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Modeling Groundwater Quality Using Three Novel Hybrid Support Vector Regression Models

机译:使用三种新型混合支持向量回归模型建模地下水质量

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During recent decades, the excessive use of water has led to the scarcity of the available surface and groundwater resources. Quantitative and qualitative surveys of groundwater resources indicate that accurate and efficient optimization methods can help to overcome the numerous challenges in assessment of groundwater quality. For this purpose, three optimization meta-heuristic algorithms, including imperialist competitive (ICA), election (EA), and grey wolf (GWO), as well as the support vector regression method (SVR), were used to simulate the groundwater quality of the Salmas Plain. To achieve this goal, the data of the groundwater quality for the Salmas plain were utilized in a statistical period of 10 years (2002-2011). The results were evaluated according to Wilcox, Schuler, and Piper standards. The results indicated higher accuracy of the GWO-SVR method compared to the other two methods with values of R2=0.981, RMSE=0.020 and NSE=0.975. In general, a comparison of the results obtained from the hybrid methods and different diagrams showed that the samples had low hardness and corrosion. Also, the results indicated the high capability and accuracy of the GWO-SVR method in estimating and simulating the groundwater quality.
机译:近几十年来,过度使用水导致可用表面和地下水资源的稀缺。地下水资源的定量和定性调查表明,准确有效的优化方法可以帮助克服评估地下水质量的众多挑战。为此目的,三种优化元启发式算法,包括帝国主义竞争力(ICA),选举(EA)和灰狼(GWO)以及支持向量回归方法(SVR),用于模拟地下水质量萨尔马里州平原。为实现这一目标,在10年(2002-2011)的统计期间利用了Salmas平原地下水质量的数据。结果是根据Wilcox,Schuler和Piper标准进行评估的。结果表明,与其他两种方法相比,GWO-SVR方法的准确性更高,R2 = 0.981的值,RMSE = 0.020和NSE = 0.975。通常,从混合方法和不同图获得的结果的比较表明样品具有低硬度和腐蚀性。此外,结果表明了GWO-SVR方法在估计和模拟地下水质量方面的高能力和准确性。

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