Data-driven discovery of roughness descriptors for surface characterization and intimate contact modeling of unidirectional composite tapes

arXiv cs.LG / 2026/3/24

📰 ニュースIdeas & Deep AnalysisModels & Research

要点

  • The study argues that conventional statistical roughness descriptors for unidirectional composite tapes may not directly reflect the interfacial physics driving intimate contact evolution during thermoplastic diffusion and tape-to-tape consolidation.
  • It proposes a data-driven representation-learning approach using Rank Reduction Autoencoders (RRAEs), where a linear latent space is enforced through truncated SVD during training.
  • The method aims to produce roughness descriptors that both support tape classification for process control and improve consolidation modeling by enabling inference of intimate contact evolution from process parameters.
  • By constraining latent SVD modes, the approach is designed to preserve physical/functional relevance in the learned features and allow extraction of prior knowledge linked to classification or modeling behavior.

Abstract

Unidirectional tapes surface roughness determines the evolution of the degree of intimate contact required for ensuring the thermoplastic molecular diffusion and the associated inter-tapes consolidation during manufacturing of composite structures. However, usual characterization of rough surfaces relies on statistical descriptors that even if they are able to represent the surface topology, they are not necessarily connected with the physics occurring at the interface during inter-tape consolidation. Thus, a key research question could be formulated as follows: Which roughness descriptors simultaneously enable tape classification-crucial for process control-and consolidation modeling via the inference of the evolution of the degree of intimate contact, itself governed by the process parameters?. For providing a valuable response, we propose a novel strategy based on the use of Rank Reduction Autoencoders (RRAEs), autoencoders with a linear latent vector space enforced by applying a truncated Singular Value Decomposition (SVD) to the latent matrix during the encoder-decoder training. In this work, we extract useful roughness descriptors by enforcing the latent SVD modes to (i) accurately represent the roughness after decoding, and (ii) allow the extraction of existing a priori knowledge such as classification or modelling properties.