impact of biofuel production on food prices
DESCRIPTION
Impact of Biofuel Production on Food Prices. Miroslava Rajcaniova. Faculty of Economics and Management, Slovak University of Agriculture, Nitra, Slovak Republic. Definition of Biofuels. - PowerPoint PPT PresentationTRANSCRIPT
Impact of Biofuel Production onImpact of Biofuel Production on FoodFood PricesPrices
Miroslava Rajcaniova Faculty of Economics and Management,
Slovak University of Agriculture, Nitra, Slovak Republic
Definition of BiofuelsDefinition of Biofuels
Biofuels are fuels derived from biomass that are provided by agriculture, forestry, or fishery as well as from wastes of agro-industry or food industry (FAO, 2008).
BackgroundBackgroundProduction of biofuels tripled from 2000 to 2007 (OECD, 2008). Around 85 percent of the global production of liquid biofuels is in the form of ethanol.
The production of ethanol tripled between 2000 and 2007 to reach over 60 billion liters, with Brazil and the United States accounting for most of this growth.
Biodiesel output, mostly by the European Union, witnessed an even more pronounced expansion over the same period, having grown from less than one billion liters to almost 11 billion liters (FAO, 2009).
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Bio
fuel
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Development of Biofuel ProductionDevelopment of Biofuel Production
Source: Energy Information Administration (EIA)
Development of Bioethanol ProductionDevelopment of Bioethanol Production
Source: Earth Policy Institute, F.O.Licht
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Development of Biodiesel ProductionDevelopment of Biodiesel Production
Source: Earth Policy Institute, F.O.Licht
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World Ethanol Production by Country World Ethanol Production by Country (Millions of U.S. liquid gallons per year)(Millions of U.S. liquid gallons per year)
Source: RFA Industry Statistics
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2000 2001 2002 2003 2004 2005 2006 2007 2008
Brazil United States European Union
China India Canada
Thailand
World Biodiesel Production by Country (in World Biodiesel Production by Country (in Thousand tonnes)Thousand tonnes)
Source: data from OECD.stat
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European Union United States Argentina
Brazil Australia Malaysia
Indonesia India Canada
Turkey Republic of South Africa
BackgroundBackground
Ethanol is an alcohol derived from sugar or starch crops (e.g. sugar beet, sugar cane or corn) by fermentation. Cellulosic materials (e.g. wood, grasses and some waste crop residues) can also be converted into bioethanol.
Sugarcane is favorite raw material for ethanol production in Brazil, cereals and sugar beet in the USA, EU and other developed countries with temperate climate.
Feedstocks for BioFeedstocks for Bioethanolethanol in Europe in Europe
Source: EU FAS posts
BackgroundBackground
Biodiesel is derived from vegetable oils (e.g. rapeseed oil, soy or palm oil).
Waste residues (e.g. waste cooking fat) can also be converted into biodiesel. Biodiesel can either be burnt directly in diesel engines or blended with diesel derived from fossil fuels.
Feedstocks for BioFeedstocks for Biodieseldiesel in Europe in Europe
Source: EU FAS posts
BackgroundBackground
Blends of biofuels and gasoline or diesel are applied into cars.
Low ethanol blends from 5 to 22% applied without modifications of engines and with the existing infrastructure. E10 used in USA, Brazil, E5 popular in Europe.
High ethanol blends of 85 % require special engine modifications and used in flexible fuel vehicles (FFV).
Biodiesel application ranges from pure biodiesel known as B100 to low biodiesel blends B20.
Reasons to Produce Biofuels Reasons to Produce Biofuels
The development of biofuel production is partly influenced by the government support programs and partly by the development of oil prices.
Government Support Programs Government Support Programs - Consumer excise-tax exemptions at the gasoline pump- Mandatory blending or biofuel consumption requirements (from
domestic and import supplies)- Import tariffs on biofuels- Production subsidies for biofuel feedstocks (e.g.,
maize)- Production subsidies for biofuels (grants, loan guarantees, tax
incentives, etc.)- Subsidies for R&D of new technologies- Grants, loans...
Blending MandatesBlending Mandates
Brazil
1975 - ethanol blends 20–25 percent, all diesel must contain 2% biodiesel and this share will increase to 5 percent by 2013.
