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Large-Scale Mapping and Predictive Modeling of Submerged Aquatic Vegetation in a Shallow Eutrophic Lake

机译:浅层养殖湖中淹没水生植被的大规模映射及预测建模

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A spatially intensive sampling program was developed for mapping the submerged aquatic vegetation (SAV) over an area of approximately 20,000 ha in a large, shallow lake in Florida, U.S. The sampling program integrates Geographic Information System (GIS) technology with traditional field sampling of SAV and has the capability of producing robust vegetation maps under a wide range of conditions, including high turbidity, variable depth (0 to 2 m), and variable sediment types. Based on sampling carried out in AugustœSeptember 2000, we measured 1,050 to 4,300 ha of vascular SAV species and approximately 14,000 ha of the macroalga Chara spp. The results were similar to those reported in the early 1990s, when the last large-scale SAV sampling occurred. Occurrence of Chara was strongly associated with peat sediments, and maximal depths of occurrence varied between sediment types (mud, sand, rock, and peat). A simple model of Chara occurrence, based only on water depth, had an accuracy of 55%. It predicted occurrence of Chara over large areas where the plant actually was not found. A model based on sediment type and depth had an accuracy of 75% and produced a spatial map very similar to that based on observations. While this approach needs to be validated with independent data in order to test its general utility, we believe it may have application elsewhere. The simple modeling approach could serve as a coarse-scale tool for evaluating effects of water level management on Chara populations.
机译:开发了一种空间密集型采样计划,用于将淹没的水生植被(SAV)在佛罗里达州的大型浅湖中映射到大约20,000公顷,美国采样计划将地理信息系统(GIS)技术与Sav的传统田间采样集成集成并且具有在各种条件下生产鲁棒植被图,包括高浊度,可变深度(0至2米)和可变沉积物类型。基于2000年奥古斯塔庭的抽样,我们测量了1,050至4,300公顷的血管萨马克种类,约14,000公顷的宏观甘格加查塔SPP。结果与20世纪90年代初报告的结果相似,当时最后一次大规模的SAM型采样发生时。 Chara的发生与泥炭沉积物密切相关,并且在沉积物类型(泥浆,沙,岩石和泥炭)之间变化的最大发生深度。仅基于水深的夏令时的简单模型,精度为55%。它预测了在实际植物实际上未找到的大面积上的发生。一种基于沉积物类型和深度的模型,精度为75%,并产生与基于观察的空间映射非常相似。虽然这种方法需要用独立数据验证,以便测试其通用工具,但我们认为它可能在其他地方有申请。简单的建模方法可以作为评估水位管理对夏拉人群的影响的粗糙度工具。

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