Alkhammash Abdullah
Department of Pharmacology, College of Pharmacy, Shaqra University, Shaqra, 11961, Saudi Arabia.
Sci Rep. 2024 Oct 2;14(1):22876. doi: 10.1038/s41598-024-74616-w.
This study investigates simulation of pharmaceutical separation via membrane distillation process by computational simulation and machine learning modeling strategy. The efficacy of three regression models, i.e., Multi-layer Perceptron (MLP), Gamma Regression, and Support Vector Regression (SVR) in predicting the solute concentration, C(mol/m³), was evaluated. The hyper-parameters were optimized by fine-tuning the models using the Red Deer Algorithm (RDA). Computational analyses were carried out for removal of pharmaceuticals from solution by membrane distillation in continuous mode. Mass transfer and machine learning models were implemented focusing on concentration of solute in the feed section of membrane. Results indicate that the Multi-layer Perceptron model achieved great accuracy with an R of 0.9955, an MAE of 0.0084, and an RMSE of 0.0148, effectively capturing complex nonlinear relationships in the data. Gamma Regression also performed acceptably, with fitting R of 0.9214, showing its suitability for positively skewed data. The Support Vector Regression model, while capturing the general trend, showed the lowest performance with an R of 0.8710. These findings suggest that the Multi-layer Perceptron is the most accurate model for this dataset, followed by Gamma Regression and Support Vector Regression. This underscores the importance of careful model selection and optimization in regression analysis in combination with computational simulation of membrane processes.
本研究通过计算模拟和机器学习建模策略,对膜蒸馏过程中药物分离的模拟进行了研究。评估了三种回归模型,即多层感知器(MLP)、伽马回归和支持向量回归(SVR)在预测溶质浓度C(mol/m³)方面的有效性。通过使用马鹿算法(RDA)对模型进行微调来优化超参数。对连续模式下通过膜蒸馏从溶液中去除药物进行了计算分析。实施了传质和机器学习模型,重点关注膜进料段溶质的浓度。结果表明,多层感知器模型的准确率很高,R为0.9955,平均绝对误差(MAE)为0.0084,均方根误差(RMSE)为0.0148,有效地捕捉了数据中的复杂非线性关系。伽马回归的表现也尚可,拟合R为0.9214,表明其适用于正偏态数据。支持向量回归模型虽然捕捉到了总体趋势,但表现最差,R为0.8710。这些发现表明,多层感知器是该数据集最准确的模型,其次是伽马回归和支持向量回归。这突出了在回归分析中结合膜过程计算模拟进行仔细的模型选择和优化的重要性。