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Hybrid-modelling of compact tension energy in high strength pipeline steel using a Gaussian Mixture Model based error compensation

机译:高斯混合模型基于误差补偿的高强度管线钢致密拉伸能的混合建模

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In material science studies, it is often desired to know in advance the fracture toughness of a material, which is related to the released energy during its compact tension (CT) test to prevent catastrophic failure. In this paper, two frameworks are proposed for automatic model elicitation from experimental data to predict the fracture energy released during the CT test of X100 pipeline steel. The two models including an adaptive rule-based fuzzy modelling approach and a double-loop based neural network model, relate the load, crack mouth opening displacement (CMOD) and crack length to the released energies during this test. The relationship between how fracture is propagated and the fracture energy is further investigated in greater detail. To improve the performances of the models, a Gaussian Mixture Model (GMM)-based error compensation strategy which enables one monitor the error distributions of the predicted result is integrated in the model validation stage. This can help isolate the error distribution pattern and to establish the correlations with the predictions from the deterministic models. This is the first time a data driven approach has been used in this fashion on an application that has conventionally been handled using finite element methods or physical models. (C) 2016 Elsevier B.V. All rights reserved.
机译:在材料科学研究中,通常需要提前了解材料的断裂韧性,这与材料在其紧凑张力(CT)测试期间释放的能量有关,以防止灾难性故障。本文提出了两个从实验数据中自动提取模型的框架,以预测X100管线钢CT试验期间释放的断裂能。这两个模型包括基于规则的自适应模糊建模方法和基于双回路的神经网络模型,在此测试期间将载荷,裂纹张口位移(CMOD)和裂纹长度与释放的能量相关联。进一步讨论了裂缝如何扩展与裂缝能量之间的关系。为了提高模型的性能,在模型验证阶段集成了基于高斯混合模型(GMM)的误差补偿策略,该策略使一个监视器可以预测结果的误差分布。这可以帮助隔离错误分布模式,并与确定性模型中的预测建立相关性。这是首次在通常使用有限元方法或物理模型处理的应用程序上以这种方式使用数据驱动方法。 (C)2016 Elsevier B.V.保留所有权利。

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