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Utilizing Multiple Lines of Evidence to Determine Landscape Degradation within Protected Area Landscapes: A Case Study of Chobe National Park, Botswana from 1982 to 2011

机译:利用多行证据确定保护区景观内的景观退化:以1982年至2011年博茨瓦纳乔贝国家公园为例

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The savannas of Southern Africa are an important dryland ecosystem as they cover up to 54% of the landscape and support a rich variety of biodiversity. This paper evaluates landscape change in savanna vegetation along Chobe Riverfront within Chobe National Park Botswana, from 1982 to 2011 to understand what change may be occurring in land cover. Classifying land cover in savanna environments is challenging because the vegetation spectral signatures are similar across distinct vegetation covers. With vegetation species and even structural groups having similar signatures in multispectral imagery difficulties exist in making discrete classifications in such landscapes. To address this issue, a Random Forest classification algorithm was applied to predict land-cover classes. Additionally, time series vegetation indices were used to support the findings of the discrete land cover classification. Results indicate that a landscape level vegetation shift has occurred across the Chobe Riverfront, with results highlighting a shift in land cover towards more woody vegetation. This represents a degradation of vegetation cover within this savanna landscape environment, largely due to an increasing number of elephants and other herbivores utilizing the Riverfront. The forested area along roads at a further distance from the River has also had a loss of percent cover. The continuous analysis during 1982–2011, utilizing monthly AVHRR (Advanced Very High Resolution Radiometer) NDVI (Normalized Difference Vegetation Index) values, also verifies this change in amount of vegetation is a continuous and ongoing process in this region. This study provides land use planners and managers with a more reliable, efficient and relatively inexpensive tool for analyzing land-cover change across these highly sensitive regions, and highlights the usefulness of a Random Forest classification in conjunction with time series analysis for monitoring savanna landscapes.
机译:南部非洲的稀树草原是重要的旱地生态系统,它们覆盖多达54%的景观,并支持多种生物多样性。本文评估了1982年至2011年博茨瓦纳乔贝国家公园内乔贝河沿岸的大草原植被的景观变化,以了解土地覆被可能发生的变化。在热带稀树草原环境中对土地覆盖物进行分类具有挑战性,因为在不同的植被覆盖物中植被光谱特征相似。对于植被物种,甚至在多光谱图像中具有相似特征的结构群,在此类景观中进行离散分类时都存在困难。为了解决这个问题,将随机森林分类算法应用于预测土地覆盖类别。此外,时间序列植被指数被用来支持离散土地覆盖分类的发现。结果表明,乔贝河沿岸已经发生了景观水平的植被转移,其结果突显了土地覆盖向更多木本植被的转移。这表示在这种稀树草原景观环境中植被的退化,主要是由于利用河滨的大象和其他食草动物数量增加。距河较远的公路沿线森林面积也减少了覆盖率。在1982年至2011年期间,利用每月的AVHRR(高级超高分辨率辐射计)NDVI(归一化植被指数)值进行的连续分析也验证了植被数量的变化是该地区持续不断的过程。这项研究为土地使用规划人员和管理人员提供了一种更可靠,有效且相对便宜的工具,用于分析这些高度敏感地区的土地覆盖变化,并强调了随机森林分类与时间序列分析一起用于监测热带稀树草原景观的有用性。

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