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Modeling Grassland Ecosystem Responses to Coupled Climate and Socioeconomic Influences in Multi-Spatial-And-Temporal Scales

机译:在多时空尺度上模拟草地生态系统对气候和社会经济影响的耦合响应

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Assessment of ecosystem responses to coupled human and environmental impacts is increasingly acknowledged as an important research of environmental informatics. However, current ecological and environmental models are not effective for capturing the coupled influences due to prevalent approaches of separating human interferences from environmental changes, common uses of time-averaged or cumulative data, and the lack of efficient methods integrating environmental observations with socioeconomic statistics that are tabulated over different spatial units. In this paper, we presented an integrated modeling framework to tackle these limitations. We developed data-assimilation techniques to integrate ecological and climate data with socioeconomic statistics into a coherent dataset on the basis of conforming spatial units. These data were used in panel regressions to estimate responses of grassland productivity to coupled climate factors (seven) and socioeconomic indicators (ten) across 37 counties for nine 16-day growing periods each year from 2000 to 2010. We also advanced the analysis of climate impacts by allowing for quadratic rather than linear impacts and by incorporating lagged time effects for the dependent variable. The case study was conducted in Inner Mongolia Autonomous Region of China. Our findings provided strong evidence that the grassland productivity responded significantly to variations in both climate factors and socioeconomic variables; displayed significant seasonal, annual, and regional variation; and revealed cumulative influences from prior climate conditions and extreme climate fluctuations. The assimilation of climatic, ecological and socioeconomic data into a big-data set and the application of multi-spatial-and-temporal panel regression model were much more comprehensive than prior studies.
机译:评估生态系统对人类和环境的耦合影响的反应已日益被认为是环境信息学的一项重要研究。但是,由于将人为干扰与环境变化分开的流行方法,时间平均或累积数据的常用方法以及缺乏将环境观测与社会经济统计相结合的有效方法,当前的生态和环境模型无法有效地捕获耦合影响。以不同的空间单位制表。在本文中,我们提出了一个集成的建模框架来解决这些限制。我们开发了数据同化技术,以将生态和气候数据与社会经济统计数据整合到一致的空间单位的基础上,形成一致的数据集。这些数据用于面板回归,以估计2000年至2010年每年9个16天生育期中37个县的草地生产力对耦合的气候因子(七个)和社会经济指标(十个)的响应。我们还推进了气候分析通过允许二次而不是线性的影响,并通过为因变量引入滞后的时间影响来实现影响。案例研究是在中国内蒙古自治区进行的。我们的发现提供了有力的证据,表明草原生产力对气候因素和社会经济变量的变化有显着反应;表现出明显的季节,年度和区域变化;并揭示了先前气候条件和极端气候波动的累积影响。将气候,生态和社会经济数据同化为大数据集以及多时空面板回归模型的应用要比以前的研究更为全面。

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