Emissions (CO2, CH4, N2O, PFCs, HFCs, SF6) in USA by Sector ............................... 42
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IntroductionWorld population is now 7 billion and will be approximately 7.6 billion by 2020, according to both
the UN and the US Census Bureau. By mid-century, population will likely exceed 9 billion, leading
to a predicted doubling of crop demand, when combined with expected changes in diets and the
increasing use of crops to displace fossil fuels. However, total investments in agriculture have not
risen as fast as demand, contributing to a drop in the rate of global crop yield gains (Pardey and
Alston, 2010). For the second time in less than four years, many countries have again experienced
rapid price increases for several basic food commodities. Numerous factors explain these price
spikes (including petroleum price swings), but the increased frequency of extreme and
unpredictable weather events has played a significant role, in a manner consistent with the
changes predicted by global climate models (Hatfield et al., 2011). Specific examples of
catastrophic crop losses and their weather-related causes during the past year include: Australia
($6 billion, flooding), Pakistan ($5 billion, flooding), and Russia ($5 billion, extreme heat).
Although not as dramatic, high nighttime temperatures in the Midwestern US during 2010 are
believed to have reduced corn yields, and threaten to do the same in 2011.
A few are unwilling to link any current crop production challenges to climate change. However,virtually all serious researchers agree that agriculture is beginning to encounter global limitations
to its ability to meet growing demand, especially for staple crops that are not receiving the same
private investment that certain crops attract (such as corn and soybeans). Besides arable land,
probably the most challenging of these physical constraints is the availability of freshwater, and
this imbalance is expected to intensify in key parts of the eastern hemisphere, particularly in India
and sub-Saharan Africa.
These climate- and constraint-driven crop production challenges are playing out in an
increasingly inter-connected and complex global economy, in which a number of diverse factors
add to price volatility and food scarcity. Prices for food have become closely linked to those for
petroleum, and have increased during the past decade, after having generally fallen (in real terms)
during the previous 50 years. In addition to such economic concerns, the environmental footprint
of agriculture is also receiving increased scrutiny, especially its impacts on biodiversity and
reliance upon inorganic fertilizers.
Against this backdrop of multiple challenges to global agriculture, the focus of the present
report is the projected impact of climate change on food security through the year 2050. The first
part of this paper is an overview of the current food security situation, the underlying natural
resources available in USA and the drivers that lead to the current state, focusing on income and
population growth. The second part reviews the USA-specific outcomes of a set of scenarios for the
future of global food security in the context of climate change. These country-specific outcomes
are based on IMPACT model runs from July 2011.
In the Fourth Assessment Report of the Intergovernmental Panel on Climate Change, Working
Group 1 reports that “climate is often defined as 'average weather'. Climate is usually described in
terms of the mean and variability of temperature, precipitation and wind over a period of time,ranging from months to millions of years (the classical period is 30 years)” (Le Treut et al., 2007,
pg.96)).
The unimpeded growth of greenhouse gas emissions is raising average temperatures. The
consequences include changes in precipitation patterns, more extreme weather events, and
shifting seasons. The accelerating pace of climate change, combined with global population and
income growth, threatens food security everywhere.
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Agriculture is vulnerable to climate change in a number of dimensions. Higher temperatures
eventually reduce yields of desirable crops and tend to encourage weed and pest proliferation.
Greater variations in precipitation patterns increase the likelihood of short-run crop failures and
long-run production declines. Although there might be gains in some crops in some regions of the
world, the overall impacts of climate change on agriculture are expected to be negative,
threatening global food security. The impacts are
Direct, on crops and livestock productivity domestically
Indirect, on availability/prices of food domestically and in international markets
Indirect, on income from agricultural production both at the farm and country levels
Regional impacts of climate changeWhile the general consequences of climate change are becoming increasingly well known, great
uncertainty remains about how climate change effects will play out in specific locations 1. Figure 1
shows changes in average precipitation globally between 2000 and 2050 for four Global Climate Models
(GCMs) (CNRM-CM3 France, CSIRO-MK3 Australia, DCHM5 Germany, and MIROC3.2 Japan), each using
the A1B scenario. These were chosen because their datasets include the required daily maximum and
minimum temperatures and they span the ranges of variabilities exhibited by the entire suite of models
in the IPCC AR4 archive. Figure 2 shows the change in average maximum temperature. In each set offigures, the legend colors are identical; a specific color represents the same change in temperature or
precipitation across the models.
