Neural Network Modelling of Track Profile in Cold Spray Additive Manufacturing
Cold spray additive manufacturing is an emerging technology that offers the ability to deposit oxygen-sensitive materials and to manufacture large components in the solid state. For further development of the technology, the geometric control of cold sprayed components is fundamental but not yet ful...
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doaj-49b7e083ba1c4109ae70d99254245f7d2020-11-25T01:24:05ZengMDPI AGMaterials1996-19442019-09-011217282710.3390/ma12172827ma12172827Neural Network Modelling of Track Profile in Cold Spray Additive ManufacturingDaiki Ikeuchi0Alejandro Vargas-Uscategui1Xiaofeng Wu2Peter C. King3School of Aerospace, Mechanical and Mechatronic Engineering, The University of Sydney, Sydney, NSW 2006, AustraliaCommonwealth Scientific and Industrial Research Organisation Manufacturing, Private Bag 10, Clayton, VIC 3169, AustraliaSchool of Aerospace, Mechanical and Mechatronic Engineering, The University of Sydney, Sydney, NSW 2006, AustraliaCommonwealth Scientific and Industrial Research Organisation Manufacturing, Private Bag 10, Clayton, VIC 3169, AustraliaCold spray additive manufacturing is an emerging technology that offers the ability to deposit oxygen-sensitive materials and to manufacture large components in the solid state. For further development of the technology, the geometric control of cold sprayed components is fundamental but not yet fully matured. This study presents a neural network predictive modelling of a single-track profile in cold spray additive manufacturing to address the problem. In contrast to previous studies focusing only on key geometric feature predictions, the neural network model was employed to demonstrate its capability of predicting complete track profiles at both normal and off-normal spray angles, resulting in a mean absolute error of 8.3%. We also compared the track profile modelling results against the previously proposed Gaussian model and showed that the neural network model provided comparable predictive accuracy, even outperforming in the predictions at cold spray profile edges. The results indicate that a neural network modelling approach is well suited to cold spray profile prediction and may be used to improve geometric control during additive manufacturing with an appropriate process planning algorithm.https://www.mdpi.com/1996-1944/12/17/2827cold sprayneural networkadditive manufacturingmodelspray angleprofile |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Daiki Ikeuchi Alejandro Vargas-Uscategui Xiaofeng Wu Peter C. King |
spellingShingle |
Daiki Ikeuchi Alejandro Vargas-Uscategui Xiaofeng Wu Peter C. King Neural Network Modelling of Track Profile in Cold Spray Additive Manufacturing Materials cold spray neural network additive manufacturing model spray angle profile |
author_facet |
Daiki Ikeuchi Alejandro Vargas-Uscategui Xiaofeng Wu Peter C. King |
author_sort |
Daiki Ikeuchi |
title |
Neural Network Modelling of Track Profile in Cold Spray Additive Manufacturing |
title_short |
Neural Network Modelling of Track Profile in Cold Spray Additive Manufacturing |
title_full |
Neural Network Modelling of Track Profile in Cold Spray Additive Manufacturing |
title_fullStr |
Neural Network Modelling of Track Profile in Cold Spray Additive Manufacturing |
title_full_unstemmed |
Neural Network Modelling of Track Profile in Cold Spray Additive Manufacturing |
title_sort |
neural network modelling of track profile in cold spray additive manufacturing |
publisher |
MDPI AG |
series |
Materials |
issn |
1996-1944 |
publishDate |
2019-09-01 |
description |
Cold spray additive manufacturing is an emerging technology that offers the ability to deposit oxygen-sensitive materials and to manufacture large components in the solid state. For further development of the technology, the geometric control of cold sprayed components is fundamental but not yet fully matured. This study presents a neural network predictive modelling of a single-track profile in cold spray additive manufacturing to address the problem. In contrast to previous studies focusing only on key geometric feature predictions, the neural network model was employed to demonstrate its capability of predicting complete track profiles at both normal and off-normal spray angles, resulting in a mean absolute error of 8.3%. We also compared the track profile modelling results against the previously proposed Gaussian model and showed that the neural network model provided comparable predictive accuracy, even outperforming in the predictions at cold spray profile edges. The results indicate that a neural network modelling approach is well suited to cold spray profile prediction and may be used to improve geometric control during additive manufacturing with an appropriate process planning algorithm. |
topic |
cold spray neural network additive manufacturing model spray angle profile |
url |
https://www.mdpi.com/1996-1944/12/17/2827 |
work_keys_str_mv |
AT daikiikeuchi neuralnetworkmodellingoftrackprofileincoldsprayadditivemanufacturing AT alejandrovargasuscategui neuralnetworkmodellingoftrackprofileincoldsprayadditivemanufacturing AT xiaofengwu neuralnetworkmodellingoftrackprofileincoldsprayadditivemanufacturing AT petercking neuralnetworkmodellingoftrackprofileincoldsprayadditivemanufacturing |
_version_ |
1725118894260092928 |