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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >A new predictive model for the cyanotoxin content from experimental cyanobacteria concentrations in a reservoir based on the ABC optimized support vector machine approach: A case study in Northern Spain
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A new predictive model for the cyanotoxin content from experimental cyanobacteria concentrations in a reservoir based on the ABC optimized support vector machine approach: A case study in Northern Spain

机译:基于ABC优化支持向量机方法的水库中蓝藻实验浓度中蓝藻毒素含量的新预测模型:以西班牙北部为例

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摘要

Cyanotoxins, a kind of poisonous substances produced by cyanobacteria, are responsible for health risks in surface waters used for drinking or for recreation. Consequently, anticipation of its presence is a matter of importance to prevent risks. The aim of this study is to build a cyanotoxin diagnostic model by using support vector machines (SVMs) in combination with the artificial bee colony (ABC) technique from cyanobacterial concentrations determined experimentally in the Trasona reservoir (Northern Spain), to forecast the cyanotoxins' presence in the Trasona reservoir (Northern Spain). The ABC-SVM model is aimed at highly nonlinear biological problems with sharp peaks and the tests carried out have proven its high performance. The results of the present study are two-fold. In the first place, the significance of each biological and physical-chemical variables on the cyanotoxin content in the reservoir is presented through the model. Secondly, a predictive model of the cyanotoxin content is obtained. The agreement of the ABC-SVM-based model with experimental data confirmed its good performance. Finally, conclusions of this innovative research work are exposed. (C) 2015 Elsevier B.V. All rights reserved.
机译:氰毒素是一种由蓝细菌产生的有毒物质,对饮用或娱乐场所的地表水造成健康危害。因此,预期其存在对于防止风险很重要。这项研究的目的是通过使用支持向量机(SVM)结合人工蜂群(ABC)技术,根据Trasona水库(西班牙北部)实验确定的蓝细菌浓度,建立蓝藻毒素诊断模型,以预测蓝藻毒素的存在于特拉索纳水库(西班牙北部)。 ABC-SVM模型针对具有尖峰的高度非线性生物学问题,所进行的测试证明了其高性能。本研究的结果有两个方面。首先,通过该模型介绍了每个生物和物理化学变量对储层中氰毒素含量的重要性。其次,获得了氰毒素含量的预测模型。基于ABC-SVM的模型与实验数据的一致性证明了其良好的性能。最后,揭露了这项创新研究工作的结论。 (C)2015 Elsevier B.V.保留所有权利。

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