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A Neural Networks approach to characterize material properties using the spherical indentation test

机译:一种使用球形压痕测试来表征材料特性的神经网络方法

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Determination of material characteristics using the instrumented indentation test has gained interests among many researchers. The output of a spherical indentation test is usually the load-penetration (P-h) curve. To achieve this goal, the elastic deformation of sphere must be eliminated from the penetration. To. determine three parameters of the LUDWIG' s equation which are σ_y, K and m, choice of a prompt numerical procedure is of essences. The purpose of the present work is to determination three parameters of the LUDWIG's equation using the spherical indentation test and Neural Networks. Therefore, a Neural Networks is trained following the spherical indentation test using two parameters that are obtained from the P-h curve. The output of the networks is the three parameters of the LUDWIG's equation. The results were then compared with the finite element predictions and verified using the experimental data. A good agreement was observed. Finally, the weights of Neural Networks layer were extracted for easy use of the above procedure.
机译:使用仪表压痕试验的材料特征的测定在许多研究人员中获得了兴趣。球形压痕试验的输出通常是负载渗透(P-H)曲线。为了实现这一目标,必须从渗透中消除球体的弹性变形。到。确定Ludwig等式的三个参数,它是Σ_y,k和m,选择提示数值的选择是精华。本作作品的目的是使用球形压痕测试和神经网络确定Ludwig等式的三个参数。因此,使用从P-H曲线获得的两个参数进行球面缩进测试之后训练神经网络。网络的输出是Ludwig等式的三个参数。然后将结果与有限元预测进行比较并使用实验数据验证。观察到良好的一致。最后,提取了神经网络层的重量,以便于使用上述过程。

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