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Crack identification in curvilinear beams by using ANN and ANFIS based on natural frequencies and frequency response functions

机译:基于自然频率和频率响应函数的ANN和ANFIS在曲线梁裂纹识别中的应用

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摘要

This paper presents different artificial intelligence (AT) techniques for crack identification in curvilinear beams based on changes in vibration characteristics. Vibration analysis has been performed by applying the finite element method (FEM) to compute natural frequencies and frequency response functions (FRFs) for intact and damaged beams. The analysis reveals the changes in natural frequencies and amplitudes of FRFs of the beams for cracks of different sizes at different locations. These changes are used as input data for single and multiple artificial neural networks (ANN) and multiple adaptive neuro-fuzzy inference systems (ANFIS) in order to predict the size of the crack and its location. To avoid large models, the principal component analysis (PCA) approach has been carried out to reduce the computed FRFs data. The analysis of different techniques shows that the average prediction errors in the multiple ANN models is less than those in the single ANN model and in the multiple ANFIS. It is shown that the cracks longer than 5 mm can be located with satisfactory accuracy, even if the input data are corrupted with various level of noise. Multiple ANFIS is adopted to construct a more reliable and less sensitive model for noise excitation.
机译:本文基于振动特性的变化,提出了不同的人工智能(AT)技术来识别曲线梁中的裂纹。通过应用有限元方法(FEM)来计算完整和受损光束的固有频率和频率响应函数(FRF),可以进行振动分析。分析揭示了在不同位置出现不同尺寸裂缝的梁的固有频率和FRF振幅的变化。这些变化用作单个和多个人工神经网络(ANN)和多个自适应神经模糊推理系统(ANFIS)的输入数据,以便预测裂缝的大小及其位置。为了避免使用大型模型,已进行了主成分分析(PCA)方法以减少计算的FRF数据。对不同技术的分析表明,多个ANN模型中的平均预测误差要小于单个ANN模型和多个ANFIS中的平均预测误差。结果表明,即使输入数据因各种噪声而损坏,也可以以令人满意的精度定位大于5 mm的裂纹。采用多个ANFIS来构建更可靠,更不敏感的噪声激励模型。

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