A machine learning approach to detect surface features for automatic robot taping

Taping is a common process in part manufacturing, usually performed before surface treatment operations are done. Previous studies have come up with an automatic robot taping method for parts with general and simple surfaces, able to generate a 3D model on the fly and plan out the optimum path for t...

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Main Author: Chong, Bing Sheng
Other Authors: Chen I-Ming
Format: Final Year Project
Language:English
Published: 2019
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Online Access:http://hdl.handle.net/10356/78775
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-787752023-03-04T18:38:28Z A machine learning approach to detect surface features for automatic robot taping Chong, Bing Sheng Chen I-Ming School of Mechanical and Aerospace Engineering Robotics Research Centre Yuan Qi Long Engineering::Mechanical engineering::Robots Taping is a common process in part manufacturing, usually performed before surface treatment operations are done. Previous studies have come up with an automatic robot taping method for parts with general and simple surfaces, able to generate a 3D model on the fly and plan out the optimum path for taping operations with force feedback to ensure adequate adhesion of the tape to the surface. However, more work needed to be done for the automatic robot taping system to be able to work with parts with complex geometries, such as gaps and holes. This paper aims to create a machine learning model that can analyze force feedback data from the load cell and potentiometer to identify the surface features in contact with the taping tool head, as well as identify the incidence angle of taping tool head to the surface. The sensors were first assembled onto the taping tool head and calibrated properly. Then, a regression model was designed and trained to identify the incidence angle. The regression model had an error range of 15%. On the other hand, a classification model was designed and trained to identify the contact surface between three categories of surfaces: top-hole, no-holes and bottom-hole surface. An accuracy of 95.3% was achieved for the classification model. Using these two models we were able to identify the orientation of the tool head and the surface features on the model, providing valuable insight for the tool head to make adjustment such that optimum adhesion of tape can be achieved. Bachelor of Engineering (Mechanical Engineering) 2019-06-27T01:51:01Z 2019-06-27T01:51:01Z 2019 Final Year Project (FYP) http://hdl.handle.net/10356/78775 en Nanyang Technological University 52 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 Engineering::Mechanical engineering::Robots
spellingShingle Engineering::Mechanical engineering::Robots
Chong, Bing Sheng
A machine learning approach to detect surface features for automatic robot taping
description Taping is a common process in part manufacturing, usually performed before surface treatment operations are done. Previous studies have come up with an automatic robot taping method for parts with general and simple surfaces, able to generate a 3D model on the fly and plan out the optimum path for taping operations with force feedback to ensure adequate adhesion of the tape to the surface. However, more work needed to be done for the automatic robot taping system to be able to work with parts with complex geometries, such as gaps and holes. This paper aims to create a machine learning model that can analyze force feedback data from the load cell and potentiometer to identify the surface features in contact with the taping tool head, as well as identify the incidence angle of taping tool head to the surface. The sensors were first assembled onto the taping tool head and calibrated properly. Then, a regression model was designed and trained to identify the incidence angle. The regression model had an error range of 15%. On the other hand, a classification model was designed and trained to identify the contact surface between three categories of surfaces: top-hole, no-holes and bottom-hole surface. An accuracy of 95.3% was achieved for the classification model. Using these two models we were able to identify the orientation of the tool head and the surface features on the model, providing valuable insight for the tool head to make adjustment such that optimum adhesion of tape can be achieved.
author2 Chen I-Ming
author_facet Chen I-Ming
Chong, Bing Sheng
format Final Year Project
author Chong, Bing Sheng
author_sort Chong, Bing Sheng
title A machine learning approach to detect surface features for automatic robot taping
title_short A machine learning approach to detect surface features for automatic robot taping
title_full A machine learning approach to detect surface features for automatic robot taping
title_fullStr A machine learning approach to detect surface features for automatic robot taping
title_full_unstemmed A machine learning approach to detect surface features for automatic robot taping
title_sort machine learning approach to detect surface features for automatic robot taping
publishDate 2019
url http://hdl.handle.net/10356/78775
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