Embedded Motion Control 2016 Group 2
Group Members
0779760 | Ilias Aouaj |
0818316 | Florian Bastiaens |
0755206 | Yannick Knops |
Goal
The goal of the maze competition project is to create software that lets the pico robot solve a maze and drive through it fully autonomous as fast as possible. In this maze there will be certain obstacles that the robot has to overcome during the solving of the maze, for example doors, open spaces, dead ends and loops in the maze.
Group progress
Week4
In this week a major shift occured in our group. 2 group members left, and what we initially did was too complex. We decided to start from scratch. Completing the maze challenge was our main priority. We decided to use potential only the x-direction to keep the robot positioned between the walls. We didn't expect any problems in y-direction, so the speed in x-direction remains constant. A corridor detection was implemented based on the lrf data left and right from the robot.
Initial design
Initial Idea
This is the report for the deadline of 27-04 about our initial thoughts of how we will structure the software for a autonomous maze solving robot.
Requirements
Based on the restrictions of the maze competition and the conditions that have to be met, the following requirements are set:
- The maze has to be solved by the robot autonomously within a given timeframe
- The robot has to avoid collisions with the walls and other obstacles
- The robot has to recognize doors
- The robot cannot be idle for a certain time
Functions
To keep a well structured overview of the functions, they are divided into two categories: the basic
hardware functions and the skills. The basic functions are the lowest level and they represent the
hardware. The skills are combinations of basic functions to complete more difficult tasks
The basic functions are:
- Translation using omniwheel actuators
- Rotation using omniwheel actuators
- Scan using the Laser Range Finder (LRF)
- Scan distance driven using odometry
These functions can then be combined to create the following skills:
- Drive:
- The robot moves using this skill. It uses the basic functions driving straight and turning. It
- also uses another skill, collision detection.
- Collision detection/prevention:
- The collision detection skill prevents the robot from hitting walls while navigating through the
- maze. It provides live feedback control from the LRF by detecting the distance to the walls
- and correcting the robots movement.
- Junction recognition:
- This skill is used to recognize junctions and corners in the maze. When the robot is moving
- through a corridor, the presence of a junction or corner can be determined from the data of the
- LRF. This data needs to be processed to make the robot aware of the junctions and corners.
- Mapping:
- This function maps the corners and junctions of the maze as nodes and corridors. The function
- is essential for preventing loops while solving the maze. This skill depends on the Junction
- recognition skill.
- Localization:
- This skill will locate the robot with respect to the maze. This skill will probably use a combination
- of the LRF and odometry data to determine a location in the map created with the
- mapping skill.
- Recognizing doors:
- As previously described, the robot should be able to open doors by beeping in front of them.
- Therefore the system has to recognize a door to prevent beeping at every obstacle and thus
- wasting time.
Specifications
Specifications related to the requirements are estimated in this section.
- Two attempts are allowed within a total time of 7 minutes.
- The jury decides if a robot bumps into a wall or obstacle. If so, the attempt is over.
- The robot has to recognize doors. Using a sound signal, the door can be opened.
- If the robot is idle for more then 30 seconds, the attempt is over
Components
For this project, the robot named pico will be used. The hardware that pico contains can be divided in the part below:
- Actuator:
- Holonomic base with omni-wheels
- Sensors:
- Laser Range Finder (LRF)
- Wheel encoders(odometry)
- Computer:
- Intel i7
- Running Ubuntu 14.04
Interfaces
The way the software works can be seen in the figure below.
This is the example of
the care robot and it is to a large extent similar to this project.
The software can be divided in 5 contexts:
- Challenge context:
- The challenge context is the goal that needs to be accomplished
- Skills context:
- The skill context contains the skills that are needed accomplish the goal
- Task context:
- The task context contains decisions that have to be made. For example which turn to take.
- Robot context:
- The Robot context contains the sensor and actuators of the robot.
- environment context:
- The environment context contains the data where the robot is with respect to the direct environment, for example the walls and doors, and with respect to the maze.