Department of Water Resources Engineering, Faculty of Civil Engineering, University of Tabriz, Tabriz, Iran E-mail:
Department of Civil Engineering, Ahar Branch, Islamic Azad University, Ahar, Iran.
Water Sci Technol. 2021 Apr;83(7):1633-1648. doi: 10.2166/wst.2021.067.
Wastewater treatment plants (WWTPs) are highly complicated and dynamic systems and so their appropriate operation, control, and accurate simulation are essential. The simulation of WWTPs according to the process complexity has become an important issue in growing environmental awareness. In recent decades, artificial intelligence approaches have been used as effective tools in order to investigate environmental engineering issues. In this study, the effluent quality of Tabriz WWTP was assessed using two intelligence models, namely support Vector Machine (SVM) and artificial neural network (ANN). In this regard, several models were developed based on influent variables and tested via SVM and ANN methods. Three time scales, daily, weekly, and monthly, were investigated in the modeling process. On the other hand, since applied methods were sensitive to input variables, the Monte Carlo uncertainty analysis method was used to investigate the best-applied model dependability. It was found that both models had an acceptable degree of uncertainty in modeling the effluent quality of Tabriz WWTP. Next, ensemble approaches were applied to improve the prediction performance of Tabriz WWTP. The obtained results comparison showed that the ensemble methods represented better efficiency than single approaches in predicting the performance of Tabriz WWTP.
污水处理厂(WWTPs)是高度复杂和动态的系统,因此它们的适当运行、控制和准确模拟是必不可少的。根据工艺复杂性对 WWTP 进行模拟已成为日益增强的环境意识中的一个重要问题。在最近几十年中,人工智能方法已被用作研究环境工程问题的有效工具。在这项研究中,使用两种智能模型,即支持向量机(SVM)和人工神经网络(ANN),评估了大不里士 WWTP 的出水质量。为此,根据进水变量开发了多个模型,并通过 SVM 和 ANN 方法进行了测试。在建模过程中研究了三个时间尺度,即每日、每周和每月。另一方面,由于应用方法对输入变量敏感,因此使用蒙特卡罗不确定性分析方法来研究最佳应用模型的可靠性。结果发现,两种模型在建模大不里士 WWTP 的出水质量方面都具有可接受的不确定性程度。接下来,应用集成方法来提高大不里士 WWTP 的预测性能。获得的结果比较表明,在预测大不里士 WWTP 的性能方面,集成方法比单一方法具有更高的效率。