A quick glance at these figures shows that substantial differences exist despite the fact that all
models use the same widely accepted laws of physics to simulate large-scale motions and thermal
processes. Differences in how models account for features of the atmosphere and surface smaller than
about 200 km account for differences in temperature and precipitation. Two primary distinctions
among models are how they account for clouds and precipitation and how they represent atmospheric
exchanges of heat and moisture with the surface. Each model’s smaller scale uniquenesses eventually
interact with the global flow to create different regional climate features among the models. For
example, in Figure 1 the MIROC GCM predicts that Southeast Asia will be much drier, while the ECHAM
model has the same region getting wetter. In South Asia, the MIROC GCM has an increase in
precipitation, especially in the northeast, while the CSIRO GCM has a drier South Asia. In northeast
Brazil, the CNRM GCM shows significant drying while the MIROC scenario has a sizeable increase in
precipitation.
1 To understand the significant uncertainty in how these effects play out over the surface of the earth it is useful
to describe briefly the process by which the results depicted in the figures are derived. They start with globalclimate (or general circulation) models (GCMs) that model the physics and chemistry of the atmosphere and itsinteractions with oceans and the land surface. Several GCMs have been developed independently around theworld. Next, integrated assessment models (IAMs) simulate the interactions between humans and theirsurroundings, including industrial activities, transportation, agriculture and other land uses and estimate theemissions of the various greenhouse gasses (carbon dioxide, methane and nitrous oxide are the most important).Several independent IAMs exist as well. The emissions simulation results of the IAMs are made available to the GCMmodels as inputs that alter atmospheric chemistry. The end result is a set of estimates of precipitation andtemperature values around the globe often at 2 degree intervals (about 200 km at the equator) for most models.Periodically, the Intergovernmental Panel on Climate Change (IPCC) issues assessment reports on the state of ourunderstanding of climate science and interactions with the oceans, land and human activities.
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Figure 1 Changes in mean annual precipitation between 2000 and 2050 using the A1B scenario (mm per year).
CNRM-CM3 GCMCSIRO-MK3 GCM
Change in annual precipitati(millimeters)
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data available at http://ccafs-climate.org.
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Figure 2 Changes in annual maximum temperature between 2000 and 2050 using the A1B scenario (°C)
CNRM-CM3 GCM CSIRO-MK3 GCM
Change in annual maximumtemperature (°C)
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data available at http://ccafs-climate.org/.
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Agriculture, Food Security and US Development With a few exceptions caused by extreme poverty of afflicted individuals, food security does not
represent a major concern within the US. On the contrary, the much greater challenge in the US
today is the over-consumption of food, particularly unhealthy food, and its negative consequences:
obesity, heart disease, and related health concerns.
Review of the Current Situation
PopulationUS total and rural population and counts (left axis) and the share of urban population (right axis),
shown in Figure 3, reveal a weak long-term trend toward urbanization with slight acceleration of
the trend in recent years.
Figure 3 Population Trends: Total Population, Rural Population, and Percent Urban, 1960-2008
Source: World Development Indicators (World Bank, 2009)
Population scenario projections by the UN Population office for the US through 2050 give a slow
growth scenario peaking to a steady level of about 350 million by about 2035 and a linear growth
from present population to about 450 million by 2050.
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Figure 4 Population scenarios for the US for 2010 to 2050
Source: UN Population Projections (United Nations 2008).
IncomeThe income available to an individual is the single best indicator of resilience to stresses, and this
applies to agricultural resilience. Figure 5 shows trends in GDP per capita and proportion of GDP
from agriculture. The agricultural share is included both because its vulnerability to climate
change impacts as well as an indicator of the level of development of the country. As development
increases, the importance of agriculture in GDP tends to decline.
Figure 5 Per capita GDP (constant 2000 US$) and share of GDP from agriculture
Source: World Development Indicators (World Bank 2009).
