Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor
The present paper illustrates the development of generative feature recognition of cylindrical part model that emphasize on recognition of chamfer and fillet.Without automation, manual work on recognizing these features are tedious and time consuming. Chamfers were recognized by conical surface whil...
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Faculty of Mechanical Engineering Universiti Teknologi MARA (UiTM)
2018
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my.uitm.ir.393932020-12-21T01:29:35Z http://ir.uitm.edu.my/id/eprint/39393/ Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor Zubair, Ahmad Faiz Abu Mansor, Mohd Salman TJ Mechanical engineering and machinery Mechanics applied to machinery. Dynamics Machine design and drawing The present paper illustrates the development of generative feature recognition of cylindrical part model that emphasize on recognition of chamfer and fillet.Without automation, manual work on recognizing these features are tedious and time consuming. Chamfers were recognized by conical surface while constant radius fillets on concave and convex edges were recognized by circular faces and edges. Cylindrical stock model, sub-delta volume for finishing (SDVF) of feature’s recognized and sub-delta volume for roughing of the part model were generated. The resulted volume decomposition in term of delta volume were then compared with manual calculation of feature’s delta volume to achieve the differential error. Two examples of part model were tested and the results show less than zero differential error. These prove that the algorithm is able to recognize cylindrical part model chamfers and fillets feature. Faculty of Mechanical Engineering Universiti Teknologi MARA (UiTM) 2018 Article PeerReviewed text en http://ir.uitm.edu.my/id/eprint/39393/1/39393.pdf Zubair, Ahmad Faiz and Abu Mansor, Mohd Salman (2018) Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor. Journal of Mechanical Engineering (JMechE), SI 5 (2). pp. 204-216. ISSN 18235514 |
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TJ Mechanical engineering and machinery Mechanics applied to machinery. Dynamics Machine design and drawing Zubair, Ahmad Faiz Abu Mansor, Mohd Salman Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor |
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The present paper illustrates the development of generative feature recognition of cylindrical part model that emphasize on recognition of chamfer and fillet.Without automation, manual work on recognizing these features are tedious and time consuming. Chamfers were recognized by conical surface while constant radius fillets on concave and convex edges were recognized by circular faces and edges. Cylindrical stock model, sub-delta volume for finishing (SDVF) of feature’s recognized and sub-delta volume for roughing of the part model were generated. The resulted volume decomposition in term of delta volume were then compared with manual calculation of feature’s delta volume to achieve the differential error. Two examples of part model were tested and the results show less than zero differential error. These prove that the algorithm is able to recognize cylindrical part model chamfers and fillets feature. |
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Article |
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Zubair, Ahmad Faiz Abu Mansor, Mohd Salman |
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Zubair, Ahmad Faiz Abu Mansor, Mohd Salman |
author_sort |
Zubair, Ahmad Faiz |
title |
Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor |
title_short |
Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor |
title_full |
Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor |
title_fullStr |
Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor |
title_full_unstemmed |
Automatic Feature Recognition of Chamfer and Fillet for Turning Part Model by Volume Decomposition Method / Ahmad Faiz Zubair and Mohd Salman Abu Mansor |
title_sort |
automatic feature recognition of chamfer and fillet for turning part model by volume decomposition method / ahmad faiz zubair and mohd salman abu mansor |
publisher |
Faculty of Mechanical Engineering Universiti Teknologi MARA (UiTM) |
publishDate |
2018 |
url |
http://ir.uitm.edu.my/id/eprint/39393/1/39393.pdf http://ir.uitm.edu.my/id/eprint/39393/ |
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