mirror of https://github.com/ArduPilot/ardupilot
625 lines
29 KiB
C++
625 lines
29 KiB
C++
/// -*- tab-width: 4; Mode: C++; c-basic-offset: 4; indent-tabs-mode: nil -*-
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#include <AP_HAL/AP_HAL.h>
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#if HAL_CPU_CLASS >= HAL_CPU_CLASS_150
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#include "AP_NavEKF2.h"
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#include "AP_NavEKF2_core.h"
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#include <AP_AHRS/AP_AHRS.h>
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#include <AP_Vehicle/AP_Vehicle.h>
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#include <stdio.h>
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extern const AP_HAL::HAL& hal;
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/********************************************************
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* RESET FUNCTIONS *
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********************************************************/
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// Reset velocity states to last GPS measurement if available or to zero if in constant position mode or if PV aiding is not absolute
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// Do not reset vertical velocity using GPS as there is baro alt available to constrain drift
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void NavEKF2_core::ResetVelocity(void)
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{
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// Store the position before the reset so that we can record the reset delta
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velResetNE.x = stateStruct.velocity.x;
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velResetNE.y = stateStruct.velocity.y;
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if (PV_AidingMode != AID_ABSOLUTE) {
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stateStruct.velocity.zero();
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} else if (!gpsNotAvailable) {
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// reset horizontal velocity states to the GPS velocity
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stateStruct.velocity.x = gpsDataNew.vel.x; // north velocity from blended accel data
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stateStruct.velocity.y = gpsDataNew.vel.y; // east velocity from blended accel data
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}
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for (uint8_t i=0; i<imu_buffer_length; i++) {
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storedOutput[i].velocity.x = stateStruct.velocity.x;
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storedOutput[i].velocity.y = stateStruct.velocity.y;
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}
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outputDataNew.velocity.x = stateStruct.velocity.x;
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outputDataNew.velocity.y = stateStruct.velocity.y;
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outputDataDelayed.velocity.x = stateStruct.velocity.x;
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outputDataDelayed.velocity.y = stateStruct.velocity.y;
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// Calculate the position jump due to the reset
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velResetNE.x = stateStruct.velocity.x - velResetNE.x;
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velResetNE.y = stateStruct.velocity.y - velResetNE.y;
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// store the time of the reset
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lastVelReset_ms = imuSampleTime_ms;
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}
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// resets position states to last GPS measurement or to zero if in constant position mode
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void NavEKF2_core::ResetPosition(void)
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{
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// Store the position before the reset so that we can record the reset delta
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posResetNE.x = stateStruct.position.x;
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posResetNE.y = stateStruct.position.y;
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if (PV_AidingMode != AID_ABSOLUTE) {
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// reset all position state history to the last known position
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stateStruct.position.x = lastKnownPositionNE.x;
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stateStruct.position.y = lastKnownPositionNE.y;
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} else if (!gpsNotAvailable) {
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// write to state vector and compensate for offset between last GPs measurement and the EKF time horizon
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stateStruct.position.x = gpsDataNew.pos.x + 0.001f*gpsDataNew.vel.x*(float(imuDataDelayed.time_ms) - float(gpsDataNew.time_ms));
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stateStruct.position.y = gpsDataNew.pos.y + 0.001f*gpsDataNew.vel.y*(float(imuDataDelayed.time_ms) - float(gpsDataNew.time_ms));
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}
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for (uint8_t i=0; i<imu_buffer_length; i++) {
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storedOutput[i].position.x = stateStruct.position.x;
