Development of machine learning and stepwise mechanistic models for performance prediction of direct contact membrane distillation module- A comparative study

被引:19
作者
Behnam, Pooria [1 ]
Shafieian, Abdellah [1 ]
Zargar, Masoumeh [1 ]
Khiadani, Mehdi [1 ]
机构
[1] Edith Cowan Univ, Sch Engn, 270 Joondalup Dr, Perth, WA 6027, Australia
关键词
Direct contact membrane distillation; Mechansitic modeling approach; Machine learning; Artificial neural network; Support vector regression; Random forest; RESPONSE-SURFACE METHODOLOGY; ARTIFICIAL NEURAL-NETWORK; MASS-TRANSFER; ENERGY SYSTEMS; OPTIMIZATION; DESALINATION; SEAWATER; SIMULATION; DESIGN; FLUX;
D O I
10.1016/j.cep.2022.108857
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
The development of accurate and fast modeling tools to predict the performance of direct contact membrane distillation (DCMD) modules can result in their performance improvement. Conventional models ignoring the variations of operational parameters along the membrane's length may cause inaccuracy. Moreover, models considering these variations are often complex and computationally expensive. To propose an accurate and fast modeling tool, the possibility of using machine learning models for the performance prediction of the DCMD module has been studied for the first time in this study. The robustness of three machine learning models (ANN, SVR, and RF) has been thoroughly compared with the stepwise mechanistic modeling approach in terms of models' accuracy, trend predictability, and computational time. The results show that ANN and SVR models exhibit an enhanced performance over the mechanistic model, possessing a MAPE(test) of 3.46% and 4.78% as compared to the mechanistic model with a MAPE(test) of 7.31%. Further, compared to the mechanistic model, the machine learning models have the privilege of simplicity, enhanced accuracy, and significantly lowered computational time. The feature importance analysis also showed that the feed flow temperature is the most influencing parameter on permeate flux in the DCMD system.
引用
收藏
页数:19
相关论文
共 60 条
[41]   Steam consumption prediction of a gas sweetening process with methyldiethanolamine solvent using machine learning approaches [J].
Moghadasi, Meisam ;
Ozgoli, Hassan Ali ;
Farhani, Foad .
INTERNATIONAL JOURNAL OF ENERGY RESEARCH, 2021, 45 (01) :879-893
[42]   A novel method for evaluation of asphaltene precipitation titration data [J].
Mohammadi, Amir H. ;
Eslamimanesh, Ali ;
Gharagheizi, Farhad ;
Richon, Dominique .
CHEMICAL ENGINEERING SCIENCE, 2012, 78 :181-185
[43]   Development of a self-sustained model to predict the performance of direct contact membrane distillation [J].
Noamani, Sadaf ;
Niroomand, Shirin ;
Rastgar, Masoud ;
McDonald, Andre ;
Sadrzadeh, Mohtada .
SEPARATION AND PURIFICATION TECHNOLOGY, 2021, 263
[44]   Heat and Mass Transport in Modeling Membrane Distillation Configurations: A Review [J].
Olatunji, Samuel O. ;
Camacho, Lucy Mar .
FRONTIERS IN ENERGY RESEARCH, 2018, 6
[45]  
Pedregosa F, 2011, J MACH LEARN RES, V12, P2825
[46]   Heat and mass transfer analysis in direct contact membrane distillation [J].
Qtaishat, M. ;
Matsuura, T. ;
Kruczek, B. ;
Khayet, M. .
DESALINATION, 2008, 219 (1-3) :272-292
[47]   Desalination by solar powered membrane distillation systems [J].
Qtaishat, Mohammed Rasool ;
Banat, Fawzi .
DESALINATION, 2013, 308 :186-197
[48]   Experimental characterization and optimization of multi-channel spiral wound air gap membrane distillation modules for seawater desalination [J].
Ruiz-Aguirre, A. ;
Andres-Manas, J. A. ;
Fernandez-Sevilla, J. M. ;
Zaragoza, G. .
SEPARATION AND PURIFICATION TECHNOLOGY, 2018, 205 :212-222
[49]   Evolving artificial intelligence techniques to model the hydrate-based desalination process of produced water [J].
Sadi, Maryam ;
Fakharian, Hajar ;
Ganji, Hamid ;
Kakavand, Majid .
JOURNAL OF WATER REUSE AND DESALINATION, 2019, 9 (04) :372-384
[50]   A novel solar-driven direct contact membrane-based water desalination system [J].
Shafieian, Abdellah ;
Khiadani, Mehdi .
ENERGY CONVERSION AND MANAGEMENT, 2019, 199