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Application of Acoustic Emission Techniques and Artificial Neural Networks to Partial Discharge Classification

Application of Acoustic Emission Techniques and Artificial Neural Networks to Partial Discharge Classification
Application of Acoustic Emission Techniques and Artificial Neural Networks to Partial Discharge Classification
0-7803-7337-5
119-23
Tian, Y.
2055a72a-f579-48b9-a0e6-d59b0682bbd2
Lewin, P.L.
78b4fc49-1cb3-4db9-ba90-3ae70c0f639e
Davies, A.E.
56d95222-b259-494a-92e9-68b090ec0dcd
Sutton, S.J.
571c7136-1eb6-44e1-8979-ca0829469a6b
Swingler, S.G.
f9fbe599-7685-46e8-9f11-55cbd40e2933
Tian, Y.
2055a72a-f579-48b9-a0e6-d59b0682bbd2
Lewin, P.L.
78b4fc49-1cb3-4db9-ba90-3ae70c0f639e
Davies, A.E.
56d95222-b259-494a-92e9-68b090ec0dcd
Sutton, S.J.
571c7136-1eb6-44e1-8979-ca0829469a6b
Swingler, S.G.
f9fbe599-7685-46e8-9f11-55cbd40e2933

Tian, Y., Lewin, P.L., Davies, A.E., Sutton, S.J. and Swingler, S.G. (2002) Application of Acoustic Emission Techniques and Artificial Neural Networks to Partial Discharge Classification. Conference Record of the 2002 IEEE International Symposium on Electrical Insulation. pp. 119-23 .

Record type: Conference or Workshop Item (Other)

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More information

Published date: April 2002
Venue - Dates: Conference Record of the 2002 IEEE International Symposium on Electrical Insulation, 2002-03-31
Organisations: Electronics & Computer Science

Identifiers

Local EPrints ID: 256508
URI: http://eprints.soton.ac.uk/id/eprint/256508
ISBN: 0-7803-7337-5
PURE UUID: 60783e2b-248b-463a-bfc8-cba8846189fd
ORCID for P.L. Lewin: ORCID iD orcid.org/0000-0002-3299-2556

Catalogue record

Date deposited: 26 Jun 2003
Last modified: 08 Jan 2022 02:37

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Contributors

Author: Y. Tian
Author: P.L. Lewin ORCID iD
Author: A.E. Davies
Author: S.J. Sutton
Author: S.G. Swingler

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