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storedOutput[i].position.y = stateStruct.position.y;
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}
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outputDataNew.position.x = stateStruct.position.x;
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outputDataNew.position.y = stateStruct.position.y;
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outputDataDelayed.position.x = stateStruct.position.x;
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outputDataDelayed.position.y = stateStruct.position.y;
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// Calculate the position jump due to the reset
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posResetNE.x = stateStruct.position.x - posResetNE.x;
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posResetNE.y = stateStruct.position.y - posResetNE.y;
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// store the time of the reset
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lastPosReset_ms = imuSampleTime_ms;
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}
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// reset the vertical position state using the last height measurement
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void NavEKF2_core::ResetHeight(void)
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{
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// write to the state vector
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stateStruct.position.z = -hgtMea;
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terrainState = stateStruct.position.z + rngOnGnd;
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for (uint8_t i=0; i<imu_buffer_length; i++) {
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storedOutput[i].position.z = stateStruct.position.z;
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}
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outputDataNew.position.z = stateStruct.position.z;
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outputDataDelayed.position.z = stateStruct.position.z;
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// Reset the vertical velocity state using GPS vertical velocity if we are airborne
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// Check that GPS vertical velocity data is available and can be used
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if (inFlight && !gpsNotAvailable && frontend->_fusionModeGPS == 0) {
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stateStruct.velocity.z = gpsDataNew.vel.z;
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} else if (onGround) {
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stateStruct.velocity.z = 0.0f;
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}
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for (uint8_t i=0; i<imu_buffer_length; i++) {
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storedOutput[i].velocity.z = stateStruct.velocity.z;
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}
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outputDataNew.velocity.z = stateStruct.velocity.z;
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outputDataDelayed.velocity.z = stateStruct.velocity.z;
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}
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// Reset the baro so that it reads zero at the current height
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// Reset the EKF height to zero
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// Adjust the EKf origin height so that the EKF height + origin height is the same as before
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// Return true if the height datum reset has been performed
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// If using a range finder for height do not reset and return false
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bool NavEKF2_core::resetHeightDatum(void)
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{
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// if we are using a range finder for height, return false
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if (frontend->_altSource == 1) {
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return false;
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}
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// record the old height estimate
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float oldHgt = -stateStruct.position.z;
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// reset the barometer so that it reads zero at the current height
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frontend->_baro.update_calibration();
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// reset the height state
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stateStruct.position.z = 0.0f;
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// adjust the height of the EKF origin so that the origin plus baro height before and afer the reset is the same
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if (validOrigin) {
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EKF_origin.alt += oldHgt*100;
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}
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return true;
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}
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/********************************************************
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* FUSE MEASURED_DATA *
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********************************************************/
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// select fusion of velocity, position and height measurements
