Faculty of Culture Tourism, Shanxi University of Finance and Economics, Taiyuan 030006, China.
School of Humanities and Law, Northeastern University, Shenyang 110169, China; School of Geography and Tourism, Qufu Normal University, Rizhao 276826, China.
Sci Total Environ. 2021 Apr 20;766:142480. doi: 10.1016/j.scitotenv.2020.142480. Epub 2020 Oct 2.
Understanding the relationships between ecosystem services (ES) and their underlying socioecological drivers is essential for forming the efficient management decisions of ecosystems. We use a large watershed area as a case-study to analyze trade-offs/synergies and bundles of ESs and identify the associated socioecological variables (SEVs). This study assessed the supply of 7 ES indicators, namely, three provisioning services (crop production, livestock production, and industrial production), three regulating services (water conservation, soil conservation, and carbon sequestration), and one cultural service (recreation), across 65 municipalities in the Yellow River Basin (YRB) in China. We analyzed the paired trade-offs/synergies using Spearman's coefficient and identified the ES bundles (ESBs) by applying principal component analysis and K-means clustering. Subsequently, we detected the SEVs that affect the ES supply using the geo-detector model and characterized the associations between ESBs and socioecological clusters according to the spatial overlap. The results demonstrated that the synergies between ESs substantially exceeded the trade-offs, among which the strongest synergies were between the crop production and the livestock production, and both responded strongly to the cropland and the population density. Trade-offs were identified between provisioning services and soil conservation. Municipalities were grouped into three ESBs in the YRB. The ESB, which was dominated by provisioning ESs, was associated with areas where cropland, precipitation and socioeconomic conditions were all important, and the regulation of ESB was linked to regions with distinct ecological characteristics. We also identified an ESB that was dominated by carbon sequestration, as determined by extensive grassland and bare land. The land use/land cover strongly affected the characteristics of the ESBs. The findings can be used by land managers to identify areas in which ESs are dominant, to determine the associations of these compositions of the ESs with SEVs, and to support the formulation of optimal ES management in large-scale basins.
理解生态系统服务(ES)及其潜在的社会生态驱动因素之间的关系,对于形成有效的生态系统管理决策至关重要。我们以一个大型流域地区为案例研究,分析了 ES 的权衡/协同作用和 ES 包,并确定了相关的社会生态变量(SEV)。本研究评估了中国黄河流域(YRB)65 个市的 7 个 ES 指标的供给情况,包括三种供给服务(作物生产、畜牧业生产和工业生产)、三种调节服务(水保持、土壤保持和碳固存)和一种文化服务(娱乐)。我们使用 Spearman 系数分析了配对的权衡/协同作用,通过主成分分析和 K-means 聚类确定了 ES 包(ESB)。随后,我们使用地理探测器模型检测了影响 ES 供给的 SEV,并根据空间重叠特征描述了 ESB 与社会生态聚类之间的关系。结果表明,ES 之间的协同作用大大超过了权衡作用,其中最强的协同作用是在作物生产和畜牧业生产之间,两者都对耕地和人口密度反应强烈。在供给服务和土壤保持之间存在权衡关系。在 YRB 中,各城市被分为三种 ESB。以供给 ES 为主导的 ESB 与耕地、降水和社会经济条件都很重要的地区相关,而 ESB 的调节则与具有鲜明生态特征的地区相关。我们还确定了一个以碳固存为主导的 ESB,这是由广泛的草地和裸地决定的。土地利用/土地覆被强烈影响 ESB 的特征。研究结果可供土地管理者使用,以确定 ES 占主导地位的区域,确定 ES 成分与 SEV 的关联,并支持在大规模流域中制定最佳 ES 管理方案。