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Channel substrate prediction from GIS for habitat estimation in Lake Erie tributaries

机译:基于GIS的通道底物预测,以估算伊利湖支流的生境

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The conservation of ecologically and economically important species, as well as the management of invasive species, benefits from the ability to make broad-scale predictions of habitat. In this paper, we revised an existing substrate size model based upon stream power to include variables that are readily-quantifiable in a Geographic Information System (GIS) (i.e. stream slope and drainage area). We found no significant difference between slopes measured in the field using surveying techniques and slopes measured in a GIS using a 10 m digital elevation model and high resolution stream dataset. GIS-derived drainage areas and those measured with hand-delineations were also statistically similar. The revised model can be applied using both GIS and field-derived variables to predict median particle sizes from stream power in northeastern Ohio streams draining to Lake Erie. Integration of such models into a GIS could result in regional estimates of the amount and location of preferred fish habitat, which has important applications in fisheries management. In particular, we provide examples of how the predictive substrate model could improve assessment methodologies for invasive sea lamprey, thereby improving eradication measures, and how we may better understand geographic linkages between walleye spawning and nursery habitats.
机译:对生态和经济重要物种的保护以及对入侵物种的管理得益于对栖息地进行广泛预测的能力。在本文中,我们基于流功率修改了现有的基板尺寸模型,以包含可在地理信息系统(GIS)中容易量化的变量(即流坡度和排水面积)。我们发现在野外使用勘测技术测得的坡度与在GIS中使用10 m数字高程模型和高分辨率流数据集测得的坡度之间没有显着差异。从GIS得出的流域面积和用手工勾画测量的面积在统计上也相似。可以使用GIS和字段派生变量来应用修订后的模型,从而根据排放到伊利湖的俄亥俄州东北部河流的水流功率预测中值粒径。将此类模型集成到GIS中可以对首选鱼类栖息地的数量和位置进行区域估计,这在渔业管理中具有重要的应用。尤其是,我们提供了一些示例,这些示例说明了预测性底物模型如何改善侵入性海鳗的评估方法,从而改善了根除措施,以及如何更好地理解角膜白眼产卵场和苗圃栖息地之间的地理联系。

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