From 0ab91a6e9374f190c049a5d8ea1319b9b37529c1 Mon Sep 17 00:00:00 2001 From: cnlohr Date: Sun, 15 Apr 2018 17:43:12 -0400 Subject: Move things into attic and update Makefile to do dependnencies. --- attic/dave/kalman_filter.c | 72 ++++++++++++++++++++++++++++++++++++++++++++++ 1 file changed, 72 insertions(+) create mode 100644 attic/dave/kalman_filter.c (limited to 'attic/dave/kalman_filter.c') diff --git a/attic/dave/kalman_filter.c b/attic/dave/kalman_filter.c new file mode 100644 index 0000000..3d3406a --- /dev/null +++ b/attic/dave/kalman_filter.c @@ -0,0 +1,72 @@ +#include +#include +#include +#include "kalman_filter.h" + +void KalmanPredict( + KAL_VEC(xhat_k_km1), /* OUTPUT: (S) Predicted state at time 'k' */ + KAL_MAT(P_k_km1), /* OUTPUT: (S x S) Predicted covariance at time 'k' */ + KAL_MAT(P_km1_km1), /* INPUT: (S x S) Updated covariance from time 'k-1' */ + KAL_VEC(xhat_km1_km1), /* INPUT: (S) Updated state from time 'k-1' */ + KAL_MAT(F_k), /* INPUT: (S x S) State transition model */ + KAL_MAT(B_k), /* INPUT: (S x U) Control input model */ + KAL_VEC(u_k), /* INPUT: (U) Control vector */ + KAL_MAT(Q_k), /* INPUT: (S x S) Covariance of process noise */ + int S, /* INPUT: Number of dimensions in state vector */ + int U) /* INPUT: Size of control input vector */ +{ + KAL_MAT(F_k_tran); + KAL_MAT(F_k__P_km1_km1); + + // Predicted state: xhat_k_km1 = Fk * xhat_km1_km1 + Bk * uk + MUL(F_k, xhat_km1_km1, xhat_k_km1, S,S,1); + + // Predicted covar: P_k_km1 = Fk * P_km1_km1 * Fk' + Qk + MUL(F_k, P_km1_km1, F_k__P_km1_km1, S, S, S); + TRANSP(F_k, F_k_tran, S, S); + MULADD(F_k__P_km1_km1, F_k_tran, Q_k, P_k_km1, S, S, S); +} + +void KalmanUpdate( + KAL_VEC(xhat_k_k), /* (S) OUTPUT: Updated state at time 'k' */ + KAL_MAT(P_k_k), /* (S x S) OUTPUT: Updated covariance at time 'k' */ + KAL_VEC(xhat_k_km1), /* (S) INPUT: Predicted state at time 'k' */ + KAL_MAT(P_k_km1), /* (S x S) INPUT: Predicted covariance at time 'k' */ + KAL_VEC(z_k), /* (B) INPUT: Observation vector */ + KAL_MAT(H_k), /* (B x S) INPUT: Observational model */ + KAL_MAT(R_k), /* (S x S) INPUT: Covariance of observational noise */ + int B, /* INPUT: Number of observations in observation vector */ + int S) /* INPUT: Number of measurements in the state vector */ +{ + // UPDATE PHASE + // Measurement residual: yhat_k = zk - Hk * xhat_k_km1 + KAL_MAT(yhat_k); /* (B x 1) */ + GMULADD(H_k,xhat_k_km1,z_k,yhat_k,-1.0f,1.0f,B,S,1); + + // Residual covariance: S_k = H_k * P_k_km1 * H_k' + R_k + KAL_MAT(H_k_transp); /* (S x B) */ + KAL_MAT(P_k_km1__H_k_transp); /* (S x B) */ + KAL_MAT(S_k); /* (B x B) */ + TRANSP(H_k,H_k_transp,B,S); + MUL(P_k_km1,H_k_transp,P_k_km1__H_k_transp,S,S,B); + MULADD(H_k,P_k_km1__H_k_transp,R_k,S_k,B,S,B); + + // Optimal Kalman gain: K_k = P_k_km1 * H_k' * inv(S_k) + KAL_MAT(K_k); /* (S x B) */ + KAL_MAT(S_k_inv); /* (B x B) */ + INV(S_k,S_k_inv,B); + MUL(P_K_km1__H_k_transp,S_k_inv,K_k,S,B,B); + + // Updated state esti: xhat_k_k = xhat_k_km1 + K_k * yhat_k + MULADD(K_k,yhat_k,xhat_k_km1,S,B,1); + + // Updated covariance: P_k_k = (I - K_k * H_k) * P_k_km1 + KAL_MAT(Ident); /* (S x S) */ + KAL_MAT(I_minus_K_k_H_k); + IDENTITY(Ident,S); + GMULADD(K_k,H_k,Ident,I_minus_K_k_H_k,1.0,-1.0,S,B,S); + MUL(I_minus_K_k_H_k,P_k_km1,P_k_k,S,S,1); +} + + + -- cgit v1.2.3