Blending MandatesBlending MandatesEuropean Union
The 2003 biofuel directive (The Directive 2003/30/EC) sets that by 2010 EU should reach 5.75 percent share of biofuels in total transport fuel use (by year 2020 - 10 percent). At least 20% of the target in 2015 and 40% of the 2020 goal must be met from “non-food and feed-competing” second-generation biofuels or from cars running on green electricity and hydrogen.
Blending MandatesBlending Mandates
United States
The US Renewable Fuel Standard (RFS) mandates the minimum use of 36 billion gallons of ethanol by 2022. About 11 billion gallons are used at present.
Blending MandatesBlending Mandates
Source: US EPA (2010)
Tax Exemption / Tax CreditTax Exemption / Tax CreditTax credit in the US amounts to 52 cents per gallon. The blender
receives a subsidy per gallon of biofuel blended with a fossil fuel .
In the European Union and Brazil - tax reductions or exemptions for renewable fuels. Tax exemption on biodiesel in Germany was reduced from 0.47 Euro per liter to 0.29 Euro per liter between 2005 and 2009. Tax on biofuels for transport may be not less than 50 percent of the normal excise tax.
Reasons to Support BiofuelsReasons to Support Biofuels
- biofuels reduce the dependency of many countries on imported oil
- countries are worried about the stability of oil prices- increased production of biofuels is expected to improve the
environment and to contribute to the reduction of global climate change
- biofuel support might reduce the cost of agricultural support programs
Greenhouse Gas Emissions Greenhouse Gas Emissions In theory, the production of biofuels is carbon neutral. Most of the carbon emitted to atmosphere is CO2 which is greenhouse gas (GHG).
Fossil fuels on the other hand release carbon that was stored for millions of years under the surface of the earth.
At the same time production of food from maize or other feedstock used to produce biofuels is also carbon neutral (FAO, 2008).
Greenhouse Gas Emissions Greenhouse Gas Emissions - To assess the net effect of a biofuel on greenhouse gas emissions
life cycle analysis is used.
- Life cycle analysis measures product’s environmental flows and potential impacts throughout the whole life time of the product.
- Greenhouse gas emissions of biofuels are strongly dependent on raw material and technology of production and consumption (Lee, Clark, Devereaux, 2008).
Estimated GHG savings of Estimated GHG savings of FFirst irst GGeneration eneration BBiofuelsiofuels
Source: Scope, 2009
Biofuel % GHG saving
Ethanol (corn) -5 – 35%
Ethanol (wheat) 18 – 90%
Ethanol (sugar cane) 70 – 100%
Ethanol (sugar beet) 35 - 65%
Biodiesel (rapeseed) 20 – 85%
Biodiesel (palm oil) 8 – 84%
Biodiesel (palm oil) -868% w/rainforest conversion
Biodiesel (palm oil) -2070% w/peat forest conversion
Biodiesel (soybean) -17 – 110%
Biodiesel (sunflower) 35 – 110%
Estimated GHG Estimated GHG SSavings of avings of SSecond econd GGeneration eneration BBiofuelsiofuels
Source: Scope, 2009
Biofuel % GHG saving
Cellulosic ethanol (switchgrass) 88 – 98%
Cellulosic ethanol (poplar, switchgrass, forest residue)
10 – 102%
Cellulosic ethanol (wheat straw) 84 – 98%
Cellulosic ethanol (poplar) 70%
Cellulosic ethanol (grass and wood) 65%
Ethanol (various lignocellulose) 15 – 115%
FT Diesel (various lignocellulose) 28 – 200%
FT Diesel (residual wood) 80 – 96%
Energy Balance in Production of BiofuelsEnergy Balance in Production of BiofuelsThe fossil energy balance expresses the ratio of energy contained in the biofuel relative to the fossil energy used in its production.
A fossil energy balance of 1.0 means that it requires as much energy to produce a litre of biofuel as it contains; in other words, the biofuel provides no net energy gain or loss. Fossil fuel energy balance of 2.0 means that a litre of biofuel contains twice the amount of energy as that required in its production.