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void NavEKF2_core::SelectVelPosFusion()
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{
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// Check if the magnetometer has been fused on that time step and the filter is running at faster than 200 Hz
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// If so, don't fuse measurements on this time step to reduce frame over-runs
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// Only allow one time slip to prevent high rate magnetometer data preventing fusion of other measurements
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if (magFusePerformed && dtIMUavg < 0.005f && !posVelFusionDelayed) {
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posVelFusionDelayed = true;
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return;
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} else {
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posVelFusionDelayed = false;
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}
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// read GPS data from the sensor and check for new data in the buffer
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readGpsData();
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gpsDataToFuse = storedGPS.recall(gpsDataDelayed,imuDataDelayed.time_ms);
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// Determine if we need to fuse position and velocity data on this time step
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if (gpsDataToFuse && PV_AidingMode == AID_ABSOLUTE) {
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// Don't fuse velocity data if GPS doesn't support it
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if (frontend->_fusionModeGPS <= 1) {
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fuseVelData = true;
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} else {
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fuseVelData = false;
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}
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fusePosData = true;
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} else {
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fuseVelData = false;
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fusePosData = false;
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}
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// Select height data to be fused from the available baro, range finder and GPS sources
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selectHeightForFusion();
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// If we are operating without any aiding, fuse in the last known position and zero velocity
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// to constrain tilt drift. This assumes a non-manoeuvring vehicle
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// Do this to coincide with the height fusion
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if (fuseHgtData && PV_AidingMode == AID_NONE) {
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gpsDataDelayed.vel.zero();
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// only fuse synthetic measurements when rate of change of velocity is less than 1g to reduce attitude errors due to launch acceleration
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if (accNavMag < 9.8f) {
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fuseVelData = true;
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} else {
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fuseVelData = false;
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}
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fusePosData = false;
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}
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// perform fusion
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if (fuseVelData || fusePosData || fuseHgtData) {
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FuseVelPosNED();
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// clear the flags to prevent repeated fusion of the same data
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fuseVelData = false;
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fuseHgtData = false;
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fusePosData = false;
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}
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}
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// fuse selected position, velocity and height measurements
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void NavEKF2_core::FuseVelPosNED()
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{
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// start performance timer
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hal.util->perf_begin(_perf_FuseVelPosNED);
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// health is set bad until test passed
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velHealth = false;
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posHealth = false;
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hgtHealth = false;
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// declare variables used to check measurement errors
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Vector3f velInnov;
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// declare variables used to control access to arrays
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bool fuseData[6] = {false,false,false,false,false,false};
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uint8_t stateIndex;
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uint8_t obsIndex;
