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Eigen-Level Data Fusion Model by Integrating Rough Set and Probabilistic Neural Network for Structural Damage Detection

机译:粗糙集与概率神经网络相结合的特征级数据融合模型

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摘要

In this paper, a new eigen-level data fusion model, whereby rough set data and a probabilistic neural network (PNN) are integrated using a data fusion technique, is proposed for structural damage detection. This model is used for structural damage detection and identification, particularly for cases where the measurement data has many uncertainties. More specifically, structural modal parameters derived from vibration responses are first discretized by the K-means clustering technique and the rough set technique is then employed to deal with the great volume of data and to extract optimal feature parameters. After that, the processed data and information are input to the fusion centre of the data fusion technique and fused with the PNN to give a fusion-based damage detection result. To verify the proposed method, two numerical examples are presented to identify both single and multi-damage case patterns. The effects of measurement noise and of non pre-processed rough set data on the damage detection results are also discussed. The results show that the proposed model not only has good damage detection capability and noise tolerance, but also significantly reduces data storage memory requirements and saves runtime as a consequence of the data fusion processing.
机译:本文提出了一种新的特征级数据融合模型,该模型利用数据融合技术将粗糙集数据和概率神经网络(PNN)集成在一起,用于结构损伤检测。该模型用于结构损伤的检测和识别,尤其是在测量数据具有许多不确定性的情况下。更具体地说,首先通过K均值聚类技术离散化来自振动响应的结构模态参数,然后使用粗糙集技术处理大量数据并提取最佳特征参数。之后,将处理后的数据和信息输入到数据融合技术的融合中心,并与PNN融合,以给出基于融合的损伤检测结果。为了验证所提出的方法,给出了两个数值示例来识别单一和多损伤案例模式。还讨论了测量噪声和未预处理的粗糙集数据对损伤检测结果的影响。结果表明,所提出的模型不仅具有良好的损伤检测能力和抗噪声能力,而且由于数据融合处理而显着降低了数据存储的需求并节省了运行时间。

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