Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy

To predict the required cutting force is necessary to realize the potentials of difficult-to-cut materials and get better efficiency. Cutting force is a critical and important target while machining because the change of it will affect surface finish, tool wear, vibration etc. The forces that are...

Full description

Saved in:
Bibliographic Details
Main Authors: Hossain, Ishtiaq, Amin, A. K. M. Nurul, Patwari, Muhammed Anayet Ullah
Format: Book Chapter
Language:English
Published: IIUM Press 2011
Subjects:
Online Access:http://irep.iium.edu.my/23597/4/chp18.pdf
http://irep.iium.edu.my/23597/
http://rms.research.iium.edu.my/bookstore/default.aspx
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.iium.irep.23597
record_format dspace
spelling my.iium.irep.235972012-09-12T00:55:39Z http://irep.iium.edu.my/23597/ Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy Hossain, Ishtiaq Amin, A. K. M. Nurul Patwari, Muhammed Anayet Ullah TJ Mechanical engineering and machinery To predict the required cutting force is necessary to realize the potentials of difficult-to-cut materials and get better efficiency. Cutting force is a critical and important target while machining because the change of it will affect surface finish, tool wear, vibration etc. The forces that are developed during the milling process can directly or indirectly measure/estimate process parameters of end milling such as, tool life, tool wear, surface finish etc. For the instance, excessive cutting forces generally result in low product quality while small cutting forces often indicate low machining efficiency [1]. Therefore controlling these forces is of vital importance. Because of its paramount significance, researchers have been trying to develop mathematical models that would predict the cutting forces based on the geometry and physical characteristics of the process. A.S. Mohruni et al [2] developed the cutting force models where the primary machining parameters such as cutting speed, feed and radial rake angle were used as independent variables for factorial design of experiment coupled with response surface methodology (RSM). Kuang-hua fuh et al proposed a predicted milling force model for the end milling operation. In that study, the spindle rotation, feed, axial and redial depth of cut are considered as the affecting factors and an orthogonal rotatable central composite design and the response surface methodology were used to construct the model [3]. Such prediction could then be used to optimize the process. Nonetheless, due to its complexity, the milling process still poses a challenge to the modeling and simulation research effort. In fact, most of the research works reported pertained to this are based on either analytical or semi-empirical approaches, has in general shown only limited levels of accuracy and/or generality. ANN offers an alternative way to simulate complex and ill defined problems. As the machining process is nonlinear and time-dependent, it is difficult for the traditional identification methods to provide an accurate model. Compared to traditional computing methods, the artificial neural network (ANN) is robust and global. ANN has the characteristics of universal approximation, parallel distributed processing, hardware implementation, learning and adaptation, and multivariable systems. Because of this, ANN is widely used for system modeling, function optimizing, image processing, and intelligent control. ANN gives an implicit relationship between the input(s) and output(s) by learning from a data set that represents the behavior of a system [4]. In the present paper, a different approach that is based on advanced artificial intelligence techniques is implemented and tested. More specifically two different neural networks are used to predict the forces developed during End milling. The network is selected based on certain criteria. IIUM Press 2011 Book Chapter REM application/pdf en http://irep.iium.edu.my/23597/4/chp18.pdf Hossain, Ishtiaq and Amin, A. K. M. Nurul and Patwari, Muhammed Anayet Ullah (2011) Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy. In: Advanced Machining Towards Improved Machinability of Difficult-to-Cut Materials. IIUM Press, Kuala Lumpur, Malaysia, pp. 143-148. ISBN 9789674181758 http://rms.research.iium.edu.my/bookstore/default.aspx
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
topic TJ Mechanical engineering and machinery
spellingShingle TJ Mechanical engineering and machinery
Hossain, Ishtiaq
Amin, A. K. M. Nurul
Patwari, Muhammed Anayet Ullah
Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy
description To predict the required cutting force is necessary to realize the potentials of difficult-to-cut materials and get better efficiency. Cutting force is a critical and important target while machining because the change of it will affect surface finish, tool wear, vibration etc. The forces that are developed during the milling process can directly or indirectly measure/estimate process parameters of end milling such as, tool life, tool wear, surface finish etc. For the instance, excessive cutting forces generally result in low product quality while small cutting forces often indicate low machining efficiency [1]. Therefore controlling these forces is of vital importance. Because of its paramount significance, researchers have been trying to develop mathematical models that would predict the cutting forces based on the geometry and physical characteristics of the process. A.S. Mohruni et al [2] developed the cutting force models where the primary machining parameters such as cutting speed, feed and radial rake angle were used as independent variables for factorial design of experiment coupled with response surface methodology (RSM). Kuang-hua fuh et al proposed a predicted milling force model for the end milling operation. In that study, the spindle rotation, feed, axial and redial depth of cut are considered as the affecting factors and an orthogonal rotatable central composite design and the response surface methodology were used to construct the model [3]. Such prediction could then be used to optimize the process. Nonetheless, due to its complexity, the milling process still poses a challenge to the modeling and simulation research effort. In fact, most of the research works reported pertained to this are based on either analytical or semi-empirical approaches, has in general shown only limited levels of accuracy and/or generality. ANN offers an alternative way to simulate complex and ill defined problems. As the machining process is nonlinear and time-dependent, it is difficult for the traditional identification methods to provide an accurate model. Compared to traditional computing methods, the artificial neural network (ANN) is robust and global. ANN has the characteristics of universal approximation, parallel distributed processing, hardware implementation, learning and adaptation, and multivariable systems. Because of this, ANN is widely used for system modeling, function optimizing, image processing, and intelligent control. ANN gives an implicit relationship between the input(s) and output(s) by learning from a data set that represents the behavior of a system [4]. In the present paper, a different approach that is based on advanced artificial intelligence techniques is implemented and tested. More specifically two different neural networks are used to predict the forces developed during End milling. The network is selected based on certain criteria.
format Book Chapter
author Hossain, Ishtiaq
Amin, A. K. M. Nurul
Patwari, Muhammed Anayet Ullah
author_facet Hossain, Ishtiaq
Amin, A. K. M. Nurul
Patwari, Muhammed Anayet Ullah
author_sort Hossain, Ishtiaq
title Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy
title_short Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy
title_full Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy
title_fullStr Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy
title_full_unstemmed Development of an artificial neural network algorithm for predicting the cutting force in end milling of Inconel 718 alloy
title_sort development of an artificial neural network algorithm for predicting the cutting force in end milling of inconel 718 alloy
publisher IIUM Press
publishDate 2011
url http://irep.iium.edu.my/23597/4/chp18.pdf
http://irep.iium.edu.my/23597/
http://rms.research.iium.edu.my/bookstore/default.aspx
_version_ 1643608608656588800
score 13.187197