Energy Balance in Production of BiofuelsEnergy Balance in Production of Biofuels
Fuel Fossil energy balance
Ethanol (corn) 1.3 – 1.8
Ethanol (wheat) 1.2 – 4.3
Ethanol (sugar beet) 2.0 – 8.3
Biodiesel (rapeseed) 1.2 – 3.7
Biodiesel (palm oil) 8.7 – 9.7
Biodiesel (soybean) 1.4 – 3.4
Biodiesel (waste vegetable oil) 4.9 – 5.9
Gasoline (crude oil) 0.8
Diesel (crude oil) 0.8 – 0.9
Source: Worldwatch Institute 2006
Biofuels and BiodiversityBiofuels and Biodiversity
Biofuel production can affect wild and agricultural biodiversity in some positive ways, such as through the restoration of degraded lands, but many of its impacts will be negative, for example when natural landscapes are converted into energy crop plantations or peat lands are drained, habitat loss following land conversions, agrochemical pollution and the dispersion of invasive species ... (CBD, 2008, FAO, 2008).
Biofuels and Land UseBiofuels and Land Use-supply of food is constrained by fixed land
- to increase the production area for energy crops, land conversions of different native ecosystems are needed, these can have substantial impact on the GHG balances of biofuels
Biofuels and Land UseBiofuels and Land UseConversion of grassland to cultivated land can release 300 tons of carbon per hectare.
When forestland is converted, 600 – 1000 tons of carbon per ha are emitted (OFID/IIASA 2009).
Conversion of native ecosystems, such as grassland, forests and peatland, to energy crop lands, or through returning abandoned croplands to production is called direct land use change (LUC) while indirect LUC occurs when existing food/feed cropland is diverted to energy crops.
Economics of BiofuelsEconomics of BiofuelsBiofuels are almost perfect substitutes to fossil fuels. The market price of biofuels should therefore be strongly dependent on the market price for gasoline.
Perfect substitutes have the same prices, which means that
price of gasoline (PG) = price of ethanol (PE),
in energy terms PE = k.PG where in reality k is approximately 0.7 when adjusted to an E-100 basis. (DeGorter and Just, 2008)
Price relationshipsPrice relationshipsExcise tax imposed:PE + t= k(PG + t), t is an excise tax.
Tax exemption of biofuels:PE + t - te = k (PG + t), te is tax exemption. PE = kPG – t(1-k) + te.
To increase the price of ethanol and to stimulate its production the government can lower the excise tax on fuels, to increase the tax exemption. PE increases when PG goes up.
Ethanol is mainly used as an additive to gasoline and that the complementarity relationship is considered to be more dominant than the substitution relationship between ethanol and gasoline in the U.S. (Tokgoz and Elobeid, 2007).
Coltrain (2001) found that ethanol price is typically 50 cents above the price of gasoline. Gallagher et al. (2003) support this finding, attributing the difference in ethanol and gasoline price to the U.S. federal excise tax.
Gasoline Ethanol DifferentialGasoline Ethanol Differential
Source: Bloomberg - ethanol prices, EIA – gasoline prices, (Gasoline - ethanol differential without the taxes and tax credit)
-2.5
-2
-1.5
-1
-0.5
0
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2000 2001 2002 2003 2004 2005 2006 2007 2008 2009
US
D P
er
Ga
llon
The differentials below zero represent time periods when ethanol is more expensive than gasoline.
Around September 2005, ethanol price dropped below the gasoline price. The same situation was observed in the US ethanol market as well.
Hart (2005) attributes this fall in price to the expansion of ethanol production and to the expansion of ethanol products that directly compete with gasoline, such as E85 . There was an explosion in production in 2005 and 2006 with double-digit growth rates.
Different studies have shown similar results, showing that ethanol is not competitive with gasoline without government policies (Kruse 2007, de Gorter, Just 2008, Hermanson 2008).
The costs of biofuel production are declining however. The second generation of biofuels produced from cellulosic material is expected to be more efficient than the first generation of biofuels produced from agricultural feedstock like sugarcane, maize, wheat, plant oils etc. (OECD/IEA 2008).
