Short-Term Implications of Climate Shocks on Wheat-Based Nutrient Flows: A Global “Nutrition at Risk” Analysis through a Stochastic CGE Model
Abstract
:1. Introduction
2. Materials and Methods
2.1. Yield Volatility
2.2. Scenarios
3. Results
3.1. Productivity Shocks on Nutrition
3.2. Export Restrictions on Nutrition
4. Discussion and Policy Implications
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Regions | Sectors | Factors of Production | |
---|---|---|---|
Argentina | Kazakhstan | Paddy rice | Labor |
Australia | Morocco | Wheat | Capital |
Brazil | Netherlands | Other cereals | Farmland |
Canada | Nigeria | Other crops | Natural resources |
China | Pakistan | Livestock | |
Egypt | Russia | Food | |
France | Spain | Transport | |
Germany | Turkey | Others | |
India | Ukraine | ||
Indonesia | USA | ||
Iran | Rest of North Africa | ||
Italy | Rest of the World | ||
Japan |
Autoregressive Factor | Moving Average Factor | SD | |||||
---|---|---|---|---|---|---|---|
Argentina | 0.14 | −0.47 | −1.00 | 0.076 | |||
Australia | 0.06 | 0.13 | −1.00 | 0.196 | |||
Brazil | −0.26 | −1.00 | 0.108 | ||||
Canada | −0.42 | 0.00 | 0.079 | ||||
China | −0.44 | 0.032 | |||||
Egypt | −0.36 | −0.19 | 0.044 | ||||
Spain | −0.41 | −1.00 | 0.132 | ||||
France | −0.34 | −0.99 | 0.083 | ||||
Germany | 0.19 | −0.34 | −1.00 | 0.066 | |||
India | 0.23 | 0.042 | |||||
Indonesia | N/A | N/A | N/A | ||||
Iran (Islamic Republic of) | 0.54 | −1.00 | 0.181 | ||||
Italy | −0.96 | 0.77 | 0.071 | ||||
Japan | 0.73 | −1.24 | −0.49 | 0.74 | 0.107 | ||
Kazakhstan | −0.28 | −1.00 | 0.159 | ||||
Morocco | −0.51 | 0.11 | −1.00 | 0.368 | |||
Nigeria | −1.77 | −0.79 | 1.89 | 0.95 | 0.263 | ||
Netherland | 0.28 | −1.76 | 0.99 | 0.121 | |||
Pakistan | −0.21 | −1.00 | 0.036 | ||||
Russian Federation | 0.87 | −0.38 | −1.98 | 0.99 | 0.098 | ||
Turkey | −0.28 | −0.72 | 0.058 | ||||
Ukraine | −0.34 | 0.159 | |||||
United States of America | 0.18 | −0.39 | −1.00 | 0.061 | |||
Rest of North Africa | 1.15 | −0.71 | −0.15 | −2.10 | 2.10 | −0.99 | 0.112 |
Rest of the World | 0.03 | 0.99 | 0.044 |
Scenario Factor | ||
---|---|---|
Yield Shock | Export Quota | |
Reference | ||
Y | Yes | |
YQ | Yes | Yes |
Protein | Energy | Iron | Zinc | Folate | Magnesium | |
---|---|---|---|---|---|---|
Argentina | −1.4% | −0.8% | −1.0% | −2.9% | −0.6% | −3.2% |
Australia | −1.8% | −1.0% | −1.4% | −4.0% | −0.8% | −4.3% |
Brazil | −0.6% | −0.3% | −0.4% | −1.2% | −0.3% | −1.3% |
Canada | −0.8% | −0.5% | −0.8% | −2.0% | −0.4% | −2.1% |
China | −0.9% | −0.5% | −0.6% | −1.7% | −0.3% | −1.8% |
Egypt | −2.2% | −1.1% | −1.2% | −3.8% | −0.8% | −4.5% |
Spain | −0.9% | −0.5% | −0.8% | −2.1% | −0.4% | −2.2% |
France | −1.4% | −0.8% | −1.2% | −3.2% | −0.6% | −3.4% |
Germany | −0.8% | −0.4% | −0.7% | −1.7% | −0.3% | −1.8% |
India | −0.4% | −0.2% | −0.3% | −0.7% | −0.2% | −0.8% |
Indonesia | −1.6% | −0.8% | −1.0% | −2.8% | −0.6% | −3.2% |
Iran | −14.7% | −7.5% | −8.8% | −26.6% | −5.5% | −29.0% |
Italy | −1.3% | −0.8% | −1.2% | −3.1% | −0.6% | −3.2% |
