Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining

The machining operation can be generally classified into two types which are traditional machine and non-traditional (modem) machine. There are two types of machining employed in this research, end milling (traditional machining) and abrasive waterjet machining (non-traditional machining). Optimizin...

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Main Author: Yusup, Norfadzlan
Format: Thesis
Language:English
Published: 2012
Subjects:
Online Access:http://eprints.utm.my/29267/5/NorfadzlanYusupMFSKSM2012.pdf
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author Yusup, Norfadzlan
author_facet Yusup, Norfadzlan
author_sort Yusup, Norfadzlan
description The machining operation can be generally classified into two types which are traditional machine and non-traditional (modem) machine. There are two types of machining employed in this research, end milling (traditional machining) and abrasive waterjet machining (non-traditional machining). Optimizing the process parameters is essential in order to provide a better quality and economics machining. This research develops an optimization algorithm using artificial bee colony (ABC) algorithm to optimize the process parameters that will lead to minimum surface roughness (Ra) value for both end milling and abrasive waterjet machining. In end milling, three process parameters that need to be optimized are the cutting speed, feed rate and radial rake angle. For abrasive waterjet, five process parameters that need to be optimized are the traverse speed, waterjet pressure, standoff distance, abrasive grit size and abrasive flow rate. These machining process parameters significantly impact on the cost, productivity and quality of machining parts. The ABC simulations are developed to achieve the minimum Ra value in both end milling and abrasive waterjet machining. The results obtained from the simulation are compared with experimental, regression modelling, Genetic Algorithm (GA) and Simulated Annealing (SA). In end milling, ABC reduced the Ra by 10% and 8% compared to experimental and regression. In abrasive waterjet, the performance was much better where the Ra value decreased by 28%, 42%, 2% and 0.9% compared to experimental, regression, GA and SA respectively.
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spelling uthm-292672018-05-27T06:54:45Z http://eprints.utm.my/29267/ Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining Yusup, Norfadzlan TJ Mechanical engineering and machinery The machining operation can be generally classified into two types which are traditional machine and non-traditional (modem) machine. There are two types of machining employed in this research, end milling (traditional machining) and abrasive waterjet machining (non-traditional machining). Optimizing the process parameters is essential in order to provide a better quality and economics machining. This research develops an optimization algorithm using artificial bee colony (ABC) algorithm to optimize the process parameters that will lead to minimum surface roughness (Ra) value for both end milling and abrasive waterjet machining. In end milling, three process parameters that need to be optimized are the cutting speed, feed rate and radial rake angle. For abrasive waterjet, five process parameters that need to be optimized are the traverse speed, waterjet pressure, standoff distance, abrasive grit size and abrasive flow rate. These machining process parameters significantly impact on the cost, productivity and quality of machining parts. The ABC simulations are developed to achieve the minimum Ra value in both end milling and abrasive waterjet machining. The results obtained from the simulation are compared with experimental, regression modelling, Genetic Algorithm (GA) and Simulated Annealing (SA). In end milling, ABC reduced the Ra by 10% and 8% compared to experimental and regression. In abrasive waterjet, the performance was much better where the Ra value decreased by 28%, 42%, 2% and 0.9% compared to experimental, regression, GA and SA respectively. 2012 Thesis NonPeerReviewed application/pdf en http://eprints.utm.my/29267/5/NorfadzlanYusupMFSKSM2012.pdf Yusup, Norfadzlan (2012) Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining. Masters thesis, Universiti Teknologi Malaysia, Faculty of Computer Science and Information Systems.
spellingShingle TJ Mechanical engineering and machinery
Yusup, Norfadzlan
Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining
title Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining
title_full Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining
title_fullStr Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining
title_full_unstemmed Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining
title_short Artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining
title_sort artificial bee colony in optimizing process parameters of surface roughness in end milling and abrasive waterjet machining
topic TJ Mechanical engineering and machinery
url http://eprints.utm.my/29267/5/NorfadzlanYusupMFSKSM2012.pdf
url-record http://eprints.utm.my/29267/
work_keys_str_mv AT yusupnorfadzlan artificialbeecolonyinoptimizingprocessparametersofsurfaceroughnessinendmillingandabrasivewaterjetmachining