Original Paper

Let a general plant model be given by a random process

Where we have a noise

  • Autocovariance/autocorrelation

And a disturbance,

  • Autocovariance/autocorrelation

Both are represented by a zero mean white Gaussian signal, and are uncorrelated.

Kalman Gain Covariance Matrix of the Estimation Error

Combining these gives us the covariance update equation.



Kalman Filter in Continuous Time Discrete Time Kalman Filter


Covariance Matrix of the Estimation Error LQR and Kalman Filter Duality Colored Noise in Kalman Filter Kalman Filter for Time Varying Models

Covariance Update Equation for Kalman Filter

We therefore get the following covariance update equation (Covariance Matrix):


Here, we encounter a problem: L is time-varying. We solve this by using the following Transition Matrix

Where can be used to recover the solution


Giving us the final equation for

Where and is defined at the top of this document.