#!/usr/bin/env python3 # Copied from https://github.com/PX4/ecl/commit/264c8c4e8681704e4719d0a03b848df8617c0863 # and modified for ArduPilot # this file was originally from ArduPilot commit f81abd73d6bf73dd1cd1d009f355f6f8c025325b from sympy import __version__ as __sympy__version__ from sympy import * from code_gen import * import numpy as np # version required to generate the exact code currently present in ArduPilot. # sympy version upgrades must ensure generated code doesn't pose any problems # and must not have any other changes to the generator. assert __sympy__version__ == "1.9", "expected sympy version 1.9, not "+__sympy__version__ # q: quaternion describing rotation from frame 1 to frame 2 # returns a rotation matrix derived form q which describes the same # rotation def quat2Rot(q): q0 = q[0] q1 = q[1] q2 = q[2] q3 = q[3] Rot = Matrix([[q0**2 + q1**2 - q2**2 - q3**2, 2*(q1*q2 - q0*q3), 2*(q1*q3 + q0*q2)], [2*(q1*q2 + q0*q3), q0**2 - q1**2 + q2**2 - q3**2, 2*(q2*q3 - q0*q1)], [2*(q1*q3-q0*q2), 2*(q2*q3 + q0*q1), q0**2 - q1**2 - q2**2 + q3**2]]) return Rot def create_cov_matrix(i, j): if j >= i: # return Symbol("P(" + str(i) + "," + str(j) + ")", real=True) # legacy array format return Symbol("P[" + str(i) + "][" + str(j) + "]", real=True) else: return 0 def create_yaw_estimator_cov_matrix(): # define a symbolic covariance matrix P = Matrix(3,3,create_cov_matrix) for index in range(3): for j in range(3): if index > j: P[index,j] = P[j,index] return P def create_Tbs_matrix(i, j): # return Symbol("Tbs(" + str(i) + "," + str(j) + ")", real=True) # legacy array format return Symbol("Tbs[" + str(i) + "][" + str(j) + "]", real=True) def quat_mult(p,q): r = Matrix([p[0] * q[0] - p[1] * q[1] - p[2] * q[2] - p[3] * q[3], p[0] * q[1] + p[1] * q[0] + p[2] * q[3] - p[3] * q[2], p[0] * q[2] - p[1] * q[3] + p[2] * q[0] + p[3] * q[1], p[0] * q[3] + p[1] * q[2] - p[2] * q[1] + p[3] * q[0]]) return r def create_symmetric_cov_matrix(n): # define a symbolic covariance matrix P = Matrix(n,n,create_cov_matrix) for index in range(n): for j in range(n): if index > j: P[index,j] = P[j,index] return P # generate equations for observation vector innovation variances def generate_observation_vector_innovation_variances(P,state,observation,variance,n_obs): H = observation.jacobian(state) innovation_variance = zeros(n_obs,1) for index in range(n_obs): H[index,:] = Matrix([observation[index]]).jacobian(state) innovation_variance[index] = H[index,:] * P * H[index,:].T + Matrix([variance]) IV_simple = cse(innovation_variance, symbols("IV0:1000"), optimizations='basic') return IV_simple # generate equations for observation Jacobian and Kalman gain def generate_observation_equations(P,state,observation,variance,varname="HK"): H = Matrix([observation]).jacobian(state) innov_var = H * P * H.T + Matrix([variance]) assert(innov_var.shape[0] == 1) assert(innov_var.shape[1] == 1) K = P * H.T / innov_var[0,0] extension="0:1000" var_string = varname+extension HK_simple = cse(Matrix([H.transpose(), K]), symbols(var_string), optimizations='basic') return HK_simple # generate equations for observation vector Jacobian and Kalman gain # n_obs is the vector dimension and must be >= 2 def generate_observation_vector_equations(P,state,observation,variance,n_obs): K = zeros(24,n_obs) H = observation.jacobian(state) HK = zeros(n_obs*48,1) for index in range(n_obs): H[index,:] = Matrix([observation[index]]).jacobian(state) innov_var = H[index,:] * P * H[index,:].T + Matrix([variance]) assert(innov_var.shape[0] == 1) assert(innov_var.shape[1] == 1) K[:,index] = P * H[index,:].T / innov_var[0,0] HK[index*48:(index+1)*48,0] = Matrix([H[index,:].transpose(), K[:,index]]) HK_simple = cse(HK, symbols("HK0:1000"), optimizations='basic') return