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首页> 外文期刊>Journal of Materials Research >Identification of viscoplastic material parameters from spherical indentation data: Part II. Experimental validation of the method
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Identification of viscoplastic material parameters from spherical indentation data: Part II. Experimental validation of the method

机译:从球形压痕数据识别粘塑性材料参数:第二部分。方法的实验验证

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A neural network-based analysis method for the identification of a viscoplasticity model from spherical indentation data, developed in the first part of this work [J. Mater. Res. 21, 664 (2006)], was applied for different metallic materials. Besides the comparison of typical parameters like Young's modulus and yield stress with values from tensile experiments, the uncertainties in the identified material parameters representing modulus, hardening behavior, and viscosity were investigated in relation to different sources. Variations in the indentation position, tip radius, force application rate, and surface preparation were considered. The extensive experimental validation showed that the applied neural networks are very robust and show small variation coefficients, especially regarding the important parameters of Young's modulus and yield stress. On the other hand, important requirements were quantified, which included a very good spherical indenter geometry and good surface preparation to obtain reliable results.
机译:这项工作的第一部分提出了一种基于神经网络的从球形压痕数据识别粘塑性模型的分析方法[J.母校Res。 21,664(2006)]应用于不同的金属材料。除了将杨氏模量和屈服应力等典型参数与拉伸实验的值进行比较外,还针对不同来源研究了确定的代表模量,硬化行为和粘度的材料参数的不确定性。考虑了压痕位置,尖端半径,施力速率和表面准备的变化。广泛的实验验证表明,所应用的神经网络非常健壮,并且变异系数很小,尤其是在有关杨氏模量和屈服应力的重要参数方面。另一方面,量化了重要的要求,其中包括非常好的球形压头几何形状和良好的表面处理以获得可靠的结果。

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