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A Non-linear Manifold Strategy for SHM Approaches

机译:sHm方法的非线性流形策略

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摘要

In the data-based approach to structural health monitoring (SHM) when novelty detection is utilised as a means of diagnosis, benign operational and environmental variations of the structure can lead to false alarms and mask the presence of damage. The key element of this paper is to demonstrate a series of pattern recognition approaches which investigate complex correlations between the variables and thus potentially shed light on the variations within the data that are of interest for SHM. The non-linear manifold learning techniques discussed here, like locally linear embedding combined with robust discordance measures like the minimum covariance determinant and regression techniques like Gaussian processes offer a strategy that includes reliable novelty detection analysis but also a method of investigating the space where structural data clusters are lying.
机译:在将新颖性检测用作诊断手段的基于数据的结构健康监测(SHM)方法中,结构的良性操作和环境变化会导致错误警报并掩盖损坏的存在。本文的关键要素是演示一系列模式识别方法,这些方法研究变量之间的复杂相关性,从而有可能揭示SHM感兴趣的数据中的变化。此处讨论的非线性流形学习技术(例如局部线性嵌入)与鲁棒的不一致度量(例如最小协方差行列式)和回归技术(例如高斯过程)相结合,提供了一种策略,该方法不仅包括可靠的新颖性检测分析,而且还提供了一种调查结构数据的空间的方法群在撒谎。

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