HK_simple # write single observation equations to file def write_equations_to_file(equations,code_generator_id,n_obs): if (n_obs < 1): return if (n_obs == 1): code_generator_id.print_string("Sub Expressions") code_generator_id.write_subexpressions(equations[0]) code_generator_id.print_string("Observation Jacobians") code_generator_id.write_matrix(Matrix(equations[1][0][0:24]), "Hfusion", False) code_generator_id.print_string("Kalman gains") code_generator_id.write_matrix(Matrix(equations[1][0][24:]), "Kfusion", False) else: code_generator_id.print_string("Sub Expressions") code_generator_id.write_subexpressions(equations[0]) for axis_index in range(n_obs): start_index = axis_index*48 code_generator_id.print_string("Observation Jacobians - axis %i" % axis_index) code_generator_id.write_matrix(Matrix(equations[1][0][start_index:start_index+24]), "Hfusion", False) code_generator_id.print_string("Kalman gains - axis %i" % axis_index) code_generator_id.write_matrix(Matrix(equations[1][0][start_index+24:start_index+48]), "Kfusion", False) return # derive equations for sequential fusion of optical flow measurements def optical_flow_observation(P,state,R_to_body,vx,vy,vz): flow_code_generator = CodeGenerator("./generated/flow_generated.cpp") range = symbols("range", real=True) # range from camera focal point to ground along sensor Z axis obs_var = symbols("R_LOS", real=True) # optical flow line of sight rate measurement noise variance # Define rotation matrix from body to sensor frame Tbs = Matrix(3,3,create_Tbs_matrix) # Calculate earth relative velocity in a non-rotating sensor frame relVelSensor = Tbs * R_to_body * Matrix([vx,vy,vz]) # Divide by range to get predicted angular LOS rates relative to X and Y # axes. Note these are rates in a non-rotating sensor frame losRateSensorX = +relVelSensor[1]/range losRateSensorY = -relVelSensor[0]/range # calculate the observation Jacobian and Kalman gains for the X axis equations = generate_observation_equations(P,state,losRateSensorX,obs_var) flow_code_generator.print_string("X Axis Equations") write_equations_to_file(equations,flow_code_generator,1) # calculate the observation Jacobian and Kalman gains for the Y axis equations = generate_observation_equations(P,state,losRateSensorY,obs_var) flow_code_generator.print_string("Y Axis Equations") write_equations_to_file(equations,flow_code_generator,1) flow_code_generator.close() # calculate a combined result for a possible reduction in operations, but will use more stack observation = Matrix([relVelSensor[1]/range,-relVelSensor[0]/range]) equations = generate_observation_vector_equations(P,state,observation,obs_var,2) flow_code_generator_alt = CodeGenerator("./generated/flow_generated_alt.cpp") write_equations_to_file(equations,flow_code_generator_alt,2) flow_code_generator_alt.close() return # Derive equations for sequential fusion of body frame velocity measurements def body_frame_velocity_observation(P,state,R_to_body,vx,vy,vz): obs_var = symbols("R_VEL", real=True) # measurement noise variance # Calculate earth relative velocity in a non-rotating sensor frame vel_bf = R_to_body * Matrix([vx,vy,vz]) vel_bf_code_generator = CodeGenerator("./generated/vel_bf_generated.cpp") axes = [0,1,2] H_obs = vel_bf.jacobian(state) # observation Jacobians K_gain = zeros(24,3) for index in axes: equations = generate_observation_equations(P,state,vel_bf[index],obs_var) vel_bf_code_generator.print_string("axis %i" % index) vel_bf_code_generator.write_subexpressions(equations[0]) vel_bf_code_generator.write_matrix(Matrix(equations[1][0][0:24]), "H_VEL", False) vel_bf_code_generator.write_matrix(Matrix(equations[1][0][24:]), "Kfusion", False) vel_bf_code_generator.close() # calculate