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Water quality variations in different climates of Iran: toward modeling total dissolved solid using soft computing techniques

机译:伊朗不同气候下的水质变化:使用软计算技术对总溶解固体进行建模

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In present paper, wavelet analysis of total dissolved solid that monitored at Nazlu Chay (northwest of Iran), Tajan (north of Iran), Zayandeh Rud (central of Iran) and Helleh (south of Iran) basins with various climatic conditions, have been studied. Daubechies wavelet at suitable level (db4) has been calculated for TDS of each selected basins. The performance of artificial neural networks (ANN), two different adaptive-neurofuzzy inference system (ANFIS) including ANFIS with grid partition (ANFIS-GP) and ANFIS with subtractive clustering (ANFIS-SC), gene expression programming (GEP), wavelet-ANN, wavelet-ANFIS and wavelet-GEP in predicting TDS of mentioned basins were assessed over a period of 20 years at twelve different hydrometric stations. EC (mu mhos/cm), Na (meq L-1) and Cl (meq L-1) parameters were selected (based on Pearson correlation) as input variables to forecast amount of TDS in four studied basins. To develop hybrid wavelet-AI models, the original observed data series was decomposed into sub-time series using Daubechies wavelets at suitable level for each basin. Based on the statistical criteria of correlation coefficient (R), root mean square error (RMSE) and mean absolute error (MAE), the hybrid wavelet-AI models performance were better than single AI models in all basins. A comparison was made between these artificial intelligence approaches which emphasized the superiority of wavelet-GEP over the other intelligent models with amount of RMSE 18.978, 6.774, 9.639 and 318.363 mg/l, in Nazlu Chay, Tajan, Zayandeh Rud and Helleh basins, respectively.
机译:在本文中,已经对在不同气候条件下分别在纳兹鲁·柴伊(伊朗西北),塔扬(伊朗北部),扎扬德·鲁德(伊朗中部)和赫勒(伊朗南部)盆地监测的总溶解固体进行了小波分析。研究。已经为每个选定盆地的TDS计算了适当水平(db4)的Daubechies小波。人工神经网络(ANN),两种不同的自适应神经模糊推理系统(ANFIS)的性能,包括具有网格划分的ANFIS(ANFIS-GP)和具有减法聚类的ANFIS(ANFIS-SC),基因表达编程(GEP),小波在十二年内,在十二个不同的水文测量站对ANN,小波ANFIS和小波GEP预测上述盆地的TDS进行了评估。选择EC(μmhos / cm),Na(meq L-1)和Cl(meq L-1)参数(基于Pearson相关性)作为输入变量,以预测四个研究盆地的TDS量。为了发展混合小波AI模型,使用Daubechies小波将原始观测数据序列分解为每个盆地合适时间的子时间序列。基于相关系数(R),均方根误差(RMSE)和平均绝对误差(MAE)的统计标准,在所有流域中,混合小波AI模型的性能均优于单个AI模型。对这些人工智能方法进行了比较,这些方法分别强调了小波-GEP在纳兹鲁柴,塔扬,扎耶德鲁德和赫勒盆地分别具有RMSE 18.978、6.774、9.639和318.363 mg / l的其他智能模型的优越性。 。

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