Multi-objective optimal design of small scale resistance spot welding process with principal component analysis and response surface methodology

被引:0
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作者
Dawei Zhao
Yuanxun Wang
Suning Sheng
Zongguo Lin
机构
[1] Huazhong University of Science and Technology,Department of Mechanics, School of Civil Engineering and Mechanics
[2] Miyachi Unitek Corporation,Grand Master Trading Limited
来源
关键词
Small scale resistance spot welding; Response surface methodology; Multi-objective optimization method; Signal-to-noise ratio; Principal component analysis; Titanium alloy;
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学科分类号
摘要
This paper investigates the effects of welding parameters on the welding quality and optimizes them in the small scale resistance spot welding (SSRSW) process. Experiments are carried out on the basis of response surface methodology technique with different levels of welding parameters of spot welded titanium alloy sheets. Multiple quality characteristics, namely signal-to-noise (S/N) ratios of weld nugget diameter, penetration rate, tensile shear load and the failure energy, are converted into an independent quality index using principal component analysis. The mathematical model correlating process parameters and their interactions with the welding quality is established and discussed. And then this model is used to select the optimum process parameters to obtain the desired welding quality. The verification test results demonstrate that the method presented in this paper to optimize the welding parameters and enhance the welding performance is effective and feasible in the SSRSW process.
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页码:1335 / 1348
页数:13
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