首页> 外文期刊>Journal of the Mechanics and Physics of Solids >Determination of constitutive properties from spherical identation data using neural networks. Part II; plasticity with nonlinear isotropic and kinematic hardening
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Determination of constitutive properties from spherical identation data using neural networks. Part II; plasticity with nonlinear isotropic and kinematic hardening

机译:使用神经网络从球形标识数据确定本构特性。第二部分非线性各向同性和运动学硬化的塑性

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We consider materials which can be described by plasticity laws exhibiting nonlinear kine- matic and nonlinear isotropic hardening effects. The aim is to show that the material parameters governing the constitutive behavior may be determined from data obtained by sphericaI inden- tation. Note that only the measurab1e global quantities (load and indentation depth) should be utilized, which are available, e.g. from depth-sensing indentation tests. For this goa1 use is made of the method of neural networks. The developed neural networks apply also to the case of pure kinematic as well as pure isotropic hardening. Moreover it is shown how a monotonic strain-stress curve can be assigned to the spherical indentation test.
机译:我们考虑可以用具有非线性运动学和非线性各向同性硬化作用的可塑性定律描述的材料。目的是表明支配本构行为的材料参数可以通过球化插值获得的数据来确定。请注意,仅应使用可测量的整体数量(载荷和压痕深度),例如来自深度感应压痕测试。为此,使用了神经网络方法。发达的神经网络也适用于纯运动学以及纯各向同性硬化的情况。此外,还显示了如何将单调应变应力曲线分配给球形压痕测试。

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