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VulnerabilityVulnerability is the lack of ability to recover from a stress. Poor people are vulnerable to many
different kinds of stresses because they lack the financial resources to respond. In agriculture,
poor people are particularly vulnerable to the stresses of an uncertain climate. In this report the
focus is on income, both level and sources. At the national level, vulnerability arises in the
interactions among population and income growth and the availability of natural and manufactured
resources. National per capita income statistics reported above show averages but potentially
conceal large variations across sectors or regions.
Figure 6 shows the distribution of the proportion of the population living on less than $2.00 per
day. This situation is excessively rare in the US.
Figure 6 Poverty (percent below US$2 per day)
Source: Wood et al. (2010) available at labs.harvestchoice.org/2010/08/poverty-maps
Table 1 provides data on additional indicators of vulnerability and resiliency to economic shocks:
the level of education of the population, and concentration of labor in poorer or less dynamic
sectors.
Table 1 Education and labor statistics
Indicator Year ValuePrimary school enrollment: Percent gross (3-year average) 2007 99Secondary school enrollment: Percent gross (3-year average) 2007 94.2Percent employed in agriculture 2007 1.4Under-5 malnutrition (weight for age) 2004 1.3Source: World Development Indicators (World Bank 2009).
The outcomes of significant vulnerability include low life expectancy and high infant mortality.
Figure 7 shows that two non-economic correlates of poverty, life expectancy at birth and under-5
mortality, have improved in the US in the last 47 years.
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Figure 7 Well-Being Indicators: Life Expectancy at Birth and under 5 Mortality Rate
Source: World Development Indicators (World Bank, 2009)
Review of Land Use and AgricultureAgricultural production is dependent on the availability of land that has sufficient water, soil
resources, low enough slope that allows for agronomic practices, and an adequate growing season.
Land Use OverviewFigure 8 shows land cover as of 2000.
Figure 8 Land cover, 2000
Source: Source: GLC2000 (JRC 2000).
Figure 9 shows the locations of protected areas, including parks and reserves. These locations
provide important protection for fragile environmental areas as well as refuge for promoting and
maintaining biodiversity, which may also be important for the tourism industry.
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Figure 9 Protected areas
Source: World Database on Protected Areas (UNEP 2009). Water is from Global Lakes and Wetlands Database (WWF) (Lehnerand Döll 2004).
Agriculture OverviewTables 2 to 4 show key agricultural commodities in terms of area harvested, value of the harvest,
and food for people (this last item was ranked by weight) for the period centered around 2006-
2008.
Table 2. Harvest area of leading agricultural commodities, average of 2006-2008
Rank Crop % of total Area harvested(000 hectares)
1 Maize 32.10% 31,8092 Soybeans 29.00% 28,7863 Wheat 20.90% 20,7074 Seed cotton 4.20% 4,1755 Sorghum 2.60% 2,5636 Barley 1.40% 1,3797 Rice, paddy 1.20% 1,1538 Sunflower seed 0.80% 8339 Beans, dry 0.60% 60210 Oats 0.60% 591
Total 100.00% 99,119Source: FAOSTAT (FAO 2010)
Table 3. Value of production for leading agricultural commodities, average of 2006-2008
Rank Crop % of total Value of Production (million US$)1 Maize 28.30% 35,465.702 Soybeans 17.30% 21,627.203 Tomatoes 8.70% 10,936.804 Wheat 7.50% 9,424.305 Seed cotton 4.70% 5,914.506 Almonds, with shell 3.10% 3,921.907 Grapes 2.70% 3,413.908 Potatoes 2.50% 3,130.609 Apples 1.80% 2,217.70
10 Rice, paddy 1.60% 2,063.60Total 100.00% 125,189.50Source: FAOSTAT (FAO, 2010)
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Table 4. Consumption of leading food commodities, average of 2003-2006
Rank Crop % of total Food consumption (000 mt)1 Wheat 19.73% 24,9112 Other Vegetables 17.42% 21,9993 Potatoes 14.50% 18,3054 Tomatoes 8.99% 11,3515 Other Sweeteners 8.52% 10,754
6 Mandarines Oranges 8.42% 10,6277 Sugar Refined Equiv 7.24% 9,1418 Apples 5.54% 6,9909 Soyabean Oil 5.23% 6,60510 Other Fruits 4.43% 5,594
Total 100.00% 126,277Source: FAOSTAT (FAO, 2010)
Shown in Figure 10 - Figure 18 are the estimated yield and growing areas for five key US crops:
cotton, maize, rice, soybeans, and wheat. These figures are based on the SPAM data set (Liangzhi
You, Wood, and Wood-Sichra 2009), a plausible allocation of national and subnational data on crop
area and yields. Note that the production (MT) for a particular location is the product of the yield
(MT/ha) times the area harvested (ha).