a combined result for a possible reduction in operations, but will use more stack equations = generate_observation_vector_equations(P,state,vel_bf,obs_var,3) vel_bf_code_generator_alt = CodeGenerator("./generated/vel_bf_generated_alt.cpp") write_equations_to_file(equations,vel_bf_code_generator_alt,3) vel_bf_code_generator_alt.close() # derive equations for fusion of dual antenna yaw measurement def gps_yaw_observation(P,state,R_to_body): obs_var = symbols("R_YAW", real=True) # measurement noise variance ant_yaw = symbols("ant_yaw", real=True) # yaw angle of antenna array axis wrt X body axis # define antenna vector in body frame ant_vec_bf = Matrix([cos(ant_yaw),sin(ant_yaw),0]) # rotate into earth frame ant_vec_ef = R_to_body.T * ant_vec_bf # Calculate the yaw angle from the projection observation = atan(ant_vec_ef[1]/ant_vec_ef[0]) equations = generate_observation_equations(P,state,observation,obs_var) gps_yaw_code_generator = CodeGenerator("./generated/gps_yaw_generated.cpp") write_equations_to_file(equations,gps_yaw_code_generator,1) gps_yaw_code_generator.close() return # derive equations for fusion of declination def declination_observation(P,state,ix,iy): obs_var = symbols("R_DECL", real=True) # measurement noise variance # the predicted measurement is the angle wrt magnetic north of the horizontal # component of the measured field observation = atan(iy/ix) equations = generate_observation_equations(P,state,observation,obs_var) mag_decl_code_generator = CodeGenerator("./generated/mag_decl_generated.cpp") write_equations_to_file(equations,mag_decl_code_generator,1) mag_decl_code_generator.close() return # derive equations for fusion of lateral body acceleration (multirotors only) def body_frame_accel_observation(P,state,R_to_body,vx,vy,vz,wx,wy): obs_var = symbols("R_ACC", real=True) # measurement noise variance Kaccx = symbols("Kaccx", real=True) # measurement noise variance Kaccy = symbols("Kaccy", real=True) # measurement noise variance # use relationship between airspeed along the X and Y body axis and the # drag to predict the lateral acceleration for a multirotor vehicle type # where propulsion forces are generated primarily along the Z body axis vrel = R_to_body*Matrix([vx-wx,vy-wy,vz]) # predicted wind relative velocity # Use this nonlinear model for the prediction in the implementation only # It uses a ballistic coefficient for each axis # accXpred = -0.5*rho*vrel[0]*vrel[0]*BCXinv # predicted acceleration measured along X body axis # accYpred = -0.5*rho*vrel[1]*vrel[1]*BCYinv # predicted acceleration measured along Y body axis # Use a simple viscous drag model for the linear estimator equations # Use the the derivative from speed to acceleration averaged across the # speed range. This avoids the generation of a dirac function in the derivation # The nonlinear equation will be used to calculate the predicted measurement in implementation observation = Matrix([-Kaccx*vrel[0],-Kaccy*vrel[1]]) acc_bf_code_generator = CodeGenerator("./generated/acc_bf_generated.cpp") H = observation.jacobian(state) K = zeros(24,2) axes = [0,1] for index in axes: equations = generate_observation_equations(P,state,observation[index],obs_var) acc_bf_code_generator.print_string("Axis %i equations" % index) write_equations_to_file(equations,acc_bf_code_generator,1) acc_bf_code_generator.close() # # calculate a combined result for a possible reduction in operations, but will use more stack # equations = generate_observation_vector_equations(P,state,observation,obs_var,2) # acc_bf_code_generator_alt = CodeGenerator("./generated/acc_bf_generated_alt.cpp") # write_equations_to_file(equations,acc_bf_code_generator_alt,3) # acc_bf_code_generator_alt.close() return # yaw fusion def