Ismael Bashar H, Khaleel Faidhalrahman, Ibrahim Salah S, Khaleel Samraa R, AlOmar Mohamed Khalid, Masood Adil, Aljumaily Mustafa M, Alsalhy Qusay F, Mohd Razali Siti Fatin, Al-Juboori Raed A, Hameed Mohammed Majeed, Alsarayreh Alanood A
Construction and Projects Department, University of Fallujah, Fallujah 31002, Iraq.
Department of Civil Engineering, Al-Maarif University College (AUC), Ramadi 31001, Iraq.
Membranes (Basel). 2023 Dec 5;13(12):900. doi: 10.3390/membranes13120900.
Vacuum membrane distillation (VMD) has attracted increasing interest for various applications besides seawater desalination. Experimental testing of membrane technologies such as VMD on a pilot or large scale can be laborious and costly. Machine learning techniques can be a valuable tool for predicting membrane performance on such scales. In this work, a novel hybrid model was developed based on incorporating a spotted hyena optimizer (SHO) with support vector machine (SVR) to predict the flux pressure in VMD. The SVR-SHO hybrid model was validated with experimental data and benchmarked against other machine learning tools such as artificial neural networks (ANNs), classical SVR, and multiple linear regression (MLR). The results show that the SVR-SHO predicted flux pressure with high accuracy with a correlation coefficient (R) of 0.94. However, other models showed a lower prediction accuracy than SVR-SHO with R-values ranging from 0.801 to 0.902. Global sensitivity analysis was applied to interpret the obtained result, revealing that feed temperature was the most influential operating parameter on flux, with a relative importance score of 52.71 compared to 17.69, 17.16, and 14.44 for feed flowrate, vacuum pressure intensity, and feed concentration, respectively.
除海水淡化外,真空膜蒸馏(VMD)在各种应用中也越来越受到关注。对诸如VMD之类的膜技术进行中试或大规模的实验测试可能既费力又昂贵。机器学习技术可能是预测此类规模膜性能的宝贵工具。在这项工作中,通过将斑点鬣狗优化器(SHO)与支持向量机(SVR)相结合,开发了一种新型混合模型,用于预测VMD中的通量压力。SVR-SHO混合模型通过实验数据进行了验证,并与其他机器学习工具(如人工神经网络(ANN)、经典SVR和多元线性回归(MLR))进行了对比。结果表明,SVR-SHO预测通量压力的准确率很高,相关系数(R)为0.94。然而,其他模型的预测准确率低于SVR-SHO,R值在0.801至0.902之间。应用全局敏感性分析来解释所得结果,结果表明进料温度是对通量影响最大的操作参数,相对重要性评分为52.71,而进料流量、真空压力强度和进料浓度的相对重要性评分分别为17.69、17.16和14.44。