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Figure 10 2000 Yield and harvest area density for main crops: irrigated cotton
Yield Harvest area density
Yield legend
Harvest areadensity legend
Figure 11 2000 Yield and harvest area density for main crops: rainfed cotton
Yield Harvest area density
Yield legend
Harvest areadensity legend
Source: SPAM Dataset (Liangzhi You, Wood, and Wood-Sichra 2009)
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Figure 12 2000 Yield and harvest area density for main crops: irrigated maize
Yield Harvest area density
Yield legend
Harvest area
density legend
Figure 13 2000 Yield and harvest area density for main crops: rainfed maize
Yield Harvest area density
Yield legend
Harvest areadensity legend
Source: SPAM Dataset (Liangzhi You, Wood, and Wood-Sichra 2009)
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Figure 14 2000 Yield and harvest area density for main crops: irrigated rice
Yield Harvest area density
Yield legend
Harvest areadensity legend
Figure 15 2000 Yield and harvest area density for main crops: irrigated soybeans
Yield Harvest area density
Yield legend
Harvest areadensity legend
Source: SPAM Dataset (Liangzhi You, Wood, and Wood-Sichra 2009)
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Figure 16 2000 Yield and harvest area density for main crops: rainfed soybeans
Yield Harvest area density
Yield legend
Harvest areadensity legend
Figure 17 2000 Yield and harvest area density for main crops: irrigated wheat
Yield Harvest area density
Yield legend
Harvest areadensity legend
Source: SPAM Dataset (Liangzhi You, Wood, and Wood-Sichra 2009)
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Figure 18 2000 Yield and harvest area density for main crops: rainfed wheat
YieldHarvest area density
Yield legend
Harvest area
density legend
Source: SPAM Dataset (Liangzhi You, Wood, and Wood-Sichra 2009)
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Scenarios for AdaptationIn this section, the current status of the country with respect to vulnerability is reviewed. This
includes a brief overview of current population trends, per capita income growth and its
distribution, and the state of agriculture.
To better understand the possible vulnerability to climate change, it is necessary to developplausible scenarios. The Millennium Ecosystem Assessment's Ecosystems and Human Well-being:
Scenarios, Volume 2, Chapter 2 provides a useful definition: “Scenarios are plausible, challenging,
and relevant stories about how the future might unfold, which can be told in both words and
numbers. Scenarios are not forecasts, projections, predictions, or recommendations. They are
about envisioning future pathways and accounting for critical uncertainties” (Raskin et al. 2005).
For this report, combinations of economic and demographic drivers have been selected that
collectively result in three pathways – a baseline scenario that is “middle of the road”, a
pessimistic scenario that chooses driver combinations that, while plausible, are likely to result in
more negative outcomes for human well-being, and an optimistic scenario that is likely to result in
improved outcomes relative to the baseline. These three overall scenarios are further qualified by
four climate scenarios: plausible changes in climate conditions based on scenarios of greenhouse
gas emissions.
Biophysical ScenariosThis section presents the climate scenarios used in the analysis and the crop physiological response
to the changes in climate between 2000 and 2050.
Climate ScenariosAs mentioned in the introduction, we used downscaled results from 4 GCMs driven by the A1B
scenario and additionally the downscaled results from 2 GCMs (ECHAM and MIROC, having the
highest and lowest precipitation for the US, respectively) driven by the B1 emissions scenario.
Figure 19 shows precipitation changes for USA under 4 downscaled climate models we with the
A1B scenario.
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Figure 19 Changes in mean annual precipitation for USA between 2000 and 2050 using the A1B scenario (millimeters)
CNRM-CM3 GCM CSIRO-MK3 GCM
Change in annual precipitation
(millimeters )
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data available at http://ccafs-climate.org/
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Figure 20 shows changes in maximum temperature for the month with the highest mean daily maximum temperature.
