Drought Risk Assessment Based on Vulnerability Surfaces: A Case Study of Maize

Agriculture is a sector easily affected by meteorological conditions. Crop yield reduction, even regional conflicts, may occur during a drought. It is extremely important to improve the state of our knowledge on agricultural drought risk. This study has proposed a new method (vulnerability surfaces)...

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Main Authors: Hao Guo, Xingming Zhang, Fang Lian, Yuan Gao, Degen Lin, Jing’ai Wang
Format: Article
Language:English
Published: MDPI AG 2016-08-01
Series:Sustainability
Subjects:
Online Access:http://www.mdpi.com/2071-1050/8/8/813
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spelling doaj-ea64f9d9c23b46fb8410c32f37c9ed472020-11-24T21:20:57ZengMDPI AGSustainability2071-10502016-08-018881310.3390/su8080813su8080813Drought Risk Assessment Based on Vulnerability Surfaces: A Case Study of MaizeHao Guo0Xingming Zhang1Fang Lian2Yuan Gao3Degen Lin4Jing’ai Wang5School of Geography, Beijing Normal University, Beijing 100875, ChinaSchool of Geography, Beijing Normal University, Beijing 100875, ChinaSchool of Geography, Beijing Normal University, Beijing 100875, ChinaSchool of Geography, Beijing Normal University, Beijing 100875, ChinaSchool of Geography, Beijing Normal University, Beijing 100875, ChinaSchool of Geography, Beijing Normal University, Beijing 100875, ChinaAgriculture is a sector easily affected by meteorological conditions. Crop yield reduction, even regional conflicts, may occur during a drought. It is extremely important to improve the state of our knowledge on agricultural drought risk. This study has proposed a new method (vulnerability surfaces) for assessing vulnerability quantitatively and continuously by including the environmental variable as an additional perspective on exposure and assessed global maize drought risk based on these surfaces. In this research, based on the Environmental Policy Impact Climate (EPIC) model, irrigation scenarios were adopted to fit “Loss rate-Drought index-Environmental indicator (L-D-E)” vulnerability surfaces by constructing a database suitable for risk assessment on a large scale. Global maize drought risk was quantitatively assessed based on its optimal vulnerability surface. The results showed an R2 for the optimal vulnerability surface of 0.9934, with coarse fragment content as the environmental indicator. The expected global average annual yield loss rate due to drought was 19.18%. The global average yield loss rate due to drought with different return periods (10a, 20a, 50a, and 100a) was 29.18%, 32.76%, 36.89%, and 38.26%, respectively. From a global perspective, Central Asia, the Iberian Peninsula, Eastern Africa, the Midwestern United States, Chile, and Brazil are the areas with the highest maize drought risk. The vulnerability surface is a further development of the vulnerability curve as a continuous expression of vulnerability and considers differences in environmental factors. It can reflect the spatial heterogeneity of crop vulnerability and can be applied in large-scale risk assessment research.http://www.mdpi.com/2071-1050/8/8/813vulnerability surfacesdrought risk assessmentEPICmaize
collection DOAJ
language English
format Article
sources DOAJ
author Hao Guo
Xingming Zhang
Fang Lian
Yuan Gao
Degen Lin
Jing’ai Wang
spellingShingle Hao Guo
Xingming Zhang
Fang Lian
Yuan Gao
Degen Lin
Jing’ai Wang
Drought Risk Assessment Based on Vulnerability Surfaces: A Case Study of Maize
Sustainability
vulnerability surfaces
drought risk assessment
EPIC
maize
author_facet Hao Guo
Xingming Zhang
Fang Lian
Yuan Gao
Degen Lin
Jing’ai Wang
author_sort Hao Guo
title Drought Risk Assessment Based on Vulnerability Surfaces: A Case Study of Maize
title_short Drought Risk Assessment Based on Vulnerability Surfaces: A Case Study of Maize
title_full Drought Risk Assessment Based on Vulnerability Surfaces: A Case Study of Maize
title_fullStr Drought Risk Assessment Based on Vulnerability Surfaces: A Case Study of Maize
title_full_unstemmed Drought Risk Assessment Based on Vulnerability Surfaces: A Case Study of Maize
title_sort drought risk assessment based on vulnerability surfaces: a case study of maize
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2016-08-01
description Agriculture is a sector easily affected by meteorological conditions. Crop yield reduction, even regional conflicts, may occur during a drought. It is extremely important to improve the state of our knowledge on agricultural drought risk. This study has proposed a new method (vulnerability surfaces) for assessing vulnerability quantitatively and continuously by including the environmental variable as an additional perspective on exposure and assessed global maize drought risk based on these surfaces. In this research, based on the Environmental Policy Impact Climate (EPIC) model, irrigation scenarios were adopted to fit “Loss rate-Drought index-Environmental indicator (L-D-E)” vulnerability surfaces by constructing a database suitable for risk assessment on a large scale. Global maize drought risk was quantitatively assessed based on its optimal vulnerability surface. The results showed an R2 for the optimal vulnerability surface of 0.9934, with coarse fragment content as the environmental indicator. The expected global average annual yield loss rate due to drought was 19.18%. The global average yield loss rate due to drought with different return periods (10a, 20a, 50a, and 100a) was 29.18%, 32.76%, 36.89%, and 38.26%, respectively. From a global perspective, Central Asia, the Iberian Peninsula, Eastern Africa, the Midwestern United States, Chile, and Brazil are the areas with the highest maize drought risk. The vulnerability surface is a further development of the vulnerability curve as a continuous expression of vulnerability and considers differences in environmental factors. It can reflect the spatial heterogeneity of crop vulnerability and can be applied in large-scale risk assessment research.
topic vulnerability surfaces
drought risk assessment
EPIC
maize
url http://www.mdpi.com/2071-1050/8/8/813
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AT xingmingzhang droughtriskassessmentbasedonvulnerabilitysurfacesacasestudyofmaize
AT fanglian droughtriskassessmentbasedonvulnerabilitysurfacesacasestudyofmaize
AT yuangao droughtriskassessmentbasedonvulnerabilitysurfacesacasestudyofmaize
AT degenlin droughtriskassessmentbasedonvulnerabilitysurfacesacasestudyofmaize
AT jingaiwang droughtriskassessmentbasedonvulnerabilitysurfacesacasestudyofmaize
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