Environmental Hydraulics Institute (IH Cantabria), University of Cantabria, C/Isabel Torres n° 15, Parque Científico y Tecnológico de Cantabria, 39011 Santander, Spain.
Sci Total Environ. 2016 Mar 1;545-546:152-62. doi: 10.1016/j.scitotenv.2015.12.109. Epub 2015 Dec 31.
We model the spatial and seasonal variability of three key water quality variables (water temperature and concentration of nitrates and phosphates) for entire river networks in a large area in northern Spain. Models were developed with the Random Forest technique, using 12 (water temperature and nitrate concentration) and 15 (phosphate concentration) predictor variables as descriptors of several environmental attributes (climate, topography, land-uses, hydrology and anthropogenic pressures). The effect of the different predictors on the response variables was assessed with partial dependence plots and partial correlation analysis. Results indicated that land-uses were important predictors in defining the spatial and seasonal patterns of these three variables. Water temperature was positively related with air temperature and the upstream drainage area, whereas increases in forest cover decreased water temperature. Nitrate concentration was mainly related to the area covered by agricultural land-uses, increasing in winter, probably because of catchment run-off processes. On the other hand, phosphate concentration was highly related to the area covered by urban land-uses in the upstream catchment and to the proximity of the closest upstream effluent. Phosphate concentration increased notably during the low flow period (summer), probably due to the reduction of the dilution capacity. These results provide a large-scale continuous picture of water quality, which could help identify the main sources of change in water quality and assist in the prioritization of river reaches for restoration projects.
我们建立了一个模型,用以模拟西班牙北部一个大区域内所有河网中三种关键水质变量(水温以及硝酸盐和磷酸盐浓度)的空间和季节性变化。模型采用随机森林技术开发,使用 12 个(水温及硝酸盐浓度)和 15 个(磷酸盐浓度)预测变量作为描述符,用于描述多种环境属性(气候、地形、土地利用、水文学和人为压力)。通过偏依赖图和偏相关分析评估了不同预测因子对响应变量的影响。结果表明,土地利用是定义这三个变量的空间和季节性分布的重要预测因子。水温与气温和上游流域面积呈正相关,而森林覆盖率的增加则降低了水温。硝酸盐浓度主要与农业土地利用的面积有关,冬季增加,可能是由于流域径流过程所致。另一方面,磷酸盐浓度与上游集水区内城市土地利用的面积以及最近上游废水排放口的距离高度相关。磷酸盐浓度在低流量期(夏季)显著增加,可能是由于稀释能力的降低所致。这些结果提供了水质的大规模连续图像,有助于识别水质变化的主要来源,并有助于为恢复项目确定优先考虑的河段。