Figure 20 Changes in normal annual maximum temperature for USA between 2000 and 2050 using the A1B scenario (°C)
CNRM-CM3 GCM CSIRO-MK3 GCM
Change in annual maximumtemperature (°C)
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data available at http://ccafs-climate.org/
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Exogenous Rate of Crop Yield Gains for Cotton, Maize, and Soybeans
Extensive private sector resources are being expended to increase the rate of yield gain for
key US crops: cotton, maize, and soybeans. These efforts include advanced breeding
improved agronomic practices, and applications of biotechnology. These yield gains are
“exogenous” rates of yield gain within this paper. Cumulatively, these efforts have resulted in
compound annual growth rates in crop yield of 1.53% for cotton, 1.63% for maize, and 1.29%soybeans over the period 1970 to present (see Figures Figure 21-
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Figure 23). Climate change has meant that average annual temperatures have been climbing over
this same period (see Figure 24). The average temperatures shown in Figure 24 represent
production-weighted averages for the states where these three crops are grown. The underlying
sources for the observed yield and temperature data were USDA NASS and NOAA NCDC,
respectively. The exponential regression fits were obtained by the authors using standard
statistical software (JMP 8.0.2). The results suggest that breeding and other efforts have been able
to cope with the pace of warming observed to date. The above exogenous rates of yield gain were
employed in the crop response modeling work described below.
Crop Physiological Response to Climate ChangeThe DSSAT crop modeling system (Jones et al. 2003) is used to simulate responses of five important
crops (rice, wheat, maize, soybeans, and groundnuts) to climate, soil, and nutrient availability, at
current locations based on the SPAM dataset of crop location and management techniques (Liang
You and Wood 2006). In addition to temperature and precipitation, we also input soil data,
assumptions about fertilizer use and planting month, and additional climate data such as days of
sunlight each month.
We then repeated the exercise for each of the 4 future scenarios for the year 2050. For all
locations, variety, soil and management practices were held constant. We then compared the
future yield results from DSSAT (using multiple runs for each location) to the current or baseline
yield results from DSSAT. The output for key crops is mapped in Figures Figure 25-Figure 31. The
comparison is between the crop yields for 2050 with climate change compared to the yields with
2000 climate.
It is important to observe from these graphs that baseline area lost for most crops (see for
example soybean) is at the margins and not the high yielding part of growing area and that
production (yield x area harvested) in new areas added compensates for lost production due to lost
baseline area. This leads to resilience in total production under changing climate.
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Figure 21 Observed US cotton yields (1930 to present)
Figure 22 Observed US maize yields (1930 to present)
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Exponential Fit
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Figure 23 Observed US soybean yields (1930 to present)
Figure 24 Mean annual temperatures for cotton, maize, and soybean US production areas (1930 to present)
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65
1930 1950 1970 1990 2010 2030
FMaize
Cotton
Soybeans
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Figure 25 Yield change map under climate change scenarios: irrigated maize
CNRM-CM3 GCM CSIRO-MK3 GCM
Legend for yield change figures
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data and DSSAT model runs
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Figure 26 Yield change map under climate change scenarios: rainfed maize
CNRM-CM3 GCM CSIRO-MK3 GCM
Legend for yield change figures
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data and DSSAT model runs
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Figure 27 Yield change map under climate change scenarios: irrigated rice
CNRM-CM3 GCM CSIRO-MK3 GCM
Legend for yield change figures
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data and DSSAT model runs
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Figure 28 Yield change map under climate change scenarios: irrigated soybeans
CNRM-CM3 GCM CSIRO-MK3 GCM
Legend for yield change figures
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data and DSSAT model runs
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Figure 29 Yield change map under climate change scenarios: rainfed soybeans
CNRM-CM3 GCM CSIRO-MK3 GCM
Legend for yield change figures
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data and DSSAT model runs
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Figure 30 Yield change map under climate change scenarios: irrigated wheat
CNRM-CM3 GCM CSIRO-MK3 GCM
Legend for yield change figures
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data and DSSAT model runs
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Figure 31 Yield change map under climate change scenarios: rainfed wheat
CNRM-CM3 GCM CSIRO-MK3 GCM
Legend for yield change figures
ECHAM5 GCM MIROC3.2 medium resolution GCMSource: IFPRI calculations based on downscaled climate data and DSSAT model runs
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From biophysical scenarios to socioeconomic consequences: The IMPACT ModelFigure 32 provides a diagram of the links among the three models used in this analysis: IFPRI’s IMPACT model (Cline
2008), a partial equilibrium agriculture model that emphasizes policy simulations; a hydrology model and an
associated water-supply demand model incorporated into IMPACT; and the DSSAT crop modeling suite (Jones et al.
