The use of kalman filter and neural network methodologies in gas turbine performance diagnostics: A comparative study
- Author(s):
- Volponi, Allan J. ( A United Technologies Company )
- DePold, Hans
- Ganguli, Ranjan
- Daguang, Chen
- Publication title:
- A.S.M.E. paper
- Title of ser.:
- ASME Technical Paper : GT
- Ser. no.:
- 2000
- Pub. Year:
- 2000
- No.:
- 2000-GT-547
- Paper no.:
- 2000-GT-547
- Pub. info.:
- New York: American Society of Mechanical Engineers
- Language:
- English
- Call no.:
- A11800
- Type:
- Technical Paper
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