首页> 外文期刊>Progress in Physical Geography >Linking land use/land cover with climatic and geomorphologic factors in regional mean annual streamflow models with geospatial regression approach
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Linking land use/land cover with climatic and geomorphologic factors in regional mean annual streamflow models with geospatial regression approach

机译:使用地理空间回归方法将区域平均年流量模型中的土地利用/土地覆盖与气候和地貌因素联系起来

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Estimates of annual streamflow in connection with key natural and anthropogenic factors are necessary and important for different purposes, such as water resource planning and management, sediment and nutrient loading in streams and rivers, hydropower, and navigation. This study is an attempt to use the spatial statistical regression approach to develop regression models for mean annual streamflow at regional scale while adequately dealing with the common spatial dependency issue in input and output variables used in regression models. The proposed modeling approach is illustrated with a case study of the Upper Mississippi River Basin. The R-squared and the Nash-Sutcliffe model efficiency coefficient of the regional model were 0.993 and 0.985, respectively, while those of the sub-regional model were 0.995 and 0.990, respectively. Methodologically, the proposed model provided an effective way to utilize an extensive spatial dataset of various climatic, geomorphologic, and land cover variables for a large region like the Upper Mississippi River Basin to assess and compare the impact of various factors on mean annual streamflow at regional scale. Furthermore, the model was able to handle spatial dependency in data.
机译:与关键的自然和人为因素相关的年度流量估算对于不同目的是必要且重要的,例如水资源规划和管理,溪流和河流中的沉积物和养分含量,水力发电和航行。这项研究是尝试使用空间统计回归方法来开发区域规模的年均流量的回归模型,同时充分处理回归模型中使用的输入和输出变量中的常见空间依赖性问题。以密西西比河上游流域为例,说明了所提出的建模方法。区域模型的R平方和Nash-Sutcliffe模型效率系数分别为0.993和0.985,而次区域模型的效率系数分别为0.995和0.990。从方法上讲,所提出的模型提供了一种有效的方法,可以利用密西西比河上游等大区域的各种气候,地貌和土地覆盖变量的广泛空间数据集,以评估和比较各种因素对区域平均年流量的影响。规模。此外,该模型能够处理数据中的空间依赖性。

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