Puri Diksha, Lee Daeho, Khankal Dhananjay Vasant, Thakur Mohindra Singh, Alfaisal Faisal M, Alam Shamshad, Kumar Raj, Khan Mohammad Amir
School of Environmental Science, Shoolini University, Solan 173229, Himachal Pradesh, India.
Department of Mechanical Engineering, Gachon University, Seongnam 13120, South Korea.
ACS Omega. 2023 Oct 9;8(42):38950-38960. doi: 10.1021/acsomega.3c03375. eCollection 2023 Oct 24.
Since soft computing has gained a lot of attention in hydrological studies, this study focuses on predicting aeration efficiency () using circular plunging jets employing soft computing techniques such as reduced error pruning tree (REPTree), random forest (RF), and M5P. The study undertaken required the development and validation of models, which were achieved using 63 experimental data values with input variables, such as angle of inclination of tilt channel (α), number of plunging jets (), discharge of each jet (), hydraulic radius of each jet (HR), and Froude number (Fr. No), to evaluate the aeration efficiency (), which served as the output variable. To evaluate the effectiveness of the developed models, three different statistical indices were used such as the coefficient of correlation (CC), root-mean-square error (RMSE), and mean absolute error (MAE), and it was found that all of the applied techniques possessed good forecasting ability since their correlation coefficient values were greater than 0.8. Upon testing, it was discovered that the M5P model outperformed other soft computing-based models in its ability to predict , as demonstrated by its correlation coefficient value of 0.9564 and notably low values of MAE (0.0143) and RMSE (0.0193).
由于软计算在水文研究中受到了广泛关注,本研究聚焦于运用简化误差剪枝树(REPTree)、随机森林(RF)和M5P等软计算技术,通过圆形垂直射流来预测曝气效率()。所开展的研究需要对模型进行开发和验证,这通过使用63个实验数据值来实现,这些数据值的输入变量包括倾斜渠道的倾斜角度(α)、垂直射流的数量()、每个射流的流量()、每个射流的水力半径(HR)和弗劳德数(Fr. No),以评估作为输出变量的曝气效率()。为了评估所开发模型的有效性,使用了三种不同的统计指标,如相关系数(CC)、均方根误差(RMSE)和平均绝对误差(MAE),并且发现所有应用的技术都具有良好的预测能力,因为它们的相关系数值大于0.8。经测试发现,M5P模型在预测能力方面优于其他基于软计算的模型,其相关系数值为0.9564,MAE(0.0143)和RMSE(0.0193)的值显著较低。