Prediction of Welding Deformation and Residual Stress of a Thin Plate by Improved Support Vector Regression

Thin plates are widely utilized in aircraft, shipbuilding, and automotive industries to meet the requirements of lightweight components. Especially in modern shipbuilding, the thin plate structures not only meet the economic requirements of shipbuilding but also meet the strength and rigidity requir...

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Main Authors: Lei Li, Di Liu, Shuai Ren, Hong-gen Zhou, Jiasheng Zhou
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Scanning
Online Access:http://dx.doi.org/10.1155/2021/8892128
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spelling doaj-b4171965eb3549d682a5f9e8344412092021-03-15T00:00:31ZengHindawi-WileyScanning1932-87452021-01-01202110.1155/2021/8892128Prediction of Welding Deformation and Residual Stress of a Thin Plate by Improved Support Vector RegressionLei Li0Di Liu1Shuai Ren2Hong-gen Zhou3Jiasheng Zhou4School of Mechanical EngineeringSchool of Mechanical EngineeringSchool of Mechanical EngineeringSchool of Mechanical EngineeringSchool of Mechanical EngineeringThin plates are widely utilized in aircraft, shipbuilding, and automotive industries to meet the requirements of lightweight components. Especially in modern shipbuilding, the thin plate structures not only meet the economic requirements of shipbuilding but also meet the strength and rigidity requirements of the ship. However, a thin plate is less stable and prone to destabilizing deformation in the welding process, which seriously affects the accuracy and performance of the thin plate welding structure. Therefore, it is beneficial to predict welding deformation and residual stress before welding. In this paper, a thin plate welding deformation and residual stress prediction model based on particle swarm optimization (PSO) and grid search(GS) improved support vector regression (PSO-GS-SVR) is established. The welding speed, welding current, welding voltage, and plate thickness are taken as input parameters of the improved support vector regression model, while longitudinal and transverse deformation and residual stress are taken as corresponding outputs. To improve the prediction accuracy of the support vector regression model, particle swarm optimization and grid search are used to optimize the parameters. The results show that the improved support regression model can accurately evaluate the deformation and residual stress of butt welding and has important engineering guiding significance.http://dx.doi.org/10.1155/2021/8892128
collection DOAJ
language English
format Article
sources DOAJ
author Lei Li
Di Liu
Shuai Ren
Hong-gen Zhou
Jiasheng Zhou
spellingShingle Lei Li
Di Liu
Shuai Ren
Hong-gen Zhou
Jiasheng Zhou
Prediction of Welding Deformation and Residual Stress of a Thin Plate by Improved Support Vector Regression
Scanning
author_facet Lei Li
Di Liu
Shuai Ren
Hong-gen Zhou
Jiasheng Zhou
author_sort Lei Li
title Prediction of Welding Deformation and Residual Stress of a Thin Plate by Improved Support Vector Regression
title_short Prediction of Welding Deformation and Residual Stress of a Thin Plate by Improved Support Vector Regression
title_full Prediction of Welding Deformation and Residual Stress of a Thin Plate by Improved Support Vector Regression
title_fullStr Prediction of Welding Deformation and Residual Stress of a Thin Plate by Improved Support Vector Regression
title_full_unstemmed Prediction of Welding Deformation and Residual Stress of a Thin Plate by Improved Support Vector Regression
title_sort prediction of welding deformation and residual stress of a thin plate by improved support vector regression
publisher Hindawi-Wiley
series Scanning
issn 1932-8745
publishDate 2021-01-01
description Thin plates are widely utilized in aircraft, shipbuilding, and automotive industries to meet the requirements of lightweight components. Especially in modern shipbuilding, the thin plate structures not only meet the economic requirements of shipbuilding but also meet the strength and rigidity requirements of the ship. However, a thin plate is less stable and prone to destabilizing deformation in the welding process, which seriously affects the accuracy and performance of the thin plate welding structure. Therefore, it is beneficial to predict welding deformation and residual stress before welding. In this paper, a thin plate welding deformation and residual stress prediction model based on particle swarm optimization (PSO) and grid search(GS) improved support vector regression (PSO-GS-SVR) is established. The welding speed, welding current, welding voltage, and plate thickness are taken as input parameters of the improved support vector regression model, while longitudinal and transverse deformation and residual stress are taken as corresponding outputs. To improve the prediction accuracy of the support vector regression model, particle swarm optimization and grid search are used to optimize the parameters. The results show that the improved support regression model can accurately evaluate the deformation and residual stress of butt welding and has important engineering guiding significance.
url http://dx.doi.org/10.1155/2021/8892128
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AT shuairen predictionofweldingdeformationandresidualstressofathinplatebyimprovedsupportvectorregression
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