详细信息
Climate drivers of forest ecosystem services supply in the hilly mountainus regions of southern China based on SHAP-enhanced machine learning ( EI收录)
文献类型:期刊文献
英文题名:Climate drivers of forest ecosystem services supply in the hilly mountainus regions of southern China based on SHAP-enhanced machine learning
作者:Mengjuan, Qi[1,2] Luo, Guo[3] Wenshu, Liu[2] Weiyin, Wang[2] Chunqian, Jiang[1] Yanfeng, Bai[1,4]
第一作者:Mengjuan, Qi
机构:[1] Research Institute of Forestry, Chinese Academy of Forestry, Beijing, 100091, China; [2] College of Ethnology and Sociology, Minzu University of China, Beijing, 100081, China; [3] College of Life and Environmental Sciences, Minzu University of China, Beijing, 100081, China; [4] Huitong Experimental Station of Forest Ecology, Chinese Academy of Sciences, Huitong, 418307, China
年份:2025
卷号:178
外文期刊名:Ecological Indicators
收录:EI(收录号:20253419037019);Scopus(收录号:2-s2.0-105013775209)
语种:英文
外文关键词:Abiotic - Autocorrelation - Ecosystems - Forest ecology - Forestry - Machine learning - Multivariant analysis - Random forests - Soil conservation - Sustainable development - Water conservation
摘要:Analyzing the spatiotemporal patterns of forest ecosystem services (FESs) and their climatic drivers in the hilly mountainous regions of southern China (CSHR) is crucial for advancing regional ecological conservation. In this study, we employed the InVEST model to quantify four key FES indicators from 2000 to 2020: carbon storage (CS), soil conservation (SC), habitat quality (HQ), water yield (WY), and a composite ecosystem service index (CESI). Furthermore, we integrated an interpretable machine learning model, Random Forest–Shapley Additive Explanations (SHAP), to identify principal climatic drivers and characterize their nonlinear impacts on FESs. The results indicate that during the study period, SC (+5.17 %) and WY (+13.7 %) within the study area exhibited sustained increases, whereas CS (?0.47 %) and HQ (?3.87 %) exhibited a declining trend. CESI displayed a distinct spatial gradient, remaining consistently higher in the southern region compared to the northern region, whereas CESI values gradually increased towards the east. Moreover, SHAP value analysis revealed that climate-driven factors exhibited multivariate nonlinear characteristics. Specifically, temperature seasonality (Bio4) enhanced CS, the mean temperature of the warmest season (Bio10) inhibited SC, and areas with high annual precipitation (Bio12) were associated with simultaneous increases in both HQ and WY. The coupling of multiple factors affected the regulation of FESs. Among these, the interaction between temperature seasonality (Bio4) and annual precipitation (Bio12) proved particularly significant. Within this framework, WY demonstrated the strongest spatial synergy stability, with its mean bivariate spatial autocorrelation (global Moran's I) values for Bio4 and Bio12 reaching 0.455 (p ? 2025 The Authors
参考文献:
正在载入数据...