Optimal State Estimation

Chapter 8 - The Continuous-Time Kalman Filter

CHAPTER 8

The continuous-time Kalman filter

Our philosophy here will be to model phenomena with differential equations and then to form estimates of the physical quantities which also satisfy differential equations.

—Richard Bucy [Buc68, Chapter 1]



James Follin, A. G. Carlton, James Hanson, and Richard Bucy developed the continuous-time Kalman filter in unpublished work for the Johns Hopkins Applied Physics Lab in the late 1950s. Rudolph Kalman independently developed the discrete-time Kalman filter in 1960. In April 1960 Kalman and Bucy became aware of each other's work and collaborated on the publication of the continuous-time Kalman filter in [Kal61]. This filter is sometimes referred to as the Kalman-Bucy filter. Further historical notes are given in Appendix A.

The vast majority of Kalman filter applications are implemented in digital computers, so it may seem superfluous to discuss Kalman filtering for continuous-time measurements. However, there are still opportunities to implement Kalman filters in continuous time (i.e., in analog circuits) [Hug88]. Furthermore, the derivation of the continuous-time filter is instructive from a pedagogical point of view. Finally, steady-state continuous-time estimators can be analyzed using conventional frequency-domain concepts, which provides an advantage over discrete-time estimators [Bal87, Ste94]. In light of these factors, this chapter presents the continuous-time Kalman filter.

Our derivation of the continuous-time filter starts with the previously developed discrete-time filter from Chapter 5, and then takes the limit as the time step decreases to zero. Section 8.1 shows the relationship between continuous-time white noise and discrete-time white noise, which is the foundation for the derivation of the continuous-time Kalman filter. Section 8.2 derives the Kalman filter for the case of continuous-time system dynamics and continuous-time measurements. Section 8.3 shows some creative methods to solve the continuous-time Riccati equation, which is a key component of the continuous-time Kalman filter. Section 8.4 discusses the continuous-time Kalman filter for the cases of correlated process and measurement noise, and for colored measurement noise. Section 8.5 discusses the steady-state continuous-time Kalman filter, its relationship to the Wiener filter of Section 3.4, and its relationship to linear quadratic optimal control.

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