English

Electrospinning-Data.org: A FAIR, Structured Knowledge Resource for Nanofiber Fabrication

Databases 2026-05-13 v2 Materials Science

Abstract

Electrospinning is a versatile nanofabrication technique whose outcomes emerge from a complex, high-dimensional interplay between solution properties, processing parameters, and environmental conditions. Optimizing this parameter space for targeted fiber morphology is inherently challenging, often driving extensive trial-and-error experimentation and generating vast experimental data across laboratories worldwide. Yet this knowledge remains fragmented and underutilized due to inconsistent reporting and a pervasive bias toward successful outcomes, limiting reproducibility and hindering data-driven research. Here we introduce Electrospinning-Data.org, a FAIR-aligned data aggregation infrastructure that organizes dispersed electrospinning experiments into structured, reusable, and failure-aware scientific records. The platform is built around a unified process-structure-property data model linking experimental inputs, environmental conditions, and nanofiber morphology, annotated through a controlled vocabulary, within a consistent, machine-readable schema. A two-stage moderation pipeline combining automated validation with expert review supports data quality and long-term interoperability. The resulting structured, failure-inclusive corpus provides a framework for data-driven research, including predictive modelling, inverse design of target morphologies, and systematic mapping of instability regimes that would otherwise require extensive trial-and-error experimentation.

Keywords

Cite

@article{arxiv.2603.27841,
  title  = {Electrospinning-Data.org: A FAIR, Structured Knowledge Resource for Nanofiber Fabrication},
  author = {Mehrab Mahdian and Ferenc Ender and Tamas Pardy},
  journal= {arXiv preprint arXiv:2603.27841},
  year   = {2026}
}
R2 v1 2026-07-01T11:43:07.224Z