A genetic algorithm-based support vector machine to estimate the transverse mixing coefficient in streams

IF 2.4 4区 环境科学与生态学 Q2 WATER RESOURCES Water Quality Research Journal Pub Date : 2021-07-09 DOI:10.2166/wqrj.2021.003
Hosein Nezaratian, J. Zahiri, Mohammad Fatehi Peykani, A. Haghiabi, A. Parsaie
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引用次数: 5

Abstract

Transverse mixing coefficient (TMC) is known as one of the most effective parameters in the two-dimensional simulation of water pollution, and increasing the accuracy of estimating this coefficient will improve the modeling process. In the present study, genetic algorithm (GA)-based support vector machine (SVM) was used to estimate TMC in streams. There are three principal parameters in SVM which need to be adjusted during the estimating procedure. GA helps SVM and optimizes these three parameters automatically in the best way. The accuracy of the SVM and GA-SVM algorithms along with previous models were discussed in TMC estimation by using a wide range of hydraulic and geometrical data from field and laboratory experiments. According to statistical analysis, the performance of the mentioned models in both straight and meandering streams was more accurate than the regression-based models. Sensitivity analysis showed that the accuracy of the GA-SVM algorithm in TMC estimation significantly correlated with the number of input parameters. Eliminating the uncorrelated parameters and reducing the number of input parameters will reduce the complexity of the problem and improve the TMC estimation by GA-SVM.
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基于遗传算法的支持向量机估计河流横向混合系数
横向混合系数(TMC)是水污染二维模拟中最有效的参数之一,提高该系数的估计精度将改善建模过程。在本研究中,使用基于遗传算法的支持向量机(SVM)来估计流中的TMC。SVM中有三个主要参数需要在估计过程中进行调整。GA有助于SVM,并以最佳方式自动优化这三个参数。通过使用来自现场和实验室实验的大量水力和几何数据,讨论了SVM和GA-SVM算法以及以前模型在TMC估计中的准确性。根据统计分析,上述模型在直流和曲流中的性能都比基于回归的模型更准确。敏感性分析表明,GA-SVM算法在TMC估计中的准确性与输入参数的数量显著相关。消除不相关的参数并减少输入参数的数量将降低问题的复杂性,并改进GA-SVM的TMC估计。
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CiteScore
4.50
自引率
8.70%
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0
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