Department of Environmental Health Engineering, School of Health, Khoy University of Medical Sciences, Khoy, Iran.
Student Research Committee, School of Health, Shiraz University of Medical Sciences, Shiraz, Iran.
Sci Rep. 2024 Jun 15;14(1):13840. doi: 10.1038/s41598-024-64790-2.
In this research, an upgraded and environmentally friendly process involving WO/Co-ZIF nanocomposite was used for the removal of Cefixime from the aqueous solutions. Intelligent decision-making was employed using various models including Support Vector Regression (SVR), Genetic Algorithm (GA), Artificial Neural Network (ANN), Simulation Optimization Language for Visualized Excel Results (SOLVER), and Response Surface Methodology (RSM). SVR, ANN, and RSM models were used for modeling and predicting results, while GA and SOLVER models were employed to achieve the optimal conditions for Cefixime degradation. The primary goal of applying different models was to achieve the best conditions with high accuracy in Cefixime degradation. Based on R analysis, the quadratic factorial model in RSM was selected as the best model, and the regression coefficients obtained from it were used to evaluate the performance of artificial intelligence models. According to the quadratic factorial model, interactions between pH and time, pH and catalyst amount, as well as reaction time and catalyst amount were identified as the most significant factors in predicting results. In a comparison between the different models based on Mean Absolute Error (MAE), Root Mean Square Error (RMSE), and Coefficient of Determination (R Score) indices, the SVR model was selected as the best model for the prediction of the results, with a higher R Score (0.98), and lower MAE (1.54) and RMSE (3.91) compared to the ANN model. Both ANN and SVR models identified pH as the most important parameter in the prediction of the results. According to the Genetic Algorithm, interactions between the initial concentration of Cefixime with reaction time, as well as between the initial concentration of Cefixime and catalyst amount, had the greatest impact on selecting the optimal values. Using the Genetic Algorithm and SOLVER models, the optimum values for the initial concentration of Cefixime, pH, time, and catalyst amount were determined to be (6.14 mg L, 3.13, 117.65 min, and 0.19 g L) and (5 mg L, 3, 120 min, and 0.19 g L), respectively. Given the presented results, this research can contribute significantly to advancements in intelligent decision-making and optimization of the pollutant removal processes from the environment.
在这项研究中,使用了一种升级的、环保的 WO/Co-ZIF 纳米复合材料工艺,用于从水溶液中去除头孢克肟。使用各种模型,包括支持向量回归(SVR)、遗传算法(GA)、人工神经网络(ANN)、可视化 Excel 结果的模拟优化语言(SOLVER)和响应面方法论(RSM),进行智能决策。SVR、ANN 和 RSM 模型用于建模和预测结果,而 GA 和 SOLVER 模型则用于实现头孢克肟降解的最佳条件。应用不同模型的主要目的是在头孢克肟降解方面达到最佳条件,并具有高精度。基于 R 分析,选择 RSM 中的二次因子模型作为最佳模型,并使用从该模型中获得的回归系数来评估人工智能模型的性能。根据二次因子模型,确定 pH 和时间、pH 和催化剂用量以及反应时间和催化剂用量之间的相互作用是预测结果的最重要因素。根据平均绝对误差(MAE)、均方根误差(RMSE)和决定系数(R 分数)指标对不同模型进行比较,选择 SVR 模型作为预测结果的最佳模型,具有更高的 R 分数(0.98),以及较低的 MAE(1.54)和 RMSE(3.91),优于 ANN 模型。ANN 和 SVR 模型都将 pH 确定为预测结果的最重要参数。根据遗传算法,头孢克肟的初始浓度与反应时间之间以及头孢克肟的初始浓度与催化剂用量之间的相互作用对选择最佳值具有最大影响。使用遗传算法和 SOLVER 模型,确定头孢克肟的初始浓度、pH、时间和催化剂用量的最佳值分别为(6.14mg/L、3.13、117.65min 和 0.19g/L)和(5mg/L、3、120min 和 0.19g/L)。鉴于所提出的结果,这项研究可以为环境中污染物去除过程的智能决策和优化做出重大贡献。