A new approach to linear filtering and prediction problems

RE Kalman - 1960 - asmedigitalcollection.asme.org
1960asmedigitalcollection.asme.org
The classical filtering and prediction problem is re-examined using the Bode-Shannon
representation of random processes and the “state-transition” method of analysis of dynamic
systems. New results are:(1) The formulation and methods of solution of the problem apply
without modification to stationary and nonstationary statistics and to growing-memory and
infinite-memory filters.(2) A nonlinear difference (or differential) equation is derived for the
covariance matrix of the optimal estimation error. From the solution of this equation the co�…
The classical filtering and prediction problem is re-examined using the Bode-Shannon representation of random processes and the “state-transition” method of analysis of dynamic systems. New results are: (1) The formulation and methods of solution of the problem apply without modification to stationary and nonstationary statistics and to growing-memory and infinite-memory filters. (2) A nonlinear difference (or differential) equation is derived for the covariance matrix of the optimal estimation error. From the solution of this equation the co-efficients of the difference (or differential) equation of the optimal linear filter are obtained without further calculations. (3) The filtering problem is shown to be the dual of the noise-free regulator problem. The new method developed here is applied to two well-known problems, confirming and extending earlier results. The discussion is largely self-contained and proceeds from first principles; basic concepts of the theory of random processes are reviewed in the Appendix.
The American Society of Mechanical Engineers
Showing the best result for this search. See all results