3.9 Article

Manifold Learning Algorithms Applied to Structural Damage Classification

期刊

出版社

SHAHID CHAMRAN UNIV AHVAZ, IRAN
DOI: 10.22055/JACM.2020.33055.2139

关键词

Structural health monitoring; Manifold learning; Feature extraction; Machine learning; Dimensionality reduction; Damage classification

资金

  1. FONDO DE CIENCIA TECNOLOGIA E INNOVACION FCTeI DEL SISTEMA GENERAL DE REGALIAS SGR
  2. Administrative Department of Science, Technology and Innovation -Colciencias [779]
  3. Colciencias
  4. Gobernacion de Boyaca
  5. Spanish Agencia Estatal de Investigacion (AEI) -Ministerio de Economia, Industria y Competitividad (MINECO)
  6. Fondo Europeo de Desarrollo Regional (FEDER) [DPI2017-82930-C2-1-R]
  7. Generalitat de Catalunya [2017 SGR 388]

向作者/读者索取更多资源

A comparative study of four manifold learning algorithms was conducted in the context of structural health monitoring for damage classification. The results indicated that employing the Isomap algorithm led to the best classification accuracy in the experimental setup.
A comparative study of four manifold learning algorithms was carried out to perform the dimensionality reduction process within a proposed methodology for damage classification in structural health monitoring (SHM). Isomap, locally linear embedding (LLE), stochastic proximity embedding (SPE), and laplacian eigenmaps were used as manifold learning algorithms. The methodology included several stages that comprised: data normalization, dimensionality reduction, classification through KNearest Neighbors (KNN) machine learning model and finally holdout cross-validation with 25% of data for training and the remaining 75% of data for testing. Results evaluated in an experimental setup showed that the best classification accuracy was 100% when the methodology uses isomap algorithm with a hyperparameter k of 170 and 8 dimensions as a feature vector at the input to the KNN classification machine.

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