Global Conformal Symmetry in Scalar-Tensor Theories
INTERNATIONAL JOURNAL OF MODERN PHYSICS A(2024)
Univ Paris Saclay | Univ Talca
Abstract
We study a subclass of Horndeski gravity which has both global conformal and shift symmetries. Global symmetries are characterized by the presence of a conserved current which has been shown to be of particular importance for the integrability features of the theory at hand yielding numerous compact object solutions. We find the general conserved current associated to global conformal symmetry of Horndeski theories. We discuss some of its properties, how it can be conveniently broken by physically relevant terms and, show how it is related to that of shift symmetry when shift symmetry is present. Given our results, we consider a particular theory and demonstrate how the presence of symmetries provides integrability for the given black hole solution. We then find the charged extension of the solution thanks to the conformal invariance of the Maxwell action.
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Key words
Theories of gravity,conformal symmetry,Black Holes
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