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// declare variables used by state and covariance update calculations
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float posErr;
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Vector6 R_OBS; // Measurement variances used for fusion
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Vector6 R_OBS_DATA_CHECKS; // Measurement variances used for data checks only
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Vector6 observation;
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float SK;
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// perform sequential fusion of GPS measurements. This assumes that the
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// errors in the different velocity and position components are
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// uncorrelated which is not true, however in the absence of covariance
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// data from the GPS receiver it is the only assumption we can make
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// so we might as well take advantage of the computational efficiencies
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// associated with sequential fusion
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if (fuseVelData || fusePosData || fuseHgtData) {
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// set the GPS data timeout depending on whether airspeed data is present
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uint32_t gpsRetryTime;
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if (useAirspeed()) gpsRetryTime = frontend->gpsRetryTimeUseTAS_ms;
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else gpsRetryTime = frontend->gpsRetryTimeNoTAS_ms;
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// form the observation vector
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observation[0] = gpsDataDelayed.vel.x;
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observation[1] = gpsDataDelayed.vel.y;
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observation[2] = gpsDataDelayed.vel.z;
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observation[3] = gpsDataDelayed.pos.x;
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observation[4] = gpsDataDelayed.pos.y;
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observation[5] = -hgtMea;
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// calculate additional error in GPS position caused by manoeuvring
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posErr = frontend->gpsPosVarAccScale * accNavMag;
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// estimate the GPS Velocity, GPS horiz position and height measurement variances.
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// Use different errors if operating without external aiding using an assumed velocity of zero
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if (PV_AidingMode == AID_NONE) {
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if (tiltAlignComplete && motorsArmed) {
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// This is a compromise between corrections for gyro errors and reducing effect of manoeuvre accelerations on tilt estimate
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R_OBS[0] = sq(constrain_float(frontend->_noaidHorizVelNoise, 0.5f, 25.0f));
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} else {
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// Use a smaller value to give faster initial alignment
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R_OBS[0] = sq(0.5f);
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}
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R_OBS[1] = R_OBS[0];
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R_OBS[2] = R_OBS[0];
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for (uint8_t i=0; i<=2; i++) R_OBS_DATA_CHECKS[i] = R_OBS[i];
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} else {
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if (gpsSpdAccuracy > 0.0f) {
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// use GPS receivers reported speed accuracy if available and floor at value set by gps noise parameter
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R_OBS[0] = sq(constrain_float(gpsSpdAccuracy, frontend->_gpsHorizVelNoise, 50.0f));
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R_OBS[2] = sq(constrain_float(gpsSpdAccuracy, frontend->_gpsVertVelNoise, 50.0f));
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} else {
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// calculate additional error in GPS velocity caused by manoeuvring
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R_OBS[0] = sq(constrain_float(frontend->_gpsHorizVelNoise, 0.05f, 5.0f)) + sq(frontend->gpsNEVelVarAccScale * accNavMag);
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R_OBS[2] = sq(constrain_float(frontend->_gpsVertVelNoise, 0.05f, 5.0f)) + sq(frontend->gpsDVelVarAccScale * accNavMag);
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}
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R_OBS[1] = R_OBS[0];
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// For data integrity checks we use the same measurement variances as used to calculate the Kalman gains for all measurements except GPS horizontal velocity
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// For horizontal GPs velocity we don't want the acceptance radius to increase with reported GPS accuracy so we use a value based on best GPs perfomrance
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// plus a margin for manoeuvres. It is better to reject GPS horizontal velocity errors early
