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A machine learning approach to classifying algae concentrations

机译:分类藻类浓度的机器学习方法

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Algal concentrations in marine environments are monitored regularly, as higher concentrations may lead to harmful algal blooms, which negatively impact coastal ecosystems. To identify algae concentration in the field, researchers have developed a handheld, low-cost in-situ device employing spectrophotometry and optical filtering. In an effort to better understand and evaluate the data collected, a pattern recognition method for automatic concentration detection was created. This method employs binary classification to differentiate low and high concentrations. Features for classification were defined by the spectral peaks evaluated, these include: RMS value, distance between edges, variance, and energy.
机译:通常监测海洋环境中的藻类浓度,因为更高的浓度可能导致有害的藻类绽放,这会产生负面影响沿海生态系统。为了鉴定该领域的藻类浓度,研究人员开发了一种采用分光光度法和光学滤波的手持式,低成本的原位装置。为了更好地理解和评估收集的数据,创建了一种用于自动浓度检测的模式识别方法。该方法采用二进制分类来区分低浓度和高浓度。分类的特征由评估的光谱峰定义,这些包括:RMS值,边缘,方差和能量之间的距离。

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