4.4 Article

A note on optimal systems of certain low-dimensional Lie algebras

Publisher

WALTER DE GRUYTER GMBH
DOI: 10.1515/ijnsns-2017-0181

Keywords

isomorphic Lie algebras; Lie algebra classification; normalizer; optimal system

Funding

  1. University Grant Commission [F. 30-105/2016 (SA-II)]

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This study reconsiders the optimal classifications of Lie algebras of some well-known equations under their group of inner automorphism, demonstrating explicit isomorphism between Lie algebras and sub-algebras that have already been classified. The use of such isomorphism proves beneficial for classifying Lie algebras with dimension <= 4, utilizing previously available classifications. Additionally, examples of Lie algebras are considered for explicit isomorphism, further enhancing the understanding of their classifications.
Optimal classifications of Lie algebras of some well-known equations under their group of inner automorphism are re-considered. By writing vector fields of some known Lie algebras in the abstract format, we have proved that there exist explicit isomorphism between Lie algebras and sub-algebras which have already been classified. The isomorphism between Lie algebras is useful in the sense that the classifications of sub-algebras of dimension <= 4 have previously been carried out in literature. These already available classifications can be used to write classification of any Lie algebra of dimension <= 4. As an example, the explicit isomorphism between Lie algebra of variant Boussinesq system and sub-algebra A(3,5)(1/2) is proved, and subsequently, optimal sub-algebras up to dimension four are obtained. Besides this, some other examples of Lie algebras are also considered for explicit isomorphism.

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