Startseite Separation of HCl/water mixture using air gap membrane distillation, Taguchi optimization and artificial neural network
Artikel
Lizenziert
Nicht lizenziert Erfordert eine Authentifizierung

Separation of HCl/water mixture using air gap membrane distillation, Taguchi optimization and artificial neural network

  • Sarita Kalla , Rakesh Baghel , Sushant Upadhyaya und Kailash Singh
Veröffentlicht/Copyright: 16. Dezember 2020
Veröffentlichen auch Sie bei De Gruyter Brill

Abstract

The aim of this paper is to analyze the performance of the air gap membrane distillation (AGMD) process for the separation of HCl/Water mixture first by applying Taguchi optimization approach and second by developing an artificial neural network (ANN) model. The experimental data which are fed as input to the above approaches are collected from the fabricated AGMD lab-scale setup using poly-tetra-fluoro-ethylene membrane of 0.22 µm pore size. The process input variables considered are bulk feed temperature, feed flow rate, air gap thickness, cooling water temperature and cooing water flow rate and AGMD performance index is the total permeate flux. The optimum operating condition is found to be at feed temperature 50 °C, air gap thickness 7 mm, cooling water temperature 5 °C and feed flow rate 10 lpm. Analysis of variance test is carried out for both Taguchi and ANN models. Regression model has also been developed for the comparison between experimental and model predicted data. The developed ANN model has been found well fitted with experimental data having R2 value of 0.998. Based on the calculated percentage of contribution of each input parameter on the AGMD permeate flux, it can be concluded that feed temperature and air gap thickness have highest weightage whereas feed flow rate and cooling water temperature have moderate effects. Predictive ability of the developed ANN model is further checked with 2D contour plot. The distinctive feature of the paper is the development of the Taguchi experimental design and ANN model and then consequently integration of both Taguchi and ANN has been carried out to optimized the developed ANN model parameters.


Corresponding author: Sushant Upadhyaya, Department of Chemical Engineering, Malaviya National Institute of Technology, Jaipur, 302017, India, E-mail:

  1. Author contributions: All the authors have accepted responsibility for the entire content of this submitted manuscript and approved submission.

  2. Research funding: None declared.

  3. Conflict of interest statement: The authors report no conflict of interest.

References

1. Kalla, S, Upadhyaya, S, Singh, K. Principles and advancements of air gap membrane distillation. Rev Chem Eng 2018;35:817–59.10.1515/revce-2017-0112Suche in Google Scholar

2. Gazagnes, L, Cerneaux, S, Persin, M, Prouzet, E, Larbot, A. Desalination of sodium chloride solutions and seawater with hydrophobic ceramic membranes. Desalination 2007;217:260–6. https://doi.org/10.1016/j.desal.2007.01.017.Suche in Google Scholar

3. Feng, C, Khulbe, KC, Matsuura, T, Gopal, R, Kaur, S, Ramakrishna, S, et al.. Production of drinking water from saline water by air-gap membrane distillation using polyvinylidene fluoride nanofiber membrane. J Membr Sci 2008;311:1–6. https://doi.org/10.1016/j.memsci.2007.12.026.Suche in Google Scholar

4. Khayet, M, Cojocaru, C. Arti fi cial neural network model for desalination by sweeping gas membrane distillation. Desalination 2013;308:102–10. https://doi.org/10.1016/j.desal.2012.06.023.Suche in Google Scholar

5. Alsaadi, AS, Ghaffour, N, Li, J, Gray, S, Francis, L, Maab, H, et al.. Modeling of air-gap membrane distillation process : a theoretical and experimental study. J Membr Sci 2013;445:53–65. https://doi.org/10.1016/j.memsci.2013.05.049.Suche in Google Scholar

6. García-Fernández, L, Wang, B, García-Payo, MC, Li, K, Khayet, M. Morphological design of alumina hollow fiber membranes for desalination by air gap membrane distillation. Desalination 2017;420:226–40. https://doi.org/10.1016/j.desal.2017.07.021.Suche in Google Scholar

7. Kimura, S, Nakao, S, Shimatani, S. Transport phenomena in membrane distillation. J Membr Sci 1987;33:285–98. https://doi.org/10.1016/s0376-7388(00)80286-0.Suche in Google Scholar

8. Izquierdo-Gil, MA, García-Payo, MC, Fernández-Pineda, C. Air gap membrane distillation of sucrose aqueous solutions. J Membr Sci 1999;155:291–307. https://doi.org/10.1016/s0376-7388(98)00323-8.Suche in Google Scholar

