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Using a naive Bayes classifier to explore the factors driving the harmful dinoflagellate Karenia selliformis blooms in a southeastern Mediterranean lagoon

机译:使用天真的贝叶斯分类器探索驾驶有害Dinoflagellate Karenia Selliformis在东南地中海泻湖的因素

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摘要

The blooms of the toxic dinoflagellate Karenia selliformis can be predicted with accuracy derived from knowledge of the main forcing variables. A naive Bayes classifier modeling framework, a member of the Bayesian network family, is used to identify the phytoplankton community and the physical and meteorological parameters involving K. selliformis blooms in the eutrophic Boughrara Lagoon (BL), Tunisia. The proposed model takes into account the physical environment parameters (salinity, water temperature, tide amplitude), meteorological constraints (evaporation, air temperature, insolation, rainfall, atmospheric pressure, and humidity), phytoplankton groups (diatoms, dinoflagellates, cyanobacteria, Euglenophyceae), and the sampling months on K. selliformis blooms. The shift to highest salinity and atmospheric pressure, associated with reduced tide, are the most favorable conditions for K. selliformis blooms in BL. The results show that K. selliformis formed nearly monospecific blooms. A shift in species composition was pointed out between the bloom and non-bloom conditions. The Euglenophycea and some dinoflagellates like Peridinium minimum, Prorocentrum minimum, Prorocentrum micans, Prorocentrum gracile, Protoperidinium minutum, and Scrippsiella trochoidea appeared during blooms, whereas diatoms, diazotrophic cyanobacteria, and dinoflagellates (Akaskiwo sanguinea, Karlodinium veneficum, Gyrodinium spirale, Oxyrrhis marina, Polykrikos kofoidii) were observed under non-bloom conditions. This study highlighted the most favorable physical and meteorological conditions for K. selliformis bloom occurrences and also pointed out species indicators for bloom establishment and others for non-bloom conditions. Monitoring the dynamics of these species with the associated physical and meteorological variability offers valuable information to plan for the best options for prediction of potentially toxic blooms of K. selliformis and associated dystrophic consequences.
机译:可以通过从主迫使变量的知识衍生的精度来预测有毒的Dinoflagelate Karenia Seariformis的绽放。一个天真的贝叶斯分类器模型框架,贝叶斯网络家族的成员,用于识别浮游植物群落和涉及K.Seatiformis在兴高采烈的Boghrara泻湖(BL),突尼斯的身体和气象参数。所提出的模型考虑了物理环境参数(盐度,水温,潮汐幅度),气象约束(蒸发,空气温度,缺失,降雨,大气压和湿度),浮游植物组(硅藻,丁基葡萄球菌,蓝藻,Euglenophyceae) ,并在K. Selliformis Blooms上的采样月份。与减少潮汐相关的最高盐度和大气压的转变是K.Seariformis在BL中的最有利条件。结果表明,K.Axiformis形成了几乎单种绽放。在绽放和非绽放条件之间指出了物种组成的换档。在春天期间,Euglenophycea和一些Dinoflagelate,普罗仑抑郁症,血管酮,Prorocentrum mican,prorocentrum micans,prorocentrum gracile,protocheria和瘙痒症Trochoidea,而硅藻,真正的植物植物和恐龙植物(Akaskiwo sanguinea,Karlodinium v​​eneficum,oxyrrhis marina,Polykrikos在非绽放条件下观察Kofoidii)。本研究强调了K.Seariformis盛开的最有利的身体和气象条件,并指出了盛开的盛开建立物种指标和其他非绽放条件。监测这些物种的动态与相关的物理和气象变异性,提供了有价值的信息,以规划最佳选择,以预测K的最佳选择。出售症状和相关营养不良后果。

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  • 来源
    《Ocean Dynamics》 |2020年第7期|897-911|共15页
  • 作者单位

    Institut National des Sciences et Technologies de la Mer Centre de Sfax Rue Madagascar BP 1035 3018 Sfax Tunisia;

    Faculte des Sciences Economiques et de Gestion de Sfax Route de l'Aeroport Km 4 3018 Sfax Tunisia Laboratoire de Multimedia InfoRmation Systems and Advanced Computing Laboratory Pole technologique de Sfax Route de Tunis Km 10 BP 242 3021 Sfax Tunisia;

    Institut National des Sciences et Technologies de la Mer Centre de Sfax Rue Madagascar BP 1035 3018 Sfax Tunisia;

    Institut National des Sciences et Technologies de la Mer (INSTM) 28 rue 2 mars 1934 2025 Salammbo Tunisia;

    Institut National des Sciences et Technologies de la Mer Centre de Sfax Rue Madagascar BP 1035 3018 Sfax Tunisia;

    Centre de Biotechnologie de Sfax Route Sidi Mansour Km 6 BP 802 3019 Sfax Tunisia;

    Institut National des Sciences et Technologies de la Mer (INSTM) 28 rue 2 mars 1934 2025 Salammbo Tunisia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Karenia selliformis blooms; Naive Bayes classifier network; Physical parameters; Meteorological parameters; Phytoplankton community; Boughrara Lagoon;

    机译:karenia selliformis盛开;天真贝叶斯分类器网络;物理参数;气象参数;Phytoplankton社区;Boghrara泻湖;

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