Data-driven discovery of roughness descriptors for surface characterization and intimate contact modeling of unidirectional composite tapes
arXiv cs.LG / 3/24/2026
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Key Points
- 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.
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