yaw_observation(P,state,R_to_earth): yaw_code_generator = CodeGenerator("./generated/yaw_generated.cpp") # Derive observation Jacobian for fusion of 321 sequence yaw measurement # Calculate the yaw (first rotation) angle from the 321 rotation sequence # Provide alternative angle that avoids singularity at +-pi/2 yaw angMeasA = atan(R_to_earth[1,0]/R_to_earth[0,0]) H_YAW321_A = Matrix([angMeasA]).jacobian(state) H_YAW321_A_simple = cse(H_YAW321_A, symbols('SA0:200')) angMeasB = pi/2 - atan(R_to_earth[0,0]/R_to_earth[1,0]) H_YAW321_B = Matrix([angMeasB]).jacobian(state) H_YAW321_B_simple = cse(H_YAW321_B, symbols('SB0:200')) yaw_code_generator.print_string("calculate 321 yaw observation matrix - option A") yaw_code_generator.write_subexpressions(H_YAW321_A_simple[0]) yaw_code_generator.write_matrix(Matrix(H_YAW321_A_simple[1]).T, "H_YAW", False) yaw_code_generator.print_string("calculate 321 yaw observation matrix - option B") yaw_code_generator.write_subexpressions(H_YAW321_B_simple[0]) yaw_code_generator.write_matrix(Matrix(H_YAW321_B_simple[1]).T, "H_YAW", False) # Derive observation Jacobian for fusion of 312 sequence yaw measurement # Calculate the yaw (first rotation) angle from an Euler 312 sequence # Provide alternative angle that avoids singularity at +-pi/2 yaw angMeasA = atan(-R_to_earth[0,1]/R_to_earth[1,1]) H_YAW312_A = Matrix([angMeasA]).jacobian(state) H_YAW312_A_simple = cse(H_YAW312_A, symbols('SA0:200')) angMeasB = pi/2 - atan(-R_to_earth[1,1]/R_to_earth[0,1]) H_YAW312_B = Matrix([angMeasB]).jacobian(state) H_YAW312_B_simple = cse(H_YAW312_B, symbols('SB0:200')) yaw_code_generator.print_string("calculate 312 yaw observation matrix - option A") yaw_code_generator.write_subexpressions(H_YAW312_A_simple[0]) yaw_code_generator.write_matrix(Matrix(H_YAW312_A_simple[1]).T, "H_YAW", False) yaw_code_generator.print_string("calculate 312 yaw observation matrix - option B") yaw_code_generator.write_subexpressions(H_YAW312_B_simple[0]) yaw_code_generator.write_matrix(Matrix(H_YAW312_B_simple[1]).T, "H_YAW", False) yaw_code_generator.close() return # 3D magnetometer fusion def mag_observation_variance(P,state,R_to_body,i,ib): obs_var = symbols("R_MAG", real=True) # magnetometer measurement noise variance m_mag = R_to_body * i + ib # separate calculation of innovation variance equations for the y and z axes m_mag[0]=0 innov_var_equations = generate_observation_vector_innovation_variances(P,state,m_mag,obs_var,3) mag_innov_var_code_generator = CodeGenerator("./generated/3Dmag_innov_var_generated.cpp") write_equations_to_file(innov_var_equations,mag_innov_var_code_generator,3) mag_innov_var_code_generator.close() return # 3D magnetometer fusion def mag_observation(P,state,R_to_body,i,ib): obs_var = symbols("R_MAG", real=True) # magnetometer measurement noise variance m_mag = R_to_body * i + ib # calculate a separate set of equations for each axis mag_code_generator = CodeGenerator("./generated/3Dmag_generated.cpp") axes = [0,1,2] label="HK" for index in axes: if (index==0): label="HKX" elif (index==1): label="HKY" elif (index==2): label="HKZ" else: return equations = generate_observation_equations(P,state,m_mag[index],obs_var,varname=label) mag_code_generator.print_string("Axis %i equations" % index) write_equations_to_file(equations,mag_code_generator,1) mag_code_generator.close() # calculate a combined set of equations for a possible reduction in operations, but will use slighlty more stack equations = generate_observation_vector_equations(P,state,m_mag,obs_var,3) mag_code_generator_alt = CodeGenerator("./generated/3Dmag_generated_alt.cpp") write_equations_to_file(equations,mag_code_generator_alt,3) mag_code_generator_alt.close() return # airspeed fusion def