Department of Water Engineering, Faculty of Agriculture, University of Tabriz, Tabriz, Iran.
Department of Irrigation and Drainage Engineering, Aburaihan Campus, University of Tehran, Tehran, Iran.
J Contam Hydrol. 2021 Jun;240:103781. doi: 10.1016/j.jconhyd.2021.103781. Epub 2021 Feb 14.
Accurate calculation of the longitudinal dispersion coefficient (K) of pollution is essential in modeling river pollution status. Various equations are presented to calculate the K using experimental, analytical, and mathematical methods. Although machine learning models are more reliable than experimental equations in the presence of uncertainties missing data, they have not been widely used in predicting K. In this study, the K of the river was predicted using machine learning methods, including least square-support vector machine (LS-SVM), adaptive neuro-fuzzy inference system (ANFIS), and ANFIS optimized by Harris hawk optimization (ANFIS-HHO), and the results were compared with that of the experimental methods. Several scenarios were designed by different combinations of input variables, such as the average depth of the flow (H), average flow velocity (U), and shear velocity (u). The results showed that machine learning models had a more efficient performance to predict K than experimental equations. The ANFIS-HHO, with a scenario containing all the input variables, performed better than the other two models, with root mean square error, mean absolute percentage error, and coefficient of determination of 17.0, 0.22, and 0.97, respectively. Furthermore, the HHO algorithm slightly increased the prediction performance of the ANFIS. The discrepancy ratio (DR) evaluation criteria showed that experimental equations overestimated the values of K, while the machine learning models resulted in higher precision. Also, the results of Taylor's diagram showed the acceptable performance of the ANFIS-HHO model compared to other models. Given the promising results of the present study, it is expected that the proposed approach can be efficiently used for similar environmental modeling problems.
准确计算污染纵向离散系数(K)对于河流污染状况的建模至关重要。有各种方程可以使用实验、分析和数学方法来计算 K。尽管机器学习模型在存在不确定性和缺失数据的情况下比实验方程更可靠,但它们在预测 K 方面尚未得到广泛应用。在这项研究中,使用机器学习方法(包括最小二乘支持向量机(LS-SVM)、自适应神经模糊推理系统(ANFIS)和经哈里斯鹰优化(ANFIS-HHO)优化的 ANFIS)预测了河流的 K,并将结果与实验方法进行了比较。通过不同的输入变量组合(例如水流的平均深度(H)、平均流速(U)和剪切速度(u))设计了几种情况。结果表明,机器学习模型在预测 K 方面比实验方程具有更高的效率。包含所有输入变量的场景的 ANFIS-HHO 表现优于其他两个模型,其均方根误差、平均绝对百分比误差和确定系数分别为 17.0、0.22 和 0.97。此外,HHO 算法略微提高了 ANFIS 的预测性能。差异比(DR)评估标准表明,实验方程高估了 K 的值,而机器学习模型则具有更高的精度。此外,泰勒图的结果表明,与其他模型相比,ANFIS-HHO 模型具有可接受的性能。鉴于本研究的有希望的结果,可以预期所提出的方法可以有效地用于类似的环境建模问题。