Embedded Motion Control 2014 Group 12: Difference between revisions
Line 74: | Line 74: | ||
[[File:Spleten.png|center|thumb|600px| To avoid measuring the laser range of the wall behind the closest wall (due to a gap), an average of data points is taken. This way, if the gap isn't to big, the closest wall will always be noticed,]] | [[File:Spleten.png|center|thumb|600px| To avoid measuring the laser range of the wall behind the closest wall (due to a gap), an average of data points is taken. This way, if the gap isn't to big, the closest wall will always be noticed,]] | ||
[[File:Scheefstand.png|center|thumb|600px| Due to whatever reason (for instance, not completely straight walls to begin with) PICO can find itself being positioned at an angle within a corridor. When this happens, the action to keep on driving, will eventually lead to a collision with the wall. To prevent this, PICO will actively measure it's relative pitch and will try to correct for this. Some bounds are implemented to allow for a little deviation of the pitch, to assure that PICO's actuators do not show chattering like behaviour.]] | [[File:Scheefstand.png|center|thumb|600px| Due to whatever reason (for instance, not completely straight walls to begin with) PICO can find itself being positioned at an angle within a corridor. When this happens, the action to keep on driving, will eventually lead to a collision with the wall. To prevent this, PICO will actively measure it's relative pitch and will try to correct for this. Some bounds are implemented to allow for a little deviation of the pitch, to assure that PICO's actuators do not show chattering like behaviour.]] | ||
[[File:Double_corner.png|center|thumb|600px| A disadvantage of being reliant on proper tuning is shown in the picture above. If the tuning is done wrong, PICO will steer itself in a position in which it is unable to perform the | [[File:Double_corner.png|center|thumb|600px| A disadvantage of being reliant on proper tuning is shown in the picture above. If the tuning is done wrong, PICO will steer itself in a position in which it is unable to perform the proper action. For example, in the picture above, if PICO would now try to take the corner at exactly the same way as it did before, it would get to close to the left wall and the hard constraint would kick in, resulting in a standstill. Because of this, it is important to test extensively and to make sure all the situations are recognized correctly and the actions are properly tuned. ]] | ||
[[File:Widening.png|center|thumb|600px | [[File:Widening.png|center|thumb|600px| Another example of what would happen if the tuning is not done correctly. In a widened section, PICO could now decide to take a right turn followed by a left one, to follow the right wall, in stead of driving | ||
As can be seen in the figures above, it is quite difficult to use only laser range data to figure out the situations and still be robust. While this is good enough for a simple corridor challenge, other alternatives should be considered when regarding finding the exit of a maze. | |||
==Experiments== | ==Experiments== |
Revision as of 16:08, 25 May 2014
Introduction
Members of group 12
Groupmembers (email all) | ||
Name: | Student id: | Email: |
Anthom van Rijn | 0737682 | e-mail Anthom |
Jan Donkers | 0724801 | e-mail Jan |
Jeroen Willems | 0755833 | e-mail Jeroen |
Karel Drenth | 0863408 | e-mail Karel |
Corridor Challenge
The goal of the corridor challenge is to make pico drive autonomously trhough a corridor, recognize succesfully a T-junction and have him/her take this corner.
Planning
Week 1
- Lecture
Week 2
- C++ tutorials
- ROS tutorials
- SVN tutorials
- Run the first test on pico (safe_drive.cpp) to get some hands-on experience.
Week 3
- Start the actual coding, based on the safe_drive.cpp file. Paying special attention to robustness and exceptions.
- Have pico recognize situations (corridor, corner, t-junction,dead-end, etc.) and act accordingly
- Have the script succesfully run in simulation
Week 4
- Fine tuning of script
- Corridor Competition
Software Architecture
The initial choice was made to first create a robust, well working robot that would successfully recognize a situation using only the laser data, and then take an appropriate action. In this case, it's assumed that all junction/corners are right handed, although it should equally work for left handed situations.
Successfully recognize a situation and take the appropriate action
Be robust against deviations in corruption in the input data
As can be seen, it is important to calibrate the ranges of the laser data to make sure that the situation is evaluated correctly. If this is done wrong, the situation might be evaluated incorrectly and PICO might come to a halt (due to a hard constraint) and be unable to continue. To illustrate this, below are some possible pitfalls and the solution.
[[File:Widening.png|center|thumb|600px| Another example of what would happen if the tuning is not done correctly. In a widened section, PICO could now decide to take a right turn followed by a left one, to follow the right wall, in stead of driving
As can be seen in the figures above, it is quite difficult to use only laser range data to figure out the situations and still be robust. While this is good enough for a simple corridor challenge, other alternatives should be considered when regarding finding the exit of a maze.
Experiments
- 09-05-2013
Tested the provided safe_drive file, making small alteration to see the effects on Pico. Tested how hard constrains are handeld and some different safety protocols.
- 13-05-2013
Tried, and failed, to run corridor_challenge_v2 due to numerous bugs in the script (most importantly: stuck in situation zero, unsure what to do). Received help from tutor regarding tips and tricks regarding Qt creator for debugging, building/making C++ in ROS and running simulations. Information was used to create a "how to start: Pico" tutorial. Remainder of time spent on bugfixing.
Change log
09-05
Created scipt corridor_challenge.cpp with basic siteval to recognize conditions
13-05
- Testing corridor_challenge on Pico.
With new input from experiments: updated the corridor_challenge.cpp to corridor_challenge_v2.cpp. Brought the function sit-eval withing the callback loop for sensor messages. This way, the situation is evaluated and updated whenever new laser data is present. Some minor typo's. Added a situation that when things are to close (hard constraint) pico shuts down. After testing it was revealed that pico is stuck in condition 0 (does not know where he is).
15-05
- Revised corridor_challenge_v2.cpp -> renamed to corridorchallenge_v2.cpp and added some new functions:
- Extended laser 'vision' with left- and right diagonal view and updated amount of laser data used for each 'vision' vector.
- Extended the amount of possible situation PICO can be in to nine. Currently using:
- Corridor
- T-Junction (L+R)
- Crossing
- Corner (L+R)
- Dead End
- Exit
- Added a function that compares the left and right laser data and 'strafes' PICO to the middle using the y coordinate.
- Added an 'integrator'-like function that aligns the front vector of PICO to the walls of the corridor.
- Included front laser data to this function to ensure 'backup' when PICO comes too close to a wall.
- Added corresponding functions to new situations.
- Tweaked variables to ensure functioning simulations. (Allowance of some initial angle with reference to wall 'disturbance'). PICO is currently able to pass corridors, T-junctions and corners, for this however, the amount of possible situations PICO can be in is reduced for the sake of simplicity.
Final Design
The final design that was used was corridor_challenge_v2. It's goal was to use the laser data to recognize one of 9 conditions (ranging from freedom, corridor) and act in a preprogrammed way (outside of the loop) on how to handle these, and then turn on the loop again.
Result
Due to unforseen circumstances, corridorchallenge v3 failed to load on pico. We resorted back to v2, which, while less robust, was still able to find the t-junction and act accordingly. The result was first place in the limited speed catagory, with a time of around 20 seconds.
Maze Challenge
Test1
Planning
Changelog
Experiments
Final Design
Final result
We became first in the slow catogory.