Deep Learning Approach of Energy Estimation Model of Remote Laser Welding

Due to concerns about energy use in production systems, energy-efficient processes have received much interest from the automotive industry recently. Remote laser welding is an innovative assembly process, but has a critical issue with the energy consumption. Robot companies provide only the average...

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Main Authors: Jumyung Um, Ian Anthony Stroud, Yong-keun Park
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/12/9/1799
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spelling doaj-35e0358cb21e42c79502d82d19b0bff72020-11-25T01:04:42ZengMDPI AGEnergies1996-10732019-05-01129179910.3390/en12091799en12091799Deep Learning Approach of Energy Estimation Model of Remote Laser WeldingJumyung Um0Ian Anthony Stroud1Yong-keun Park2Department of Industrial & Management System Engineering, Kyung Hee University, 1732 Deogyeong-daero, Yongin-si 17104, KoreaSkAD Labs SA, Chemin de la Raye 13, 1024 Ecublens, SwitzerlandDepartment of Industrial & Management System Engineering, Kyung Hee University, 1732 Deogyeong-daero, Yongin-si 17104, KoreaDue to concerns about energy use in production systems, energy-efficient processes have received much interest from the automotive industry recently. Remote laser welding is an innovative assembly process, but has a critical issue with the energy consumption. Robot companies provide only the average energy use in the technical specification, but process parameters such as robot movement, laser use, and welding path also affect the energy use. Existing literature focuses on measuring energy in standardized conditions in which the welding process is most frequently operated or on modularizing unified blocks in which energy can be estimated using simple calculations. In this paper, the authors propose an integrated approach considering both process variation and machine specification and multiple methods’ comparison. A deep learning approach is used for building the neural network integrated with the effects of process parameters and machine specification. The training dataset used is experimental data measured from a remote laser welding robot producing a car back door assembly. The proposed estimation model is compared with a linear regression approach and shows higher accuracy than other methods.https://www.mdpi.com/1996-1073/12/9/1799remote laser weldingenergy-efficient processmachine learningwelding processneural network
collection DOAJ
language English
format Article
sources DOAJ
author Jumyung Um
Ian Anthony Stroud
Yong-keun Park
spellingShingle Jumyung Um
Ian Anthony Stroud
Yong-keun Park
Deep Learning Approach of Energy Estimation Model of Remote Laser Welding
Energies
remote laser welding
energy-efficient process
machine learning
welding process
neural network
author_facet Jumyung Um
Ian Anthony Stroud
Yong-keun Park
author_sort Jumyung Um
title Deep Learning Approach of Energy Estimation Model of Remote Laser Welding
title_short Deep Learning Approach of Energy Estimation Model of Remote Laser Welding
title_full Deep Learning Approach of Energy Estimation Model of Remote Laser Welding
title_fullStr Deep Learning Approach of Energy Estimation Model of Remote Laser Welding
title_full_unstemmed Deep Learning Approach of Energy Estimation Model of Remote Laser Welding
title_sort deep learning approach of energy estimation model of remote laser welding
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2019-05-01
description Due to concerns about energy use in production systems, energy-efficient processes have received much interest from the automotive industry recently. Remote laser welding is an innovative assembly process, but has a critical issue with the energy consumption. Robot companies provide only the average energy use in the technical specification, but process parameters such as robot movement, laser use, and welding path also affect the energy use. Existing literature focuses on measuring energy in standardized conditions in which the welding process is most frequently operated or on modularizing unified blocks in which energy can be estimated using simple calculations. In this paper, the authors propose an integrated approach considering both process variation and machine specification and multiple methods’ comparison. A deep learning approach is used for building the neural network integrated with the effects of process parameters and machine specification. The training dataset used is experimental data measured from a remote laser welding robot producing a car back door assembly. The proposed estimation model is compared with a linear regression approach and shows higher accuracy than other methods.
topic remote laser welding
energy-efficient process
machine learning
welding process
neural network
url https://www.mdpi.com/1996-1073/12/9/1799
work_keys_str_mv AT jumyungum deeplearningapproachofenergyestimationmodelofremotelaserwelding
AT iananthonystroud deeplearningapproachofenergyestimationmodelofremotelaserwelding
AT yongkeunpark deeplearningapproachofenergyestimationmodelofremotelaserwelding
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