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Individual particle measurements to monitor ecological processes in the Indian River Lagoon, FL

机译:监测佛罗里达河泻湖中生态过程的单个粒子测量

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Suspended particles are important components of coastal marine ecosystems that are often the target of environmental sensing efforts (e.g. harmful algae blooms, suspended sediments). Automated measurements of individual particles provide advantages over traditional manual methods of particle analysis and sensors that measure bulk water properties commonly used for coastal ecosystem monitoring. However, the large, multidimensional data sets provided by automated particle measurement techniques can be difficult to analyze and interpret without the use of automated algorithms to classify large numbers of particles. In this paper we demonstrate efficient methods for classifying particles using an unsupervised, watershed transform based, clustering algorithm. The methods were applied to samples collected from the Indian River Lagoon, Banana River Lagoon, and St. Lucy Estuary located along the eastern coast of Florida. Samples were analyzed by flow cytometry and by imaging in flow (FlowCam). Results of analyses reveal patterns of distribution for distinct particle populations over space and time, and in relation to environmental characteristics. These methods represent a highly efficient strategy for monitoring coastal waters that can improve our understanding of ecosystem structure and function.
机译:悬浮颗粒是沿海海洋生态系统的重要组成部分,通常是环境感知工作的目标(例如,有害藻类繁殖,悬浮沉积物)。与传统的手动粒子分析和传感器方法相比,自动测量单个粒子提供了优势,传统的手动粒子分析方法和传感器可测量通常用于沿海生态系统监测的大量水质。但是,如果不使用自动算法对大量粒子进行分类,则由自动化粒子测量技术提供的大型多维数据集可能难以分析和解释。在本文中,我们演示了使用无监督,基于分水岭变换的聚类算法对粒子进行分类的有效方法。该方法适用于从位于佛罗里达州东海岸的印度河泻湖,香蕉河泻湖和圣露西河口采集的样品。通过流式细胞仪和流式成像(FlowCam)分析样品。分析结果揭示了不同粒子群在空间和时间上以及与环境特征相关的分布模式。这些方法代表了一种监测沿海水域的高效策略,可以增进我们对生态系统结构和功能的理解。

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