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Applying neural networks, genetic algorithms and fuzzy logic for the identification of cracks in shafts by using coupled response measurements

机译:应用神经网络,遗传算法和模糊逻辑通过耦合响应测量识别轴中的裂纹

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This paper considers the dynamic behavior of a shaft with two transverse cracks characterized by three measures: position, depth and relative angle. Both cracks are considered to lie along arbitrary angular positions with respect to the longitudinal axis of the shaft and at some distance from the clamped end. A local compliance matrix of two degrees of freedom (bending in both the horizontal and the vertical planes) is used to model each crack. The calculation of the compliance matrix is based on established stress intensity factor expressions and is performed for all rotation angles through a function that incorporates the crack depth and position as parameters. In the present paper, a model for the coupling effect of bending vibrations on the cracked shaft is first introduced and then used to identify the rotational angle of the crack. This angle is a significant factor and a prerequisite for the existence of coupling. The eigen-frequencies and the response of the cracked shaft in specific points are used in order to define an objective function based on the differences between numerical and experimental results. Next, an efficient objective function is selected, one whose minimization leads to the determination of the crack characteristics. Towards this goal, five different objective functions are proposed and validated; two of these are based on fuzzy logic. More computational intelligence is added through a genetic algorithm, which is used to find the characteristics of the cracks through artificial neural networks that approximate the analytical model. Both the genetic algorithm and the neural networks contribute to a remarkable reduction of the computational time without any significant loss of accuracy. The final results show that the proposed methodology may constitute an efficient tool for real-time crack identification.
机译:本文考虑了具有两个横向裂纹的轴的动态行为,其特征在于三个措施:位置,深度和相对角度。认为这两个裂纹都相对于轴的纵轴沿着任意角度位置,并且距夹紧端一定距离。使用两个自由度的局部柔度矩阵(在水平和垂直平面上弯曲)来对每个裂纹建模。柔度矩阵的计算基于已建立的应力强度因子表达式,并通过将裂纹深度和位置作为参数的函数对所有旋转角度执行。在本文中,首先引入了弯曲振动对裂纹轴的耦合效应的模型,然后将其用于识别裂纹的旋转角度。这个角度是一个重要因素,也是存在耦合的前提。为了根据数值和实验结果之间的差异定义目标函数,使用了特征频率和裂纹轴在特定点的响应。接下来,选择一种有效的目标函数,将其最小化可以确定裂纹特征。为了实现这一目标,提出并验证了五个不同的目标功能。其中两个基于模糊逻辑。通过遗传算法增加了更多的计算智能,该遗传算法用于通过近似分析模型的人工神经网络查找裂缝的特征。遗传算法和神经网络都有助于显着减少计算时间,而不会显着降低准确性。最终结果表明,所提出的方法可以构成实时裂纹识别的有效工具。

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