Multiobjective optimization of friction welding of UNS S32205 duplex stainless steel
The present study is to optimize the process parameters for friction welding of duplex stainless steel (DSS UNS S32205). Experiments were conducted according to central composite design. Process variables, as inputs of the neural network, included friction pressure, upsetting pressure, speed and bur...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
KeAi Communications Co., Ltd.
2015-06-01
|
Series: | Defence Technology |
Subjects: | |
Online Access: | http://www.sciencedirect.com/science/article/pii/S2214914715000161 |
id |
doaj-04afe17998af4229bb7ee7005657dd77 |
---|---|
record_format |
Article |
spelling |
doaj-04afe17998af4229bb7ee7005657dd772021-05-02T09:10:30ZengKeAi Communications Co., Ltd.Defence Technology2214-91472015-06-0111215716510.1016/j.dt.2015.03.001Multiobjective optimization of friction welding of UNS S32205 duplex stainless steelP.M. Ajith0Birendra Kumar Barik1P. Sathiya2S. Aravindan3Department of Production Engineering, National Institute of Technology, Tiruchirappalli 620015, Tamilnadu, IndiaDepartment of Production Engineering, National Institute of Technology, Tiruchirappalli 620015, Tamilnadu, IndiaDepartment of Production Engineering, National Institute of Technology, Tiruchirappalli 620015, Tamilnadu, IndiaDepartment of Mechanical Engineering, Indian Institute of Technology Delhi, New Delhi 110016, IndiaThe present study is to optimize the process parameters for friction welding of duplex stainless steel (DSS UNS S32205). Experiments were conducted according to central composite design. Process variables, as inputs of the neural network, included friction pressure, upsetting pressure, speed and burn-off length. Tensile strength and microhardness were selected as the outputs of the neural networks. The weld metals had higher hardness and tensile strength than the base material due to grain refinement which caused failures away from the joint interface during tensile testing. Due to shorter heating time, no secondary phase intermetallic precipitation was observed in the weld joint. A multi-layer perceptron neural network was established for modeling purpose. Five various training algorithms, belonging to three classes, namely gradient descent, genetic algorithm and Levenberg–Marquardt, were used to train artificial neural network. The optimization was carried out by using particle swarm optimization method. Confirmation test was carried out by setting the optimized parameters. In conformation test, maximum tensile strength and maximum hardness obtained are 822 MPa and 322 Hv, respectively. The metallurgical investigations revealed that base metal, partially deformed zone and weld zone maintain austenite/ferrite proportion of 50:50.http://www.sciencedirect.com/science/article/pii/S2214914715000161Artificial neural networkDuplex stainless steelHardnessTensile testFriction weldingParticle swarm optimization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
P.M. Ajith Birendra Kumar Barik P. Sathiya S. Aravindan |
spellingShingle |
P.M. Ajith Birendra Kumar Barik P. Sathiya S. Aravindan Multiobjective optimization of friction welding of UNS S32205 duplex stainless steel Defence Technology Artificial neural network Duplex stainless steel Hardness Tensile test Friction welding Particle swarm optimization |
author_facet |
P.M. Ajith Birendra Kumar Barik P. Sathiya S. Aravindan |
author_sort |
P.M. Ajith |
title |
Multiobjective optimization of friction welding of UNS S32205 duplex stainless steel |
title_short |
Multiobjective optimization of friction welding of UNS S32205 duplex stainless steel |
title_full |
Multiobjective optimization of friction welding of UNS S32205 duplex stainless steel |
title_fullStr |
Multiobjective optimization of friction welding of UNS S32205 duplex stainless steel |
title_full_unstemmed |
Multiobjective optimization of friction welding of UNS S32205 duplex stainless steel |
title_sort |
multiobjective optimization of friction welding of uns s32205 duplex stainless steel |
publisher |
KeAi Communications Co., Ltd. |
series |
Defence Technology |
issn |
2214-9147 |
publishDate |
2015-06-01 |
description |
The present study is to optimize the process parameters for friction welding of duplex stainless steel (DSS UNS S32205). Experiments were conducted according to central composite design. Process variables, as inputs of the neural network, included friction pressure, upsetting pressure, speed and burn-off length. Tensile strength and microhardness were selected as the outputs of the neural networks. The weld metals had higher hardness and tensile strength than the base material due to grain refinement which caused failures away from the joint interface during tensile testing. Due to shorter heating time, no secondary phase intermetallic precipitation was observed in the weld joint. A multi-layer perceptron neural network was established for modeling purpose. Five various training algorithms, belonging to three classes, namely gradient descent, genetic algorithm and Levenberg–Marquardt, were used to train artificial neural network. The optimization was carried out by using particle swarm optimization method. Confirmation test was carried out by setting the optimized parameters. In conformation test, maximum tensile strength and maximum hardness obtained are 822 MPa and 322 Hv, respectively. The metallurgical investigations revealed that base metal, partially deformed zone and weld zone maintain austenite/ferrite proportion of 50:50. |
topic |
Artificial neural network Duplex stainless steel Hardness Tensile test Friction welding Particle swarm optimization |
url |
http://www.sciencedirect.com/science/article/pii/S2214914715000161 |
work_keys_str_mv |
AT pmajith multiobjectiveoptimizationoffrictionweldingofunss32205duplexstainlesssteel AT birendrakumarbarik multiobjectiveoptimizationoffrictionweldingofunss32205duplexstainlesssteel AT psathiya multiobjectiveoptimizationoffrictionweldingofunss32205duplexstainlesssteel AT saravindan multiobjectiveoptimizationoffrictionweldingofunss32205duplexstainlesssteel |
_version_ |
1721493385032761344 |