Title :
Model-Based Prognostics With Concurrent Damage Progression Processes
Author :
Daigle, Matthew J. ; Goebel, Kai
Author_Institution :
NASA Ames Res. Center, Moffett Field, CA, USA
Abstract :
Model-based prognostics approaches rely on physics-based models that describe the behavior of systems and their components. These models must account for the several different damage processes occurring simultaneously within a component. Each of these damage and wear processes contributes to the overall component degradation. We develop a model-based prognostics methodology that consists of a joint state-parameter estimation problem, in which the state of a system along with parameters describing the damage progression are estimated, followed by a prediction problem, in which the joint state-parameter estimate is propagated forward in time to predict end of life and remaining useful life. The state-parameter estimate is computed using a particle filter and is represented as a probability distribution, allowing the prediction of end of life and remaining useful life within a probabilistic framework that supports uncertainty management. We also develop a novel variance control algorithm that maintains an uncertainty bound around the unknown parameters to limit the amount of estimation uncertainty and, consequently, reduce prediction uncertainty. We construct a detailed physics-based model of a centrifugal pump that includes damage progression models, to which we apply our model-based prognostics algorithm. We illustrate the operation of the prognostic solution with a number of simulation-based experiments and demonstrate the performance of the approach when multiple damage mechanisms are active.
Keywords :
condition monitoring; fault diagnosis; pumps; remaining life assessment; statistical distributions; centrifugal pump; component degradation; concurrent damage progression processes; damage progression models; end of life prediction; model-based prognostics; physics-based model; probability distribution; remaining useful life; state parameter estimation; variance control algorithm; Estimation; Friction; Impellers; Joints; Mathematical model; Torque; Vectors; Centrifugal pumps; model-based prognostics; particle filters; variance control;
Journal_Title :
Systems, Man, and Cybernetics: Systems, IEEE Transactions on
DOI :
10.1109/TSMCA.2012.2207109