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A hybrid PSO optimized SVM-based method for predicting of the cyanotoxin content from experimental cyanobacteria concentrations in the Trasona reservoir: A case study in Northern Spain

机译:一种基于PSO的混合SSO优化优化方法,可从特拉索纳水库中的实验蓝细菌浓度预测蓝藻毒素含量:以西班牙北部为例

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There is an increasing need to describe cyanobacteria blooms since some cyanobacteria produce toxins termed cyanotoxins and, as a result, anticipate its presence is a matter of importance to prevent risks. Cyanobacteria blooms occur frequently and globally in water bodies, and they are a major concern in terms of their effects on other species such as plants, fish and other microorganisms, but especially by the possible acute and chronic effects on human health due to the potential danger from cyanobacterial toxins produced by some of them in recreational or drinking waters. Therefore, the aim of this study is to build a cyanotoxin diagnostic model by using support vector machines (SVMs) in combination with the particle swarm optimization (PSO) technique from cyanobacterial concentrations determined experimentally in the Trasona reservoir (recreational reservoir used as a high performance training center of canoeing in the Northern Spain). The Trasona reservoir is near Aviles estuary and after a short tour, the brackish waters of the Aviles estuary empty into the Cantabrian sea. This optimization technique involves kernel parameter setting in the SVM training procedure, which significantly influences the regression accuracy. Bearing this in mind, cyanotoxin contents have been predicted here by using the hybrid PSO-SVM-based model from the remaining measured water quality parameters (input variables) in the Trasona reservoir (Northern Spain) with success. In other words, the results of the present study are two-fold. In the first place, the significance of each biological and physical-chemical variable on the cyanotoxin content in the reservoir is presented through the model. Second, a predictive model able to forecast the possible presence of cyanotoxins is obtained. The agreement of the PSO-SVM-based model with experimental data confirmed its good performance. Finally, conclusions of this innovative research work are exposed. (C) 2015 Elsevier Inc. All rights reserved.
机译:由于某些蓝细菌会产生称为蓝毒素的毒素,因此越来越需要描述蓝细菌的花色,因此,预测蓝细菌的存在对于预防风险至关重要。蓝藻水华经常在全球范围内发生,并且在水体中普遍存在,它们是对其他物种(如植物,鱼类和其他微生物)的影响的主要关注点,但由于潜在的危险可能对人类健康产生急性和慢性影响来源于娱乐或饮用水中某些细菌产生的蓝细菌毒素。因此,本研究的目的是通过使用支持向量机(SVM)结合粒子群优化(PSO)技术从Trasona水库(娱乐水库作为高性能水库)中实验确定的蓝细菌浓度建立蓝藻毒素诊断模型西班牙北部的皮划艇训练中心)。特拉索纳水库在阿维莱斯河口附近,经过短暂的游览后,阿维莱斯河口的咸淡水排入坎塔布连海。这种优化技术在SVM训练过程中涉及内核参数设置,这会显着影响回归精度。牢记这一点,这里已经成功地通过使用Trasona水库(西班牙北部)中剩余的测得水质参数(输入变量),使用基于PSO-SVM的混合模型来预测了氰毒素的含量。换句话说,本研究的结果有两个方面。首先,通过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。第二,获得能够预测氰毒素可能存在的预测模型。基于PSO-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 Inc.保留所有权利。

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