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Exploring relationships between in-stream conditions and ecological health while assessing landuse and climate scenarios.

机译:在评估土地利用和气候情景的同时探索河流条件与生态健康之间的关系。

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摘要

Human disturbances can have significant impacts on physicochemical and biological conditions of streams. A good understanding of the relationships among these factors will help decision makers in sustainable management of the ecosystems. To address these issues, the following research objectives were developed: 1) bridge the gap between hydrologic models and ecological conditions using the Soil and Water Assessment Tool, 2) identify influential in-stream variables to explain fish and macroinvertebrate measures, 3) compare fuzzy logic techniques with statistical approaches to describe and model ecological health, 4) use in-stream variables obtained from SWAT to predict the impacts of different landuse and climate scenarios, and evaluate the effectiveness of best management practices, in regards to aquatic health. A high resolution SWAT model was built for the Saginaw River basin of Michigan, and flow and water quality outputs were linked with measured biological data. Results indicate that SWAT models can be an effective tool to produce in-stream variables, explaining 21% to 57% of variation (R2) in ecological measures. Fuzzy logic methods are effective approach to model ecological health and outperformed other statistical methods tested here. Average annual flow rate had the strongest correlation with IBI, whereas nutrient concentrations showed the largest influence on all other ecological measures. Results suggest that efforts to model historic baseline conditions and to provide context for stream health assessments should include both pre-settlement land use and climate conditions. Meanwhile, the conservation practice, native grass, showed the most improvement to stream health, followed by residue management and no-tillage.
机译:人为干扰会对河流的物理化学和生物学状况产生重大影响。充分了解这些因素之间的关系将有助于决策者进行生态系统的可持续管理。为解决这些问题,制定了以下研究目标:1)使用土壤和水评估工具弥合水文模型与生态条件之间的鸿沟,2)识别有影响力的河流变量,以解释鱼类和大型无脊椎动物的措施,3)比较模糊使用统计方法来描述和模拟生态健康的逻辑技术; 4)使用从特警队获得的流内变量来预测不同土地利用和气候情景的影响,并评估关于水生健康的最佳管理方法的有效性。为密歇根州的萨吉诺河流域建立了高分辨率的SWAT模型,并将流量和水质输出与所测得的生物学数据联系在一起。结果表明,SWAT模型可以有效地产生河内变量,解释了生态措施中21%至57%的变异(R2)。模糊逻辑方法是模拟生态健康的有效方法,其性能优于本文测试的其他统计方法。年平均流量与IBI的相关性最强,而养分浓度对所有其他生态措施的影响最大。结果表明,模拟历史基准条件并为溪流健康评估提供背景的工作应既包括定居前的土地利用,又包括气候条件。同时,自然草的保护措施对溪流健康的改善最大,其次是残留物管理和免耕。

著录项

  • 作者

    Einheuser, Matt.;

  • 作者单位

    Michigan State University.;

  • 授予单位 Michigan State University.;
  • 学科 Environmental Health.;Agriculture Fisheries and Aquaculture.;Water Resource Management.
  • 学位 M.S.
  • 年度 2011
  • 页码 203 p.
  • 总页数 203
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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