A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis
Green ammonia synthesis is an important industrial chemical process, which is widely applied in fields such as fertilizers, petrochemicals and fuel cells. In order to improve green ammonia production and reduce energy consumption, this article focuses on a deeper understanding of the kinetic behavio...
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sg-ntu-dr.10356-1792372024-07-23T05:37:39Z A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis Deng, Zhihua Zhang, Lan Miao, Bin Liu, Qinglin Pan, Zehua Zhang, Weike Ding, Ovi Lian Chan, Siew Hwa School of Mechanical and Aerospace Engineering Energy Research Institute @ NTU (ERI@N) Engineering Green ammonia Ammonia synthesis reactor Green ammonia synthesis is an important industrial chemical process, which is widely applied in fields such as fertilizers, petrochemicals and fuel cells. In order to improve green ammonia production and reduce energy consumption, this article focuses on a deeper understanding of the kinetic behavior of ammonia synthesis process system. To this end, a physics-informed sparse identification modeling and optimization framework for ammonia synthesis plant is proposed in this paper, which highlights in-depth exploration of reaction mechanisms, kinetic equations, and optimization methods. The proposed method can deal with the time series information generated by the complicated ammonia synthesis process system with noise. More importantly, the proposed method is found to have distinctive interpretability that from the parameters of differential equation governing the observable data can be deduced. A bald eagle search algorithm is used to solve the maximum yield problem of green ammonia, which can obtain the optimal reactor length and the maximum ammonia profit under physical limitation conditions. The simulation results illustrated that the proposed optimization method was highly competitive with other state-of-art global optimization methods. Finally, the effectiveness and robustness of the proposed method have been demonstrated on ammonia synthesis plant by achieving good and competitive model interpretation and accuracy. National Research Foundation (NRF) Singapore Maritime Institute (SMI) The authors extend their appreciation to the Singapore Maritime Institute, China-Singapore International Joint Research Institute Research Foundation, National Research Foundation (Singapore), and Science and Technology and Innovation Commission of Shenzhen Municipality from China for funding this research work through the project numbers (SMI-2023-MTP-02, 204-A023001, U2102d2005 and GJHZ20220913143009017). 2024-07-23T05:37:39Z 2024-07-23T05:37:39Z 2024 Journal Article Deng, Z., Zhang, L., Miao, B., Liu, Q., Pan, Z., Zhang, W., Ding, O. L. & Chan, S. H. (2024). A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis. Energy Conversion and Management, 311, 118429-. https://dx.doi.org/10.1016/j.enconman.2024.118429 0196-8904 https://hdl.handle.net/10356/179237 10.1016/j.enconman.2024.118429 2-s2.0-85192714594 311 118429 en SMI-2023-MTP-02 204-A023001 U2102d2005 Energy Conversion and Management © 2024 Elsevier Ltd. All rights reserved. |
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Engineering Green ammonia Ammonia synthesis reactor Deng, Zhihua Zhang, Lan Miao, Bin Liu, Qinglin Pan, Zehua Zhang, Weike Ding, Ovi Lian Chan, Siew Hwa A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis |
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Green ammonia synthesis is an important industrial chemical process, which is widely applied in fields such as fertilizers, petrochemicals and fuel cells. In order to improve green ammonia production and reduce energy consumption, this article focuses on a deeper understanding of the kinetic behavior of ammonia synthesis process system. To this end, a physics-informed sparse identification modeling and optimization framework for ammonia synthesis plant is proposed in this paper, which highlights in-depth exploration of reaction mechanisms, kinetic equations, and optimization methods. The proposed method can deal with the time series information generated by the complicated ammonia synthesis process system with noise. More importantly, the proposed method is found to have distinctive interpretability that from the parameters of differential equation governing the observable data can be deduced. A bald eagle search algorithm is used to solve the maximum yield problem of green ammonia, which can obtain the optimal reactor length and the maximum ammonia profit under physical limitation conditions. The simulation results illustrated that the proposed optimization method was highly competitive with other state-of-art global optimization methods. Finally, the effectiveness and robustness of the proposed method have been demonstrated on ammonia synthesis plant by achieving good and competitive model interpretation and accuracy. |
author2 |
School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Deng, Zhihua Zhang, Lan Miao, Bin Liu, Qinglin Pan, Zehua Zhang, Weike Ding, Ovi Lian Chan, Siew Hwa |
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Article |
author |
Deng, Zhihua Zhang, Lan Miao, Bin Liu, Qinglin Pan, Zehua Zhang, Weike Ding, Ovi Lian Chan, Siew Hwa |
author_sort |
Deng, Zhihua |
title |
A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis |
title_short |
A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis |
title_full |
A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis |
title_fullStr |
A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis |
title_full_unstemmed |
A novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis |
title_sort |
novel combination of machine learning and intelligent optimization algorithm for modeling and optimization of green ammonia synthesis |
publishDate |
2024 |
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https://hdl.handle.net/10356/179237 |
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1806059759107833856 |