Faculty of Engineering, Shohadaye Hoveizeh Campus of Technology, Shahid Chamran University of Ahvaz, Dashte Azadegan, Iran.
Department of Civil Engineering, Behbahan Khatam Alanbia University of Technology, Behbahan, Iran.
J Environ Manage. 2021 Dec 15;300:113774. doi: 10.1016/j.jenvman.2021.113774. Epub 2021 Sep 21.
The concentration of soluble salts in surface water and rivers such as sodium, sulfate, chloride, magnesium ions, etc., plays an important role in the water salinity. Therefore, accurate determination of the distribution pattern of these ions can improve better management of drinking water resources and human health. The main goal of this research is to establish two novel wavelet-complementary intelligence paradigms so-called wavelet least square support vector machine coupled with improved simulated annealing (W-LSSVM-ISA) and the wavelet extended Kalman filter integrated with artificial neural network (W-EKF- ANN) for accurate forecasting of the monthly), magnesium (Mg), and sulfate (SO) indices at Maroon River, in Southwest of Iran. The monthly River flow (Q), electrical conductivity (EC), Mg, and SO data recorded at Tange-Takab station for the period 1980-2016. Some preprocessing procedures consisting of specifying the number of lag times and decomposition of the existing original signals into multi-resolution sub-series using three mother wavelets were performed to develop predictive models. In addition, the best subset regression analysis was designed to separately assess the best selective combinations for Mg and SO. The statistical metrics and authoritative validation approaches showed that both complementary paradigms yielded promising accuracy compared with standalone artificial intelligence (AI) models. Furthermore, the results demonstrated that W-LSSVM-ISA-C1 (correlation coefficient (R) = 0.9521, root mean square error (RMSE) = 0.2637 mg/l, and Kling-Gupta efficiency (KGE) = 0.9361) and W-LSSVM-ISA-C4 (R = 0.9673, RMSE = 0.5534 mg/l and KGE = 0.9437), using Dmey mother that outperformed the W-EKF-ANN for predicting Mg and SO4, respectively.
地表水和河流(如钠离子、硫酸盐、氯化物、镁离子等)中可溶性盐的浓度对水的盐度起着重要作用。因此,准确测定这些离子的分布模式可以更好地管理饮用水资源和人类健康。本研究的主要目的是建立两种新的小波互补智能范式,即小波最小二乘支持向量机与改进模拟退火(W-LSSVM-ISA)和小波扩展卡尔曼滤波与人工神经网络(W-EKF-ANN)相结合,用于准确预测伊朗西南部的马伦河的月平均流量(Q)、电导率(EC)、镁(Mg)和硫酸盐(SO)指数。研究使用了 1980 年至 2016 年在 Tange-Takab 站记录的月度河流流量(Q)、电导率(EC)、Mg 和 SO 数据。进行了一些预处理程序,包括指定滞后时间的数量和使用三个母小波将现有原始信号分解为多分辨率子序列,以开发预测模型。此外,还设计了最佳子集回归分析,分别评估 Mg 和 SO 的最佳选择组合。统计指标和权威验证方法表明,与独立的人工智能(AI)模型相比,这两种互补范式都具有较高的准确性。此外,结果表明,W-LSSVM-ISA-C1(相关系数(R)= 0.9521,均方根误差(RMSE)= 0.2637mg/l,Kling-Gupta 效率(KGE)= 0.9361)和 W-LSSVM-ISA-C4(R = 0.9673,RMSE = 0.5534mg/l 和 KGE = 0.9437),使用 Dmey 母波,在预测 Mg 和 SO4 方面优于 W-EKF-ANN。