PX4-Autopilot/EKF/ekf_helper.cpp
Paul Riseborough 469a7d1711 EKF: rework height reset
calculate and save the amount that the vertical states have changed and the time of the change
apply the change delta to the output observer states and buffer
2016-04-22 08:43:56 +10:00

543 lines
17 KiB
C++

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/**
* @file ekf_helper.cpp
* Definition of ekf helper functions.
*
* @author Roman Bast <bapstroman@gmail.com>
*
*/
#include "ekf.h"
#ifdef __PX4_POSIX
#include <iostream>
#include <fstream>
#endif
#include <iomanip>
#include "mathlib.h"
// Reset the velocity states. If we have a recent and valid
// gps measurement then use for velocity initialisation
bool Ekf::resetVelocity()
{
// if we have a valid GPS measurement use it to initialise velocity states
gpsSample gps_newest = _gps_buffer.get_newest();
if (_time_last_imu - gps_newest.time_us < 400000) {
_state.vel = gps_newest.vel;
return true;
} else {
// XXX use the value of the last known velocity
return false;
}
}
// Reset position states. If we have a recent and valid
// gps measurement then use for position initialisation
bool Ekf::resetPosition()
{
// if we have a fresh GPS measurement, use it to initialise position states and correct the position for the measurement delay
gpsSample gps_newest = _gps_buffer.get_newest();
float time_delay = 1e-6f * (float)(_time_last_imu - gps_newest.time_us);
if (time_delay < 0.4f) {
_state.pos(0) = gps_newest.pos(0) + gps_newest.vel(0) * time_delay;
_state.pos(1) = gps_newest.pos(1) + gps_newest.vel(1) * time_delay;
return true;
} else {
// XXX use the value of the last known position
return false;
}
}
// Reset height state using the last height measurement
void Ekf::resetHeight()
{
// Get the most recent GPS data
gpsSample gps_newest = _gps_buffer.get_newest();
// store the current vertical position and velocity for reference so we can calculate and publish the reset amount
float old_vert_pos = _state.pos(2);
bool vert_pos_reset = false;
float old_vert_vel = _state.vel(2);
bool vert_vel_reset = false;
// reset the vertical position
if (_control_status.flags.rng_hgt) {
rangeSample range_newest = _range_buffer.get_newest();
if (_time_last_imu - range_newest.time_us < 2 * RNG_MAX_INTERVAL) {
// calculate the new vertical position using range sensor
float new_pos_down = _hgt_sensor_offset - range_newest.rng;
// update the state and assoicated variance
_state.pos(2) = new_pos_down;
P[8][8] = sq(_params.range_noise);
vert_pos_reset = true;
} else {
// TODO: reset to last known range based estimate
}
// reset the baro offset which is subtracted from the baro reading if we need to use it as a backup
baroSample baro_newest = _baro_buffer.get_newest();
_baro_hgt_offset = baro_newest.hgt + _state.pos(2);
} else if (_control_status.flags.baro_hgt) {
// initialize vertical position with newest baro measurement
baroSample baro_newest = _baro_buffer.get_newest();
if (_time_last_imu - baro_newest.time_us < 2 * BARO_MAX_INTERVAL) {
_state.pos(2) = _hgt_sensor_offset - baro_newest.hgt + _baro_hgt_offset;
P[8][8] = sq(_params.baro_noise);
vert_pos_reset = true;
} else {
// TODO: reset to last known baro based estimate
}
} else if (_control_status.flags.gps_hgt) {
// initialize vertical position and velocity with newest gps measurement
if (_time_last_imu - gps_newest.time_us < 2 * GPS_MAX_INTERVAL) {
_state.pos(2) = _hgt_sensor_offset - gps_newest.hgt + _gps_alt_ref;
P[8][8] = sq(gps_newest.hacc);
vert_pos_reset = true;
} else {
// TODO: reset to last known gps based estimate
}
// reset the baro offset which is subtracted from the baro reading if we need to use it as a backup
baroSample baro_newest = _baro_buffer.get_newest();
_baro_hgt_offset = baro_newest.hgt + _state.pos(2);
}
