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Low-cost delamination monitoring of CFRP beams using electrical resistance changes with neural networks

机译:使用神经网络的电阻变化对CFRP梁进行低成本分层监测

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摘要

Delamination is a significant defect of laminated composites. The present study employs an electrical resistance change method in an attempt to identify internal delaminations experimentally. The method adopts reinforcing carbon fibers as sensors. In our previous paper, an actual delamination crack in a carbon fiber reinforced plastic (CFRP) laminate was experimentally identified with artificial neural networks (ANN's) or response surfaces created from a large number of experiments. The experimental results were used for the learning of the ANN or for regressions of the response surfaces. For the actual application of the method, it is necessary to minimize the number of experiments in order to keep the cost of the experiments to a minimum. In the present study, therefore, finite-element method (FEM) analyses are employed to make sets of data for the learning of the ANN. First, the electrical conductivity of the CFRP laminate is identified by means of the least estimation error method. After that, the results of the FEM analyses are used for the learning of the ANN. The method is applied to the actual delamination monitoring of CFRP beams. As a result, the method successfully monitored the delamination location and size using only ten experiments.
机译:分层是层压复合材料的重大缺陷。本研究采用电阻变化方法来尝试通过实验识别内部分层。该方法采用增强碳纤维作为传感器。在我们之前的论文中,通过人工神经网络(ANN)或大量实验创建的响应面,通过实验确定了碳纤维增强塑料(CFRP)层压板中的实际分层裂纹。实验结果用于神经网络的学习或响应面的回归。对于该方法的实际应用,有必要使实验次数最少,以使实验成本降至最低。因此,在本研究中,采用有限元方法(FEM)分析来制作用于学习ANN的数据集。首先,借助最小估计误差法确定CFRP层压板的电导率。之后,将有限元分析的结果用于神经网络的学习。该方法应用于CFRP梁的实际分层监测。结果,该方法仅使用十次实验就成功地监测了分层的位置和大小。

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