lqed
Calculates the discrete Kalman estimator configuration based on a continuous cost function.
📝 Syntax
[L, P, Z, E] = LQED(A, G, C, Q, R, Ts)
📥 Input argument
A - State matrix: n x n matrix.
G - Defines a matrix linking the process noise to the states.
C - The output matrix, with dimensions (q x n), where q is the number of outputs.
Q - State-cost weighted matrix
R - Input-cost weighted matrix
N - Optional cross term matrix: 0 by default.
Ts - sample time: scalare.
📤 Output argument
L - Kalman gain matrix.
P - Solution of the Discrete Algebraic Riccati Equation.
E - Closed-loop pole locations
Z - Discrete estimator poles
📄 Description
[L, P, Z, E] = LQED(A, G, C, Q, R, Ts) Calculates the discrete Kalman gain matrix L to minimize the discrete estimation error, equivalent to the estimation error in the continuous system.
💡 Example
A = [10 1.2; 3.3 4];
B = [5 0; 0 6];
C = B;
D = [0,0;0,0];
R = [2,0;0,3];
Q = [5,0;0,4];
G = [6,0;0,7];
Ts = 0.004;
[L, P, Z, E] = lqed(A, G, C, Q, R, Ts)🔗 See also
🕔 History
1.0.0
initial version
Last updated
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