Knowledge Management for Large Scale Condition Based Maintenance

This presentation will review the use of knowledge management in the development and support of Condition Based Maintenance (CBM) systems for complex systems with particular emphasis on the experience of the development of the Fault Model for large commercial aircraft. The presentation is divided into four sections:

  1. Review of experience of building fault models and Central Maintenance Computer for large commercial aircraft.
  2. Review of the key functions and usage scenarios for a typical CBM Knowledge Management System
  3. Identification of criteria for evaluation of implementation alternatives

The presentation will conclude with a short discussion of future directions for CBM Knowledge Management Systems.

Speaker: Tim Felke, Honeywell

Tim Felke joined Honeywell in 1984 as a control systems analyst and was the manager for their Systems Analysis and Engineering Sciences department for several years. He was a principle author of the proposal for the Central Maintenance Computer for the Boeing 777 and then was a leader in its development. Since then he has been an Engineering Fellow for the diagnostic and knowledge management functions of the Aircraft Diagnostic and Maintenance Systems group. In this work he has published several papers and is the principle inventor or significant contributor on nearly a dozen patents. He holds a BS in Electrical Engineering from Arizona State University.

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notes This presentation will review the use of knowledge management in the development and support of Condition Based Maintenance (CBM) systems for complex systems with particular emphasis on the experience of the development of the Fault Model for large commercial aircraft. The presentation is divided into four sections: 1. Review of experience of building fault models and Central Maintenance Computer for large commercial aircraft. 2. Review of the key functions and usage scenarios for a typical CBM Knowledge Management System 3. Identification of criteria for evaluation of implementation alternatives The presentation will conclude with a short discussion of future directions for CBM Knowledge Management Systems. **Speaker: Tim Felke, Honeywell** Tim Felke joined Honeywell in 1984 as a control systems analyst and was the manager for their Systems Analysis and Engineering Sciences department for several years. He was a principle author of the proposal for the Central Maintenance Computer for the Boeing 777 and then was a leader in its development. Since then he has been an Engineering Fellow for the diagnostic and knowledge management functions of the Aircraft Diagnostic and Maintenance Systems group. In this work he has published several papers and is the principle inventor or significant contributor on nearly a dozen patents. He holds a BS in Electrical Engineering from Arizona State University.
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title Knowledge Management for Large Scale Condition Based Maintenance