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Prepared By: Kevin Meier Alok Desai
Using the Kalman Filter to Estimate the state of a Maneuvering Aircraft ECEn -670 Stochastic Process Prepared By: Kevin Meier Alok Desai Instructor: Dr. Brian Mazzeo 11/29/2011 ECEn -670 Stochastic Process
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ECEn -670 Stochastic Process
Outlines Kalman filter Correlation Between the Process and Measurement Noise Application of KF for estimating Bearing and Range Simulation results 11/29/2011 ECEn -670 Stochastic Process
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ECEn -670 Stochastic Process
Kalman Filter Purpose: It is to use measurements observed over time, containing noise (random variations) and other inaccuracies, and produce values that tend to be closer to the true values of the measurements and their associated calculated values. When system model and measurement model equations are linear, then to estimate the state vector recursively. 11/29/2011 ECEn -670 Stochastic Process
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ECEn -670 Stochastic Process
Estimating States System dynamic model: Measurement model: 11/29/2011 ECEn -670 Stochastic Process
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Kalman Filter Estimation
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ECEn -670 Stochastic Process
Kalman Filter (Cont.) State estimation: Error covariance (a priori): Kalman Gain: Error covariance update (a posteriori): State estimate update: 11/29/2011 ECEn -670 Stochastic Process
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Correlation Between the Process and Measurement Noise
Correlation be given by Prediction equation remain unchanged. Measurement equation 11/29/2011 ECEn -670 Stochastic Process
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Range and Bearing Estimation
Radars are used to track aircraft. 11/29/2011 ECEn -670 Stochastic Process
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ECEn -670 Stochastic Process
Range = ct/2 11/29/2011 ECEn -670 Stochastic Process
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How the Kalman filter applies to Radar
Radar is used to track the state of an aircraft The state is the range, range rate, bearing and bearing rate 11/29/2011 ECEn -670 Stochastic Process
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How to model the aircraft with no acceleration data
Model the acceleration as a uniform random variable using the singer model. Where the acceleration is correlated from sample to sample 11/29/2011 ECEn -670 Stochastic Process
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How the Kalman filter applies to Radar
The radar uses sensors to measure the Range and Bearing angle. In this process there is sensor measurement noise 11/29/2011 ECEn -670 Stochastic Process
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How the Kalman filter applies to Radar
The process and measurement noise are zero-mean white Gaussian random variables 11/29/2011 ECEn -670 Stochastic Process
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ECEn -670 Stochastic Process
11/29/2011 ECEn -670 Stochastic Process
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Error Covariance for Range
Error covariance (One prediction) Error covariance (Multiple prediction) 11/29/2011 ECEn -670 Stochastic Process
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Error Covariance of Bearing
Error covariance (One prediction) Error covariance (Multiple prediction) 11/29/2011 ECEn -670 Stochastic Process
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ECEn -670 Stochastic Process
Bearing Angle Bearing Angle (One prediction) Bearing Angle (Multiple prediction) 11/29/2011 ECEn -670 Stochastic Process
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Vehicle Range Vehicle Range (One Prediction)
Vehicle Range (Multiple Prediction) 11/29/2011 ECEn -670 Stochastic Process
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ECEn -670 Stochastic Process
Range Error Range Error (One Prediction) c Vehicle Range (Multiple Prediction) 11/29/2011 ECEn -670 Stochastic Process
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Bearing Rate Bearing ( one prediction ) Bearing (multiple prediction )
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Range Range (One prediction ) Range (Multiple prediction ) 11/29/2011
ECEn -670 Stochastic Process
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Range Error and Range Rate with correlated noise
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ECEn -670 Stochastic Process
Questions?? Thank you ! 11/29/2011 ECEn -670 Stochastic Process
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