2003) that estimates yields of selected crops under varying management systems and climate change scenarios.
The modeling methodology reconciles the limited spatial resolution of macro-level economic models that operate
through equilibrium-driven relationships at a national level with detailed models of biophysical processes at high
spatial resolution. The DSSAT system is used to simulate responses of five important crops (rice, wheat, maize,
soybeans, and groundnuts) to climate, soil, and nutrient availability, at current locations based on the SPAM
dataset of crop location and management techniques. This analysis is done at a spatial resolution of 15 arc
minutes, or about 30 km at the equator. These results are aggregated up to the IMPACT model’s 281 spatial units,
called food production units (FPUs) (see Figure 33). The FPUs are defined by political boundaries and major river
basins. (See the Appendix for location of the US FPUs.)
Figure 32 The IMPACT modeling framework
Source: Nelson, et al, 2010.
Figure 33 The 281 FPUs in the IMPACT model
Source: Nelson et al. 2010
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Income and Demographic ScenariosIFPRI’s IMPACT model has a wide variety of options for exploring plausible scenarios. The drivers used for
simulations include: population, GDP, climate scenarios, rainfed and irrigated exogenous productivity and area
growth rates (by crop), and irrigation efficiency. In all cases except climate, the country-specific (or more
disaggregated) values can be adjusted individually. Differences in GDP and population growth define the overall
scenarios analyzed here, with all other driver values remaining the same across the three scenarios.
Table 5 documents the GDP and population growth choices for the three overall scenarios for this analysis.
Table 5. GDP and population choices for the three overall scenarios
Category Pessimistic Baseline OptimisticGDP,constant2000 US$
Lowest of the four GDP growth rate scenarios fromthe Millennium Ecosystem Assessment GDPscenarios (Millennium Ecosystem Assessment 2005)and the rate used in the baseline (next column)
Based on rates from World BankEACC study (Margulis 2010),updated for Sub-Saharan Africaand South Asian countries
Highest of the four GDP growth ratesfrom the Millennium EcosystemAssessment GDP scenarios and the rateused in the baseline (previous column)
Population UN High variant, 2008 revision UN medium variant, 2008revision
UN low variant, 2008 revision
Source: Based on analysis conducted for Nelson et al. 2010.
The IMPACT modeling suite was run with four climate model and scenario combinations; the CSIRO and the MIROC
GCMs with the A1B and the B1 scenarios. Those four outputs were used with each of the three GDP per capita
scenarios. Table 6 shows the annual growth rates for different regional groupings as well as for USA. Figure 34
illustrates the path of per-capita income growth for USA under these scenarios. In all scenarios, USA’s incomegrowth exceeds those of the developed group of countries and most developing countries, although it is expected
to slow from the current rapid pace.
Table 6. Average scenario per capita GDP growth rates (percent per year)
Category 1990–2000 2010–2050
Pessimistic Baseline Optimistic
USA 2.95 1.41 2.04 2.28
Developed 2.7 0.74 2.17 2.56
Developing 3.9 2.09 3.86 5.00
Low-income developing 4.7 2.60 3.60 4.94
Middle-income developing 3.8 2.21 4.01 5.11
World 2.9 0.86 2.49 3.22
Source: World Development Indicators for 1990–2000 and authors’ calculations for 2010–2050.
Figure 34 graphs the three GDP per capita scenario pathways, the result of combining the three GDP projections
with the three population projections of Figure 4 from the United Nations Population office. The "optimistic
scenario" combines high GDP with low population. The "baseline scenario" combines the medium GDP projection
with the medium population projection. Finally, the "pessimistic scenario" combines the low GDP projection with
the high population projection.
