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Material characterization via least squares support vector machines

机译:通过最小二乘支持向量机进行材料表征

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Analytical methods to interpret the load indentation curves are difficult to formulate and execute directly due to material and geometric nonlinearities as well as complex contact interactions. In the present study, a new approach based on the least squares support vector machines (LS-SVMs) is adopted in the characterization of materials obeying power law strain-hardening. The input data for training and verification of the LS-SVM model are obtained from 1000 large strain-large deformation finite element analyses which were carried out earlier to simulate indentation tests. The proposed LS-SVM model relates the characteristics of the indentation load-displacement curve directly to the elasto-plastic material properties without resorting to any iterative schemes. The tuned LS-SVM model is able to accurately predict the material properties when presented with new sets of load-indentation curves which were not used in the training and verification of the model.
机译:由于材料和几何非线性以及复杂的接触相互作用,难以解释和直接执行解释载荷压痕曲线的分析方法。在本研究中,采用一种基于最小二乘支持向量机(LS-SVM)的新方法来表征材料,并遵循幂律应变硬化。 LS-SVM模型的训练和验证输入数据是从1000个大应变-大变形有限元分析中获得的,这些分析是较早进行的以模拟压痕测试。所提出的LS-SVM模型将压痕载荷-位移曲线的特征直接与弹塑性材料的特性相关联,而无需借助任何迭代方案。调整后的LS-SVM模型在出现新的载荷压痕曲线集时能够准确预测材料特性,而在模型的训练和验证中未使用这些载荷-压痕曲线。

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