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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >The multi-objective non-probabilistic interval optimization of the loading paths for T-shape tube hydroforming
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The multi-objective non-probabilistic interval optimization of the loading paths for T-shape tube hydroforming

机译:T形管加氢成录的加载路径的多目标非概率间隔优化

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摘要

The focus of presented paper is to find a reliable Pareto front of the loading paths for T-shape tube hydroforming (THF) process using multi-objective non-probabilistic interval optimization method. Three indicators are included to measure the forming quality of THF process: the contact area is used to evaluate the calibration degree; bursting failure is estimated by the maximum thinning ratio and the protrusion height is also taken into consideration. The reliability-based degree of interval of constraints is employed to guarantee the reliability of THF process. A validated finite element model is adopted to conduct virtual experiments. The percentage contributions of the loading parameters for each indicators are calculated by the Taguchi method, and some significant parameters are identified and the dimensionality of the design variables can be reduced. The support vector regression model whose accuracy is calculated by leave-one-out cross-validated method is adopted to improve the optimization efficiency for the determination of the Pareto front. The Pareto fronts of uncertain optimization and deterministic optimization are compared, and the results show that more reliable solutions can be achieved by the presented method.
机译:呈现纸的焦点是使用多目标非概率间隔优化方法找到用于T形管液压成录(THF)工艺的可靠的Pareto前面。包括三个指示器以测量THF过程的形成质量:接触面积用于评估校准度;通过最大减薄比率估计爆裂故障,也考虑突出高度。采用基于可靠性的限制间隔,以保证THF过程的可靠性。采用验证的有限元模型进行虚拟实验。通过Taguchi方法计算每个指标的加载参数的百分比贡献,识别出一些重要的参数,并且可以减少设计变量的维度。通过休假交叉验证方法计算精度的支持向量回归模型,以提高帕累托前部的确定优化效率。比较了不确定优化和确定性优化的帕累托前线,结果表明,通过所提出的方法可以实现更可靠的解决方案。

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