9. Garcia-Payo, MC, Izquierdo-Gil, MA, Fernndez-Pineda, C. Air gap membrane distillation of aqueous alcohol solutions. J Membr Sci 2000;169:61–80.10.1016/S0376-7388(99)00326-9Suche in Google Scholar

10. Chang, H, Lyu, S, Tsai, C, Chen, Y, Cheng, T, Chou, Y. Experimental and simulation study of a solar thermal driven membrane distillation desalination process. Desalination 2012;286:400–11. https://doi.org/10.1016/j.desal.2011.11.057.Suche in Google Scholar

11. Thiruvenkatachari, R, Manickam, M, Ouk Kwon, T, Shik Moon, I, Woo Kim, J. Separation of water and nitric acid with porous hydrophobic membrane by air gap membrane distillation (AGMD). Separ Sci Technol 2006;41:3187–99. https://doi.org/10.1080/01496390600854651.Suche in Google Scholar

12. Liu, R, Qin, Y, Li, X, Liu, L. Concentrating aqueous hydrochloric acid by multiple-effect membrane distillation. Front Chem Sci Eng 2012;6:311–21. https://doi.org/10.1007/s11705-012-1207-3.Suche in Google Scholar

13. Kujawska, A, Kujawski, J, Bryjak, M, Kujawski, W. Removal of volatile organic compounds from aqueous solutions applying thermally driven membrane processes. 2. Air gap membrane distillation. J Membr Sci 2016;499:245–56. https://doi.org/10.1016/j.memsci.2015.10.047.Suche in Google Scholar

14. Woldemariam, D, Kullab, A, Khan, EU, Martin, A. Recovery of ethanol from scrubber-water by district heat-driven membrane distillation: industrial-scale technoeconomic study. Renew Energy 2018;128:484–94. https://doi.org/10.1016/j.renene.2017.06.009.Suche in Google Scholar

15. Kim, J, Sang, EP, Kim, TS, Jeong, DY, Ko, KH. Isotopic water separation using AGMD and VEMD. Nukleonika 2004;49:137–42.Suche in Google Scholar

16. Kalla, S. Use of membrane distillation for oily wastewater treatment – a review. J Environ Chem Eng 2020:104641. https://doi.org/10.1016/j.jece.2020.104641.Suche in Google Scholar

17. Udriot, H, Araque, A, von Stockar, U. Azeotropic mixtures may be broken by membrane distillation. Chem Eng J Biochem Eng J 1994;54:87–93. https://doi.org/10.1016/0923-0467(93)02814-d.Suche in Google Scholar

18. Banat, FA, Al-rub, FA, Jumah, R, Al-shannag, M. Application of Stefan ± Maxwell approach to azeotropic separation by membrane distillation. Chem Eng J 1999;73:71–5. https://doi.org/10.1016/s1385-8947(99)00016-9.Suche in Google Scholar

19. Banat, FA, Abu Al-Rub, F, Jumah, R, Shannag, M. On the effect of inert gases in breaking the formic acid-water azeotrope by gas-gap membrane distillation. Chem Eng J 1999;73:37–42. https://doi.org/10.1016/s1385-8947(99)00014-5.Suche in Google Scholar

20. Banat, FA, Al-Rub, FA, Jumah, R, Shannag, M. Theoretical investigation of membrane distillation role in breaking the formic acid-water azeotropic point: comparison between Fickian and Stefan-Maxwell-based models. Int Commun Heat Mass Tran 1999;26:879–88. https://doi.org/10.1016/s0735-1933(99)00076-7.Suche in Google Scholar

21. Czitrom, V. One-factor-at-a-time versus designed experiments. Am Statistician 1999;53:126–31. https://doi.org/10.2307/2685731.Suche in Google Scholar

22. Mohammadi, T, Safavi, MA. Application of Taguchi method in optimization of desalination by vacuum membrane distillation. Desalination 2009;249:83–9. https://doi.org/10.1016/j.desal.2009.01.017.Suche in Google Scholar

23. Pathak, L, Singh, V, Niwas, R, Osama, K, Khan, S, Haque, S, et al.. Artificial intelligence versus statistical modeling and optimization of cholesterol oxidase production by using Streptomyces sp. PloS One 2015;10. https://doi.org/10.1371/journal.pone.0137268.Suche in Google Scholar

24. Khayet, M, Cojocaru, C. Artificial neural network modeling and optimization of desalination by air gap membrane distillation. Separ Purif Technol 2012;86:171–82. https://doi.org/10.1016/j.seppur.2011.11.001.Suche in Google Scholar

