Neural Network Prediction of Hardness in HAZ of Temper Bead Welding Using the Proposed Thermal Cycle Tempering Parameter (TCTP)
スポンサーリンク
概要
- 論文の詳細を見る
A new thermal cycle tempering parameter (TCTP) to characterize the tempering effect during multi-pass thermal cycles has been proposed by extending the Larson-Miller parameter (LMP) to non-isothermal heat treatment. Experimental results revealed that the hardness in synthetic HAZ of low-alloy steel subjected to multi-pass tempering thermal cycles has a good linear relationship with the TCTP. The new hardness prediction system was constructed by using a neural network taking into consideration of the tempering effect during multi-pass welding, estimated by using the TCTP. Based on the thermal cycles numerically obtained by FEM and the experimentally obtained hardness database, the hardness distribution in HAZ of low-alloy steel welded with temper bead welding method was calculated. The predicted hardness was in good accordance with the experimental results. It follows that our new prediction system is effective for estimating the tempering effect in HAZ during multi-pass welding and hence enables us to assess the effectiveness of temper bead welding.
- 社団法人 日本鉄鋼協会の論文
- 2011-08-15
著者
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CHIGUSA Naoki
The Kansai Electric Power Co., Inc.
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Yu Lina
Division Of Materials And Manufacturing Science Osaka University
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Mochizuki Masahito
Division Of Materials And Manufacturing Science Graduate School Of Engineering Osaka University
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Saida Kazuyoshi
Division Of Materials And Manufacturing Science Graduate School Of Engineering Osaka University
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NAKABAYASHI Yuma
Division of Materials and Manufacturing Science, Graduate School of Engineering, Osaka University
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SASA Masato
Division of Materials and Manufacturing Science, Graduate School of Engineering, Osaka University
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ITOH Shinsuke
Division of Materials and Manufacturing Science, Graduate School of Engineering, Osaka University
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KAMEYAMA Masashi
Japan Power Engineering and Inspection Corporation
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HIRANO Shinro
The Kansai Electric Power Co., Inc.
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NISHIMOTO Kazutoshi
Division of Materials and Manufacturing Science, Graduate School of Engineering, Osaka University
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Sasa Masato
Division Of Materials And Manufacturing Science Graduate School Of Engineering Osaka University
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Hirano Shinro
The Kansai Electric Power Co. Inc.
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Chigusa Naoki
The Kansai Electric Power Co. Inc.
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Nakabayashi Yuma
Division Of Materials And Manufacturing Science Graduate School Of Engineering Osaka University
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Nishimoto Kazutoshi
Division Of Materials And Manufacturing Science Graduate School Of Engineering Osaka University
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Yu Lina
Division Of Materials And Manufacturing Science Graduate School Of Engineering Osaka University
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Itoh Shinsuke
Division Of Materials And Manufacturing Science Graduate School Of Engineering Osaka University
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MOCHIZUKI Masahito
Division of Materials and Manufacturing Science, Graduate School of Engineering, Osaka University
関連論文
- Foreword
- Microstructures and Mechanical Properties in Friction Stir Zone of Thixo-Molded AS41 Mg Alloy
- 314 Numerical Analysis on Strength Property of Steels by Considering Microscopic Heterogeneity near Weld Zone
- Neural Network Prediction of Hardness in HAZ of Temper Bead Welding Using the Proposed Thermal Cycle Tempering Parameter (TCTP)
- Effect of Welding Conditions on Reduction of Angular Distortion by In-Process Control Welding using Back Heating Source