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Figure 34 GDP Per Capita Scenarios
Source: Based on IMPACT results of July 2011, computed from World Bank and United Nations population estimates (2008 revision).Note that the scenarios used apply to all countries; that is, in the optimistic scenario, every country in the world is assumed to experience high
GDP growth and low population growth.
The GDP per capita scenario results for US can be seen in Table 7. In the pessimistic scenario, per capita income
increases less than 2 times while in the optimistic scenario, it almost triples between 2010 and 2050.
Table 7. US Per Capita Income Scenario Outcomes for 2010, 2030, and 2050 (2000 US$ per person)
2010 2030 2050
Pessimistic 37,889 51,636 67,666
Baseline 38,110 57,073 87,883
Optimistic 39,621 68,196 100,748
Agricultural Vulnerability Scenarios (Crop-specific)Figures 35-40 show simulation results from the IMPACT model for cotton, maize, rice, soybeans, wheat, and other
grains. Each crop has five graphs: one each showing production, yield, area, net exports, and world price.
Several of the figures below use box and whisker plots to present the effects of the climate change scenarios in
the context of each of the economic and demographic scenarios. Each box has 3 lines. The top line represents the
75th percentile, the middle line is the median, and the bottom line is the 25th percentile.2
Shown in Figures 41-43 are IMPACT-predicted changes in US cotton, maize, and soybean yields in 2050 implied
by the higher exogenous yield assumptions described earlier (in Figures 21-23). The figures compare yields
predicted by the IMPACT baseline model, and 4 different productivity scenarios, while comparing them to the
initial value in 2010 (PM – is perfect mitigation or no climate change). Yield growth in the IMPACT model is
determined by the intrinsic yield growth rates, as well as responding to changes in prices. Therefore, inproductivity scenarios that directly affect the crop (i.e. maize yield and the maize productivity scenario) we can
expect to see a clear difference in the yield between the baseline model (no productivity scenario) and the results
of the IMPACT model with a productivity scenario, because we are directly changing the yield growth assumption.
In productivity scenarios that do not change own-crop yield (i.e. maize yield and the soybean productivity
scenario) we should expect to see much smaller changes to own-crop yields. This is because changes in own-crop
2 These graphs were generated using Stata with Tukey's (Tukey 1977) formula for setting the whisker values. If the interquartilerange (IQR) is defined as the difference between the 75th and 25th percentiles, the top whisker is equal to the 75th percentile plus1.5 times the IQR. The bottom whisker is equal to the 25th percentile minus 1.5 times the IQR (StataCorp 2009).
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yield would be different from the baseline in so much as the changes in the yields in another crop effect world
crop prices, leading to changes in incentives in planting different crops. Using the maize yield and soybean
productivity example, any changes in maize yield under the soybean productivity scenario occur because increased
productivity of soybean leads to changes in production and/or prices of soybeans, which leads to changes in
demand and/or prices of other crops including maize. On average we should expect these indirect effects on maize
yield from changes in soybean yields to be fairly small.
Figure 35 Scenario outcomes for cotton area, yield, production, net exports, and prices
Production Yield
Area Net Exports
PricesSource: Based on IMPACT results of July 2011.
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Figure 36 Scenario outcomes for maize area, yield, production, net exports, and prices
Production Yield
Area Net Exports
PricesSource: Based on IMPACT results of July 2011.
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Figure 37 Scenario outcomes for other grains area, yield, production, net exports, and prices
Production Yield
Area Net Exports
Prices
Source: Based on IMPACT results of July 2011.
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Figure 38 Scenario outcomes for rice area, yield, production, net exports, and prices
Production Yield
Area Net Exports
PricesSource: Based on IMPACT results of July 2011.
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Figure 39 Scenario outcomes for soybeans area, yield, production, net exports, and prices
Production Yield
Area Net Exports
PricesSource: Based on IMPACT results of July 2011.
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Figure 40 Scenario outcomes for wheat area, yield, production, net exports, and prices
Production Yield
Area Net Exports
PricesSource: Based on IMPACT results of July 2011.
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Figure 41. Changes in US cotton yields (kg/ha) in 2050 under the IMPACT baseline model, and 4 differentproductivity scenarios, while comparing them to the initial value in 2010 (PM – is perfect mitigation or no climatechange).
