Puri Diksha, Kumar Raj, Sihag Parveen, Thakur Mohindra Singh, Perveen Kahkashan, Alfaisal Faisal M, Lee Daeho
School of Environmental Science, Shoolini University, Solan, Himachal Pradesh 173229, India.
Department of Mechanical Engineering, Gachon University, Seongnam 13120, South Korea.
ACS Omega. 2023 Aug 23;8(35):31811-31825. doi: 10.1021/acsomega.3c03294. eCollection 2023 Sep 5.
Jet aeration is a commonly used technique for introducing air into water during wastewater treatment. In this investigation, the efficacy of different soft computing models, namely, Random Forest, Reduced Error Pruning Tree, Artificial Neural Network (ANN), Gaussian Process, and Support Vector Machine, was examined in predicting the aeration efficiency (E) of circular and square jet configurations in an open channel flow. A total of 126 experimental data points were utilized to develop and validate these models. To assess the models' performance, three goodness-of-fit parameters were employed: correlation coefficient (CC), root-mean-square error (RMSE), and mean absolute error (MAE). The analysis revealed that all of the developed models exhibited predictive capabilities, with CC values surpassing 0.8. Nonetheless, when it comes to predicting , the ANN model outperformed other soft computing models, achieving a CC of 0.9748, MAE of 0.0164, and RMSE of 0.0211. A sensitivity analysis emphasized that the angle of inclination exerted the most significant influence on the aeration in an open channel. Furthermore, the results demonstrated that square jets delivered superior aeration compared to that of circular jets under identical operating conditions.
射流曝气是废水处理过程中一种常用的向水中引入空气的技术。在本研究中,考察了不同软计算模型,即随机森林、简约误差剪枝树、人工神经网络(ANN)、高斯过程和支持向量机,在预测明渠流中圆形和方形射流配置的曝气效率(E)方面的有效性。总共使用了126个实验数据点来开发和验证这些模型。为了评估模型的性能,采用了三个拟合优度参数:相关系数(CC)、均方根误差(RMSE)和平均绝对误差(MAE)。分析表明,所有开发的模型都具有预测能力,CC值超过0.8。然而,在预测方面,ANN模型优于其他软计算模型,CC值为0.9748,MAE为0.0164,RMSE为0.0211。敏感性分析强调,倾斜角度对明渠曝气影响最大。此外,结果表明,在相同运行条件下,方形射流的曝气效果优于圆形射流。