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A hybrid prognostic methodology for tidal turbine gearboxes
Faris Elasha
*
, David Mba
, Michael Togneri
, Ian Masters
, Joao Amaral Teixeira
*
Corresponding author for this work
Coventry University
London South Bank University
Swansea University
Cranfield University
Research output
:
Contribution to journal
›
Article
›
peer-review
28
Citations (SciVal)
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Engineering
Gearbox
100%
Turbine
100%
Blade Element Momentum Theory
20%
Mechanical Failure
20%
Failure Rate
20%
Compressed Air Motors
20%
Greenhouse Gas
20%
Tidal Energy
20%