Application of artificial neural networks for stress state analysis based on the photoelastic method

Anton Konurin , Neverov Sergey , Neverov Alexandr , Orlov Dmitry , Zharov Ivan , Konurina Maria
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Abstract

The present article proposes an evolutionary development of the photoelasticity method for measuring stresses based on annular photoelastic sensors application along with stress pattern recording with the aid of a digital camera and its recognition using artificial neural networks. The analysis of the modern application of the photo-elasticity method for various problems within the theory of strength is presented. The principle of operation of photoelastic sensors based on the photoelasticity effect is considered. Optical patterns in an annular photoelastic sensor are presented for various values of the horizontal stress. The calculation of the stress state of the sensor for the following full-scale experiment has been performed, the estimate of the threshold conditions under which the sensor can be applied has been performed. As a result of a laboratory experiment, a dataset of 1500 isochromatic images has been assembled. A subspecies of a neural network, namely a convolutional neural network, has been applied as a machine learning algorithm. Different combination of models and optimizers have been employed. The application of downhole sensors for continuous monitoring of alterations in the rock mass stress state and the integration of this data into a digital field model based on Internet of Things technologies has been proposed.

基于光弹性方法的人工神经网络在应力状态分析中的应用
本文提出了一种基于环形光弹性传感器的应力测量方法的进化发展,并结合数码相机的应力模式记录和人工神经网络的识别。分析了光弹性方法在强度理论中各种问题的现代应用。基于光弹性效应,研究了光弹性传感器的工作原理。给出了不同水平应力值下环形光弹性传感器的光学图形。已经对传感器的应力状态进行了计算,并对传感器可以应用的阈值条件进行了估计。作为一个实验室实验的结果,一个数据集的1500张等色图像已经组装。神经网络的一个亚种,即卷积神经网络,已被应用于机器学习算法。采用了不同的模型和优化器组合。提出了应用井下传感器连续监测岩体应力状态的变化,并将这些数据集成到基于物联网技术的数字现场模型中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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