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Prediction of Water Quality Index by Support Vector Machine: a Case Study in the Sefidrud Basin, Northern Iran

机译:支持向量机预测水质指数:伊朗北部Sefidrud盆地的案例研究

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摘要

The objectives of this study were to predict the water quality index using Support Vector Machine (SVM) model and to identify the most important attributes affecting the variability of the water quality index in the Sefidrud basin which is located in the northern part of Iran. Water samples at each site have been collected monthly from December 2007 to November 2008. At each station, water samples were collected from inside the middle of the river by means of a plastic bucket and were transported to the laboratory. Water quality parameters were measured, calculated and classified according to the standard methods. Prediction of the SVM models in the study area resulted in determination coefficient and root mean square error of 0.87 and 0.061 for the water quality index, respectively. The nitrate was identified as the most important attribute influencing the water quality index. Overall, our results indicated that the SVM models could explain 87% of the total variability in water quality index. Besides, the predictability of water quality index could be improved by other statistical and intelligent models. These predictions help us to improve river management, regarding water quality.
机译:本研究的目的是预测使用支持向量机(SVM)模型的水质指数,并确定影响位于伊朗北部的SEFIDRUD盆地水质指数变异性的最重要属性。从2007年12月到2008年11月,每场地的水样已收集。在每个站,通过塑料桶从河里内部收集水样,并运输到实验室。根据标准方法测量,计算和分类水质参数。预测研究区域中的SVM模型导致测定系数和均方根误差分别为水质指数0.87和0.061。硝酸盐被确定为影响水质指数的最重要的属性。总体而言,我们的结果表明,SVM模型可以解释水质指数总差异的87%。此外,其他统计和智能模型可以改善水质指数的可预测性。这些预测有助于我们改善河流管理,了解水质。

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