tas_observation(P,state,vx,vy,vz,wx,wy): obs_var = symbols("R_TAS", real=True) # true airspeed measurement noise variance observation = sqrt((vx-wx)*(vx-wx)+(vy-wy)*(vy-wy)+vz*vz) equations = generate_observation_equations(P,state,observation,obs_var) tas_code_generator = CodeGenerator("./generated/tas_generated.cpp") write_equations_to_file(equations,tas_code_generator,1) tas_code_generator.close() return # sideslip fusion def beta_observation(P,state,R_to_body,vx,vy,vz,wx,wy): obs_var = symbols("R_BETA", real=True) # sideslip measurement noise variance v_rel_ef = Matrix([vx-wx,vy-wy,vz]) v_rel_bf = R_to_body * v_rel_ef observation = v_rel_bf[1]/v_rel_bf[0] equations = generate_observation_equations(P,state,observation,obs_var) beta_code_generator = CodeGenerator("./generated/beta_generated.cpp") write_equations_to_file(equations,beta_code_generator,1) beta_code_generator.close() return # yaw estimator prediction and observation code def yaw_estimator(): dt = symbols("dt", real=True) # dt (sec) psi = symbols("psi", real=True) # yaw angle of body frame wrt earth frame vn, ve = symbols("vn ve", real=True) # velocity in world frame (north/east) - m/sec daz = symbols("daz", real=True) # IMU z axis delta angle measurement in body axes - rad dazVar = symbols("dazVar", real=True) # IMU Z axis delta angle measurement variance (rad^2) dvx, dvy = symbols("dvx dvy", real=True) # IMU x and y axis delta velocity measurement in body axes - m/sec dvxVar, dvyVar = symbols("dvxVar dvyVar", real=True) # IMU x and y axis delta velocity measurement variance (m/s)^2 # derive the body to nav direction transformation matrix Tbn = Matrix([[cos(psi) , -sin(psi)], [sin(psi) , cos(psi)]]) # attitude update equation psiNew = psi + daz # velocity update equations velNew = Matrix([vn,ve]) + Tbn*Matrix([dvx,dvy]) # Define the state vectors stateVector = Matrix([vn,ve,psi]) # Define vector of process equations newStateVector = Matrix([velNew,psiNew]) # Calculate state transition matrix F = newStateVector.jacobian(stateVector) # Derive the covariance prediction equations # Error growth in the inertial solution is assumed to be driven by 'noise' in the delta angles and # velocities, after bias effects have been removed. # derive the control(disturbance) influence matrix from IMU noise to state noise G = newStateVector.jacobian(Matrix([dvx,dvy,daz])) # derive the state error matrix distMatrix = Matrix([[dvxVar , 0 , 0], [0 , dvyVar , 0], [0 , 0 , dazVar]]) Q = G * distMatrix * G.T # propagate covariance matrix P = create_yaw_estimator_cov_matrix() P_new = F * P * F.T + Q P_new_simple = cse(P_new, symbols("S0:1000"), optimizations='basic') yaw_estimator_covariance_generator = CodeGenerator("./generated/yaw_estimator_covariance_prediction_generated.cpp") yaw_estimator_covariance_generator.print_string("Equations for covariance matrix prediction") yaw_estimator_covariance_generator.write_subexpressions(P_new_simple[0]) yaw_estimator_covariance_generator.write_matrix(Matrix(P_new_simple[1]), "_ekf_gsf[model_index].P", True) yaw_estimator_covariance_generator.close() # derive the covariance update equation for a NE velocity observation velObsVar = symbols("velObsVar", real=True) # velocity observation variance (m/s)^2 H = Matrix([[1,0,0], [0,1,0]]) R = Matrix([[velObsVar , 0], [0 , velObsVar]]) S = H * P * H.T + R S_det_inv = 1 / S.det() S_inv = S.inv() K = (P * H.T) * S_inv P_new = P - K * S * K.T # optimize code t, [S_det_inv_s, S_inv_s, K_s, P_new_s] = cse([S_det_inv, S_inv, K, P_new], symbols("t0:1000"), optimizations='basic') yaw_estimator_observation_generator = CodeGenerator("./generated/yaw_estimator_measurement_update_generated.cpp") yaw_estimator_observation_generator.print_string("Intermediate