AI Based Modelling and Optimization of Turning Process
Indiana University-Purdue University Indianapolis (IUPUI) === In this thesis, Artificial Neural Network (ANN) technique is used to model and simulate the Turning Process. Significant machining parameters (i.e. spindle speed, feed rate, and, depths of cut) and process parameters (surface roughness an...
Main Author: | |
---|---|
Other Authors: | |
Language: | en_US |
Published: |
2013
|
Subjects: | |
Online Access: | http://hdl.handle.net/1805/3418 |
id |
ndltd-IUPUI-oai-scholarworks.iupui.edu-1805-3418 |
---|---|
record_format |
oai_dc |
spelling |
ndltd-IUPUI-oai-scholarworks.iupui.edu-1805-34182020-06-18T03:17:19Z AI Based Modelling and Optimization of Turning Process Kulkarni, Ruturaj Jayant El-Mounayri, Hazim Anwar, Sohel Wasfy, Tamer AI ANN Turning machining PSO Neural networks (Computer science) Artificial intelligence Turning (Lathe work) Manufacturing processes -- Computer simulation Computational intelligence Mathematical optimization Swarm intelligence Surface roughness Simulation methods Indiana University-Purdue University Indianapolis (IUPUI) In this thesis, Artificial Neural Network (ANN) technique is used to model and simulate the Turning Process. Significant machining parameters (i.e. spindle speed, feed rate, and, depths of cut) and process parameters (surface roughness and cutting forces) are considered. It is shown that Multi-Layer Back Propagation Neural Network is capable to perform this particular task. Design of Experiments approach is used for efficient selection of values of parameters used during experiments to reduce cost and time for experiments. The Particle Swarm Optimization methodology is used for constrained optimization of machining parameters to minimize surface roughness as well as cutting forces. ANN and Particle Swarm Optimization, two computational intelligence techniques when combined together, provide efficient computational strategy for finding optimum solutions. The proposed method is capable of handling multiple parameter optimization problems for processes that have non-linear relationship between input and output parameters e.g. milling, drilling etc. In addition, this methodology provides reliable, fast and efficient tool that can provide suitable solution to many problems faced by manufacturing industry today. 2013-08-14T15:58:30Z 2013-08-14T15:58:30Z 2012-08 http://hdl.handle.net/1805/3418 en_US |
collection |
NDLTD |
language |
en_US |
sources |
NDLTD |
topic |
AI ANN Turning machining PSO Neural networks (Computer science) Artificial intelligence Turning (Lathe work) Manufacturing processes -- Computer simulation Computational intelligence Mathematical optimization Swarm intelligence Surface roughness Simulation methods |
spellingShingle |
AI ANN Turning machining PSO Neural networks (Computer science) Artificial intelligence Turning (Lathe work) Manufacturing processes -- Computer simulation Computational intelligence Mathematical optimization Swarm intelligence Surface roughness Simulation methods Kulkarni, Ruturaj Jayant AI Based Modelling and Optimization of Turning Process |
description |
Indiana University-Purdue University Indianapolis (IUPUI) === In this thesis, Artificial Neural Network (ANN) technique is used to model and simulate the Turning Process. Significant machining parameters (i.e. spindle speed, feed rate, and, depths of cut) and process parameters (surface roughness and cutting forces) are considered. It is shown that Multi-Layer Back Propagation Neural Network is capable to perform this particular task. Design of Experiments approach is used for efficient selection of values of parameters used during experiments to reduce cost and time for experiments. The Particle Swarm Optimization methodology is used for constrained optimization of machining parameters to minimize surface roughness as well as cutting forces. ANN and Particle Swarm Optimization, two computational intelligence techniques when combined together, provide efficient computational strategy for finding optimum solutions. The proposed method is capable of handling multiple parameter optimization problems for processes that have non-linear relationship between input and output parameters e.g. milling, drilling etc. In addition, this methodology provides reliable, fast and efficient tool that can provide suitable solution to many problems faced by manufacturing industry today. |
author2 |
El-Mounayri, Hazim |
author_facet |
El-Mounayri, Hazim Kulkarni, Ruturaj Jayant |
author |
Kulkarni, Ruturaj Jayant |
author_sort |
Kulkarni, Ruturaj Jayant |
title |
AI Based Modelling and Optimization of Turning Process |
title_short |
AI Based Modelling and Optimization of Turning Process |
title_full |
AI Based Modelling and Optimization of Turning Process |
title_fullStr |
AI Based Modelling and Optimization of Turning Process |
title_full_unstemmed |
AI Based Modelling and Optimization of Turning Process |
title_sort |
ai based modelling and optimization of turning process |
publishDate |
2013 |
url |
http://hdl.handle.net/1805/3418 |
work_keys_str_mv |
AT kulkarniruturajjayant aibasedmodellingandoptimizationofturningprocess |
_version_ |
1719320877026246656 |