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Towards Chl-a bloom understanding by EM-based unsupervised event detection

机译:通过基于EM的无监督事件检测来了解Chl-a Bloom

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Marine water quality monitoring and subsequent management require to know when a specific event like harmful algae bloom may occur and which environmental conditions and pressures lead to this event. So, event detection and its dynamic understanding are crucial to adapt strategy. An algorithm is proposed to identify curves mixture and their dynamics features - initiation, duration, peaks and ends of the event. The approach is fully unsupervised, it requires no tuning parameters and is based on Expectation Maximization process to estimate the most robust mixture according to fixed criteria. A complete framework is proposed to deal with a univariate time series with missing data. The approach is applied on Chlorophyll-a series collected weekly since 1989. Chlorophyll-a is a proxy of the phytoplankton biomass. The results are promising according to the phytoplankton composition knowledge, collected at lower frequency, and allowing to discuss about the annual variability of phytoplankton dynamics.
机译:海水水质监测和后续管理要求知道何时会发生诸如有害藻华等特定事件,以及导致该事件的环境条件和压力。因此,事件检测及其动态理解对于适应策略至关重要。提出了一种算法来识别曲线混合及其动力学特征-事件的开始,持续时间,峰值和终点。该方法完全不受监督,不需要任何调整参数,并且基于“期望最大化”过程可以根据固定标准估算最可靠的混合。提出了一个完整的框架来处理缺少数据的单变量时间序列。该方法应用于自1989年以来每周收集的叶绿素a系列。叶绿素a是浮游植物生物量的代理。根据浮游植物组成知识,收集频率较低,结果令人鼓舞,并允许讨论浮游植物动力学的年度变化。

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