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Improved Complex-valued Radial Basis Function (ICRBF) neural networks on multiple crack identification

机译:改进的复值径向基函数神经网络在多裂纹识别中的应用

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This paper introduces a new class of neural networks in complex space called Complex-valued Radial Basis Function (CRBF) neural networks and also an improved version of CRBF called Improved Complex valued Radial Basis Function (ICRBF) neural networks. They are used for multiple crack identification in a cantilever beam in the frequency domain. The novelty of the paper is that, these complex-valued neural networks are first applied on inverse problems (damage identification) which come under the category of function approximation. The conventional CRBF network was used in the first stage of ICRBF network and in the second stage a reduced search space moving technique was employed for accurate crack identification. The effectiveness of proposed ICRBF neural network was studied first on a single crack identification problem and then applied to a more challenging problem of multiple crack identification in a cantilever beam with zero noise as well as 5% noise polluted signals. The results proved that, the proposed ICRBF and real-valued Improved RBF (IRBF) neural networks have identified the single and multiple cracks with less than 1% absolute mean percentage error as compared to conventional CRBF and RBF neural networks, mainly because of their second stage reduced search space moving technique. It appears that IRBF neural network is a good compromise considering all factors like accuracy, simplicity and computational effort. (C) 2014 Elsevier B.V. All rights reserved.
机译:本文介绍了一种在复杂空间中的新型神经网络,称为复值径向基函数(CRBF)神经网络,并且介绍了一种称为CRBF的改进版本,即改进的复值径向基函数(ICRBF)神经网络。它们用于频域中悬臂梁的多次裂纹识别。本文的新颖之处在于,这些复值神经网络首先应用于反问题(损伤识别),该问题属于函数逼近类别。在ICRBF网络的第一阶段中使用了常规的CRBF网络,在第二阶段中,采用了缩小的搜索空间移动技术来进行准确的裂纹识别。首先对单个裂纹识别问题研究了提出的ICRBF神经网络的有效性,然后将其应用于具有零噪声以及5%噪声污染信号的悬臂梁中更具挑战性的多重裂纹识别问题。结果证明,与传统的CRBF和RBF神经网络相比,所提出的ICRBF和实值改进的RBF(IRBF)神经网络已识别出具有平均绝对误差小于1%的单个和多个裂纹。阶段减少搜索空间移动技术。考虑到准确性,简单性和计算量等所有因素,IRBF神经网络似乎是一个很好的折衷方案。 (C)2014 Elsevier B.V.保留所有权利。

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