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LUNAR Lunar Unmanned Navigation and Acquisition Robot SECON I Senior Design I Final Design Review November 29, 2007
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Team 1 Dr. Bryan Jones, Advisor Ted Copeland Bryan Reese Theresa Weisenberger Jeffrey Lorens Block DetectionXX Path DetectionXX Object AvoidanceXX CommunicationXX
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Outline Competition Overview Practical Constraints Technical Constraints Models Testing Spring Semester Goals
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Competition: Summary Lunar mineral harvesting robot Color-coded blocks with RFID tags Collect maximum of four blocks and bring them back to home base Final rounds head-to- head
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Competition: Court Home Bases Red/Blue/White Blocks X Black Blocks Pea Gravel Sand Paint 6 ft Symmetrical Block Placement IR Beacons (2.5kHz and 4 kHz) on Home Bases Note: Grid will not be on the field during competition X
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Competition: Approach
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Outline Competition Overview Practical Constraints Manufacturability Sustainability Technical Constraints Testing Spring Semester Goals
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Practical Constraints TypeNameDescription ManufacturabilityModularity The robot must be designed as a set of subsystems that can be replaced independent of other subsystems. SustainabilityDependability The robot must be sturdy enough to withstand repeated use.
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Modularity Team One Block Detection Path Planning Object Avoidance Home Base Detection Team Two Locomotion Block Retrieval Block Storage
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Modularity-Team 1 Subsystems Environmental Sensing IR Distance Sensors Limit Switches Vision Block Detection IR Sensor CMUCam3
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Sustainability Robot must be able to run full round (6 min) without repair. Rugged enough to sustain normal wear. Only minor maintenance between rounds. Easily changeable battery
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Sustainability Battery Life: 5 rounds on 1 charge Performs consistently after multiple tests Normally no maintenance between rounds Battery slips into sleeve
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Outline Competition Overview Practical Constraints Technical Constraints Models Testing Spring Semester Goals
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Technical Constraints NameDescription Block Detection The robot must be able to detect and distinguish among red, blue, black, and white blocks. Path Planning The robot must find a path to a target block while avoiding any obstacles.
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Block Detection IR distance sensor Requests color identification from camera Color Differentiation Prioritize block pick up Minimize the time spent collecting blocks
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Path Planning Center Line Detection Black block Reference point Block Location Home Base Detection
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Outline Competition Overview Practical Constraints Technical Constraints Models Testing Spring Semester Goals
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Physical Model Camera Block Detection Sensor Environmental Distance Sensors Collision Detection Sensors
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Physical Model Environmental Distance Sensors Block Detection Sensor Collision Detection Sensors
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Wall Detection IR Distance Sensors Limit Switches (4) Environmental Sensing Subsystem Vision Subsystem Distance to wall CMUCam3 RS-232 bidirectional serial SPI bidirectional serial Block Detecting IR Distance Sensors Block Present Block Color PIC18F4420 Microcontroller Block Collected Team 2 Microcontroller Drive Commands Front Information Model Back Right Side Left Side
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Outline Competition Overview Practical Constraints Technical Constraints Models Testing Spring Semester Goals
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Testing-Block Detection Camera returns mean color value of block PIC determines block color Tested at each of three possible locations Subsystems Tested CMUCam3 RS-232 Serial Communication
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Block Detection Results Color Identified by Vision Subsystem Block ColorLocation ALocation BLocation C Blue White Red
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Testing-Path Planning Robot starts at home base Measures center-line detection accuracy Subsystems Tested IR Distance Sensors SPI Communication Analog-to-Digital Converter x x x x x
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Results-Path Planning Trial Distance from Center (inches) Percent Error 100% 20.6251.74% 312.78% 40.250.69% 50.51.39%
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Outline Competition Overview Practical Constraints Technical Constraints Models Testing Spring Semester Goals
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More precise environmental sensing Camera integration Enhanced object avoidance system Playoff round capability
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References Huntsville IEEE Section. "SoutheastCon 2008 Hardware Competition Rules: Return to the Moon," IEEE SoutheastCon 2008. 2007. Available: http://ewh.ieee.org/reg/3/secon/08/competition. html http://ewh.ieee.org/reg/3/secon/08/competition. html Questions?
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