Discrete-Direct Model Calibration and Uncertainty Propagation Method Confirmed on Multi-Parameter Plasticity Model Calibrated to Sparse Random Field Data

V. Romero, J. Winokur, G. Orient, J. Dempsey
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Abstract

A discrete direct (DD) model calibration and uncertainty propagation approach is explained and demonstrated on a 4-parameter Johnson-Cook (J-C) strain-rate dependent material strength model for an aluminum alloy. The methodology's performance is characterized in many trials involving four random realizations of strain-rate dependent material-test data curves per trial, drawn from a large synthetic population. The J-C model is calibrated to particular combinations of the data curves to obtain calibration parameter sets which are then propagated to “Can Crush” structural model predictions to produce samples of predicted response variability. These are processed with appropriate sparse-sample uncertainty quantification (UQ) methods to estimate various statistics of response with an appropriate level of conservatism. This is tested on 16 output quantities (von Mises stresses and equivalent plastic strains) and it is shown that important statistics of the true variabilities of the 16 quantities are bounded with a high success rate that is reasonably predictable and controllable. The DD approach has several advantages over other calibration-UQ approaches like Bayesian inference for capturing and utilizing the information obtained from typically small numbers of replicate experiments in model calibration situations—especially when sparse replicate functional data are involved like force–displacement curves from material tests. The DD methodology is straightforward and efficient for calibration and propagation problems involving aleatory and epistemic uncertainties in calibration experiments, models, and procedures.
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稀疏随机场数据下多参数塑性模型标定的离散-直接模型标定与不确定性传播方法
在四参数Johnson-Cook (J-C)应变率相关的铝合金材料强度模型上,解释并演示了一种离散直接(DD)模型校准和不确定性传播方法。该方法的性能表现在许多试验中,每次试验涉及四种随机实现应变率相关的材料试验数据曲线,从大量合成人群中提取。J-C模型根据数据曲线的特定组合进行校准,以获得校准参数集,然后将其传播到“Can Crush”结构模型预测中,以产生预测响应变异性的样本。使用适当的稀疏样本不确定性量化(UQ)方法对这些数据进行处理,以适当的保守性水平估计响应的各种统计量。这在16个输出量(冯米塞斯应力和等效塑性应变)上进行了测试,结果表明,16个量的真实变量的重要统计数据是有界的,具有较高的成功率,可以合理地预测和控制。与贝叶斯推理等其他校准uq方法相比,DD方法有几个优点,可以捕获和利用模型校准情况下从典型的少量重复实验中获得的信息,特别是在涉及稀疏复制功能数据(如材料测试的力-位移曲线)时。DD方法对于校准实验、模型和程序中涉及不确定性和认知不确定性的校准和传播问题是直接和有效的。
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CiteScore
5.20
自引率
13.60%
发文量
34
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