Designing the Geometry of Compact Tension Specimens for Easy Fracture Toughness Measurement Using Reinforcement Learning

Author:

Qiu Cheng1,Lin Yuxia22,Shen Yan22,Song Hongwei31,Yang Jinglei45

Affiliation:

1. Chinese Academy of Sciences Institute of Mechanics, , Beijing 100190 , China

2. Hong Kong University of Science and Technology Department of Mechanical and Aerospace Engineering, , Hong Kong SAR 999077 , China

3. Institute of Mechanics Institute of Mechanics, , Beijing 100190 , China

4. Hong Kong University of Science and Technology Department of Mechanical and Aerospace Engineering, , Hong Kong SAR 999077 , China ;

5. HKUST Shenzhen-Hong Kong Collaborative Innovation Research Institute , Shenzhen 518048 , China

Abstract

Abstract For composite laminates, a rising R-curve is observed for their fracture toughness under Mode I stress, which is important for a comprehensive failure analysis of the materials. Since it is laborious to measure the R-curve due to its dependence on both the load and the crack extension, we put forward a novel compact tension specimen by modifying its geometry to eliminate the relation between fracture toughness and crack extension, so as to simplify the experimental process of the R-curve measurement by only recording the load history. Two machine-learning models were developed for the optimum sample design based on the finite element analysis of the effect of sample geometries on the R-curve. A simple neural network model was built for designing tapered specimen and a reinforcement learning model was created for further finding the best design from a broader design space. The results showed that, in contrast to the specimens with a tapered shape, which only ensure the independence between the R-curve and crack extension in the case of a small extension, the design provided by the reinforcement learning provides such independence across a wider range of crack length and an improved accuracy.

Funder

Chinese Academy of Sciences

Guangdong Science and Technology Department

Publisher

ASME International

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