variables") yaw_estimator_observation_generator.write_subexpressions(t) yaw_estimator_observation_generator.print_string("Equations for NE velocity innovation variance's determinante inverse") yaw_estimator_observation_generator.write_matrix(Matrix([[S_det_inv_s]]), "_ekf_gsf[model_index].S_det_inverse", False) yaw_estimator_observation_generator.print_string("Equations for NE velocity innovation variance inverse") yaw_estimator_observation_generator.write_matrix(Matrix(S_inv_s), "_ekf_gsf[model_index].S_inverse", True) yaw_estimator_observation_generator.print_string("Equations for NE velocity Kalman gain") yaw_estimator_observation_generator.write_matrix(Matrix(K_s), "K", False) yaw_estimator_observation_generator.print_string("Equations for covariance matrix update") yaw_estimator_observation_generator.write_matrix(Matrix(P_new_s), "_ekf_gsf[model_index].P", True) yaw_estimator_observation_generator.close() def quaternion_error_propagation(): # define quaternion state vector q0, q1, q2, q3 = symbols("q0 q1 q2 q3", real=True) q = Matrix([q0, q1, q2, q3]) # define truth gravity unit vector in body frame R_to_earth = quat2Rot(q) R_to_body = R_to_earth.T gravity_ef = Matrix([0,0,1]) gravity_bf = R_to_body * gravity_ef # define perturbations to quaternion state vector q dq0, dq1, dq2, dq3 = symbols("dq0 dq1 dq2 dq3", real=True) q_delta = Matrix([dq0, dq1, dq2, dq3]) # apply perturbations q_perturbed = q + q_delta # gravity unit vector in body frame after quaternion perturbation R_to_earth_perturbed = quat2Rot(q_perturbed) R_to_body_perturbed = R_to_earth_perturbed.T gravity_bf_perturbed = R_to_body_perturbed * gravity_ef # calculate the angular difference between the perturbed and unperturbed body frame gravity unit vectors # assuming small angles tilt_error_bf = gravity_bf.cross(gravity_bf_perturbed) # calculate the derivative of the perturbation rotation vector wrt the quaternion perturbations J = tilt_error_bf.jacobian(q_delta) # remove second order terms # we don't want the error deltas to appear in the final result J.subs(dq0,0) J.subs(dq1,0) J.subs(dq2,0) J.subs(dq3,0) # define covaraince matrix for quaternion states P = create_symmetric_cov_matrix(4) # discard off diagonals P_diag = diag(P[0,0],P[1,1],P[2,2],P[3,3]) # rotate quaternion covariances into rotation vector state space P_rot_vec = J * P_diag * J.transpose() P_rot_vec_simple = cse(P_rot_vec, symbols("PS0:400"), optimizations='basic') quat_code_generator = CodeGenerator("./generated/tilt_error_cov_mat_generated.cpp") quat_code_generator.write_subexpressions(P_rot_vec_simple[0]) quat_code_generator.write_matrix(Matrix(P_rot_vec_simple[1]), "tiltErrCovMat", False, "[", "]") quat_code_generator.close() def generate_code(): print('Starting code generation:') print('Creating symbolic variables ...') dt = symbols("dt", real=True) # dt g = symbols("g", real=True) # gravity constant r_hor_vel = symbols("R_hor_vel", real=True) # horizontal velocity noise variance r_ver_vel = symbols("R_vert_vel", real=True) # vertical velocity noise variance r_hor_pos = symbols("R_hor_pos", real=True) # horizontal position noise variance # inputs, integrated gyro measurements # delta angle x y z d_ang_x, d_ang_y, d_ang_z = symbols("dax day daz", real=True) # delta angle x d_ang = Matrix([d_ang_x, d_ang_y, d_ang_z]) # inputs, integrated accelerometer measurements # delta velocity x y z d_v_x, d_v_y, d_v_z = symbols("dvx dvy dvz", real=True) d_v = Matrix([d_v_x, d_v_y,d_v_z]) u = Matrix([d_ang, d_v]) # input noise d_ang_x_var, d_ang_y_var, d_ang_z_var = symbols("daxVar dayVar dazVar", real=True) d_v_x_var, d_v_y_var, d_v_z_var = symbols("dvxVar dvyVar dvzVar", real=True) var_u = Matrix.diag(d_ang_x_var, d_ang_y_var, d_ang_z_var, d_v_x_var, d_v_y_var, d_v_z_var) # define