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首页> 外文期刊>Environmental geology and water sciences >Identification of hotspots for potential pyrethroid runoff: a GIS modeling study in San Joaquin River Watershed of California, USA
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Identification of hotspots for potential pyrethroid runoff: a GIS modeling study in San Joaquin River Watershed of California, USA

机译:潜在拟除虫菊酯径流热点的识别:美国加利福尼亚州圣华金河流域的GIS建模研究

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摘要

This paper attempts to identify the high-risk areas for potential runoff of pyrethroid pesticides in the San Joaquin River Watershed. Pyrethroid pesticides have been detected in water and fluvial sediments in this watershed, creating concerns about potential negative impacts on water quality. However, little documentation exists regarding the distributions or the extent of the adverse effects caused by the use of pyrethroids. This study developed a geographic information systems (GIS) model to identify areas with high potential for pyrethroid runoff during the rainy season. The model was then validated using field-monitoring data. Nine factors were identified for the runoff risk assessment: amount of active ingredient used, soil erodibility factor, hydrologic group, surface layer depth, seasonal rainfall, seasonal number of rainy days, seasonal number of storm events, stream density, and land cover. The results indicated that high pyrethroid runoff risks were associated with basins such as the Stanislaus River Sub-basin, Newman Gustine Sub-basin and South Merced Sub-basin. This study demonstrated that the GIS model is capable of predicting high-risk areas of pyrethroid runoff at sub-basin scale. The model can be used to prioritize sites for water quality monitoring and guide implementations of best management practices.
机译:本文试图确定圣华金河流域中拟除虫菊酯类农药潜在径流的高风险地区。在该流域的水和河流沉积物中检测到了拟除虫菊酯类农药,引起人们对水质潜在负面影响的担忧。但是,关于使用拟除虫菊酯造成的不利影响的分布或严重程度的文献很少。这项研究开发了地理信息系统(GIS)模型,以识别雨季拟除虫菊酯径流的高潜力地区。然后使用现场监测数据对模型进行验证。确定了9个用于径流风险评估的因素:活性成分的使用量,土壤易蚀性因素,水文组,表层深度,季节性降雨,雨季的季节性数,风暴事件的季节性数,溪流密度和土地覆盖。结果表明,较高的拟除虫菊酯径流风险与斯坦尼斯劳斯河子盆地,纽曼古斯汀子盆地和南默塞德子盆地等盆地有关。这项研究表明,GIS模型能够在亚流域尺度上预测拟除虫菊酯径流的高风险区域。该模型可用于对水质监测站点进行优先排序,并指导最佳管理实践的实施。

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