Enhanced Effect of an External Electric Field on NHBH Dehydrogenation: an AIMD Study for Thermolysis.

ACS Omega

National Key Laboratory of Shock Wave and Detonation Physics, Institute of Fluid Physics, China Academy of Engineering Physics, Mianyang 621900 Sichuan, China.

Published: June 2022

How to improve the dehydrogenation properties of ammonia borane (AB, NHBH) is always a challenge for its practical application in hydrogen storage. In this study, we reveal the enhanced effect of an external electric field ( ) on AB dehydrogenation by means of the ab initio molecular dynamics method. The molecular rotation induced by an electrostatic force can facilitate the formation of the H-N···B-H framework, which would aggregate into poly-BN species and further suppress the generation of the volatile byproducts. Meanwhile, the dihydrogen bond (N-H···H-B) is favorably formed under , and the interaction between relevant H atoms is enhanced, leading to a faster H liberation. Correspondingly, the apparent activation energy for AB dissociation is greatly reduced from 18.42 to around 15 kcal·mol with the application of an electric field, while that for H formation decreases from 20.4 to about 16 kcal·mol. In the whole process, the cleavage of the B-H bond is more favorable than that of the N-H bond, no matter whether the application of . Our results give a deep insight into a positive effect of an electric field on AB dehydrogenation, which would provide an important inspiration for hydrogen storage in industry applications.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9219047PMC
http://dx.doi.org/10.1021/acsomega.2c02401DOI Listing

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