25. Tavakolmoghadam, M, Safavi, M. An optimized neural network model of desalination by vacuum membrane distillation using genetic algorithm. In: 20th international congress of chemical and process engineering CHISA. Prague, Czech Republic: Elsevier; 2012:106–12 pp.10.1016/j.proeng.2012.07.400Suche in Google Scholar

26. Himmelblau, DM. Applications of artificial neural networks in chemical engineering. Kor J Chem Eng 2000;17:373–92. https://doi.org/10.1007/bf02706848.Suche in Google Scholar

27. Marini, F, Bucci, R, Magrì, AL, Magrì, AD. Artificial neural networks in chemometrics: history, examples and perspectives. Microchem J 2008;88:178–85. https://doi.org/10.1016/j.microc.2007.11.008.Suche in Google Scholar

28. Shirazi, MMA, Kargari, A, Bastani, D, Soleimani, M, Fatehi, L. Study on commercial membranes and sweeping gas membrane distillation for concentrating of glucose syrup. J Membr Sci Res 2020;6:47–57.Suche in Google Scholar

29. Mohammadi, T, Kazemi, P. Taguchi optimization approach for phenolic wastewater treatment by vacuum membrane distillation. Desalin Water Treat 2014;52:1341–9. https://doi.org/10.1080/19443994.2013.794557.Suche in Google Scholar

30. Kalla, S, Upadhyaya, S, Singh, K, Baghel, R. Experimental and mathematical study of air gap membrane distillation for aqueous HCl azeotropic separation. J Chem Technol Biotechnol 2019;94. https://doi.org/10.1002/jctb.5766.Suche in Google Scholar

31. Kalla, S, Upadhyaya, S, Singh, K, Baghel, R. Development of heat and mass transfer correlations and recovery calculation for HCl–water azeotropic separation using air gap membrane distillation. Chem Pap 2019;73:2449–60. https://doi.org/10.1007/s11696-019-00795-w.Suche in Google Scholar

32. Khalifa, AE, Lawal, DU. Performance and optimization of air gap membrane distillation system for water desalination. Arabian J Sci Eng 2015;40:3627–39. https://doi.org/10.1007/s13369-015-1772-0.Suche in Google Scholar

33. Tonnizam Mohamad, E, Jahed Armaghani, D, Hasanipanah, M, Murlidhar, BR, Alel, MNA. Estimation of air-overpressure produced by blasting operation through a neuro-genetic technique. Environ Earth Sci 2016;75:1–15. https://doi.org/10.1007/s12665-015-4983-5.Suche in Google Scholar

34. Mohamad, ET, Faradonbeh, RS, Armaghani, DJ, Monjezi, M, Majid, MZA. An optimized ANN model based on genetic algorithm for predicting ripping production. Neural Comput Appl 2017;28:393–406. https://doi.org/10.1007/s00521-016-2359-8.Suche in Google Scholar

35. Simpson, P. Artificial neural system: foundation, paradigms, applications and implementations. New York: Pergamon; 1990.Suche in Google Scholar

36. Dreyfus, G. Neural networks: methodology and application. Berlin: Springer; 2005.Suche in Google Scholar

37. Momeni, E, Nazir, R, Armaghani, DJ, Maizir, H. Application of artificial neural network for predicting shaft and tip resistances of concrete piles. Earth Sci Res J 2015;19:85–93. https://doi.org/10.15446/esrj.v19n1.38712.Suche in Google Scholar

38. Hecht-Nielsen, R. Kolmogorov’s mapping neural network existence theorem. In: Proceedings of the IEEE first international conference on neural networks. San Diego, CA; 1987:11–3 pp.Suche in Google Scholar

39. Bezerra, MA, Santelli, RE, Oliveira, EP, Villar, LS, Escaleira, LA. Response surface methodology (RSM) as a tool for optimization in analytical chemistry. Elsevier; 2008, vol 76:965–77 pp.10.1016/j.talanta.2008.05.019Suche in Google Scholar PubMed

40. Beeravelli, VN, Chanamala, R, Rayavarapu, UMR, Kancherla, PR. An artificial neural network and Taguchi integrated approach to the optimization of performance and emissions of direct injection diesel engine. Eur J Sustain Dev Res 2018;2. https://doi.org/10.20897/ejosdr/85412.Suche in Google Scholar

Received: 2020-08-15
Accepted: 2020-11-26
Published Online: 2020-12-16

© 2020 Walter de Gruyter GmbH, Berlin/Boston

Heruntergeladen am 30.11.2025 von https://www.degruyterbrill.com/document/doi/10.1515/cppm-2020-0078/pdf
Button zum nach oben scrollen