HypothesesHypotheses
From literature review the following hypotheses follow:
Food prices are positively related to fuel prices.Biofuel prices are positively related to fuel prices.Food prices are positively related to biofuel prices.
The main goal is to check whether the relationships among fossil fuel, biofuel and food prices are statistically significant as suggested in the literature.
DataData- weekly data (April, 2005 to August, 2010) for oil, ethanol, corn, wheat and sugar prices - prices are expressed in USD per gallon of fuel and USD per ton of agricultural commodity.
Two periods:2005 - 2008 increasing ethanol production , peak of
oil prices2008 - 2010 increasing ethanol production, mature biofuel
market
German ethanol prices come from Bloomberg database. Europe Brent oil prices are from Energy Information Administration. Commodity prices come from FAO and Detsche Boerse database.
Development of Development of Fuel and FoodFuel and Food PPricesrices
Source: Bloomberg - ethanol prices, EIA – gasoline prices, oil prices, Deutsche Börse – corn, wheat and sugar prices
MethodsMethods
The study evaluates the relationship among the following variables: fuel prices (oil, ethanol and gasoline) and selected food prices (corn, wheat and sugar).
We conduct a series of statistical tests, starting with • tests for unit roots and stationarity, • estimation of cointegrating relationships between price pairs, • evaluating the inter-relationship among the variables in a Vector Autoregression (VAR) and • Impulse Response Function (IRF). The direction of causation in the variables runs from oil to gasoline to ethanol investigated by means of • Granger causality tests.
Correlation MatrixCorrelation Matrix (2005 – 2010) (2005 – 2010)
Variable Ethanol Gasoline Oil Corn Wheat Sugar
Ethanol 1.0000 - - - - -
Gasoline 0.6095 1.0000 - - - -
Oil 0.6192 0.9544 1.0000 - - -
Corn 0.6209 0.7054 0.7964 1.0000 - -
Wheat 0.6990 0.6926 0.7503 0.7189 1.0000 -
Sugar -0.1502 -0.0613
-0.0840 -0.2469 -0.3019
1.0000
Source: Own calculation
Correlation Correlation ResultsResultsAbbot et al., (2009), found the crude/corn price correlation to be high and positive at 0.80 for the period 2006-08
Campiche et al. (2007), examined the correlation coefficients computed for corn price series and crude oil prices for the 2003-2007 time period. Corn prices have a positive, but low correlation with crude oil prices in 2003-2005. However, in 2007, the correlation between corn prices and crude oil prices was negative which causes the cointegrating relationship to be questionable. Sugar prices have an extremely positive and significant correlation with crude oil prices in 2003-2006 and a high negative correlation in 2007.
Unit Unit RRoot oot TTests ests
Source: own calculation, Notes: * significance at the 10% level, ** significance at the 5% level, *** significance at the 1% level
Time series
Level First Differences
None ConstantConstant & Trend
None ConstantConstant and Trend
ADF - Ethanol 1.159 -2.018 -1.074 -10.097*** -10.423*** -10.453***
ADF - Gasoline -0.317 -2.493 -2.501 -14.268*** -14.243*** -14.208***
ADF - Oil -0.771 -1.927 -1.652 -7.121*** -7.107*** -7.113***
ADF - Corn -0.335 -1.723 -1.645 -8.115*** -8.096*** -8.102***
ADF - Wheat -0.323 -1.215 -0.789 -9.463*** -9.442*** -9.510***
ADF - Sugar -1.174 -0.525 -0.671 -15.536*** -15.583*** -15.622***
PP - Ethanol 1.198 -1.990 -1.053 -12.871*** -13.127*** -13.186***
PP - Gasoline -0.193 -2.165 -2.151 -14.268*** -14.243*** -14.208***
PP - Oil -0.642 -1.710 -1.461 -14.283*** -14.257*** -14.254***
PP - Corn -0.318 -1.690 -1.577 -15.530*** -15.496*** -15.491***
PP - Wheat -0.319 -1.256 -0.843 -15.383*** -15.350*** 15.407***
PP - Sugar -1.165 -0.600 -0.754 -15.536*** -15.583*** -15.622***
Unit Unit RRoot oot TTestsests
We use two tests to check for stationarity of time series: augmented
Dickey Fuller (ADF) test and Phillips Perron (PP) test.
