Litcius/Paper detail

Automatically Generated Datasets: Present and Potential Self-Cleaning Coating Materials

Shaozhou Wang, Yuwei Wan, Ning Song, Yixuan Liu, Tong Xie, Bram Hoex

2024Scientific Data12 citationsDOIOpen Access PDF

Abstract

The rise of urbanization coupled with pollution has highlighted the importance of outdoor self-cleaning coatings. These revolutionary coatings contribute to the longevity of various surfaces and reduce maintenance costs for a wide range of applications. Despite ongoing research to develop efficient and durable self-cleaning coatings, adopting systematic research methodologies could accelerate these advancements. In this work, we use Natural Language Processing (NLP) strategies to generate open- and traceable-sourced datasets about self-cleaning coating materials from 39,011 multi-disciplinary papers. The data are from function-based and property-based corpora for self-cleaning purposes. These datasets are presented in four different formats for diverse uses or combined uses: material frequency statistics, material dictionary, measurement value datasets for self-cleaning-related properties and optical properties, and sentiment statistics of material stability and durability. This provides a literature-based data resource for the development of self-cleaning coatings and also offers potential pathways for material discovery and prediction by machine learning.

Topics & Concepts

CoatingComputer scienceEnvironmental scienceInformation retrievalMaterials scienceNanotechnologyMachine Learning in Materials ScienceInnovative Microfluidic and Catalytic Techniques Innovation