// If we are using GPS, then use it to reset the vertical velocity
if (_control_status.flags.gps && (_time_last_imu - gps_newest.time_us < 2 * GPS_MAX_INTERVAL)) {
_state.vel(2) = gps_newest.vel(2);
P[5][5] = sq(1.5f * gps_newest.sacc);
} else {
P[5][5] = fminf(sq(_state.vel(2)),1000.0f);
_state.vel(2) = 0.0f;
}
vert_vel_reset = true;
// store the reset amount and time to be published
if (vert_pos_reset) {
_vert_pos_reset_delta = _state.pos(2) - old_vert_pos;
_time_vert_pos_reset = _time_last_imu;
}
if (vert_vel_reset) {
_vert_vel_reset_delta = _state.vel(2) - old_vert_vel;
_time_vert_vel_reset = _time_last_imu;
}
// add the reset amount to the output observer states
_output_new.pos(2) += _vert_pos_reset_delta;
_output_new.vel(2) += _vert_vel_reset_delta;
// add the reset amount to the output observer buffered data
outputSample output_states;
unsigned output_length = _output_buffer.get_length();
for (unsigned i=0; i < output_length; i++) {
output_states = _output_buffer.get_from_index(i);
if (vert_pos_reset) {
output_states.pos(2) += _vert_pos_reset_delta;
}
if (vert_vel_reset) {
output_states.vel(2) += _vert_vel_reset_delta;
}
_output_buffer.push_to_index(i,output_states);
}
}
// Reset heading and magnetic field states
bool Ekf::resetMagHeading(Vector3f &mag_init)
{
// If we don't a tilt estimate then we cannot initialise the yaw
if (!_control_status.flags.tilt_align) {
return false;
}
// get the roll, pitch, yaw estimates and set the yaw to zero
matrix::Quaternion<float> q(_state.quat_nominal(0), _state.quat_nominal(1), _state.quat_nominal(2),
_state.quat_nominal(3));
matrix::Euler<float> euler_init(q);
euler_init(2) = 0.0f;
// rotate the magnetometer measurements into earth axes
matrix::Dcm<float> R_to_earth_zeroyaw(euler_init);
Vector3f mag_ef_zeroyaw = R_to_earth_zeroyaw * mag_init;
euler_init(2) = _mag_declination - atan2f(mag_ef_zeroyaw(1), mag_ef_zeroyaw(0));
// calculate initial quaternion states for the ekf
// we don't change the output attitude to avoid jumps
_state.quat_nominal = Quaternion(euler_init);
// reset the angle error variances because the yaw angle could have changed by a significant amount
// by setting them to zero we avoid 'kicks' in angle when 3-D fusion starts and the imu process noise
// will grow them again.
zeroRows(P, 0, 2);
zeroCols(P, 0, 2);
// calculate initial earth magnetic field states
matrix::Dcm<float> R_to_earth(euler_init);
_state.mag_I = R_to_earth * mag_init;
// reset the corresponding rows and columns in the covariance matrix and set the variances on the magnetic field states to the measurement variance
zeroRows(P, 16, 21);
zeroCols(P, 16, 21);
for (uint8_t index = 16; index <= 21; index ++) {
P[index][index] = sq(_params.mag_noise);
}
return true;
}
// Calculate the magnetic declination to be used by the alignment and fusion processing
void Ekf::calcMagDeclination()
{
// set source of magnetic declination for internal use
if (_params.mag_declination_source & MASK_USE_GEO_DECL) {
// use parameter value until GPS is available, then use value returned by geo library
if (_NED_origin_initialised) {
_mag_declination = _mag_declination_gps;
_mag_declination_to_save_deg = math::degrees(_mag_declination);
} else {
_mag_declination = math::radians(_params.mag_declination_deg);
_mag_declination_to_save_deg = _params.mag_declination_deg;
}
} else {
// always use the parameter value
_mag_declination = math::radians(_params.mag_declination_deg);
_mag_declination_to_save_deg = _params.mag_declination_deg;
}
}
// This function forces the covariance matrix to be symmetric
void Ekf::makeSymmetrical()
{
for (unsigned row = 0; row < _k_num_states; row++) {
for (unsigned column = 0; column < row; column++) {
float tmp = (P[row][column] + P[column][row]) / 2;
P[row][column] = tmp;
P[column][row] = tmp;
}
}
}