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for (uint8_t i=0; i<=2; i++) R_OBS_DATA_CHECKS[i] = sq(constrain_float(frontend->_gpsHorizVelNoise, 0.05f, 5.0f)) + sq(frontend->gpsNEVelVarAccScale * accNavMag);
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}
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R_OBS[3] = sq(constrain_float(frontend->_gpsHorizPosNoise, 0.1f, 10.0f)) + sq(posErr);
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R_OBS[4] = R_OBS[3];
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R_OBS[5] = posDownObsNoise;
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for (uint8_t i=3; i<=5; i++) R_OBS_DATA_CHECKS[i] = R_OBS[i];
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// if vertical GPS velocity data and an independant height source is being used, check to see if the GPS vertical velocity and altimeter
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// innovations have the same sign and are outside limits. If so, then it is likely aliasing is affecting
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// the accelerometers and we should disable the GPS and barometer innovation consistency checks.
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if (useGpsVertVel && fuseVelData && (frontend->_altSource != 2)) {
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// calculate innovations for height and vertical GPS vel measurements
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float hgtErr = stateStruct.position.z - observation[5];
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float velDErr = stateStruct.velocity.z - observation[2];
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// check if they are the same sign and both more than 3-sigma out of bounds
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if ((hgtErr*velDErr > 0.0f) && (sq(hgtErr) > 9.0f * (P[8][8] + R_OBS_DATA_CHECKS[5])) && (sq(velDErr) > 9.0f * (P[5][5] + R_OBS_DATA_CHECKS[2]))) {
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badIMUdata = true;
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} else {
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badIMUdata = false;
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}
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}
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// calculate innovations and check GPS data validity using an innovation consistency check
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// test position measurements
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if (fusePosData) {
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// test horizontal position measurements
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innovVelPos[3] = stateStruct.position.x - observation[3];
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innovVelPos[4] = stateStruct.position.y - observation[4];
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varInnovVelPos[3] = P[6][6] + R_OBS_DATA_CHECKS[3];
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varInnovVelPos[4] = P[7][7] + R_OBS_DATA_CHECKS[4];
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// apply an innovation consistency threshold test, but don't fail if bad IMU data
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float maxPosInnov2 = sq(MAX(0.01f * (float)frontend->_gpsPosInnovGate, 1.0f))*(varInnovVelPos[3] + varInnovVelPos[4]);
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posTestRatio = (sq(innovVelPos[3]) + sq(innovVelPos[4])) / maxPosInnov2;
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posHealth = ((posTestRatio < 1.0f) || badIMUdata);
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// declare a timeout condition if we have been too long without data or not aiding
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posTimeout = (((imuSampleTime_ms - lastPosPassTime_ms) > gpsRetryTime) || PV_AidingMode == AID_NONE);
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// use position data if healthy or timed out
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if (posHealth || posTimeout) {
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posHealth = true;
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lastPosPassTime_ms = imuSampleTime_ms;
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// if timed out or outside the specified uncertainty radius, reset to the GPS
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if (posTimeout || ((P[6][6] + P[7][7]) > sq(float(frontend->_gpsGlitchRadiusMax)))) {
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// reset the position to the current GPS position
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ResetPosition();
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// reset the velocity to the GPS velocity
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ResetVelocity();
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// don't fuse GPS data on this time step
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fusePosData = false;
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fuseVelData = false;
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// Reset the position variances and corresponding covariances to a value that will pass the checks
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zeroRows(P,6,7);
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zeroCols(P,6,7);
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P[6][6] = sq(float(0.5f*frontend->_gpsGlitchRadiusMax));
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P[7][7] = P[6][6];
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// Reset the normalised innovation to avoid failing the bad fusion tests
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posTestRatio = 0.0f;
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velTestRatio = 0.0f;
