Mapping the dynamics of aquatic vegetation in Lake Kyoga and its linkages to satellite lakes

IF 5.7 Q1 ENVIRONMENTAL SCIENCES Science of Remote Sensing Pub Date : 2024-08-13 DOI:10.1016/j.srs.2024.100156
Yaxiong Ma , Sucharita Gopal , Magaly Koch , Les Kaufman
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Abstract

Lake Kyoga is a shallow, young, flooded basin just north of and about 30m lower than Lake Victoria. The catchment encompasses Lake Kyoga itself, and a constellation of several dozen small satellite lakes following valley contours mostly to its east. The Kyoga basin fish fauna shares many non-cichlid species plus a spectacular, partially endemic radiation of haplochromine cichlids most similar to but still largely distinct from those in Lake Victoria. This fish fauna is of high conservation concern, as it preserves remnants of the regional species flock that have disappeared from Lake Victoria and Lake Kyoga, leaving small remnant populations in some of the satellite lakes. Now, these too are imperiled by limnological dynamics, including fluctuations in the nature and extent of aquatic vegetation. The water bodies in the Kyoga Basin are highly dynamic due both to fluctuation in water level and large amplitude variation in marginal and floating vegetation. This variation has profound evolutionary and conservation implications, since it can create and destroy critical aquatic habitat. It can also alternately anneal and cleave gene flow over time, both between the main lake and its satellites, and among the satellite lakes. The aquatic vegetation cluttering these linkages can create a spatial refugium for many native fish species that are more tolerant of hypoxia than an introduced macropredator, the Nile perch. Anthropogenic impacts to this region have greatly increased in recent years, altering relationships between aquatic vegetation and endangered species, fisheries and other ecosystem services provided by the lake. Understanding these dynamics require a means of mapping aquatic vegetation, connectivity, and habitat through time. Here we develop a new and improved algorithm to map the spatial distribution and dynamics of floating and emergent aquatic vegetation via remote sensing. We utilize a time series of 440 Landsat images dating from 1986 to 2020. A series of water and vegetation indices are designed to reveal change in the aquascape over time. First, two types of water masks are derived using a majority rule - a separate water mask for each image and a composite water mask of the region over the study period. Second, the difference between the two masks is then used to delineate the potential location of macrophytes over the image. Third, an algorithm is developed to separate the floating vegetation from emergent vegetation; this algorithm uses Landsat spectral bands and two additional spatial and temporal metrics that considerably improve classification accuracy. A more extensive analysis of aquascape trajectories using remote sensing can inform fish conservation strategies and fisheries management and illuminate the role of landscape dynamics in macroevolutionary patterns of aquatic taxa.

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绘制 Kyoga 湖水生植被动态图及其与卫星湖的联系图
基奥加湖(Kyoga)是一个浅水、年轻的洪泛盆地,位于维多利亚湖以北,比维多利亚湖低约 30 米。集水区包括基奥加湖本身,以及由几十个小型卫星湖组成的湖群,这些湖群主要分布在基奥加湖以东的山谷轮廓线上。基奥加湖流域的鱼类有许多非慈鲷类,还有一种壮观的、部分特有的单色慈鲷,与维多利亚湖中的慈鲷最为相似,但在很大程度上仍有区别。维多利亚湖和基奥加湖的鱼类种群已经消失,但在一些卫星湖中仍有少量残存种群。现在,这些物种也受到了湖泊动力学的威胁,包括水生植被性质和范围的波动。由于水位的波动以及边缘植被和漂浮植被的大振幅变化,基奥加盆地的水体具有很强的动态性。这种变化对进化和保护具有深远的影响,因为它可以创造和破坏重要的水生生境。随着时间的推移,它还会在主湖和卫星湖之间以及卫星湖之间交替出现退火和分裂基因流。水生植被杂乱无章地连接着这些湖泊,为许多本地鱼类创造了空间庇护所,这些鱼类比引进的大型食肉动物尼罗河鲈鱼更能忍受缺氧。近年来,人类活动对该地区的影响大大增加,改变了水生植被与濒危物种、渔业和湖泊提供的其他生态系统服务之间的关系。要了解这些动态变化,就需要一种方法来绘制水生植被、连通性和栖息地的时间分布图。在此,我们开发了一种新的改进算法,通过遥感技术绘制漂浮和出水水生植被的空间分布和动态图。我们利用了从 1986 年到 2020 年的 440 幅 Landsat 图像的时间序列。我们设计了一系列水和植被指数来揭示水景随时间的变化。首先,利用多数原则得出两种水掩模--每幅图像的单独水掩模和研究期间该区域的综合水掩模。其次,利用两个掩模之间的差值来划定大型水草在图像上的潜在位置。第三,开发一种算法,将漂浮植被与新生植被区分开来;该算法使用 Landsat 光谱波段和两个额外的时空指标,大大提高了分类的准确性。利用遥感技术对水生景观轨迹进行更广泛的分析,可为鱼类保护战略和渔业管理提供信息,并阐明景观动态在水生类群宏观进化模式中的作用。
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