Litcius/Paper detail

Data‐Driven Materials Research and Development for Functional Coatings

Kai Xu, Xuelian Xiao, Linjing Wang, Ming Lou, Fang‐Ming Wang, Changheng Li, Hui Ping Ren, Xue Wang, Keke Chang

2024Advanced Science106 citationsDOIOpen Access PDF

Abstract

Functional coatings, including organic and inorganic coatings, play a vital role in various industries by providing a protective layer and introducing unique functionalities. However, its design often involves time-consuming experimentation with multiple materials and processing parameters. To overcome these limitations, data-driven approaches are gaining traction in materials science. In this paper, recent advances in data-driven materials research and development (R&D) for functional coatings, highlighting the importance, data sources, working processes, and applications of this paradigm are summarized. It is begun by discussing the challenges of traditional methods, then introduce typical data-driven processes. It is demonstrated how data-driven approaches enable the identification of correlations between input parameters and coating performance, thus allowing for efficient prediction and design. Furthermore, carefully selected case studies are presented across diverse industries that exemplify the effectiveness of data-driven methods in accelerating the discovery of new functional coatings with tailored properties. Finally, the emerging research directions, involving integrating advanced techniques and data from different sources, are addressed. Overall, this review provides an overview of data-driven materials R&D for functional coatings, shedding light on its potential and future developments.

Topics & Concepts

Computer scienceData scienceIdentification (biology)CoatingData-drivenSystems engineeringNanotechnologyBiochemical engineeringMaterials scienceArtificial intelligenceEngineeringBotanyBiologyMachine Learning in Materials ScienceFuel Cells and Related MaterialsCorrosion Behavior and Inhibition