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}
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} else {
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posHealth = false;
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}
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}
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// test velocity measurements
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if (fuseVelData) {
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// test velocity measurements
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uint8_t imax = 2;
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// Don't fuse vertical velocity observations if inhibited by the user or if we are using synthetic data
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if (frontend->_fusionModeGPS >= 1 || PV_AidingMode != AID_ABSOLUTE) {
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imax = 1;
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}
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float innovVelSumSq = 0; // sum of squares of velocity innovations
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float varVelSum = 0; // sum of velocity innovation variances
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for (uint8_t i = 0; i<=imax; i++) {
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// velocity states start at index 3
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stateIndex = i + 3;
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// calculate innovations using blended and single IMU predicted states
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velInnov[i] = stateStruct.velocity[i] - observation[i]; // blended
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// calculate innovation variance
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varInnovVelPos[i] = P[stateIndex][stateIndex] + R_OBS_DATA_CHECKS[i];
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// sum the innovation and innovation variances
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innovVelSumSq += sq(velInnov[i]);
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varVelSum += varInnovVelPos[i];
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}
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// apply an innovation consistency threshold test, but don't fail if bad IMU data
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// calculate the test ratio
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velTestRatio = innovVelSumSq / (varVelSum * sq(MAX(0.01f * (float)frontend->_gpsVelInnovGate, 1.0f)));
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// fail if the ratio is greater than 1
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velHealth = ((velTestRatio < 1.0f) || badIMUdata);
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// declare a timeout if we have not fused velocity data for too long or not aiding
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velTimeout = (((imuSampleTime_ms - lastVelPassTime_ms) > gpsRetryTime) || PV_AidingMode == AID_NONE);
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// use velocity data if healthy, timed out, or in constant position mode
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if (velHealth || velTimeout) {
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velHealth = true;
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// restart the timeout count
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lastVelPassTime_ms = imuSampleTime_ms;
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// If we are doing full aiding and velocity fusion times out, reset to the GPS velocity
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if (PV_AidingMode == AID_ABSOLUTE && velTimeout) {
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// reset the velocity to the GPS velocity
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ResetVelocity();
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// don't fuse GPS velocity data on this time step
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fuseVelData = false;
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// Reset the normalised innovation to avoid failing the bad fusion tests
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velTestRatio = 0.0f;
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}
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} else {
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velHealth = false;
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}
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}
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// test height measurements
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if (fuseHgtData) {
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// calculate height innovations
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innovVelPos[5] = stateStruct.position.z - observation[5];
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varInnovVelPos[5] = P[8][8] + R_OBS_DATA_CHECKS[5];
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// calculate the innovation consistency test ratio
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hgtTestRatio = sq(innovVelPos[5]) / (sq(MAX(0.01f * (float)frontend->_hgtInnovGate, 1.0f)) * varInnovVelPos[5]);
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// fail if the ratio is > 1, but don't fail if bad IMU data
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hgtHealth = ((hgtTestRatio < 1.0f) || badIMUdata);
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// Fuse height data if healthy or timed out or in constant position mode
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if (hgtHealth || hgtTimeout || (PV_AidingMode == AID_NONE && onGround)) {
