Modeling and optimization of small-scale NF/RO seawater desalination using the artificial neural network (ANN)

被引:19
作者
Adda, Asma [1 ,2 ]
Hanini, Salah [1 ]
Bezari, Salah [2 ]
Laidi, Maamar [1 ]
Abbas, Mohamed [3 ]
机构
[1] Univ Dr Yahia Fares Medea, Fac Sci & Technol, Lab Biomat & Transport Phenomena LBMPT, Medea, Algeria
[2] CDER, URAER, Ctr Dev Energies Renouvelables, Unite Rech Appl Energies Renouvelables, Ghardaia 47133, Algeria
[3] EPST CDER, Unit Solar Equipments Dev UDES, Res Dept, Cooling Syst & Water Treatment Using Renewable En, Tipasa, Algeria
关键词
Artificial Neural Network (ANN); Conductivity; Flow rate; NF; RO process; Recovery; Seawater desalination; NANOFILTRATION MEMBRANES; PREDICTION; PRETREATMENT; PERFORMANCE; OPERATIONS; NF;
D O I
10.4491/eer.2020.383
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The performance of seawater hybrid NF/RO desalination plant including permeate conductivity; permeate flow rate and permeate recovery. Under different feed parameters time, inlet temperature, inlet pressure, inlet conductivity and inlet flow rate were modelled by Artificial Neural Network (ANN) back-propagation based on Levenberg??? Marquardt training algorithm. The optimal ANN model had a 5-8-3 architecture with a hyperbolic tangent transfer function in hidden layer and linear transfer function at the output layer. The ability of ANN performed model was compared with multiple linear regression (MLR). The results show that MLR is not satisfactory for predicting the performance of NF/RO hybrid desalination process with a correlation coefficient about 0.6. The trained ANN model has presented a good agreement between the prediction and the experimental data during the training with reasonable statistical metrics values (RMSE, MAE and AARD). The coefficient of determination values for the prediction of permeate conductivity, permeate flow rate and recovery by ANN were 0.969, 0.942, and 0.963, respectively. Therefore, the ANN model can successfully predict the performance of NF/RO hybrid seawater desalination plant.
引用
收藏
页数:10
相关论文
共 52 条
[21]  
Garson G.D., 1991, AI Expert, P46
[22]   BACKPROPAGATION NEURAL NETWORKS FOR MODELING COMPLEX-SYSTEMS [J].
GOH, ATC .
ARTIFICIAL INTELLIGENCE IN ENGINEERING, 1995, 9 (03) :143-151
[23]   Artificial neural network-based equation to predict the toxicity of herbicides on rats [J].
Hamadache, Mabrouk ;
Hanini, Salah ;
Benkortbi, Othmane ;
Amrane, Abdeltif ;
Khaouane, Latifa ;
Moussa, Cherif Si .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2016, 154 :7-15
[24]   Performance analysis of a trihybrid NF/RO/MSF desalination plant [J].
Hamed, Osman A. ;
Hassan, Ata M. ;
Al-Shail, Khalid ;
Farooque, Mohammed A. .
DESALINATION AND WATER TREATMENT, 2009, 1 (1-3) :215-222
[25]  
Hassan A., 1999, NANOFILTRATION MEMBR, P1
[26]   A new approach to membrane and thermal seawater desalination processes using nanofiltration membranes (Part 1) [J].
Hassan, AM ;
Al-Sofi, MAK ;
Al-Amoudi, AS ;
Jamaluddin, ATM ;
Farooque, AM ;
Rowaili, A ;
Dalvi, AGI ;
Kither, NM ;
Mustafa, GM ;
Al-Tisan, IAR .
DESALINATION, 1998, 118 (1-3) :35-51
[27]  
Hassan AM, 1999, IDA WORLD C DESALINA
[28]  
Hassan AM, 1997, IDA WORLD C DESALINA
[29]   Regionalisation of the parameters of a hydrological model: Comparison of linear regression models with artificial neural nets [J].
Heuvelmans, G ;
Muys, B ;
Feyen, J .
JOURNAL OF HYDROLOGY, 2006, 319 (1-4) :245-265
[30]   A comprehensive review of nanofiltration membranes: Treatment, pretreatment, modelling, and atomic force microscopy [J].
Hilal, N ;
Al-Zoubi, H ;
Darwish, NA ;
Mohammad, AW ;
Abu Arabi, M .
DESALINATION, 2004, 170 (03) :281-308