The lags of the dependent variable were determined by Akaike
Information Criterion (AIC).
Both tests show that all the time series (oil, ethanol, corn, wheat and
sugar prices) are integrated of order 1, i.e. non-stationary. To make
them stationary we therefore take the first differences.
Johansen cointegration test resultsJohansen cointegration test results
2005 – July 2008 August 2008 - 2010
L-max Test Trace Test L-max Test Trace Test
H0: r=0 H0: r=1
H0: r=0 H0: r=1
H0: r=0 H0: r=1
H0: r=0 H0: r=1
Ethanol - Oil 4.07*** 1.35 5.42*** 1.35 16.66 0.89** 17.56 0.89**
Ethanol - Corn 5.07*** 1.51 6.59*** 1.51 12.22 4.44* 16.66 4.44**
Ethanol - Wheat 5.93*** 1.14 4.79*** 1.14 9.65*** 1.45 11.10*** 1.45
Ethanol - Sugar 5.61*** 1.96 7.57*** 1.96 6.80*** 1.92 8.71*** 1.92
Oil - Corn 7.93*** 1.06 9.02*** 1.06 16.23 1.54** 17.76 1.54**
Oil - Wheat 7.48*** 1.41 8.89*** 1.41 24.73 2.00** 26.74 2.00**
Oil - Sugar 3.75*** 1.13 4.88*** 1.13 12.95 2.36* 15.31 2.36*
Source: own calculation, Notes: * significance at the 10% level, ** significance at the 5% level, *** significance at the 1% level
CointegrationCointegration
• Absence of relationship between oil and commodity prices – strange if we believe that oil prices affect commodity prices through inputs
• Prices are related when biofuel markets get matured, price transmission from oil to biofuels to commodities works slowly
CointegrationCointegration
Ciaian and Kancs (2009) tested the relationship between crude oil and nine major traded agricultural commodity prices including corn, wheat, rice, sugar, soybeans, cotton, banana, sorghum and tea. There were no cointegration relationships in the period 1994-1998, the prices of crude oil and corn and crude oil and soybean were cointegrated in the period 1999-2003 and all nine agricultural commodity prices and crude oil prices contained a cointegrating vector in the period 2004-2008.
CointegrationCointegration
Higgins et al.(2006) found a cointegrating relationship interconnecting ethanol price and corn price during the period of June of 1989 and August of 2005. The results indicate a nearly one to-one relationship between corn and ethanol prices.
Campiche et al. (2007) tested the cointegration of corn, soybean oil, palm oil, sugar and crude oil in two different time periods. No cointegrating relationship was observed in the time period 2003-2005. Corn and soybeans, but not soybean oil were found to be cointegrated with crude oil from 2006 through the first half of 2007.
CCointegration ointegration ResultsResults
Cointegration tests in Serra (2008) support the existence of a (single) long-run relationship between US ethanol, US corn and US oil prices.
Results from Zhang (2009) yield cointegration relationship between ethanol and corn prices for the 1989-1999 period. In contrast, results indicate no long-run relation between ethanol and corn prices in the 2000-2007 period. In contrast to popular belief, between 2000 and 2007 ethanol and corn do not appear to have any long-run price relationships.
Vector Vector Error Correction ModelError Correction Model
Source: Own calculationSignificance: 1% (***), 5% (**), and 10% (*).
