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首页> 外文期刊>International Journal of Distributed Sensor Networks >A Revised Counter-Propagation Network Model Integrating Rough Set for Structural Damage Detection
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A Revised Counter-Propagation Network Model Integrating Rough Set for Structural Damage Detection

机译:集成粗糙集的结构化损伤修正反传播网络模型

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This paper proposes a revised counter-propagation network (CPN) model by integrating rough set in structural damage detection, applicable for processing redundant and uncertain information as well as assessing structural health states. Firstly, rough set is used in the model to deal with a large volume of data; secondly, a revised training algorithm is developed to improve the capabilities of the CPN model; and lastly, the least input vectors are input to the revised CPN (RCPN) model, hence the rough set-based RCPN is proposed in the paper. To validate the model proposed, numerical experiments are conducted, and, as a result, six damage patterns have been successfully identified in a steel frame. The influence of measurement noise, the network models adopted, and the data preprocessing methods on damage identification is also discussed in the paper. The results show that the proposed model not only has good damage detection capability and noise tolerance, but also significantly reduces the data storage requirement and saves computing time.
机译:本文通过将粗糙集集成到结构损伤检测中,提出了一种改进的对向传播网络(CPN)模型,适用于处理冗余和不确定信息以及评估结构健康状态。首先,在模型中使用粗糙集来处理大量数据。其次,开发了改进的训练算法以提高CPN模型的能力。最后,将最少的输入向量输入到修正的CPN(RCPN)模型中,因此提出了基于粗糙集的RCPN。为了验证所提出的模型,进行了数值实验,结果,在钢框架中成功识别出六个损伤模式。本文还讨论了测量噪声,采用的网络模型以及数据预处理方法对损伤识别的影响。结果表明,该模型不仅具有良好的损伤检测能力和抗噪声能力,而且还大大降低了数据存储需求,节省了计算时间。

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