首页> 外文期刊>International Journal of Fatigue >Low cycle fatigue and creep-fatigue interaction behavior of 3 1 6 L(N) stainless steel and life prediction by artificial neural network approach
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Low cycle fatigue and creep-fatigue interaction behavior of 3 1 6 L(N) stainless steel and life prediction by artificial neural network approach

机译:3 1 6 L(N)不锈钢的低周疲劳和蠕变疲劳相互作用行为及寿命的人工神经网络预测

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摘要

Low cycle fatigue (LCF) behavior of solutionized 3 16 L(N) stainless steel (SS) has been studied at various temperatures, strain amplitudes, strain rates, hold times and in 20 percent prior cold worked condition. The alloy in general showed a reduction in fatigue life with, increase in temperature, increase in strain amplitude, decrease in strain rate, an increase in duration of hold time in tension and with prior cold work. The LCF and creep-fatigue interaction (CFI) behavior of the alloy was explained on the basis of several operative mechanisms such as dynamic strain ageing, creep, oxidation and substructural recovery. The capability of artificial neural network (ANN) approach to life prediction under LCF and CFI conditions has been assessed by using the data generated in the present investigation. It is demonstrated that the prediction is within a factor of 2.
机译:在各种温度,应变幅度,应变速率,保持时间以及在20%的先前冷加工条件下,已经研究了固溶3 16 L(N)不锈钢(SS)的低循环疲劳(LCF)行为。一般而言,该合金的疲劳寿命会随着温度的升高,应变幅度的增加,应变率的降低,张力保持时间的延长以及先前的冷加工而降低。合金的LCF和蠕变-疲劳相互作用(CFI)行为是根据几种操作机制进行解释的,例如动态应变时效,蠕变,氧化和亚结构恢复。通过使用本研究中生成的数据,已经评估了人工神经网络(ANN)在LCF和CFI条件下的寿命预测能力。证明预测值在2的范围内。

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