Frequency data driven damage detection of polymeric composite structural health using machine learning models

Vikash Kumar, Pritam Pattanayak, Ashish Kumar Mehar, Subrata Kumar Panda
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Abstract

Firstly, the effect of damages (crack and delamination) on frequency responses of the polymeric composite structures is predicted numerically in this research. The responses are computed numerically using the finite element technique associated with a higher‐order deformation kinematic model. The model accuracy has been verified by comparing the published frequency responses and in‐house experimental data. The verified model is extended to generate the desired data (frequencies) utilizing various input parameters related to the geometrical forms and damage types (shapes, sizes, and positions). Further, different machine learning models (MLMs) are developed using Python algorithms for the identification of structural health. In this regard, the extracted data sets are initially used to train the MLM, detect the damages, and identify types of damage and damage‐related data of polymeric structures. Out of all kinds of MLMs, it is understood that the Random Forest Classifier provides the best result, which had an accuracy of 94.66% with the optimal parameters. The precision accomplished is 97% for intact and 94% for damaged structures. The proposed algorithm is also capable of identifying the damage‐related parameters (shape, size, type, and position) and predicting the defects early to prevent unintended mishaps.
利用机器学习模型对高分子复合材料结构健康状况进行频率数据驱动的损伤检测
首先,本研究对损伤(裂纹和分层)对聚合物复合结构频率响应的影响进行了数值预测。这些响应是利用与高阶变形运动学模型相关的有限元技术进行数值计算的。通过比较已公布的频率响应和内部实验数据,验证了模型的准确性。经过验证的模型可利用与几何形状和损伤类型(形状、大小和位置)相关的各种输入参数进行扩展,以生成所需的数据(频率)。此外,还使用 Python 算法开发了不同的机器学习模型 (MLM),用于识别结构健康状况。在这方面,提取的数据集最初用于训练 MLM、检测损坏、识别聚合物结构的损坏类型和损坏相关数据。据了解,在所有类型的 MLM 中,随机森林分类器的效果最好,在参数最优的情况下,准确率达到 94.66%。完整结构的精确度为 97%,受损结构的精确度为 94%。所提出的算法还能够识别与损坏相关的参数(形状、尺寸、类型和位置),并及早预测缺陷,以防止意外事故的发生。
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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