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Subspace-based damage localization using Artificial Neural Network

机译:基于子空间的人工神经网络造成基于子空间的伤害本地化

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In this paper, an Artificial Neural Network (ANN) based approach using a new non-parametric residual, as input, is presented for damage diagnosis. The residual is associated with Observability null-space of the system and is generated by using parity matrices, obtained from covariance driven output-only Subspace Identification (SubID). The proposed residual is compared with existing subspace based damaged indicators by using a simple numerical example. For damage localization a modal based approach is adopted, where a Finite Element (FE) model is employed to simulate the temporal response of a structure under different excitation conditions and damage scenarios. Training of ANN is established using residuals generated from these simulated responses. This trained ANN is in turn used to locate, in semi-real time, the predefined damage types. The effectiveness of this algorithm to identify damage is studied experimentally by localizing single edge cracks in a thin aluminum plate.
机译:本文介绍了使用新的非参数残差作为输入的基于人工神经网络(ANN)的方法,用于损坏诊断。残差与系统的可观察性空间相关联,并且通过使用从协方差驱动的输出输出的子空间标识(SubID)获得的奇偶校验矩阵生成。通过使用简单的数值示例将所提出的残留与现有的子空间基于损坏的指示器进行比较。对于损坏定位,采用了基于模式的方法,其中采用有限元(FE)模型来模拟不同激励条件下结构的时间响应和损坏场景。使用从这些模拟响应产生的残差来建立ANN的培训。此培训的ANN反过来用于在半实时定位预定义的损坏类型。通过在薄铝板中定位单个边缘裂缝来实验研究该算法识别损坏的有效性。

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