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A Bayesian network approach to determine environmental factors controlling Karenia selliformis occurrences and blooms in the Gulf of Gabes, Tunisia

机译:一种贝叶斯网络方法来确定控制突尼斯加贝斯湾卡雷尼亚蝶形虫发生和开花的环境因素

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摘要

A Bayesian Network modeling framework is introduced to explore the effect of physical andmeteorological factors on the dinoflagellate red tide forming Karenia selliformis in various sampling sites of the national phytoplankton monitoring program. The proposed models took into account the physical environment effects (salinity, temperature and tide amplitude), meteorological constraints (evaporation, air temperature, insolation, rainfall, atmospheric pressure and humidity), sampling months and sites on both Karenia selliformis occurrences and blooms. The models produced plausible results and enabled the identification of the factors that directly impacted on the species occurrences and concentration levels. The sampling sites dominated the species occurrences. The models show that the relationship between salinity and Karenia selliformis is more apparent when the species concentrations are focused on and that the bloom occurrences can be predicted based on salinity. Concentrations up to 10(5) cells L-1 were recorded when salinity exceeded 42.5 and dominated the shallow and weak water renewal areas. (C) 2017 Elsevier B.V. All rights reserved.
机译:引入了贝叶斯网络建模框架,以探索物理和气象因素对国家浮游植物监测计划的各个采样点形成的齿形美人鱼的鞭毛赤潮的影响。拟议的模型考虑了物理环境影响(盐度,温度和潮汐幅度),气象限制因素(蒸发,空气温度,日照,降雨,大气压力和湿度),采样月份以及在美人鱼发生和开花的地点和地点。该模型得出了合理的结果,并使人们能够确定直接影响物种发生和浓度水平的因素。采样点主导了物种的发生。该模型表明,当盐分浓度与物种浓度有关时,盐度与沙雷克氏菌之间的关系更加明显,并且可以根据盐度预测水华发生。当盐度超过42.5并占据浅水和弱水更新区域时,记录的L-1细胞浓度最高可达10(5)。 (C)2017 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Harmful Algae》 |2017年第3期|119-132|共14页
  • 作者单位

    Ctr Sfax, Inst Natl Sci & Technol Mer, Rue Madagascar,BP 1035, Sfax 3018, Tunisia;

    Ctr Sfax, Inst Natl Sci & Technol Mer, Rue Madagascar,BP 1035, Sfax 3018, Tunisia;

    Fac Sci Econ & Gest Sfax, Route Aeroport Km 4,BP 1088, Sfax 3018, Tunisia|Pole Technol Sfax, Lab Multimedia, InfoRmat Syst & Adv Comp Lab, Route Tunis Km 10,BP 242, Sfax 3021, Tunisia;

    INSTM, 28 Rue 2 Mars 1934, Tunis 2025, Tunisia;

    Ctr Sfax, Inst Natl Sci & Technol Mer, Rue Madagascar,BP 1035, Sfax 3018, Tunisia;

    Ctr Biotechnol Sfax, Route Sidi Mansour Km 6,BP 1177, Sfax 3018, Tunisia;

    INSTM, 28 Rue 2 Mars 1934, Tunis 2025, Tunisia;

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

    Karenia selliformis; Occurrences; Blooms Bayesian network; Salinity; The Gulf of Gabes;

    机译:沙棘(Karenia selliformis);发生;布鲁斯贝叶斯网络;盐度;加贝斯湾;

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