void Ekf::constrainStates()
{
for (int i = 0; i < 3; i++) {
_state.ang_error(i) = math::constrain(_state.ang_error(i), -1.0f, 1.0f);
}
for (int i = 0; i < 3; i++) {
_state.vel(i) = math::constrain(_state.vel(i), -1000.0f, 1000.0f);
}
for (int i = 0; i < 3; i++) {
_state.pos(i) = math::constrain(_state.pos(i), -1.e6f, 1.e6f);
}
for (int i = 0; i < 3; i++) {
_state.gyro_bias(i) = math::constrain(_state.gyro_bias(i), -0.349066f * _dt_imu_avg, 0.349066f * _dt_imu_avg);
}
for (int i = 0; i < 3; i++) {
_state.gyro_scale(i) = math::constrain(_state.gyro_scale(i), 0.95f, 1.05f);
}
_state.accel_z_bias = math::constrain(_state.accel_z_bias, -1.0f * _dt_imu_avg, 1.0f * _dt_imu_avg);
for (int i = 0; i < 3; i++) {
_state.mag_I(i) = math::constrain(_state.mag_I(i), -1.0f, 1.0f);
}
for (int i = 0; i < 3; i++) {
_state.mag_B(i) = math::constrain(_state.mag_B(i), -0.5f, 0.5f);
}
for (int i = 0; i < 2; i++) {
_state.wind_vel(i) = math::constrain(_state.wind_vel(i), -100.0f, 100.0f);
}
}
// calculate the earth rotation vector
void Ekf::calcEarthRateNED(Vector3f &omega, double lat_rad) const
{
omega(0) = _k_earth_rate * cosf((float)lat_rad);
omega(1) = 0.0f;
omega(2) = -_k_earth_rate * sinf((float)lat_rad);
}
// gets the innovations of velocity and position measurements
// 0-2 vel, 3-5 pos
void Ekf::get_vel_pos_innov(float vel_pos_innov[6])
{
memcpy(vel_pos_innov, _vel_pos_innov, sizeof(float) * 6);
}
// writes the innovations of the earth magnetic field measurements
void Ekf::get_mag_innov(float mag_innov[3])
{
memcpy(mag_innov, _mag_innov, 3 * sizeof(float));
}
// gets the innovations of the airspeed measnurement
void Ekf::get_airspeed_innov(float *airspeed_innov)
{
memcpy(airspeed_innov,&_airspeed_innov, sizeof(float));
}
// gets the innovations of the heading measurement
void Ekf::get_heading_innov(float *heading_innov)
{
memcpy(heading_innov, &_heading_innov, sizeof(float));
}
// gets the innovation variances of velocity and position measurements
// 0-2 vel, 3-5 pos
void Ekf::get_vel_pos_innov_var(float vel_pos_innov_var[6])
{
memcpy(vel_pos_innov_var, _vel_pos_innov_var, sizeof(float) * 6);
}
// gets the innovation variances of the earth magnetic field measurements
void Ekf::get_mag_innov_var(float mag_innov_var[3])
{
memcpy(mag_innov_var, _mag_innov_var, sizeof(float) * 3);
}
// gest the innovation variance of the airspeed measurement
void Ekf::get_airspeed_innov_var(float *airspeed_innov_var)
{
memcpy(airspeed_innov_var, &_airspeed_innov_var, sizeof(float));
}
// gets the innovation variance of the heading measurement
void Ekf::get_heading_innov_var(float *heading_innov_var)
{
memcpy(heading_innov_var, &_heading_innov_var, sizeof(float));
}
// get GPS check status
void Ekf::get_gps_check_status(uint16_t *val)
{
*val = _gps_check_fail_status.value;
}
// get the state vector at the delayed time horizon
void Ekf::get_state_delayed(float *state)
{
for (int i = 0; i < 3; i++) {
state[i] = _state.ang_error(i);
}
for (int i = 0; i < 3; i++) {
state[i + 3] = _state.vel(i);
}
for (int i = 0; i < 3; i++) {
state[i + 6] = _state.pos(i);
}
for (int i = 0; i < 3; i++) {
state[i + 9] = _state.gyro_bias(i);
}
for (int i = 0; i < 3; i++) {
state[i + 12] = _state.gyro_scale(i);
}
state[15] = _state.accel_z_bias;
for (int i = 0; i < 3; i++) {
state[i + 16] = _state.mag_I(i);
}
for (int i = 0; i < 3; i++) {
state[i + 19] = _state.mag_B(i);
}
for (int i = 0; i < 2; i++) {
state[i + 22] = _state.wind_vel(i);
}
}
// get the diagonal elements of the covariance matrix
void Ekf::get_covariances(float *covariances)
{
for (unsigned i = 0; i < _k_num_states; i++) {
covariances[i] = P[i][i];
}
}
// get the position and height of the ekf origin in WGS-84 coordinates and time the origin was set
void Ekf::get_ekf_origin(uint64_t *origin_time, map_projection_reference_s *origin_pos, float *origin_alt)
