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Modern Industries, Pollution and Agricultural Productivity: Evidence from Mining in Ghana
Fernando Aragon (SFU)
(joint with Juan Pablo Rud, Royal Holloway)
CEA ConferenceMay 2013
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Main issue
Negative spillovers of modern industries
• What is the effect of modern industries on agricultural production?
In this paper:
• Case of gold mining in Ghana– Modern, capital-intensive industry– Severe concerns of pollution– Near fertile rural area (cacao)
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Why is this relevant?
1. Effect of pollution on agriculture not explored– Literature focuses on effects on human health– Biological evidence that pollution affects crops
2. Spillovers of modern industries – Thought in terms of input competition– Other non-input negative spillovers (e.g. pollution)
neglected
3. Economic policy– Private and social costs– Compensation and mitigation
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What do we do?
• Main idea: pollution may affect crop yields
• Non-input channels residual productivity
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What do we do?
• Estimate an agricultural production function– Effect of mine activities on total factor productivity
• Empirical strategy– Repeated cross sections of HH surveys– D-i-D: expansion of mining x exposure to mines (distance) – Endog. inputs: IV and imperfect IV (partial identification)
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Main findings
• Reduction of agricultural productivity– 40 % decrease between 1998-2005, near mines– But, no change in input use nor prices.
• Results consistent with pollution channel– Satellite imagery: increase in air pollutants (NO2)
• Increase in rural poverty
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Unsolved issues
• Cannot measure pollution directly (not available)
• Effect on residual productivity does pollution affect quality of inputs (land, water) or crops’ health?
• Large scale and artisanal mines overlap cannot separate source
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Outline
• Background
• Methods
• Results
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Background – Gold mining in Ghana
1. Important industry in Ghana– 97% of mineral revenue, 45% of total exports, 12% of
fiscal revenue.
2. Modern, large scale, capital intensive – 96% large scale, rest artisanal/galamsey
3. Mostly foreign owned, exports all production as raw material.
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Background – Gold mining in Ghana
4. Located in fertile agricultural land– Ashanti gold belt: Western, Ashanti and Central regions.– Cocoa producing regions
5. Negative spillovers– Population displacement– Environmental pollution: anecdotal and scientific
evidence
6. Significant increase in late 1990s– We exploit this source of variation.
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Why would mining affect agriculture?
• Input competition channel– Demand-Supply Increase in price of local inputs
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Why would mining affect agriculture?
• Input competition channel– Demand-Supply Increase in price of local inputs
• Mining has potential to pollute: air, water and soil– Industry-specific pollutants cyanide, acid drainages,
heavy metals– Similar to small city or power plant emissions from
heavy machinery (air pollutants)
• Biological evidence– Exposure to air pollutants from burning fossil fuels
reduction in yields 30-60%, more susceptible to diseases.– Heavy metals in water and soil vegetation stunted or
dwarfed (Environment Canada 2009)
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Analytical framework
• Production function: F(A, Labor, Land)
• Consumer-producer household choose inputs to maximize HH utility.
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Analytical framework
• With perfect input markets: – input demand is function of: prices and A endogeneity of
inputs problem
• If farmers cannot buy/sell inputs – Input demand constrained by HH endowments– Extreme case: Input demand = input endowment– Use endowments as instruments for input use.
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Analytical framework
• Two possible channels for mining to affect agricultural output (and HH income)1. Change on input prices change in input use2. Pollution change on A
• We can isolate effect on A, by estimating the production function i.e. conditioning output on input use
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Methods – empirical implementation
• Assume Cobb – Douglas,
– y, m, l : log of agricultural output, land and labor
A is function of:– Svt = measure of exposure to mine activity
– Farmer characteristics Zi: age and literacy, land ownership, place of birth
– District, year fixed effects , dummy prox. each mine
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Methods - Data
• Household data– Ghana Living Standard Surveys (GLSS): GLSS 4 (1998-99)
and GLSS5 (2005-06), repeated cross sections
– Input and output (farming households)• Real output calculated using local agric prices.
– Poverty (all HHs)
– Geographical coordinates of Enumeration Areas
• Distance to mining areas (GIS)
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Methods – empirical implementation
• Two issues:
1. Endogeneity of mining activity: mining areas may be systematically different.
2. Endogeneity of input choice
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Methods - solutions
1. Difference in difference:
– Treated and control group defined by proximity to mine– “mining” area = within 20 km of an active mine– Treatment (continuous) : cumulative gold production– Svt = cumulative gold production within 20 km
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Results – Mining and Agricultural Productivity
Go to: Crop yields Go to: First Stage
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Methods - solution
2. Use of instrumental variables:
– Endowments as instruments of input use (with imperfect input markets)
– But input endowments may be correlated to error term
– Use an imperfect IV strategy (Nevo and Rosen, 2012)• If correlation between instrument and error is weaker than
for the instrumented variable and• The sign of that correlation is the same Bounds of parameter values, i.e., partial identification
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Results – Mining and Agricultural Productivity
Go to: Crop yields Go to: First Stage
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Results – Mining and Agricultural Productivity
Go to: Crop yields Go to: First Stage
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• Increase of one S.D in gold production reduction of 30% in residual productivity
• Between 1998/99 and 2005 40% decrease.
• Too large? Consistent with biological evidence: 30-60% decrease in yields of crops exposed to polluted urban air.
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Role of distance
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Robustness checks
• No evidence of compositional change– Farmer’s observables– Agricultural practices
• Robust to alternative specifications– Parsimonious vs saturated– Similar for locals and immigrants
• Placebo test (future mines)
• CES production fct
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Is this pollution?• No ground measures of pollution satellite imagery (cross
section only, 2005)
• Detect NO2 air pollutant linked to fuel combustion , toxic & precursor of tropospheric ozone
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Is this pollution?
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Competition for inputs?
• Mine demanding more labor / reducing supply of land
• Increase in input prices, reduction in demand for inputs.
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• Lack of effect of mining on input demand?, but productivity declined…
• Consistent with imperfect input markets (inflexible inputs)
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Measures of living standards - poverty
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• Increase in rural poverty (both farmers and non-farmers)• But nothing on urban poverty
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Final remarks
• Expansion of mining associated to– Significant reduction in agricultural productivity– Deterioration of living standards for rural population
• Seems to be driven by pollution instead of competition for inputs– Important crowding out effect of modern industries
• Significant spillovers and re-distributive effects– Local farmers lose, rest of country may gain– Disregard for these spillovers over-estimate net benefits of
sector
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Results – Mining and Crop Yields
Back
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First stage
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Robustness – compositional changes
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Robustness – alternative specifications
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CES prod function