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Multi-layer neural networks and pattern recognition for pump fault diagnosis

Multi-layer neural networks and pattern recognition for pump fault diagnosis
Multi-layer neural networks and pattern recognition for pump fault diagnosis
0080440363
593-598
Elsevier
Wang, L.
c50767b1-7474-4094-9b06-4fe64e9fe362
Hope, A.D.
3b5d5391-a610-4f0e-b3ad-c5515950d0cf
Sadek, H.
48436ed2-87b9-4c7c-979a-d78a5724ece6
Starr, Andrew G.
Rao, B.K.N.
Wang, L.
c50767b1-7474-4094-9b06-4fe64e9fe362
Hope, A.D.
3b5d5391-a610-4f0e-b3ad-c5515950d0cf
Sadek, H.
48436ed2-87b9-4c7c-979a-d78a5724ece6
Starr, Andrew G.
Rao, B.K.N.

Wang, L., Hope, A.D. and Sadek, H. (2001) Multi-layer neural networks and pattern recognition for pump fault diagnosis. Starr, Andrew G. and Rao, B.K.N. (eds.) In Condition Monitoring and Diagnostic Engineering Management: Proceedings of the 14th International Congress. Elsevier. pp. 593-598 .

Record type: Conference or Workshop Item (Paper)

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More information

Published date: 2001
Venue - Dates: 14th International Congress on Condition Monitoring and Diagnostic Engineering Management, Manchester, UK, 2001-09-04 - 2001-09-06

Identifiers

Local EPrints ID: 21958
URI: http://eprints.soton.ac.uk/id/eprint/21958
ISBN: 0080440363
PURE UUID: 23c498b5-461c-4d52-b6b1-d61e0e469656
ORCID for L. Wang: ORCID iD orcid.org/0000-0002-2894-6784

Catalogue record

Date deposited: 06 Mar 2007
Last modified: 05 Jan 2024 02:39

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Contributors

Author: L. Wang ORCID iD
Author: A.D. Hope
Author: H. Sadek
Editor: Andrew G. Starr
Editor: B.K.N. Rao

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