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Association analysis between spatiotemporal variation of net primary productivity and its driving factors in inner mongolia, china during 1994-2013

机译:1994-2013年中国内蒙古净初级生产力时空变化与驱动因素的关联分析

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Vegetation Net Primary Productivity (NPP) is an important indicator for agriculture production. Understanding spatio-temporal dynamics of NPP and their driving factors have attracted much attention from both academic field and practical applications. In this paper, we coupled spatial statistics and a new approach called accumulated density map analysis (ADMA) to explore spatio-temporal variations in NPP distribution and possible contributing factors to the variations in Inner Mongolia Autonomous Region (IMAR), China. Density of Spatiotemporally Aggregated Clustering (D-STAC) index of NPP distribution, as output from ADMA, was proposed to indicate the impact of local factors on NPP. The study showed that spatially averaged NPP did not exhibit significant changes over time, but inter-annual variability of NPP presented critical spatial heterogeneity. Local spatial association analysis, as a preliminary step for ADMA analysis, detected two positive autocorrelation patterns, namely H-H (high NPP enclosed by high NPP) and L-L (low NPP enclosed by low NPP), and two negative autocorrelation patterns, including H-L (high NPP surrounded by low NPP) and L-H (low NPP surrounded by high NPP), for localized places in the study area. While positive autocorrelation patterns were found to dominate most parts of the study area, D-STAC for negative autocorrelation patterns was closely associated with Neighborhood to Cities (NC), an index for urbanization level. To evaluate the relationship between the NPP variation and possible driving factors, local regression analysis using geographically weighted regression (GWR) revealed that NPP largely had positive correlation with precipitation, but showed substantial spatial variations in the relationships with temperature and NC. We concluded that, through LISA, ADMA and GWR, the associations between the spatio-temporal NPP variations and their driving factors could be examined under localized context.
机译:植被净初级生产力(NPP)是农业生产的重要指标。了解核电厂的时空动态及其驱动因素引起了学术界和实际应用的广泛关注。在本文中,我们将空间统计与一种称为累积密度图分析(ADMA)的新方法相结合,以探讨NPP分布的时空变化以及可能导致中国内蒙古自治区(IMAR)变化的因素。提出了NDMA分布的时空聚集聚类(D-STAC)指数(作为ADMA的输出)的密度,以表明局部因素对NPP的影响。研究表明,空间平均NPP不会随时间显示显着变化,但是NPP的年际变化显示出关键的空间异质性。作为ADMA分析的第一步,局部空间关联分析检测到两个正的自相关模式,即HH(高NPP包围着高NPP)和LL(低NPP被低NPP包围着),以及两个负自相关模式,包括HL(高NPP(低NPP包围)和LH(低NPP高NPP包围),用于研究区域中的局部场所。尽管发现正自相关模式主导了研究区域的大部分地区,但负自相关模式的D-STAC与城市邻里(NC)密切相关,NC是城市化水平的指标。为了评估NPP变化与可能的驱动因素之间的关系,使用地理加权回归(GWR)进行的局部回归分析显示,NPP与降水量呈正相关,但与温度和NC的关系显示出很大的空间变化。我们得出的结论是,通过LISA,ADMA和GWR,可以在局部环境下检查时空NPP变化及其驱动因素之间的关联。

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