A study on ecological risk identification based on ecosystem service supply and demand in Xinjiang

Abstract Due to the rapid urbanization and global climate change, arid and semi-arid regions are becoming more vulnerable to the growing disparity between the supply and demand of ecosystem services. Conventional ecological risk assessments have predominantly emphasized landscape pattern analysis, o...

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Main Authors: Xuemei Wei, Abudukeyimu Abulizi, Le Yuan, Junxia Wang, Shaojie Bai, Shanshan Tang, Amanzhuli Yerkenhazi
Format: Article
Language:English
Published: Nature Portfolio 2025-08-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-13026-y
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author Xuemei Wei
Abudukeyimu Abulizi
Le Yuan
Junxia Wang
Shaojie Bai
Shanshan Tang
Amanzhuli Yerkenhazi
author_facet Xuemei Wei
Abudukeyimu Abulizi
Le Yuan
Junxia Wang
Shaojie Bai
Shanshan Tang
Amanzhuli Yerkenhazi
author_sort Xuemei Wei
collection DOAJ
description Abstract Due to the rapid urbanization and global climate change, arid and semi-arid regions are becoming more vulnerable to the growing disparity between the supply and demand of ecosystem services. Conventional ecological risk assessments have predominantly emphasized landscape pattern analysis, often overlooking considerations related to human well-being. This study focuses on the Xinjiang Uygur Autonomous Region (XUAR) and examines four key ecosystem services: water yield (WY), soil retention (SR), carbon sequestration (CS), and food production (FP). Using the InVEST model, geographic information system (GIS) spatial analysis, and statistical methods, we quantify the supply-demand dynamics of these ecosystem services and identify the risk classification of ecosystem service supply-demand (ESSD) using the Self-Organizing Feature Map (SOFM) method. The results show that: (1) From 2000 to 2020, the supply and demand of WY in XUAR increased from 6.02 × 1010 m3 and 8.6 × 1010 m3 to 6.17 × 1010 m3 and 9.17 × 1010 m3, respectively; SR supply and demand decreased from 3.64 × 109 t and 1.15 × 109 t to 3.38 × 109 t and 1.05 × 109 t, respectively; CS supply and demand rose from 0.44 × 108 t and 0.56 × 108 t to 0.71 × 108 t and 4.38 × 108 t, respectively; and FP supply and demand increased from 9.32 × 107 t and 0.69 × 107 t to 19.8 × 107 t and 0.97 × 107 t, respectively. A clear spatial differentiation in ESSD was observed, with higher supply areas mainly located along river valleys and waterways, while demand is concentrated in the central cities of oases. (2) The deficit areas for WY and SR are large and show a gradual expansion, while the deficit areas for CS and FP are small and shrinking. (3) The supply-demand ratio combined with the supply-demand trend index identifies four types of bundles in the study area: B1 (WY-SR-CS high-risk), B2 (WY-SR high-risk), B3 (integrated high-risk), and B4 (integrated low-risk), with B2 being dominant. Based on these findings, ecological management recommendations are proposed for different bundles based on ESSDR classifications. This study provides a comprehensive ecological risk assessment grounded in ESSD, offering important perspectives for ecological management in arid and semi-arid regions.
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spelling doaj-art-acc1d56df9694c29b4ea80fde146b60b2025-08-20T03:05:18ZengNature PortfolioScientific Reports2045-23222025-08-0115112110.1038/s41598-025-13026-yA study on ecological risk identification based on ecosystem service supply and demand in XinjiangXuemei Wei0Abudukeyimu Abulizi1Le Yuan2Junxia Wang3Shaojie Bai4Shanshan Tang5Amanzhuli Yerkenhazi6College of Geography and Remote Sensing Sciences, Xinjiang UniversityCollege of Geography and Remote Sensing Sciences, Xinjiang UniversityCollege of Geography and Remote Sensing Sciences, Xinjiang UniversityCollege of Geography and Remote Sensing Sciences, Xinjiang UniversityCollege of Geography and Remote Sensing Sciences, Xinjiang UniversityCollege of Geography and Remote Sensing Sciences, Xinjiang UniversityCollege of Geography and Remote Sensing Sciences, Xinjiang UniversityAbstract Due to the rapid urbanization and global climate change, arid and semi-arid regions are becoming more vulnerable to the growing disparity between the supply and demand of ecosystem services. Conventional ecological risk assessments have predominantly emphasized landscape pattern analysis, often overlooking considerations related to human well-being. This study focuses on the Xinjiang Uygur Autonomous Region (XUAR) and examines four key ecosystem services: water yield (WY), soil retention (SR), carbon sequestration (CS), and food production (FP). Using the InVEST model, geographic information system (GIS) spatial analysis, and statistical methods, we quantify the supply-demand dynamics of these ecosystem services and identify the risk classification of ecosystem service supply-demand (ESSD) using the Self-Organizing Feature Map (SOFM) method. The results show that: (1) From 2000 to 2020, the supply and demand of WY in XUAR increased from 6.02 × 1010 m3 and 8.6 × 1010 m3 to 6.17 × 1010 m3 and 9.17 × 1010 m3, respectively; SR supply and demand decreased from 3.64 × 109 t and 1.15 × 109 t to 3.38 × 109 t and 1.05 × 109 t, respectively; CS supply and demand rose from 0.44 × 108 t and 0.56 × 108 t to 0.71 × 108 t and 4.38 × 108 t, respectively; and FP supply and demand increased from 9.32 × 107 t and 0.69 × 107 t to 19.8 × 107 t and 0.97 × 107 t, respectively. A clear spatial differentiation in ESSD was observed, with higher supply areas mainly located along river valleys and waterways, while demand is concentrated in the central cities of oases. (2) The deficit areas for WY and SR are large and show a gradual expansion, while the deficit areas for CS and FP are small and shrinking. (3) The supply-demand ratio combined with the supply-demand trend index identifies four types of bundles in the study area: B1 (WY-SR-CS high-risk), B2 (WY-SR high-risk), B3 (integrated high-risk), and B4 (integrated low-risk), with B2 being dominant. Based on these findings, ecological management recommendations are proposed for different bundles based on ESSDR classifications. This study provides a comprehensive ecological risk assessment grounded in ESSD, offering important perspectives for ecological management in arid and semi-arid regions.https://doi.org/10.1038/s41598-025-13026-yEcosystem servicesSupply-demand relationshipEcological riskEcosystem service bundleXinjiang uygur autonomous region
spellingShingle Xuemei Wei
Abudukeyimu Abulizi
Le Yuan
Junxia Wang
Shaojie Bai
Shanshan Tang
Amanzhuli Yerkenhazi
A study on ecological risk identification based on ecosystem service supply and demand in Xinjiang
Scientific Reports
Ecosystem services
Supply-demand relationship
Ecological risk
Ecosystem service bundle
Xinjiang uygur autonomous region
title A study on ecological risk identification based on ecosystem service supply and demand in Xinjiang
title_full A study on ecological risk identification based on ecosystem service supply and demand in Xinjiang
title_fullStr A study on ecological risk identification based on ecosystem service supply and demand in Xinjiang
title_full_unstemmed A study on ecological risk identification based on ecosystem service supply and demand in Xinjiang
title_short A study on ecological risk identification based on ecosystem service supply and demand in Xinjiang
title_sort study on ecological risk identification based on ecosystem service supply and demand in xinjiang
topic Ecosystem services
Supply-demand relationship
Ecological risk
Ecosystem service bundle
Xinjiang uygur autonomous region
url https://doi.org/10.1038/s41598-025-13026-y
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