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An Improved Model for Predicting the Scattered S-N Curves

机译:一种改进模型,用于预测散射的S-N曲线

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In this article an improved neural network model is presented that allows us to predict the scattered S-N curves. The model is capable of predicting the S-N curve in its high-cycle and very-high-cycle fatigue domains by considering also the increased scatter of the fatigue-life data below the knee point of the S-N curve. The scatter of the fatigue-life data for an arbitrary amplitude-stress level is modelled with a two-parametric Weibull's probability density function, the parameters of which are varied as a function of the amplitude-stress level. The parameters of the S-N curve trend and its scatter distribution are not fixed, but depend on the parameters of the production process via a serial-hybrid neural network. The article presents the theoretical background and the application in the case of real experimental fatigue data for 51CrV4 spring steel manufactured with two different manufacturing technologies and two different heat treatments.
机译:在本文中,提出了一种改进的神经网络模型,其允许我们预测散射的S-N曲线。 该模型能够通过考虑S-N曲线的膝部点下方的疲劳 - 寿命数据的散射增加,预测其高循环和非常高循环疲劳域中的S-N曲线。 任意幅度应力水平的疲劳生活数据的散射用双参数倍壳的概率密度函数建模,其参数随着幅度应力水平的函数而变化。 S-N曲线趋势的参数及其分散分布不固定,但通过串行混合神经网络取决于生产过程的参数。 本文介绍了在用两种不同的制造技术和两种不同的热处理制造的51Crv4弹簧钢的真实实验疲劳数据的情况下的理论背景和应用。

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