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首页> 外文期刊>KSCE journal of civil engineering >Prediction of Water Quality Parameters Using ANFIS Optimized by Intelligence Algorithms (Case Study: Gorganrood River)
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Prediction of Water Quality Parameters Using ANFIS Optimized by Intelligence Algorithms (Case Study: Gorganrood River)

机译:使用智能算法优化的ANFIS预测水质参数(案例研究:Gorganrood River)

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Water quality management and control has high importance in planning and developing of water resources. This study investigated application of Genetic Algorithm (GA), Ant Colony Optimization for Continuous Domains (ACO(R)) and Differential Evolution (DE) in improving the performance of adaptive neuro-fuzzy inference system (ANFIS), for evaluating the quality parameters of Gorganroud River water, such as Electrical Conductivity (EC), Sodium Absorption Ratio (SAR) and Total Hardness (TH). Accordingly, initially most suitable inputs were estimated for every model using sensitivity analysis and then all of the quality parameters were predicted using mentioned models. Investigations showed that for predicting EC and TH in test stage, ANFIS-DE with R-2 values of 0.98 and 0.97, respectively and RMSE values of 73.03 and 49.55 and also MAPE values of 5.16 and 9.55, respectively were the most appropriate models. Also, ANFIS-DE and ANFIS-GA models had the best performance in prediction of SAR (R-2 = 0.95, 0.91; RMSE = 0.43, 0.37 and MAPE = 13.43, 13.72) in test stage. It is noteworthy that ANFIS showed the best performance in prediction of all mentioned water quality parameters in training stage. The results indicated the ability of mentioned algorithms in improving the accuracy of ANFIS for predicting the quality parameters of river water.
机译:水质管理和控制在水资源的规划和开发中具有高度重要性。这项研究调查了遗传算法(GA),连续域蚁群优化(ACO(R)和差异进化(DE))在提高自适应神经模糊推理系统(ANFIS)的性能,评估质量参数方面的应用。 Gorganroud河水,例如电导率(EC),钠吸收率(SAR)和总硬度(TH)。因此,最初使用灵敏度分析为每个模型估计最合适的输入,然后使用所提到的模型预测所有质量参数。研究表明,为了预测测试阶段的EC和TH,最合适的模型是R-2值分别为0.98和0.97,RMSE值分别为73.03和49.55,MAPE值分别为5.16和9.55的ANFIS-DE。此外,在测试阶段,ANFIS-DE和ANFIS-GA模型在预测SAR方面表现最佳(R-2 = 0.95,0.91; RMSE = 0.43,0.37和MAPE = 13.43,13.72)。值得注意的是,在训练阶段,ANFIS在预测所有提到的水质参数方面表现出最佳性能。结果表明,上述算法具有提高ANFIS预测河流水质参数的准确性的能力。

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