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Dimension Reduction Algorithms in the Damage Indexes Space for Damage Size Quantification in Aeronautic Composite Structures

机译:航空复合材料结构损伤尺寸量化的损伤指标空间降维算法

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The Structural Health Monitoring (SHM) process is classically decomposed into four steps: damage detection, localization, classification and quantification. Here the focus is put on aeronautic composite structures and specifically on the damage quantification step. For SHM purpose, such structures are equipped with piezoelectric elements that can be used both as sensors and actuators. To quantify a detected damage, measurements are first performed in a reference state. Then, during the life cycle of the structure several measurements at unknown states are performed. Several damage indexes are then extracted from the difference between the reference and unknown states. This damage indexes matrix is the basis of any algorithms dedicated to the quantification step but still contains many more dimensions that just a quantification of damage size. The question raised here is the efficiency of dimension reduction algorithms in the damage indexes space for quantification purposes. Performances of simple direct regression (SDR), principal component analysis (PCA), partial least squares (PLS), canonical correlation analysis (CCA) and autoencoders (AE) are investigated for this purpose. It is shown that PCA, PLS and CCA are all able to discover a low-dimensional space within the damage indexes space that is linearly related with the physical damage size, and that average prediction errors of the order of ≈ 1% can be achieved by projecting data through that low-dimensional space.
机译:传统上将结构健康监测(SHM)过程分解为四个步骤:损坏检测,定位,分类和量化。在此,重点放在航空复合结构上,尤其是在损害量化步骤上。出于SHM的目的,此类结构配备了可用作传感器和执行器的压电元件。为了量化检测到的损坏,首先在参考状态下执行测量。然后,在结构的生命周期内,在未知状态下执行几次测量。然后从参考状态和未知状态之间的差异中提取几个损坏指标。该损坏指数矩阵是专用于量化步骤的所有算法的基础,但仍包含更多维度,仅是损坏大小的量化。这里提出的问题是在损伤指标空间中进行量化的降维算法的效率。为此,研究了简单直接回归(SDR),主成分分析(PCA),偏最小二乘(PLS),规范相关分析(CCA)和自动编码器(AE)的性能。结果表明,PCA,PLS和CCA都能够在与物理损伤大小线性相关的损伤指数空间中发现一个低维空间,并且可以通过以下方法实现大约1%的平均预测误差:通过低维空间投影数据。

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