{
memcpy(origin_time, &_last_gps_origin_time_us, sizeof(uint64_t));
memcpy(origin_pos, &_pos_ref, sizeof(map_projection_reference_s));
memcpy(origin_alt, &_gps_alt_ref, sizeof(float));
}
// get the 1-sigma horizontal and vertical position uncertainty of the ekf WGS-84 position
void Ekf::get_ekf_accuracy(float *ekf_eph, float *ekf_epv, bool *dead_reckoning)
{
// report absolute accuracy taking into account the uncertainty in location of the origin
// TODO we a need a way to allow for baro drift error
float temp1 = sqrtf(P[6][6] + P[7][7] + sq(_gps_origin_eph));
float temp2 = sqrtf(P[8][8] + sq(_gps_origin_epv));
memcpy(ekf_eph, &temp1, sizeof(float));
memcpy(ekf_epv, &temp2, sizeof(float));
// report dead reckoning if it is more than a second since we fused in GPS
bool temp3 = (_time_last_imu - _time_last_pos_fuse > 1e6);
memcpy(dead_reckoning, &temp3, sizeof(bool));
}
// fuse measurement
void Ekf::fuse(float *K, float innovation)
{
for (unsigned i = 0; i < 3; i++) {
_state.ang_error(i) = _state.ang_error(i) - K[i] * innovation;
}
for (unsigned i = 0; i < 3; i++) {
_state.vel(i) = _state.vel(i) - K[i + 3] * innovation;
}
for (unsigned i = 0; i < 3; i++) {
_state.pos(i) = _state.pos(i) - K[i + 6] * innovation;
}
for (unsigned i = 0; i < 3; i++) {
_state.gyro_bias(i) = _state.gyro_bias(i) - K[i + 9] * innovation;
}
for (unsigned i = 0; i < 3; i++) {
_state.gyro_scale(i) = _state.gyro_scale(i) - K[i + 12] * innovation;
}
_state.accel_z_bias -= K[15] * innovation;
for (unsigned i = 0; i < 3; i++) {
_state.mag_I(i) = _state.mag_I(i) - K[i + 16] * innovation;
}
for (unsigned i = 0; i < 3; i++) {
_state.mag_B(i) = _state.mag_B(i) - K[i + 19] * innovation;
}
for (unsigned i = 0; i < 2; i++) {
_state.wind_vel(i) = _state.wind_vel(i) - K[i + 22] * innovation;
}
}
// zero specified range of rows in the state covariance matrix
void Ekf::zeroRows(float (&cov_mat)[_k_num_states][_k_num_states], uint8_t first, uint8_t last)
{
uint8_t row;
for (row = first; row <= last; row++) {
memset(&cov_mat[row][0], 0, sizeof(cov_mat[0][0]) * 24);
}
}
// zero specified range of columns in the state covariance matrix
void Ekf::zeroCols(float (&cov_mat)[_k_num_states][_k_num_states], uint8_t first, uint8_t last)
{
uint8_t row;
for (row = 0; row <= 23; row++) {
memset(&cov_mat[row][first], 0, sizeof(cov_mat[0][0]) * (1 + last - first));
}
}
bool Ekf::global_position_is_valid()
{
// return true if the position estimate is valid
// TODO implement proper check based on published GPS accuracy, innovation consistency checks and timeout status
return (_NED_origin_initialised && ((_time_last_imu - _time_last_gps) < 5e6) && _control_status.flags.gps);
}
// perform a vector cross product
Vector3f EstimatorInterface::cross_product(const Vector3f &vecIn1, const Vector3f &vecIn2)
{
Vector3f vecOut;
vecOut(0) = vecIn1(1)*vecIn2(2) - vecIn1(2)*vecIn2(1);
vecOut(1) = vecIn1(2)*vecIn2(0) - vecIn1(0)*vecIn2(2);
vecOut(2) = vecIn1(0)*vecIn2(1) - vecIn1(1)*vecIn2(0);
return vecOut;
}
// calculate the inverse rotation matrix from a quaternion rotation
Matrix3f EstimatorInterface::quat_to_invrotmat(const Quaternion quat)
{
float q00 = quat(0) * quat(0);
float q11 = quat(1) * quat(1);
float q22 = quat(2) * quat(2);
float q33 = quat(3) * quat(3);
float q01 = quat(0) * quat(1);
float q02 = quat(0) * quat(2);
float q03 = quat(0) * quat(3);
float q12 = quat(1) * quat(2);
float q13 = quat(1) * quat(3);
float q23 = quat(2) * quat(3);
Matrix3f dcm;
dcm(0,0) = q00 + q11 - q22 - q33;
dcm(1,1) = q00 - q11 + q22 - q33;
dcm(2,2) = q00 - q11 - q22 + q33;
dcm(0,1) = 2.0f * (q12 - q03);
dcm(0,2) = 2.0f * (q13 + q02);
dcm(1,0) = 2.0f * (q12 + q03);
dcm(1,2) = 2.0f * (q23 - q01);
dcm(2,0) = 2.0f * (q13 - q02);
dcm(2,1) = 2.0f * (q23 + q01);
return dcm;
}