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首页> 外文期刊>Journal of the Mechanics and Physics of Solids >Neural networks for tip correction of spherical indentation curves from bulk metals and thin metal films
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Neural networks for tip correction of spherical indentation curves from bulk metals and thin metal films

机译:用神经网络对大块金属和金属薄膜的球形压痕曲线进行尖端校正

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摘要

Spherical indentation is widely used to determine a variety of important mechanical properties from small volumes. However, the available nanoindenter tips mostly deviate from the perfect spherical shape making the application of analysis methods developed for perfect spheres uncertain. In this paper, neural network-based methods are presented that are used to correct force-depth curves measured with such indenter tips. Finite element simulations for imperfect and perfect spherical tips with varying material behaviour are used to train the neural networks, which solve the inverse problem of mapping the true tip shape and the measured force-depth curve to one that corresponds to a perfect spherical indenter. Solutions are provided for bulk materials and thin films. The method has been verified experimentally on nanocrystalline nickel and a copper film on a titanium substrate for different spherical tips. (c) 2006 Elsevier Ltd. All rights reserved.
机译:球形压痕被广泛用于从小体积确定各种重要的机械性能。但是,可用的纳米压头尖端大多偏离完美的球形,因此不确定为完美的球形开发的分析方法的应用。在本文中,提出了基于神经网络的方法,这些方法可用于校正用这种压头测得的力深曲线。使用具有不同材料行为的不完美和完美球形尖端的有限元模拟来训练神经网络,这解决了将真实尖端形状和测得的力深曲线映射到与理想球形压头相对应的反问题。提供了散装材料和薄膜的解决方案。该方法已在纳米晶镍和钛基板上用于不同球形尖端的铜膜上进行了实验验证。 (c)2006 Elsevier Ltd.保留所有权利。

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