Equation
∆ bioethanol ∆ gasoline ∆ oil ∆ maize ∆ wheat ∆ sugar
∆ bioethanolt-1 -0.001 0.192 -0.089 -0.035 0.245 -0.352*
∆ gasoline t-1
∆ oil t-1
0.038* -0.083 0.074 0.091* -0.017 0.064
0.004 0.360*** 0.021 -0.156** -0.052 -0.078
∆ maize t-1
∆ wheat t-1
0.051* -0.039 0.096 0.063 -0.029 0.122
-0.042 0.091 0.006 -0.084 0.018 0.011
∆ sugar t-1 0.018 0.006 -0.037 -0.065 -0.034 -0.030
ECT t-1 0.003 -0.020*** -0.027*** 0.012* 0.000 -0.006
Vector Vector AAutoregressionutoregression
Source: own calculationNote: p values in parentheses below the estimate
Ethanol Gasoline Oil Corn Wheat Sugar
Ethanol t-10.1582(0.033)
0.0339(0.874)
0.1581(0.500)
0.0581(0.783)
0.3376(0.109)
-0.3653(0.107)
Gasoline t-10.0180(0.438)
-0.1168(0.081)
0.2248(0.002)
0.0947(0.152)
-0.0159(0.810)
0.0615(0.387)
Oil t-1-0.0343(0.179)
0.3923(0.000)
-0.0661(0.413)
-0.1461(0.044)
-0.0576(0.428)
-0.0593(0.447)
Corn t-10.0523(0.106)
0.0720(0.440)
0.1160(0.257)
0.1387(0.132)
-0.0130(0.888)
0.1577(0.111)
Wheat t-1-0.0564(0.076)
0.1020(0.265)
-0.0281(0.780)
-0.1613(0.074)
-0.0203(0.822)
0.0099(0.918)
Sugar t-1-0.0013(0.955)
-0.0366(0.591)
-0.0907(0.225)
-0.1273(0.058)
-0.0930(0.167)
-0.0563(0.436)
Cereal end-use in the EUCereal end-use in the EU
Source: European Bioethanol Fuel Association (Harvest 2008/2009 estimate)
63%
23%
8%
4% 2%
animal feed
food
industry
seed
bioethanol
Note: 1/3 from the bioethanol use goes into the feed chain indirectly as high protein cattle feed (DDGS) and replaces soy meal, about 1% of all cereals are used to produce fuel ethanol
CCornorn end-use in the EU end-use in the EU
Source: Kristensen, 2010
Granger Causality ResultsGranger Causality Results2005 - 2008 2008 - 2010
Oil → Ethanol Oil → Ethanol***
Oil → Corn** Oil → Corn**
Oil → Wheat Oil → Wheat*
Oil → Sugar Oil → Sugar
Ethanol → Oil Ethanol → Oil***
Ethanol → Corn Ethanol → Corn*
Ethanol → Wheat Ethanol → Wheat*
Ethanol → Sugar Ethanol → Sugar
Source: own calculation, Notes: * significance at the 10% level, ** significance at the 5% level, *** significance at the 1% level
CausalityCausality
• The Granger causality tests suggest unidirectional causality from fuel prices to commodity prices.
• No Granger causality in opposite direction.
• This result is also in line with Arshad and Hameed (2009), Ciaian and Kancs (2009)
Impulse Response FunctionImpulse Response Function
-.02
0
.02
.04
.06
-.02
0
.02
.04
.06
-.02
0
.02
.04
.06
-.02
0
.02
.04
.06
-.02
0
.02
.04
.06
-.02
0
.02
.04
.06
0 5 10 0 5 10 0 5 10 0 5 10 0 5 10 0 5 10
varbasic, D.logcorn, D.logcorn varbasic, D.logcorn, D.logethanol varbasic, D.logcorn, D.loggasoline varbasic, D.logcorn, D.logoil varbasic, D.logcorn, D.logsugar varbasic, D.logcorn, D.logwheat
varbasic, D.logethanol, D.logcorn varbasic, D.logethanol, D.logethanol varbasic, D.logethanol, D.loggasoline varbasic, D.logethanol, D.logoil varbasic, D.logethanol, D.logsugar varbasic, D.logethanol, D.logwheat
varbasic, D.loggasoline, D.logcorn varbasic, D.loggasoline, D.logethanol varbasic, D.loggasoline, D.loggasoline varbasic, D.loggasoline, D.logoil varbasic, D.loggasoline, D.logsugar varbasic, D.loggasoline, D.logwheat
varbasic, D.logoil, D.logcorn varbasic, D.logoil, D.logethanol varbasic, D.logoil, D.loggasoline varbasic, D.logoil, D.logoil varbasic, D.logoil, D.logsugar varbasic, D.logoil, D.logwheat
varbasic, D.logsugar, D.logcorn varbasic, D.logsugar, D.logethanol varbasic, D.logsugar, D.loggasoline varbasic, D.logsugar, D.logoil varbasic, D.logsugar, D.logsugar varbasic, D.logsugar, D.logwheat
varbasic, D.logwheat, D.logcorn varbasic, D.logwheat, D.logethanol varbasic, D.logwheat, D.loggasoline varbasic, D.logwheat, D.logoil varbasic, D.logwheat, D.logsugar varbasic, D.logwheat, D.logwheat
95% CI orthogonalized irf
step
Graphs by irfname, impulse variable, and response variable
Impulse Response FunctionImpulse Response Function
Sudden increase in ethanol price, would result in a slight decrease of gasoline and oil prices. It seems that the response disappears after about five weeks.