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Figure 42. Changes in US maize yields (kg/ha) in 2050 under the IMPACT baseline model, and 4 differentproductivity scenarios, while comparing them to the initial value in 2010 (PM – is perfect mitigation or no climatechange).
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Figure 43 Changes in US soybean yields in 2050 under the IMPACT baseline model, and 4 different productivity
scenarios, while comparing them to the initial value in 2010 (PM – is perfect mitigation or no climate change).
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Human Vulnerability ScenariosFigure 44 shows scenario outcomes for the average daily kilocalories per capita. There is very little trend in the
data and one can safely conclude that climate change does not have a direct impact on food security within the
US.
Figure 44 Average daily kilocalories availability under multiple income and climate scenarios (kilocalories per
person per day)
Source: Based on IMPACT results of July 2011.
Opportunities and Constraints of Adaptation to Climate ChangeA review of trends in producer management changes over the past 40 years provides a glimpse of adaptation to
recent climate change in Iowa, the largest corn-producing state in the US Midwest (Takle, 2011). Farmers in Iowa
are planting corn about 3 weeks earlier than 40 years ago because they use seed that better tolerates cold soil
temperatures and because of the longer growing season due to climate change. They plant higher-yielding, longer
season hybrids and harvest later, taking advantage of warmer and dryer autumn conditions that provide naturaldry-down for the crop. Farmers adapt to higher rainfall amounts in spring and early summer due to climate
change by purchasing larger machinery to plant more in smaller windows for field work. More abundant spring
rains recharge deep soil moisture, providing a critical reservoir of moisture for dry August periods when grain is
filling in the ear, allowing for planting more plants per hectare. Farmers have responded to wetter springs and
early summer by installing more subsurface drainage tile at closer spacing and even on sloped surfaces to reduce
water-logging of soils. Higher summer humidity levels require chemical response to new pests and pathogens.
Recent high commodity prices have enabled producers to make appropriate investments in machinery, chemicals
and crop genetics to respond to climate change. On balance, these recent climate changes have been favorable
for agricultural production in Iowa. The resilience of future food security in the US in the face of climate change
assumes that producers will continue to have financial resources to respond as they have in the past 40 years and
that fundamental biophysical processes are not constrained by extremes of climate change in the next 40 years.
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Agriculture and Greenhouse Gas Mitigation
Agricultural Emissions History
Figure 45 GHG Emissions (CO2, CH4, N2O, PFCs, HFCs, SF6) in USA by Sector
Source: Climate Analysis Indicators Tool (CAIT) Version 8.0. (World Resource Institute 2011)
Potential for agricultural mitigationSignificant potential for mitigation of ag sector GHG emissions exists in the US through a series of measures. Some
examples are listed below (this is not intended to be an exhaustive list):
Increased adoption of conservation tillage practices
Increased carbon sequestration through the optimization of landscape management, including the use of
perennial dedicated energy crops as buffers (would provide multiple additional ecosystem services)
Development and implementation of new technologies, such as the nitrogen-use efficiency biotech traits now in
early testing
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ConclusionsUnlike the situation in many other countries, the analysis presented here shows that climate change does not represent
a near-term threat to food security to the US. The available data show that US crop yields have continued their steady
exponential growth over the past 40 years of increasing temperatures, and this trend is expected to continue for the
next 40 years (through 2050) provided producers are able to adapt to climate change in the next 40 years as
successfully as they have in the last 40 years. This report did not examine climate trends for the latter half of the 21st
century, but it is has been reported elsewhere that climate may begin to impinge on US crop yields during that period,
unless effective mitigation measures are instituted soon. However, it seems unlikely that any such impacts on cropyields would seriously impair US food security, due to the relative abundance of food that the US should continue to
experience.
The paper was presented at the International Conference on Climate Change and Food Security (ICCCFS, Beijing, China, November 6-8), jointlyhosted by the International Food Policy Research Institute (IFPRI) and the Chinese Academy of Agricultural Sciences (CAAS). The authors would like toacknowledge financial support from CCAFS. Any errors and omissions are the responsibility of the authors. Any opinions expressed in this paper arethose of the authors and are not necessarily endorsed by IFPRI or CAAS. The boundaries and names shown and the designations used on the map(s)herein do not imply official endorsement or acceptance by IFPRI or CAAS.
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