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On the Geroch-Traschen class of metrics

On the Geroch-Traschen class of metrics
On the Geroch-Traschen class of metrics
We compare two approaches to semi-Riemannian metrics of low regularity. The maximally 'reasonable' distributional setting of Geroch and Traschen is shown to be consistently contained in the more general setting of nonlinear distributional geometry in the sense of Colombeau
0264-9381
1-19
Steinbauer, R.
03564261-185d-4e1d-97ed-a7633d552a34
Vickers, J.A.
719cd73f-c462-417d-a341-0b042db88634
Steinbauer, R.
03564261-185d-4e1d-97ed-a7633d552a34
Vickers, J.A.
719cd73f-c462-417d-a341-0b042db88634

Steinbauer, R. and Vickers, J.A. (2009) On the Geroch-Traschen class of metrics. Classical and Quantum Gravity, 26 (65001), 1-19. (doi:10.1088/0264-9381/26/6/065001).

Record type: Article

Abstract

We compare two approaches to semi-Riemannian metrics of low regularity. The maximally 'reasonable' distributional setting of Geroch and Traschen is shown to be consistently contained in the more general setting of nonlinear distributional geometry in the sense of Colombeau

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Submitted date: 14 November 2008
Published date: 18 February 2009
Organisations: Mathematics

Identifiers

Local EPrints ID: 66772
URI: http://eprints.soton.ac.uk/id/eprint/66772
ISSN: 0264-9381
PURE UUID: 98d94491-4701-4d33-94c2-bbc0e29bc774
ORCID for J.A. Vickers: ORCID iD orcid.org/0000-0002-1531-6273

Catalogue record

Date deposited: 20 Jul 2009
Last modified: 14 Mar 2024 02:32

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Contributors

Author: R. Steinbauer
Author: J.A. Vickers ORCID iD

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