state vector # attitude quaternion qw, qx, qy, qz = symbols("q0 q1 q2 q3", real=True) q = Matrix([qw,qx,qy,qz]) R_to_earth = quat2Rot(q) R_to_body = R_to_earth.T # velocity in NED local frame (north, east, down) vx, vy, vz = symbols("vn ve vd", real=True) v = Matrix([vx,vy,vz]) # position in NED local frame (north, east, down) px, py, pz = symbols("pn pe pd", real=True) p = Matrix([px,py,pz]) # delta angle bias x y z d_ang_bx, d_ang_by, d_ang_bz = symbols("dax_b day_b daz_b", real=True) d_ang_b = Matrix([d_ang_bx, d_ang_by, d_ang_bz]) d_ang_true = d_ang - d_ang_b # delta velocity bias x y z d_vel_bx, d_vel_by, d_vel_bz = symbols("dvx_b dvy_b dvz_b", real=True) d_vel_b = Matrix([d_vel_bx, d_vel_by, d_vel_bz]) d_vel_true = d_v - d_vel_b # earth magnetic field vector x y z ix, iy, iz = symbols("magN magE magD", real=True) i = Matrix([ix,iy,iz]) # earth magnetic field bias in body frame ibx, iby, ibz = symbols("ibx iby ibz", real=True) ib = Matrix([ibx,iby,ibz]) # wind in local NE frame (north, east) wx, wy = symbols("vwn, vwe", real=True) w = Matrix([wx,wy]) # state vector at arbitrary time t state = Matrix([q, v, p, d_ang_b, d_vel_b, i, ib, w]) print('Defining state propagation ...') # kinematic processes driven by IMU 'control inputs' q_new = quat_mult(q, Matrix([1, 0.5 * d_ang_true[0], 0.5 * d_ang_true[1], 0.5 * d_ang_true[2]])) v_new = v + R_to_earth * d_vel_true + Matrix([0,0,g]) * dt p_new = p + v * dt # static processes d_ang_b_new = d_ang_b d_vel_b_new = d_vel_b i_new = i ib_new = ib w_new = w # predicted state vector at time t + dt state_new = Matrix([q_new, v_new, p_new, d_ang_b_new, d_vel_b_new, i_new, ib_new, w_new]) print('Computing state propagation jacobian ...') A = state_new.jacobian(state) G = state_new.jacobian(u) P = create_symmetric_cov_matrix(24) print('Computing covariance propagation ...') P_new = A * P * A.T + G * var_u * G.T for index in range(24): for j in range(24): if index > j: P_new[index,j] = 0 print('Simplifying covariance propagation ...') P_new_simple = cse(P_new, symbols("PS0:400"), optimizations='basic') # print('Writing covariance propagation to file ...') # cov_code_generator = CodeGenerator("./generated/covariance_generated.cpp") # cov_code_generator.print_string("Equations for covariance matrix prediction, without process noise!") # cov_code_generator.write_subexpressions(P_new_simple[0]) # cov_code_generator.write_matrix(Matrix(P_new_simple[1]), "nextP", True, "[", "]") # cov_code_generator.close() # derive autocode for other methods print('Computing tilt error covariance matrix ...') quaternion_error_propagation() print('Generating heading observation code ...') yaw_observation(P,state,R_to_earth) # print('Generating gps heading observation code ...') # gps_yaw_observation(P,state,R_to_body) # print('Generating mag observation code ...') # mag_observation_variance(P,state,R_to_body,i,ib) # mag_observation(P,state,R_to_body,i,ib) # print('Generating declination observation code ...') # declination_observation(P,state,ix,iy) # print('Generating airspeed observation code ...') # tas_observation(P,state,vx,vy,vz,wx,wy) # print('Generating sideslip observation code ...') # beta_observation(P,state,R_to_body,vx,vy,vz,wx,wy) # print('Generating optical flow observation code ...') # optical_flow_observation(P,state,R_to_body,vx,vy,vz) # print('Generating body frame velocity observation code ...') # body_frame_velocity_observation(P,state,R_to_body,vx,vy,vz) print('Generating body frame acceleration observation code ...') body_frame_accel_observation(P,state,R_to_body,vx,vy,vz,wx,wy) # print('Generating yaw estimator code ...') # yaw_estimator() print('Code generation finished!') if __name__ == "__main__": generate_code()