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// Calculate a filtered value to be used by pre-flight health checks
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// We need to filter because wind gusts can generate significant baro noise and we want to be able to detect bias errors in the inertial solution
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if (onGround) {
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float dtBaro = (imuSampleTime_ms - lastHgtPassTime_ms)*1.0e-3f;
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const float hgtInnovFiltTC = 2.0f;
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float alpha = constrain_float(dtBaro/(dtBaro+hgtInnovFiltTC),0.0f,1.0f);
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hgtInnovFiltState += (innovVelPos[5]-hgtInnovFiltState)*alpha;
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} else {
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hgtInnovFiltState = 0.0f;
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}
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// if timed out, reset the height
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if (hgtTimeout) {
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ResetHeight();
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hgtTimeout = false;
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}
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// If we have got this far then declare the height data as healthy and reset the timeout counter
|
|
hgtHealth = true;
|
|
lastHgtPassTime_ms = imuSampleTime_ms;
|
|
}
|
|
}
|
|
|
|
// set range for sequential fusion of velocity and position measurements depending on which data is available and its health
|
|
if (fuseVelData && velHealth) {
|
|
fuseData[0] = true;
|
|
fuseData[1] = true;
|
|
if (useGpsVertVel) {
|
|
fuseData[2] = true;
|
|
}
|
|
tiltErrVec.zero();
|
|
}
|
|
if (fusePosData && posHealth) {
|
|
fuseData[3] = true;
|
|
fuseData[4] = true;
|
|
tiltErrVec.zero();
|
|
}
|
|
if (fuseHgtData && hgtHealth) {
|
|
fuseData[5] = true;
|
|
}
|
|
|
|
// fuse measurements sequentially
|
|
for (obsIndex=0; obsIndex<=5; obsIndex++) {
|
|
if (fuseData[obsIndex]) {
|
|
stateIndex = 3 + obsIndex;
|
|
// calculate the measurement innovation, using states from a different time coordinate if fusing height data
|
|
// adjust scaling on GPS measurement noise variances if not enough satellites
|
|
if (obsIndex <= 2)
|
|
{
|
|
innovVelPos[obsIndex] = stateStruct.velocity[obsIndex] - observation[obsIndex];
|
|
R_OBS[obsIndex] *= sq(gpsNoiseScaler);
|
|
}
|
|
else if (obsIndex == 3 || obsIndex == 4) {
|
|
innovVelPos[obsIndex] = stateStruct.position[obsIndex-3] - observation[obsIndex];
|
|
R_OBS[obsIndex] *= sq(gpsNoiseScaler);
|
|
} else if (obsIndex == 5) {
|
|
innovVelPos[obsIndex] = stateStruct.position[obsIndex-3] - observation[obsIndex];
|
|
const float gndMaxBaroErr = 4.0f;
|
|
const float gndBaroInnovFloor = -0.5f;
|
|
|
|
if(getTouchdownExpected()) {
|
|
// when a touchdown is expected, floor the barometer innovation at gndBaroInnovFloor
|
|
// constrain the correction between 0 and gndBaroInnovFloor+gndMaxBaroErr
|
|
// this function looks like this:
|
|
// |/
|
|
//---------|---------
|
|
// ____/|
|
|
// / |
|
|
// / |
|
|
innovVelPos[5] += constrain_float(-innovVelPos[5]+gndBaroInnovFloor, 0.0f, gndBaroInnovFloor+gndMaxBaroErr);
|
|
}
|
|
}
|
|
|
|
// calculate the Kalman gain and calculate innovation variances
|
|
varInnovVelPos[obsIndex] = P[stateIndex][stateIndex] + R_OBS[obsIndex];
|
|
SK = 1.0f/varInnovVelPos[obsIndex];
|
|
for (uint8_t i= 0; i<=15; i++) {
|
|
Kfusion[i] = P[i][stateIndex]*SK;
|
|
}
|
|
|
|
// inhibit magnetic field state estimation by setting Kalman gains to zero
|
|
if (!inhibitMagStates) {
|
|
for (uint8_t i = 16; i<=21; i++) {
|
|
Kfusion[i] = P[i][stateIndex]*SK;
|
|
}
|
|
} else {
|
|
for (uint8_t i = 16; i<=21; i++) {
|
|
Kfusion[i] = 0.0f;
|
|
}
|
|
}
|
|
|
|
// inhibit wind state estimation by setting Kalman gains to zero
|
|
if (!inhibitWindStates) {
|
|
Kfusion[22] = P[22][stateIndex]*SK;
|
|
Kfusion[23] = P[23][stateIndex]*SK;
|
|
} else {
|
|
Kfusion[22] = 0.0f;
|
|
Kfusion[23] = 0.0f;
|
|
}
|
|
|
|
// inhibit position state modification if we are not aiding
|
|
if (PV_AidingMode == AID_NONE) {
|
|
Kfusion[6] = 0.0f;
|
|
Kfusion[7] = 0.0f;
|
|
}
|
|
|
|
// zero the attitude error state - by definition it is assumed to be zero before each observaton fusion
|
|
stateStruct.angErr.zero();
|
|
|
|
// calculate state corrections and re-normalise the quaternions for states predicted using the blended IMU data
|
|
for (uint8_t i = 0; i<=stateIndexLim; i++) {
|
|
statesArray[i] = statesArray[i] - Kfusion[i] * innovVelPos[obsIndex];
|
|
}
|
|
|
|
// the first 3 states represent the angular misalignment vector. This is
|
|
// is used to correct the estimated quaternion
|
|
stateStruct.quat.rotate(stateStruct.angErr);
|
|
|
|
// sum the attitude error from velocity and position fusion only
|
|
// used as a metric for convergence monitoring
|
|
if (obsIndex != 5) {
|
|
tiltErrVec += stateStruct.angErr;
|
|
}
|
|
|
|
// update the covariance - take advantage of direct observation of a single state at index = stateIndex to reduce computations
|
|
// this is a numerically optimised implementation of standard equation P = (I - K*H)*P;
|
|
for (uint8_t i= 0; i<=stateIndexLim; i++) {
|
|
for (uint8_t j= 0; j<=stateIndexLim; j++)
|
|
{
|
|
KHP[i][j] = Kfusion[i] * P[stateIndex][j];
|
|
}
|
|
}
|
|
for (uint8_t i= 0; i<=stateIndexLim; i++) {
|
|
for (uint8_t j= 0; j<=stateIndexLim; j++) {
|
|
P[i][j] = P[i][j] - KHP[i][j];
|
|
}
|
|
}
|
|
}
|
|
}
|
|
}
|
|
|
|
// force the covariance matrix to be symmetrical and limit the variances to prevent ill-condiioning.
