Surface roughness prediction of particulate composites using artificial neural networks in turning operation
A number of factors, e.g. cutting speed and feed rate, affect the surface roughness in machining process. In this paper, an Artificial Neural Network model was used to forecast surface roughness with related inputs, including cutting speed and feed rate. The output of the ANN model input parameters...
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Growing Science
2015-07-01
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doaj-e3d5fd9579ac444ab2791f01033c2c0d2020-11-24T23:40:08ZengGrowing ScienceDecision Science Letters1929-58041929-58122015-07-014341942410.5267/j.dsl.2015.3.001Surface roughness prediction of particulate composites using artificial neural networks in turning operationMohammad Ramezani A number of factors, e.g. cutting speed and feed rate, affect the surface roughness in machining process. In this paper, an Artificial Neural Network model was used to forecast surface roughness with related inputs, including cutting speed and feed rate. The output of the ANN model input parameters related to the machined surface roughness parameters. In this research, twelve samples of experimental data were used to train the network. Moreover, four other experimental tests were implemented to test the network. The study concludes that ANN was a reliable and accurate method for predicting machining parameters in CNC turning operation of Particulate Reinforced Aluminum Matrix Composites (PAMCs) specimens with 0%, 5%, 10% and 15% filler. The aim of this work is to decrease the production cost and consequently increase the production rate of these materials for industry without any trial and error method procedure.http://www.growingscience.com/dsl/Vol4/dsl_2015_7.pdfArtificial Neural Network (ANN)Turning Surface RoughnessParticulate Reinforced Aluminum Matrix Composites (PAMCs) |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mohammad Ramezani |
spellingShingle |
Mohammad Ramezani Surface roughness prediction of particulate composites using artificial neural networks in turning operation Decision Science Letters Artificial Neural Network (ANN) Turning Surface Roughness Particulate Reinforced Aluminum Matrix Composites (PAMCs) |
author_facet |
Mohammad Ramezani |
author_sort |
Mohammad Ramezani |
title |
Surface roughness prediction of particulate composites using artificial neural networks in turning operation |
title_short |
Surface roughness prediction of particulate composites using artificial neural networks in turning operation |
title_full |
Surface roughness prediction of particulate composites using artificial neural networks in turning operation |
title_fullStr |
Surface roughness prediction of particulate composites using artificial neural networks in turning operation |
title_full_unstemmed |
Surface roughness prediction of particulate composites using artificial neural networks in turning operation |
title_sort |
surface roughness prediction of particulate composites using artificial neural networks in turning operation |
publisher |
Growing Science |
series |
Decision Science Letters |
issn |
1929-5804 1929-5812 |
publishDate |
2015-07-01 |
description |
A number of factors, e.g. cutting speed and feed rate, affect the surface roughness in machining process. In this paper, an Artificial Neural Network model was used to forecast surface roughness with related inputs, including cutting speed and feed rate. The output of the ANN model input parameters related to the machined surface roughness parameters. In this research, twelve samples of experimental data were used to train the network. Moreover, four other experimental tests were implemented to test the network. The study concludes that ANN was a reliable and accurate method for predicting machining parameters in CNC turning operation of Particulate Reinforced Aluminum Matrix Composites (PAMCs) specimens with 0%, 5%, 10% and 15% filler. The aim of this work is to decrease the production cost and consequently increase the production rate of these materials for industry without any trial and error method procedure. |
topic |
Artificial Neural Network (ANN) Turning Surface Roughness Particulate Reinforced Aluminum Matrix Composites (PAMCs) |
url |
http://www.growingscience.com/dsl/Vol4/dsl_2015_7.pdf |
work_keys_str_mv |
AT mohammadramezani surfaceroughnesspredictionofparticulatecompositesusingartificialneuralnetworksinturningoperation |
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1725510967862755328 |