Comparative Study between Regression and Soft Computing Models to Maximize the Methane Storage Capacity of Anthracite-Based Adsorbents

Adsorbed natural gas (ANG) technology is a safe and low-cost approach for natural gas storage. Improving the volumetric adsorption capacity of adsorbents in the ANG tank can enhance the fuel density and make this technology cost-effective compared to other available CH4 storage approaches. For this...

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Main Authors: Mirzaei, S., Ahmadpour, A., Shahsavand, A., Rashidi, H., Arami-Niya, Arash
Format: Journal Article
Language:English
Published: AMER CHEMICAL SOC 2020
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/78452
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author Mirzaei, S.
Ahmadpour, A.
Shahsavand, A.
Rashidi, H.
Arami-Niya, Arash
author_facet Mirzaei, S.
Ahmadpour, A.
Shahsavand, A.
Rashidi, H.
Arami-Niya, Arash
author_sort Mirzaei, S.
building Curtin Institutional Repository
collection Online Access
description Adsorbed natural gas (ANG) technology is a safe and low-cost approach for natural gas storage. Improving the volumetric adsorption capacity of adsorbents in the ANG tank can enhance the fuel density and make this technology cost-effective compared to other available CH4 storage approaches. For this purpose, the present research focuses on maximizing CH4 uptake on low-cost and available anthracite-based carbon materials via experimental and analytical investigations. The effect of preparation variables of the chemical agent (KOH) impregnation ratio to the anthracite (2.6-4.3 g/g), activation temperature (666-834 °C), and retention time (39-140 min) on the specifications of the coal-based activated carbons (ACs) and their CH4 adsorption capacity were examined experimentally. The results were analyzed through empirical models, including response surface methodology (RSM), our in-house developed models, namely, regularization networks (RN) and adaptive neuro-fuzzy interface systems. The statistical assessment revealed that all three established models could effectively predict the methane adsorption capacity of the carbon samples based on their preparation conditions. The superior performance of our in-house RN is dedicated to its robust theoretical backbone in the regularization theory. Finally, the carbon sample prepared under the optimized preparation conditions, based on the RSM and genetic algorithm, showed the highest CH4 uptake of 175 cm3(STP)/cm3. Based on the authors' knowledge, the volumetric CH4 capacity of the optimized AC is one of the highest values reported in the literature among different classes of the adsorbent.
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spelling curtin-20.500.11937-784522020-06-26T00:35:37Z Comparative Study between Regression and Soft Computing Models to Maximize the Methane Storage Capacity of Anthracite-Based Adsorbents Mirzaei, S. Ahmadpour, A. Shahsavand, A. Rashidi, H. Arami-Niya, Arash Science & Technology Technology Engineering, Chemical Engineering METAL-ORGANIC FRAMEWORKS ACTIVATED CARBON NEURAL-NETWORKS SURFACE-AREA BIODIESEL PRODUCTION METHYLENE-BLUE PORE-SIZE OPTIMIZATION ADSORPTION MICROPOROSITY Adsorbed natural gas (ANG) technology is a safe and low-cost approach for natural gas storage. Improving the volumetric adsorption capacity of adsorbents in the ANG tank can enhance the fuel density and make this technology cost-effective compared to other available CH4 storage approaches. For this purpose, the present research focuses on maximizing CH4 uptake on low-cost and available anthracite-based carbon materials via experimental and analytical investigations. The effect of preparation variables of the chemical agent (KOH) impregnation ratio to the anthracite (2.6-4.3 g/g), activation temperature (666-834 °C), and retention time (39-140 min) on the specifications of the coal-based activated carbons (ACs) and their CH4 adsorption capacity were examined experimentally. The results were analyzed through empirical models, including response surface methodology (RSM), our in-house developed models, namely, regularization networks (RN) and adaptive neuro-fuzzy interface systems. The statistical assessment revealed that all three established models could effectively predict the methane adsorption capacity of the carbon samples based on their preparation conditions. The superior performance of our in-house RN is dedicated to its robust theoretical backbone in the regularization theory. Finally, the carbon sample prepared under the optimized preparation conditions, based on the RSM and genetic algorithm, showed the highest CH4 uptake of 175 cm3(STP)/cm3. Based on the authors' knowledge, the volumetric CH4 capacity of the optimized AC is one of the highest values reported in the literature among different classes of the adsorbent. 2020 Journal Article http://hdl.handle.net/20.500.11937/78452 10.1021/acs.iecr.9b04943 English AMER CHEMICAL SOC restricted
spellingShingle Science & Technology
Technology
Engineering, Chemical
Engineering
METAL-ORGANIC FRAMEWORKS
ACTIVATED CARBON
NEURAL-NETWORKS
SURFACE-AREA
BIODIESEL PRODUCTION
METHYLENE-BLUE
PORE-SIZE
OPTIMIZATION
ADSORPTION
MICROPOROSITY
Mirzaei, S.
Ahmadpour, A.
Shahsavand, A.
Rashidi, H.
Arami-Niya, Arash
Comparative Study between Regression and Soft Computing Models to Maximize the Methane Storage Capacity of Anthracite-Based Adsorbents
title Comparative Study between Regression and Soft Computing Models to Maximize the Methane Storage Capacity of Anthracite-Based Adsorbents
title_full Comparative Study between Regression and Soft Computing Models to Maximize the Methane Storage Capacity of Anthracite-Based Adsorbents
title_fullStr Comparative Study between Regression and Soft Computing Models to Maximize the Methane Storage Capacity of Anthracite-Based Adsorbents
title_full_unstemmed Comparative Study between Regression and Soft Computing Models to Maximize the Methane Storage Capacity of Anthracite-Based Adsorbents
title_short Comparative Study between Regression and Soft Computing Models to Maximize the Methane Storage Capacity of Anthracite-Based Adsorbents
title_sort comparative study between regression and soft computing models to maximize the methane storage capacity of anthracite-based adsorbents
topic Science & Technology
Technology
Engineering, Chemical
Engineering
METAL-ORGANIC FRAMEWORKS
ACTIVATED CARBON
NEURAL-NETWORKS
SURFACE-AREA
BIODIESEL PRODUCTION
METHYLENE-BLUE
PORE-SIZE
OPTIMIZATION
ADSORPTION
MICROPOROSITY
url http://hdl.handle.net/20.500.11937/78452