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Articles

Multi-scale damage modeling of 3D orthogonal woven carbon-carbon composite at elevated temperatures

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Pages 787-800 | Received 25 Feb 2019, Accepted 07 Mar 2019, Published online: 05 Apr 2019
 

Abstract

This paper presents a multi-scale structure modeling scheme to analyze the damage behaviors of three-dimensional orthogonal Carbon/Carbon (C/C) composites subject to uniaxial tension at high temperatures. The multi-scale structure model includes a micro-scale and a meso-scale structure model with periodic boundary conditions to homogenize the heterogeneous fiber/matrix system into unit cells. The micro-scale model predicts the mechanical properties at the fiber tow scale in the three orthogonal directions (x, y and z). The output results by the micro-scale simulations are then incorporated in the meso-scale model to demonstrate the locations of stress propagation and the progressive failure behavior of the 3D C/C composite. Based on the numerical approaches, uniaxial tensile strengths of the 3D C/C composite are calculated from 300 to 2500 K, and its temperature dependences are discussed. The current applied multi-scale models provide an efficient approach to predict the tensile strength of 3D textile composites, and will give some highlights for the design of 3D C/C composite components.

Additional information

Funding

Financial support from the National Natural Science Foundations of China (No. 11672030 and 11872102) are gratefully acknowledged.

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