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A novel particle filter parameter prediction scheme for failure prognosis
- Source :
- ACC
- Publication Year :
- 2014
- Publisher :
- IEEE, 2014.
-
Abstract
- Particle filters are well-known as powerful tools for accomplishing state and parameter estimation and their propagation prediction in nonlinear dynamical systems. Their ability to include system model parameters as part of the system state vector is among one of the key factors for their use in prognostics. Estimation of system parameters along with the states produces an updated model that can be used for long-term prediction. This paper presents a novel method for uncertainty management in long-term prediction using particle filters. In our proposed approach, the observation prediction concept is applied in order to extend the system observation profiles (as time series) for future. Next, particles are propagated to future time instants according to the resampling algorithm instead of considering constant weights for their propagation in the prediction step. The uncertainty in the long-term prediction of system states and parameters are managed by utilizing fixed-lag dynamic linear models. The observation prediction is achieved along with an outer adjustment loop to change the observation injection window adaptively based on the Mahalanobis distance criteria. The proposed approach is applied to predict the health of a gas turbine system that is affected by the degradation in the system health parameters. 2014 American Automatic Control Council. Qatar National Research Fund Scopus
- Subjects :
- Engineering
Target tracking
Kalman-filtering
System model
Control theory
Resampling
Mahalanobis distances
Signal filtering and prediction
Resampling algorithms
State and parameter estimations
Mahalanobis distance
Propagation prediction
Estimation theory
business.industry
Linear model
Identification (control systems)
State vector
Monte Carlo methods
Distributed computer systems
Long-term prediction
Prognostics
Uncertainty management
Dynamic linear model
Nonlinear dynamical systems
Particle filter
business
Estimation
Forecasting
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- 2014 American Control Conference
- Accession number :
- edsair.doi.dedup.....b6af0529276783426a51602a21655df7
- Full Text :
- https://doi.org/10.1109/acc.2014.6859021