Kaleem Mehmood , Shoaib Ahmad Anees , Akhtar Rehman , Nazir Ur Rehman , Sultan Muhammad , Fahad Shahzad , Qijing Liu , Sulaiman Ali Alharbi , Saleh Alfarraj , Mohammad Javed Ansari , Waseem Razzaq Khan
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引用次数: 0
Abstract
Elevation gradients significantly influence net primary productivity (NPP), but the relationship between elevation, climate variables, and vegetation productivity remains underexplored, particularly in diverse ecological zones. This study quantifies the impact of elevation and climatic variables on NPP in northern Pakistan, hypothesizing that elevation modulates NPP through its influence on temperature and precipitation patterns. Using remote sensing data (MODIS ERA5) and advanced ecological models like the Eddy Covariance-Light Use Efficiency (EC-LUE) model and the Thornthwaite Memorial Model (TMM), we analyzed Gross Primary Productivity (GPP) dynamics across various vegetation types and elevations from 2001 to 2023. Our findings show a mean annual NPP of 323.46 g C m-2 a-1, with an annual increase of 5.73 g C m-2 a-1. Significant elevation-dependent variations were observed, especially in mid-elevation zones (401 to 1600 meters), where NPP increased at a rate of 0.174 g C m-2 a-1 per meter (R² = 0.808, p < 0.01). In contrast, higher elevations (2800-5200 meters) exhibited a decline in NPP, decreasing by -0.171 g C m-2 a-1 per meter (R² = 0.905, p < 0.001). Temperature and precipitation were key drivers, with precipitation positively correlating with NPP across all vegetation types, particularly in Evergreen Needleleaf and Broadleaf Trees. The EC-LUE model's GPP estimates closely matched MODIS data (R² = 0.82), demonstrating the model's reliability. These findings highlight the critical role of elevation and climatic factors in vegetation productivity and underscore the need for targeted ecological management and conservation strategies. The insights from this research are vital for global climate adaptation policies and sustainable development goals, contributing to ecological resilience and carbon sequestration efforts worldwide.
海拔梯度对净初级生产力(NPP)有重大影响,但海拔、气候变量和植被生产力之间的关系仍未得到充分探索,尤其是在不同的生态区域。本研究量化了巴基斯坦北部海拔高度和气候变量对净初级生产力的影响,假设海拔高度通过影响温度和降水模式来调节净初级生产力。利用遥感数据(MODIS ERA5)以及涡协方差-光利用效率(EC-LUE)模型和索恩斯韦特纪念模型(TMM)等先进生态模型,我们分析了 2001 年至 2023 年各种植被类型和海拔高度的初级生产力(GPP)动态。我们的研究结果表明,年平均净初级生产力为 323.46 g C m-2 a-1,年增长率为 5.73 g C m-2 a-1。我们观察到了显著的海拔变化,尤其是在中海拔区域(401 米至 1600 米),净生产力以每米 0.174 克 C m-2 a-1 的速度增长(R² = 0.808,p <0.01)。相比之下,海拔较高(2800-5200 米)的净生产力有所下降,每米下降-0.171 g C m-2 a-1 (R² = 0.905, p <0.001)。温度和降水是主要的驱动因素,降水与所有植被类型的净生产力呈正相关,尤其是常绿针叶树和阔叶树。EC-LUE 模型的 GPP 估计值与 MODIS 数据非常吻合(R² = 0.82),证明了该模型的可靠性。这些发现凸显了海拔和气候因素在植被生产力中的关键作用,并强调了有针对性的生态管理和保护战略的必要性。这项研究的见解对全球气候适应政策和可持续发展目标至关重要,有助于全球生态恢复和碳封存工作。