首页> 外文期刊>Journal of Mathematical Biology >Predictive modelling of eutrophication in the Pozn de la Dolores lake (Northern Spain) by using an evolutionary support vector machines approach
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Predictive modelling of eutrophication in the Pozn de la Dolores lake (Northern Spain) by using an evolutionary support vector machines approach

机译:利用进化支持向量机方法预测富营养湖(北西班牙)富营养化的预测建模

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Eutrophication is a water enrichment in nutrients (mainly phosphorus) that generally leads to symptomatic changes and deterioration of water quality and all its uses in general, when the production of algae and other aquatic vegetations are increased. In this sense, eutrophication has caused a variety of impacts, such as high levels of Chlorophyll a (Chl-a). Consequently, anticipate its presence is a matter of importance to prevent future risks. The aim of this study was to obtain a predictive model able to perform an early detection of the eutrophication in water bodies such as lakes. This study presents a novel hybrid algorithm, based on support vector machines (SVM) approach in combination with the particle swarm optimization (PSO) technique, for predicting the eutrophication from biological and physical-chemical input parameters determined experimentally through sampling and subsequent analysis in a certificate laboratory. This optimization technique involves hyperparameter setting in the SVM training procedure, which significantly influences the regression accuracy. The results of the present study are twofold. In the first place, the significance of each biological and physical-chemical variables on the eutrophication is presented through the model. Secondly, a model for forecasting eutrophication is obtained with success. Indeed, regression with optimal hyperparameters was performed and coefficients of determination equal to 0.90 for the Total phosphorus estimation and 0.92 for the Chlorophyll concentration were obtained when this hybrid PSO-SVM-based model was applied to the experimental dataset, respectively. The agreement between experimental data and the model confirmed the good performance of the latter.
机译:富营养化是一种营养素(主要是磷)的水富集,通常导致水质的症状变化和劣化以及其所有用途,当时藻类和其他水生植被的生产增加。从这个意义上讲,富营养化导致各种影响,例如高水平的叶绿素A(CHL-A)。因此,预期其存在是一个重要的问题,以防止未来的风险。本研究的目的是获得能够在湖泊中进行早期检测诸如水体中的富营养化的预测模型。本研究提出了一种新型杂化算法,基于支持载体机(SVM)方法与粒子群优化(PSO)技术组合,用于通过采样和随后的分析来预测从实验确定的生物和物理化学输入参数的富营养化。证书实验室。这种优化技术涉及SVM培训过程中的超代表设置,这显着影响回归精度。本研究的结果是双重的。首先,通过模型提出了每个生物和物理化学变量对富营养化的重要性。其次,获得了预测富营养化的模型获得了成功。实际上,当将基于杂交PSO-SVM的模型应用于实验数据集时,获得了对实验数据集的杂交PSO-SVM的模型时,对具有最佳脱位的回归等于0.90的叶绿素估计的总磷估计和0.92的系数。实验数据与模型之间的协议证实了后者的良好表现。

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