|
|
ForceSymmetry();
|
|
ConstrainVariances();
|
|
|
|
// stop performance timer
|
|
hal.util->perf_end(_perf_FuseVelPosNED);
|
|
}
|
|
|
|
/********************************************************
|
|
* MISC FUNCTIONS *
|
|
********************************************************/
|
|
|
|
// select the height measurement to be fused from the available baro, range finder and GPS sources
|
|
void NavEKF2_core::selectHeightForFusion()
|
|
{
|
|
// Read range finder data and check for new data in the buffer
|
|
// This data is used by both height and optical flow fusion processing
|
|
readRangeFinder();
|
|
rangeDataToFuse = storedRange.recall(rangeDataDelayed,imuDataDelayed.time_ms);
|
|
|
|
// read baro height data from the sensor and check for new data in the buffer
|
|
readBaroData();
|
|
baroDataToFuse = storedBaro.recall(baroDataDelayed, imuDataDelayed.time_ms);
|
|
|
|
// determine if we should be using a height source other than baro
|
|
bool usingRangeForHgt = (frontend->_altSource == 1 && imuSampleTime_ms - rngValidMeaTime_ms < 500 && frontend->_fusionModeGPS == 3);
|
|
bool usingGpsForHgt = (frontend->_altSource == 2 && imuSampleTime_ms - lastTimeGpsReceived_ms < 500 && validOrigin);
|
|
|
|
// if there is new baro data to fuse, calculate filterred baro data required by other processes
|
|
if (baroDataToFuse) {
|
|
// calculate offset to baro data that enables baro to be used as a backup if we are using other height sources
|
|
if (usingRangeForHgt || usingGpsForHgt) {
|
|
calcFiltBaroOffset();
|
|
}
|
|
// filtered baro data used to provide a reference for takeoff
|
|
// it is is reset to last height measurement on disarming in performArmingChecks()
|
|
if (!getTakeoffExpected()) {
|
|
const float gndHgtFiltTC = 0.5f;
|
|
const float dtBaro = frontend->hgtAvg_ms*1.0e-3f;
|
|
float alpha = constrain_float(dtBaro / (dtBaro+gndHgtFiltTC),0.0f,1.0f);
|
|
meaHgtAtTakeOff += (baroDataDelayed.hgt-meaHgtAtTakeOff)*alpha;
|
|
}
|
|
}
|
|
|
|
// Select the height measurement source
|
|
if (rangeDataToFuse && usingRangeForHgt) {
|
|
// using range finder data
|
|
// correct for tilt using a flat earth model
|
|
if (prevTnb.c.z >= 0.7) {
|
|
hgtMea = MAX(rangeDataDelayed.rng * prevTnb.c.z, rngOnGnd);
|
|
// enable fusion
|
|
fuseHgtData = true;
|
|
// set the observation noise
|
|
posDownObsNoise = sq(constrain_float(frontend->_rngNoise, 0.1f, 10.0f));
|
|
} else {
|
|
// disable fusion if tilted too far
|
|
fuseHgtData = false;
|
|
}
|
|
} else if (gpsDataToFuse && usingGpsForHgt) {
|
|
// using GPS data
|
|
hgtMea = gpsDataDelayed.hgt;
|
|
// enable fusion
|
|
fuseHgtData = true;
|
|
// set the observation noise to the horizontal GPS noise plus a scaler becasue GPS vertical position is usually less accurate
|
|
// TODO use VDOP/HDOP, reported accuracy or a separate parameter
|
|
posDownObsNoise = sq(constrain_float(frontend->_gpsHorizPosNoise * 1.5f, 0.1f, 10.0f));
|
|
} else if (baroDataToFuse && !usingRangeForHgt && !usingGpsForHgt) {
|
|
// using Baro data
|
|
hgtMea = baroDataDelayed.hgt - baroHgtOffset;
|
|
// enable fusion
|
|
fuseHgtData = true;
|
|
// set the observation noise
|
|
posDownObsNoise = sq(constrain_float(frontend->_baroAltNoise, 0.1f, 10.0f));
|
|
// reduce weighting (increase observation noise) on baro if we are likely to be in ground effect
|
|
if (getTakeoffExpected() || getTouchdownExpected()) {
|
|
posDownObsNoise *= frontend->gndEffectBaroScaler;
|
|
}
|
|
} else {
|
|
fuseHgtData = false;
|
|
}
|
|
|
|
// If we haven't fused height data for a while, then declare the height data as being timed out
|
|
// set timeout period based on whether we have vertical GPS velocity available to constrain drift
|
|
hgtRetryTime_ms = (useGpsVertVel && !velTimeout) ? frontend->hgtRetryTimeMode0_ms : frontend->hgtRetryTimeMode12_ms;
|
|
if (imuSampleTime_ms - lastHgtPassTime_ms > hgtRetryTime_ms) {
|
|
hgtTimeout = true;
|
|
} else {
|
|
hgtTimeout = false;
|
|
}
|
|
}
|
|
|
|
#endif // HAL_CPU_CLASS
|