This is also true for the response of oil price to the shock in gasoline prices.
A sudden change in oil prices results in a small change in ethanol prices but the same shock in oil prices will lead to a strong response of the gasoline prices. After a sudden increase, gasoline prices will then start decreasing after 7-10 days following the shock. It will eventually approaches zero within a ten-week period, which proves to be a temporary response.
Impulse Response FunctionImpulse Response Function
Similar results were observed by Serra (2008) Ethanol responses usually reach a peak after about 10 days of the initial shock and fade away after around 30-35 days (Serra, 2008).
DiscussionDiscussion
• Busse (2009) tested the relationship between rapeseed oil and biodiesel prices in Germany.
• strong error-correction until 2005 but becomes increasingly instable in 2006 and 2007. Strong overcapacity and norms requiring rapeseed oil use in biodiesel production are the main reasons for weak adjustment in rapeseed oil prices in 2006. In 2007, these effects are outweighed by overall price increases and substitution of rapeseed oil by soya oil in biodiesel production.
DiscussionDiscussion
• Gardner (2007) models the interrelationship between biofuel markets and agricultural markets. He shows in a partial equilibrium model that increased demand for biofuels caused by biofuel subsidy leads to higher producer prices of ethanol while the buyers’ prices of ethanol fall.
• Agricultural producers of commodities used for biofuel production (wheat,…) also gain because increased use of ethanol increases derived demand for wheat.
DiscussionDiscussion
• Msangi et al. (2006) use the IMPACT model. The results show that when the demand for biofuels is growing very rapidly, holding crop productivity unchanged, world prices for crops increase substantially.
DiscussionDiscussion
The long run behaviour of sugar prices was found to be determined by oil prices and, rather surprisingly, not ethanol prices (Rapsomanikis, Hallam, 2006).
DiscussionDiscussion
• Price spikes are common in agricultural markets due to a combination of relatively inelastic demand and volatile supply.
• World wheat prices were 15% higher in 1995 and 1996 than the 2007 price spike.
• Cereal consumption for ethanol in the EU in 2007/08 only accounted for 0.09% of the global cereal production with over 40% of it being grown on set-aside land where food production was forbidden.
• EU ethanol has had no discernible impact on the commodity price spike (ebio, 2008).
DiscussionDiscussion
• Informa Economics demonstrates that packaging, processing, labor and other activities have the most impact on consumer food prices.
• 4% of the change in the food CPI (Consumer Price Index) is explained by fluctuations in corn futures prices.
• The so-called “marketing bill”—the portion of final food costs that excludes grains or other raw materials – has a higher correlation with the CPI for food than does corn (Ethanol Industry Outlook, 2008).
DiscussionDiscussion
• An analysis made by the Energy Information Administration suggested that up to 16 billion gallons of corn-ethanol could still be produced in 2015 without affecting the corn price (EIA, 2007).
ConclusionsConclusions
• Several factors are believed contributed to the price rise. Food demand increases in growing Asian economies, supply suffered from the adverse weather, but increasing biofuel demand also contributed to rising food prices.
ConclusionsConclusions
• Energy prices affect prices for commodities.
• Interdependencies between the energy and food markets are increasing over time.
• The causality tests suggest that there is a Granger causality from oil to agricultural commodity prices, but not vice versa.
ConclusionsConclusions
• Agricultural commodity prices are affected by energy prices, including those that are not directly used for bioenergy production.
• The impact of a positive oil price shock on agricultural commodities is considerably larger than vice versa.
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