Abstract:
In electrical railway systems there is often a need of detecting or/and predicting harmonic signals contained in measurement data for vehicle control or monitoring purpos...Show MoreMetadata
Abstract:
In electrical railway systems there is often a need of detecting or/and predicting harmonic signals contained in measurement data for vehicle control or monitoring purpose. An efficient on-line estimation method for such applications is the Kalman filter technique. However, the performance of a standard recursive Kalman algorithm is strongly dependent on the a priori information of the process and measurement noise which is either unknown or is known only approximately in practical situations. Furthermore, a Kalman filter often suffers from the problem of "dropping off" and loses then the ability to match abrupt parameter changes. In this paper an adaptive Kalman filter based on correlation analysis is proposed to help overcome these problems. The modelling and estimation technique is described in the paper. Simulation results using measured vehicle line current demonstrate the effectiveness of the proposed method.
Published in: 8th International Conference on Harmonics and Quality of Power. Proceedings (Cat. No.98EX227)
Date of Conference: 14-16 October 1998
Date Added to IEEE Xplore: 06 August 2002
Print ISBN:0-7803-5105-3
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- IEEE Keywords
- Index Terms
- Kalman Filter ,
- Adaptive Filter ,
- Adaptive Kalman Filter ,
- Abrupt Changes ,
- Measurement Noise ,
- Control Purposes ,
- Practical Situations ,
- Recursive Algorithm ,
- Drop Off ,
- Line Current ,
- Process Function ,
- State Variables ,
- Static Conditions ,
- Correlation Function ,
- Innovation Process ,
- Error Covariance ,
- Standard Filter ,
- Harmonic Components ,
- Error Covariance Matrix ,
- Kalman Gain ,
- Standard Kalman Filter ,
- Generalized Likelihood Ratio ,
- Kalman Filter Algorithm ,
- One-step Prediction ,
- Large Covariance
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Kalman Filter ,
- Adaptive Filter ,
- Adaptive Kalman Filter ,
- Abrupt Changes ,
- Measurement Noise ,
- Control Purposes ,
- Practical Situations ,
- Recursive Algorithm ,
- Drop Off ,
- Line Current ,
- Process Function ,
- State Variables ,
- Static Conditions ,
- Correlation Function ,
- Innovation Process ,
- Error Covariance ,
- Standard Filter ,
- Harmonic Components ,
- Error Covariance Matrix ,
- Kalman Gain ,
- Standard Kalman Filter ,
- Generalized Likelihood Ratio ,
- Kalman Filter Algorithm ,
- One-step Prediction ,
- Large Covariance