4.7 Article

Green ammonia to Hydrogen: Reduction and oxidation catalytic processes

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CHEMICAL ENGINEERING JOURNAL
卷 474, 期 -, 页码 -

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ELSEVIER SCIENCE SA
DOI: 10.1016/j.cej.2023.145661

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Ammonia decomposition; Hydrogen production; Reforming; Biomass; Machine Learning

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Green ammonia, produced at ambient conditions, has gained attention as a carrier for hydrogen. This study examines various routes to produce hydrogen from ammonia and reviews the technical challenges. The role of machine learning and artificial intelligence in ammonia decomposition is highlighted.
Green ammonia, produced at ambient conditions, has received significant attention as a carrier of hydrogen for energy storage and transport. Reduction and oxidation catalytic decomposition of ammonia at atmospheric pressure and low temperatures suggests remarkable achievements over thermochemical processes requiring elevated pressures and temperatures. The present work examines various routes to produce hydrogen from ammonia, including those that employ fossil and non-fossil sources (biomass and ammonia), along with current procedures for ammonia decomposition and technical challenges. Ammonia decomposition methods, including catalytic membranes reactors, microchannel reactors, thermochemical energy, non-thermal plasma, solar-driven decomposition, isotope analysis, and electrolysis, have been investigated as potential techniques for producing hydrogen. In addition, ammonia decomposition methods applied with catalysts and hydrogen carrier challenges are also reviewed. Technical challenges and recommendations are provided to evaluate the potential usage of ammonia in the future energy sector. The role of machine learning and artificial intelligence in ammonia decomposition is highlighted, which enables the simulation of the reaction mechanisms to create novel, highperformance catalysts to minimize trial and error approaches in the ammonia energy sector.

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