Investigation of Crack in Beam Structure using an Adaptive-Genetic Algorithm (AGA)

Q4 Engineering
S. Sahu, S. Jena
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引用次数: 0

Abstract

Fault detection and continuous condition monitoring in structural and machine elements are very sensitive topics and gaining significant value as a current research area. Due to the continuous loading and unloading of these elements, fatigue occurs. For the above-mentioned reason, crack is initiated and propagated. The initiation of any type of crack changes the physical properties of the structural and machine elements, which directly affects the lifetime of the element. The presence of any discontinuity changes the physical properties of the element, which also changes elastic properties. These alterations in physical properties change the modal properties of the structural elements. These changes in the vibration criteria can be used for the identification and quantification of the damage. In this research work, the vibration parameters are combined with Artificial Intelligence (AI) to predict the damage location. Here the natural evolution-based Genetic Algorithm (GA) has been used for the training of vibration features (frequencies). It has been discovered that the original AI methods are sometimes not able to give the proper prediction of damage location as they may be trapped in the local optimum. So, to counteract this loophole and to make it more flexible so that it can adjust to the constraints of real-life problems, a data mining method using Regression Analysis (RA) has been proposed and the results have been compared.
基于自适应遗传算法(AGA)的梁结构裂缝研究
结构和机械部件的故障检测和连续状态监测是一个非常敏感的课题,在当前的研究领域中具有重要的价值。由于这些元件的连续加载和卸载,会产生疲劳。由于上述原因,裂纹产生并扩展。任何类型裂纹的产生都会改变结构和机械元件的物理性能,从而直接影响元件的使用寿命。任何不连续的存在都会改变元件的物理性质,从而也会改变弹性性质。这些物理性质的改变改变了结构元素的模态性质。这些振动准则的变化可用于损伤的识别和量化。在本研究中,将振动参数与人工智能(AI)相结合来预测损伤位置。在这里,基于自然进化的遗传算法(GA)被用于振动特征(频率)的训练。人们发现,原有的人工智能方法有时会陷入局部最优,无法给出正确的损伤位置预测。因此,为了弥补这一漏洞并使其更加灵活,以便能够适应现实问题的约束,提出了一种使用回归分析(RA)的数据挖掘方法,并对结果进行了比较。
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来源期刊
U.Porto Journal of Engineering
U.Porto Journal of Engineering Engineering-Engineering (all)
CiteScore
0.70
自引率
0.00%
发文量
58
审稿时长
20 weeks
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