Japan | −0.5% | −0.3% | −0.4% | −1.0% | −0.2% | −1.1% |
Kazakhstan | −6.8% | −3.5% | −3.8% | −12.3% | −2.6% | −13.8% |
Morocco | −18.0% | −9.4% | −10.9% | −33.1% | −7.0% | −37.4% |
Nigeria | −0.2% | −0.1% | −0.1% | −0.4% | −0.1% | −0.5% |
Netherlands | −0.6% | −0.4% | −0.6% | −1.4% | −0.3% | −1.5% |
Pakistan | −1.9% | −1.0% | −1.0% | −3.2% | −0.7% | −3.9% |
Russia | −1.9% | −1.1% | −1.6% | −4.4% | −0.9% | −4.6% |
Turkey | −2.4% | −1.2% | −1.5% | −4.3% | −0.9% | −4.8% |
Ukraine | −4.0% | −2.3% | −3.3% | −9.1% | −1.8% | −9.4% |
USA | −0.8% | −0.5% | −0.7% | −1.8% | −0.4% | −1.2% |
Protein | Energy | Iron | Zinc | Folate | Magnesium | |
---|---|---|---|---|---|---|
Argentina | −1.9% | −1.0% | −1.4% | −3.9% | −0.8% | −4.3% |
Australia | −2.0% | −1.2% | −1.7% | −4.6% | −0.9% | −4.9% |
Brazil | −0.9% | −0.5% | −0.6% | −1.8% | −0.4% | −1.9% |
Canada | −1.2% | −0.7% | −1.1% | −3.0% | −0.6% | −3.2% |
China | −1.0% | −0.5% | −0.6% | −1.8% | −0.4% | −1.9% |
Egypt | −5.1% | −2.7% | −2.8% | −9.2% | −2.0% | −10.8% |
Spain | −1.7% | −1.0% | −1.4% | −3.8% | −0.8% | −3.9% |
France | −1.8% | −1.0% | −1.5% | −3.9% | −0.8% | −4.1% |
Germany | −1.1% | −0.6% | −1.0% | −2.5% | −0.5% | −2.5% |
Indonesia | −0.6% | −0.3% | −0.4% | −1.0% | −0.2% | −1.2% |
India | −1.6% | −0.8% | −1.0% | −2.8% | −0.6% | −3.2% |
Iran | −19.5% | −10.0% | −11.7% | −35.3% | −7.4% | −38.6% |
Italy | −2.2% | −1.3% | −2.0% | −5.1% | −1.0% | −5.2% |
Japan | −0.9% | −0.5% | −0.7% | −1.6% | −0.3% | −1.7% |
Kazakhstan | −7.0% | −3.6% | −3.9% | −12.5% | −2.6% | −14.0% |
Morocco | −20.1% | −10.5% | −12.1% | −37.0% | −7.8% | −41.8% |
Nigeria | −0.3% | −0.2% | −0.2% | −0.6% | −0.1% | −0.7% |
Netherlands | −1.0% | −0.6% | −0.9% | −2.3% | −0.5% | −2.4% |
Pakistan | −2.3% | −1.2% | −1.2% | −3.9% | −0.9% | −4.7% |
Russia | −0.1% | −0.1% | −0.1% | −0.3% | −0.1% | −0.4% |
Turkey | −4.9% | −2.5% | −3.1% | −8.8% | −1.8% | −9.8% |
Ukraine | −4.2% | −2.4% | −3.5% | −9.6% | −1.9% | −9.9% |
USA | −1.2% | −0.7% | −1.1% | −3.0% | −0.6% | −1.9% |
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Tanaka, T.; Geyik, Ö.; Karapinar, B. Short-Term Implications of Climate Shocks on Wheat-Based Nutrient Flows: A Global “Nutrition at Risk” Analysis through a Stochastic CGE Model. Foods 2021, 10, 1414. https://doi.org/10.3390/foods10061414
Tanaka T, Geyik Ö, Karapinar B. Short-Term Implications of Climate Shocks on Wheat-Based Nutrient Flows: A Global “Nutrition at Risk” Analysis through a Stochastic CGE Model. Foods. 2021; 10(6):1414. https://doi.org/10.3390/foods10061414
Chicago/Turabian StyleTanaka, Tetsuji, Özge Geyik, and Bariş Karapinar. 2021. "Short-Term Implications of Climate Shocks on Wheat-Based Nutrient Flows: A Global “Nutrition at Risk” Analysis through a Stochastic CGE Model" Foods 10, no. 6: 1414. https://doi.org/10.3390/foods10061414
APA StyleTanaka, T., Geyik, Ö., & Karapinar, B. (2021). Short-Term Implications of Climate Shocks on Wheat-Based Nutrient Flows: A Global “Nutrition at Risk” Analysis through a Stochastic CGE Model. Foods, 10(6), 1414. https://doi.org/10.3390/foods10061414