Dynamic collision avoidance of multiple moving objects

Over the past decades, the demand for autonomous robots had increased in different areas to replace humans for difficult and tedious tasks that required high precision and high speed in harsh conditions and harmful environments. Autonomous robots desired for the ability to navigate in a dynamic envi...

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Main Author: Hoe, Chin Lun.
Other Authors: Pang Wee Ching
Format: Final Year Project
Language:English
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/10356/50428
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-504282023-03-04T18:31:53Z Dynamic collision avoidance of multiple moving objects Hoe, Chin Lun. Pang Wee Ching Seet Gim Lee, Gerald School of Mechanical and Aerospace Engineering Robotics Research Centre DRNTU::Engineering::Mechanical engineering::Mechatronics Over the past decades, the demand for autonomous robots had increased in different areas to replace humans for difficult and tedious tasks that required high precision and high speed in harsh conditions and harmful environments. Autonomous robots desired for the ability to navigate in a dynamic environment without colliding with obstacles. Minimum Potential Field method and A-star Search method were developed to enable an autonomous robot to avoid collision with moving obstacles and stationary obstacles. Besides, limitations and restrictions for Minimum Potential Field method and A-star Search method which were applied in dynamic obstacle avoidance were resolved. By using GLUT, virtual work space and virtual entities were established. Efficiency of Minimum Potential Field method and A-star Search method was evaluated through five sets of virtual simulation. Average path length, average number of retraction and average execution time were used to analyze the efficiency of Minimum Potential Field method and A-star Search method. Minimum Potential Field method and A-star Search method are efficient in different aspects. Minimum Potential Field method is efficient for a moving entity to avoid obstacles and reach its destination in short execution time. A-star Search method is efficient for a moving entity to avoid obstacles and reach its destination in a short path generated. Mix reality simulation was suggested to examine performance of Minimum Potential Field method and A-star Search method in a real robot. Application of Minimum Potential Field method and A-star Search method in a three dimensional dynamic obstacle avoidance problem was highlighted. Bachelor of Engineering (Mechanical Engineering) 2012-06-04T07:40:38Z 2012-06-04T07:40:38Z 2012 2012 Final Year Project (FYP) http://hdl.handle.net/10356/50428 en Nanyang Technological University 164 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Mechanical engineering::Mechatronics
spellingShingle DRNTU::Engineering::Mechanical engineering::Mechatronics
Hoe, Chin Lun.
Dynamic collision avoidance of multiple moving objects
description Over the past decades, the demand for autonomous robots had increased in different areas to replace humans for difficult and tedious tasks that required high precision and high speed in harsh conditions and harmful environments. Autonomous robots desired for the ability to navigate in a dynamic environment without colliding with obstacles. Minimum Potential Field method and A-star Search method were developed to enable an autonomous robot to avoid collision with moving obstacles and stationary obstacles. Besides, limitations and restrictions for Minimum Potential Field method and A-star Search method which were applied in dynamic obstacle avoidance were resolved. By using GLUT, virtual work space and virtual entities were established. Efficiency of Minimum Potential Field method and A-star Search method was evaluated through five sets of virtual simulation. Average path length, average number of retraction and average execution time were used to analyze the efficiency of Minimum Potential Field method and A-star Search method. Minimum Potential Field method and A-star Search method are efficient in different aspects. Minimum Potential Field method is efficient for a moving entity to avoid obstacles and reach its destination in short execution time. A-star Search method is efficient for a moving entity to avoid obstacles and reach its destination in a short path generated. Mix reality simulation was suggested to examine performance of Minimum Potential Field method and A-star Search method in a real robot. Application of Minimum Potential Field method and A-star Search method in a three dimensional dynamic obstacle avoidance problem was highlighted.
author2 Pang Wee Ching
author_facet Pang Wee Ching
Hoe, Chin Lun.
format Final Year Project
author Hoe, Chin Lun.
author_sort Hoe, Chin Lun.
title Dynamic collision avoidance of multiple moving objects
title_short Dynamic collision avoidance of multiple moving objects
title_full Dynamic collision avoidance of multiple moving objects
title_fullStr Dynamic collision avoidance of multiple moving objects
title_full_unstemmed Dynamic collision avoidance of multiple moving objects
title_sort dynamic collision avoidance of multiple moving objects
publishDate 2012
url http://hdl.handle.net/10356/50428
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