Image-based learning and experimental verification of crack propagation in random multi-fractures rock

IF 5 2区 工程技术 Q1 ENGINEERING, MECHANICAL
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Abstract

Fractures and the rock matrix are fundamental components of rock masses, with their random distribution being a common characteristic. Previous studies often focus on regularly fractured rock samples to facilitate experimental and numerical analysis. However, the limited number of samples used in these studies hinders a comprehensive understanding of the mechanical properties and failure characteristics of fractured rock masses. In this paper, we implement batch numerical simulations using PFC (Particle Flow Code) with an original automatic control code, resulting in a dataset of 400 numerical simulation results. The crack propagation characteristics and failure parameters of rock mass with random multi-fractures have been studied by using GANs (Generative Adversarial Networks) and other neural network models. Randomly fractured granite samples were subjected to uniaxial compression loadings, and the evolution of the strain field was analyzed by applying digital image processing technology. The testing results were then compared with the training model results. After verifying the model’s accuracy, the obtained CNN (Convolutional Neural Networks) model can be used to predict the UCS (Uniaxial Compressive Strength) of the real experimental samples. Additionally, we analyzed and discussed the influence of various parameters of random fractured rock mass on its bearing capacity.

Abstract Image

基于图像的随机多断裂岩石裂缝扩展学习与实验验证
裂缝和岩石基质是岩体的基本组成部分,其随机分布是其共同特征。以往的研究通常侧重于规则断裂的岩石样本,以方便进行实验和数值分析。然而,这些研究中使用的样本数量有限,妨碍了对断裂岩体力学性能和破坏特征的全面了解。在本文中,我们使用 PFC(粒子流代码)和独创的自动控制代码进行了批量数值模拟,得到了 400 个数值模拟结果数据集。利用 GANs(生成对抗网络)和其他神经网络模型研究了随机多裂缝岩体的裂缝扩展特征和破坏参数。对随机断裂的花岗岩样品施加单轴压缩载荷,并通过数字图像处理技术分析应变场的演变。然后将测试结果与训练模型结果进行比较。在验证了模型的准确性后,得到的 CNN(卷积神经网络)模型可用于预测实际实验样品的 UCS(单轴压缩强度)。此外,我们还分析和讨论了随机断裂岩体的各种参数对其承载能力的影响。
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来源期刊
Theoretical and Applied Fracture Mechanics
Theoretical and Applied Fracture Mechanics 工程技术-工程:机械
CiteScore
8.40
自引率
18.90%
发文量
435
审稿时长
37 days
期刊介绍: Theoretical and Applied Fracture Mechanics'' aims & scopes have been re-designed to cover both the theoretical, applied, and numerical aspects associated with those cracking related phenomena taking place, at a micro-, meso-, and macroscopic level, in materials/components/structures of any kind. The journal aims to cover the cracking/mechanical behaviour of materials/components/structures in those situations involving both time-independent and time-dependent system of external forces/moments (such as, for instance, quasi-static, impulsive, impact, blasting, creep, contact, and fatigue loading). Since, under the above circumstances, the mechanical behaviour of cracked materials/components/structures is also affected by the environmental conditions, the journal would consider also those theoretical/experimental research works investigating the effect of external variables such as, for instance, the effect of corrosive environments as well as of high/low-temperature.
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