| Literature DB >> 35108276 |
Nadine Marmai1, Maria Franco Villoria2, Marco Guerzoni3.
Abstract
Climate change constitutes a rising challenge to the agricultural base of developing countries. Most of the literature has focused on the impact of changes in the means of weather variables on mean changes in production and has found very little impact of weather upon agricultural production. Instead, we focus on the relationship between extreme events in weather and extreme losses in crop production. Indeed, extreme events are of the greatest interest for scholars and policy makers only when they carry extraordinary negative effects. We build on this idea and for the first time, we adopt a conditional dependence model for multivariate extreme values to understand the impact of extreme weather on agricultural production. Specifically, we look at the probability that an extreme event drastically reduces the harvest of any of the major crops. This analysis, which is run on data for six different crops and four different weather variables in a vast array of countries in Africa, Asia and Latin America, shows that extremes in weather and yield losses of major staples are associated events. We find a high heterogeneity across both countries and crops and we are able to predict per country and per crop the risk of a yield reduction above 90% when extreme events occur. As policy implication, we can thus assess which major crop in each country is less resilient to climate shocks.Entities:
Mesh:
Year: 2022 PMID: 35108276 PMCID: PMC8809593 DOI: 10.1371/journal.pone.0261839
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Overview of variables.
| Variable | Description |
|---|---|
|
| Total production divided by area (hg/ha) |
|
| Total growing season precipitation in millimeters |
|
| Average minimum daily growing season temperature in degree Celsius |
|
| Average maximum daily growing season temperature in degree Celsius |
Geographical regions.
| Region | Countries |
|---|---|
| South America | Argentina, Bolivia, Brazil, Chile, Colombia, Ecuador, Guyana, Paraguay, Peru, Suriname, Uruguay, Venezuela |
| Central America & Caribbean | Belize, Costa Rica, Cuba, Dominican Republic, El Salvador, Guatemala, Haiti, Honduras, Jamaica, Mexico, Nicaragua, Panama, Trinidad and Tobago |
| Western Africa | Benin, Burkina Faso, The Gambia, Ghana, Guinea, Ivory Coast, Liberia, Mali, Mauritania, Niger, Nigeria, Senegal, Sierra Leone, Togo |
| Eastern Africa | Burundi, Comoros, Djibouti, Eritrea, Ethiopia, Kenya, Madagascar, Malawi, Mozambique, Rwanda, Somalia, Sudan, Uganda, United Republic of Tanzania, Zambia, Zimbabwe |
| Middle & Southern Africa | Angola, Botswana, Cameroon, Central African Republic, Chad, Congo, Gabon, Lesotho, Namibia, South Africa, Swaziland |
| South & South-Eastern Asia & Melanesia | Bangladesh, Brunei, Bhutan, Cambodia, Indonesia, India, Fiji, Laos, Malaysia, Myanmar, New Caledonia, Papua New Guinea, Philippines, Solomon Is., Thailand, Vanuatu, Vietnam |
Fig 1Annual standardized yield and precipitation (a), maximum temperature (b), and minimum temperature (c), using maize data in Eastern Africa (1961–2002).
Fig 2Constrained dependence parameter estimates (a) and (b) of the conditional distribution of (YieldRefl|Prec) conditional on Prec > qu, with qu being the 90 quantile of the conditioning variable Prec, correspond to the maximum of the profile likelihood surface using maize data of Eastern Africa.
Fig 3Point estimates and 95% confidence intervals of the conditional probability P(YieldRefl > qu|Prec > qu), where qu is always set as the 90 quantile of the variable YieldRefl and qu is the 91 to 99,99 quantile of the conditioning variable Prec.
Estimation is done using maize data from 1961 to 2002. In Eastern Africa conditional probabilities sharply increase with widening confidence intervals for high thresholds of the conditioning variable. In Middle & Southern Africa the conditional probabilities or the lower confidence interval bounds are zero indicating no evidence of an association between extremes in high precipitation and high yield losses.
Fig 4Highest point estimates of the conditional probabilities, i.e. the probabilities of yield losses above the 90 quantile given minimum temperature, maximum temperature or high precipitation extremes above the 98 quantile or low precipitation extremes below the 2nd quantile.
If the 95% confidence interval includes zero, the conditional probabilities are not shown.
Fig 5Worst-case scenario: The maximum upper bound of the 95% confidence interval of the conditional probability estimates, i.e. the probability estimates of yield losses above the 90 quantile given minimum temperature, maximum temperature or high precipitation extremes above the 98 quantile or low precipitation extremes below the 2nd quantile.