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Assessing the impact of dams on riparian and deltaic vegetation using remotely-sensed vegetation indices and Random Forests modelling

机译:利用遥感植被指数和随机森林模型评估水坝对河岸和三角洲植被的影响

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摘要

Riparian and deltaic areas exhibit a high biodiversity and offer a number of ecosystem services but are often degraded by human activities. Dams, for example, alter the hydrologic and sediment regimes of rivers and can negatively affect riparian areas and deltas. In order to sustainably manage these ecosystems, it is, therefore, essential to assess and monitor the impacts of dams. To this end, site-assessments and in-situ measurements have commonly been used in the past, but these can be laborious, resource demanding and time consuming. Here, we investigated the impact of three dams on the riparian forest of the Nestos River Delta in Greece by employing multi-temporal satellite data. We assessed the evolution in the values of eight vegetation indices over 27 years, derived from 14 dates of Landsat data. We also employed a modelling approach, using a machine learning Random Forests model, to investigate potential linkages between the observed changes in the indices and a host of climatic and terrestrial predictor variables. Our results show that low density vegetation (0-25%) is more affected by the construction of the dams due to its proximity to anthropogenic influences and the effects of hydrologic regime alteration. In contrast, higher density vegetation cover (50-75%) appears to be largely unaffected, or even improving, due to its proximity to the river, while vegetation with intermediate coverage (25-49%)exhibits no clear trend in the Landsat-derived indices. The Random Forests model found that the most important parameters for the riparian vegetation (based on the Mean Decrease Gini and the Mean Decrease Accuracy) were the distance to the dams, the sea and the river. Our results suggest that management plans of riparian and deltaic areas need to incorporate and take into consideration new innovative management practices and monitoring studies that employ multi-temporal satellite data archives.
机译:河岸和三角洲地区生物多样性高,提供了许多生态系统服务,但往往由于人类活动而退化。例如,水坝改变了河流的水文和沉积物状况,可能对河岸地区和三角洲产生负面影响。为了可持续地管理这些生态系统,因此评估和监控水坝的影响至关重要。为此,过去通常使用现场评估和现场测量,但是这可能很费力,资源需求且耗时。在这里,我们使用多时相卫星数据调查了三个水坝对内斯托斯河三角洲的河岸森林的影响。我们根据Landsat数据的14个日期评估了27年中八个植被指数值的演变。我们还使用机器学习的随机森林模型,采用了一种建模方法,以研究观测到的指数变化与许多气候和陆地预测变量之间的潜在联系。我们的结果表明,低密度植被(0-25%)由于其靠近人为影响和水文状况改变的影响而受到水坝建设的影响更大。相反,较高密度的植被覆盖度(50-75%)由于靠近河流而受到很大影响,甚至没有改善,而中等覆盖度(25-49%)的植被在Landsat-派生索引。随机森林模型发现,河岸植被最重要的参数(基于平均下降基尼值和平均下降精度)是到水坝,海洋和河流的距离。我们的结果表明,沿河和三角洲地区的管理计划需要纳入并考虑采用多时相卫星数据档案库的创新管理做法和监测研究。

著录项

  • 来源
    《Ecological indicators》 |2019年第8期|630-641|共12页
  • 作者单位

    Eastern Macedonia & Thrace Inst Technol EMaTTech, Dept Forestry & Nat Environm Management, Lab Management & Control Mountainous Waters, 1st Km Drama Microhoriou, Drama 66100, Greece|Eastern Macedonia & Thrace Inst Technol EMaTTech, UNESCO Chair Con E Ect, Conservat & Ecotourism Riparian & Delta Ecosyst, 1st Km Drama Microhoriou, Drama 66100, Greece;

    Univ Michigan, Sch Environm & Sustainabil, Urban Sustainabil Res Grp, 2544 Dana Bldg,440 Church St, Ann Arbor, MI 48109 USA;

    Manchester Metropolitan Univ, Sch Sci & Environm, Manchester M1 5GD, Lancs, England;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Vegetation alterations; Landsat; Anthropogenic impacts; Riparian forest; Random Forests;

    机译:植被变化;陆地卫星;人为影响;河岸带森林;随机森林;
  • 入库时间 2022-08-18 04:18:40

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