English

Cost-informed dimensionality reduction for structural digital twin technologies

Machine Learning 2024-09-18 v1

Abstract

Classification models are a key component of structural digital twin technologies used for supporting asset management decision-making. An important consideration when developing classification models is the dimensionality of the input, or feature space, used. If the dimensionality is too high, then the `curse of dimensionality' may rear its ugly head; manifesting as reduced predictive performance. To mitigate such effects, practitioners can employ dimensionality reduction techniques. The current paper formulates a decision-theoretic approach to dimensionality reduction for structural asset management. In this approach, the aim is to keep incurred misclassification costs to a minimum, as the dimensionality is reduced and discriminatory information may be lost. This formulation is constructed as an eigenvalue problem, with separabilities between classes weighted according to the cost of misclassifying them when considered in the context of a decision process. The approach is demonstrated using a synthetic case study.

Keywords

Cite

@article{arxiv.2409.11236,
  title  = {Cost-informed dimensionality reduction for structural digital twin technologies},
  author = {Aidan J. Hughes and Keith Worden and Nikolaos Dervilis and Timothy J. Rogers},
  journal= {arXiv preprint arXiv:2409.11236},
  year   = {2024}
}

Comments

To appear in the Proceedings of ISMA 2024 (International Conference on Noise and Vibration Engineering) and USD2024 (International Conference on Uncertainty in Structural Dynamics), Leuven, Belgium

R2 v1 2026-06-28T18:47:53.774Z