APPLICATION OF ADAPTIVE NEURO FUZZY INFERENCE SYSTEM TO MODELING OXIDATIVE COUPLING OF METHANE REACTION AT ELEVATED PRESSURE

Publish Year: 1393
نوع سند: مقاله ژورنالی
زبان: English
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JR_JPSTR-4-2_006

تاریخ نمایه سازی: 29 آذر 1402

Abstract:

The oxidative coupling of methane (OCM) performance over Na-W-Mn/SiO۲ at elevated pressures has been simulated by adaptive neuro fuzzy inference system (ANFIS) using reaction data gathered in an isothermal fixed bed microreactor. In the designed neuro fuzzy models, three important parameters such as methane to oxygen ratio, gas hourly space velocity (GHSV), and reaction temperature were considered as inputs and methane conversion and the selectivity of product hydrocarbons (C۲+) were chosen as outputs. Two five-layer neuro fuzzy models based on the partitioning algorithm were designed at each reaction pressure to predict the product hydrocarbons (C۲+) selectivity and methane conversion separately as a linear combination of inputs by the optimal selection of number and type of the membership functions. Moreover, to evaluate the ability and accuracy of the developed neuro fuzzy models in the prediction of OCM reaction performance, the results of ANFIS models were compared with experimental data and artificial neural network outputs. The comparison was carried out by the calculation of some statistical parameters such as correlation coefficient (R۲), mean squared error (MSE), and average relative deviation (ARD). The results show that there are excellent agreement between model predictions and experimental data and the proposed ANFIS model can predict the methane conversion and product hydrocarbons (C۲+) selectivity under different operating conditions by high accuracy.

Keywords:

Oxidative Coupling of Methane , Neuro Fuzzy , Modeling , Conversion , Selectivity

Authors

Maryam Sadi

Research Institute of Petroleum Industry

Jafar Sadeghzadeh Ahari

Research Institute of Petroleum Industry

Saeed Zarrinpashne

Research Institute of Petroleum Industry

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  • Fang X., Li S., Gu J., and Yang D., “Preparation ...
  • Fang X., Li S., Lin J., and Chu Y., “Oxidative ...
  • Wang D. J., Rosynek M. P., and Lunsford J. H., ...
  • Chua Y. T., Mohamed A. R., and Bhatia S., “Process ...
  • Wang J., Chou L., Zhang B., Song H., et al., ...
  • Ji S., Xiao T., Li S., Xu C., et al., ...
  • Palermo A., Vazquez J. P. H., Lee A. F., Tikhov ...
  • Ji Sh., Li Sh., Liu Y., Gao L., et al., ...
  • Chou L., Cai Y., Zhang B., Niu J., et al., ...
  • Sadeghzadeh Ahari J., Ahmadi R., Mikami H., Inazu K., et ...
  • Liu Y., Liu X., Xue J., Hou R., et al., ...
  • Kamali Shahri S. M. and Alavi S. M., “Kinetic Studies ...
  • Daneshpayeh M., Khodadadi A., Mostoufi N., Mortazavi Y., et al., ...
  • Chou L., Cai Y., Zhang B., Niu J., et al., ...
  • Zhou Q., Wu Y., Chan C. W., and Tontiwachwuthikul P., ...
  • Civelekoglu G., Yigit N. O., Diamadopoulos E., and Kitis M., ...
  • Sedighi M., Keyvanloo K., and Towfighi J., “Modeling of Thermal ...
  • Sargolzaei J. and Kianifar A., “Neuro Fuzzy Modeling Tools for ...
  • Khazraeea S. M., and Jahanmiri A. H., “Composition Estimation of ...
  • Sua X., Zenga G., Huang G., Lic J., et al., ...
  • Khajeh A., Modarress H., and Rezaee B., “Application of Adaptive ...
  • Khajeh A. and Modarress H., “Prediction of Solubility of Gases ...
  • Savkovic Stevanovic J., “A Neural-Fuzzy Controller for Product Composition Control ...
  • Entchev E. and Yang L., “Application of Adaptive Neuro Fuzzy ...
  • Vassilopoulos A. P. and Bedi R., “Adaptive Neuro Fuzzy Inference ...
  • Shabanian M. and Montazeri M., “A Neuro-Fuzzy Online Fault Detection ...
  • Blázqueza L. F., De Miguelb L. J., Allera F., and ...
  • Zahedi Abghari S., and Sadi M., “Applica-tion of Adaptive Neuro-Fuzzy ...
  • Sadeghzadeh Ahari J., Sadeghi M. T., and Zarrinpashne S., “Optimization ...
  • Hagen J., Industrial Catalysis (۲nd Edition), Weinheim, Wiley, ۲۰۰۶. ...
  • Jang J. S. R., “Neuro Fuzzy Modeling: Architectures, Analyses, and ...
  • Lukas Y. L., “Adaptive Neuro Fuzzy Inference System: An Instant ...
  • Guner E., “Adaptive Neuro Fuzzy Infer-ence System Applications in Chemical ...
  • Nauck D., Klawonn F., and Kruse R., “Foundation of Neuro ...
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