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AAAI Fall Symposium: Artificial Intelligence for Prognostics
2007
2007
2007
Keyphrases
Publications
2007
Michael J. Roemer
,
Carl S. Byington
,
Michael S. Schoeller
Selected Artificial Intelligence Methods Applied within an Integrated Vehicle Health Management System.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Jie Gu
,
Donald Barker
,
Michael G. Pecht
Uncertainty Assessment of Prognostics of Electronics Subject to Random Vibration.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Piero P. Bonissone
,
Naresh Iyer
Soft Computing Applications to Prognostics and Health Management (PHM): Leveraging Field Data and Domain Knowledge.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Artificial Intelligence for Prognostics, Papers from the 2007 AAAI Fall Symposium, Arlington, Virginia, USA, November 9-11, 2007.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Shunfeng Cheng
,
Michael G. Pecht
Multivariate State Estimation Technique for Remaining Useful Life Prediction of Electronic Products.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Asif Khalak
,
Kai Goebel
Health-Management Driven Control Reconfiguration Approach for Flight Vehicles.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Sachin Kumar
,
Michael G. Pecht
Health Monitoring of Electronic Products Using Symbolic Time Series Analysis.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Gautam Biswas
,
Sankaran Mahadevan
Multi-level Methods for Combined Diagnostics and Prognostics.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Dustin Garvey
,
J. Wesley Hines
Dynamic Prognoser Architecture via the Path Classification and Estimation (PACE) Model.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Abhinav Saxena
,
George J. Vachtsevanos
Optimum Feature Selection and Extraction for Fault Diagnosis and Prognosis.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Chris Drummond
Changing Failure Rates, Changing Costs: Choosing the Right Maintenance Policy.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Bhaskar Saha
,
Kai Goebel
,
Scott Poll
,
Jon Christophersen
A Bayesian Framework for Remaining Useful Life Estimation.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Artur Dubrawski
,
Michael Baysek
,
Shannon Mikus
,
Charles McDaniel
,
Bradley Mowry
,
Laurel Moyer
,
John Östlund
,
Norman K. Sondheimer
,
Timothy Stewart
Applying Outbreak Detection Algorithms to Prognostics.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Alexander Usynin
,
J. Wesley Hines
Uncertainty Management in Shock Models Applied to Prognostic Problems.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
James Kozlowski
,
Karl Reichard
,
Scott Laurin
Using Health Information to Reconfigure Platform Operation, Adjust Mission Goals and Extend the Life of the System.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Vadim Smelyanskiy
,
Serdar Uckun
,
Nancy J. Lybeck
,
Brogan Morton
,
Sean Marble
Dynamic CMG Model.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Vasilis A. Sotiris
,
Michael G. Pecht
Support Vector Prognostics Analysis of Electronic Products and Systems.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Mark Schwabacher
,
Kai Goebel
A Survey of Artificial Intelligence for Prognostics.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Ali Akoglu
,
Sonia Vohnout
,
Justin Judkins
FPGA Based Fault Detection, Isolation and Healing for Integrated Vehicle Health.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Liang Tang
,
Gregory J. Kacprzynski
,
Kai Goebel
,
Johan Reimann
,
Marcos E. Orchard
,
Abhinav Saxena
,
Bhaskar Saha
Prognostics in the Control Loop.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)
Sylvain Létourneau
,
Chunsheng Yang
,
Zhenkai Liu
On-Demand Regression to Improve Preciseness of Time to Failure Predictions.
AAAI Fall Symposium: Artificial Intelligence for Prognostics
(2007)