Bundesanstalt für Materialforschung- und prüfung (BAM), Unter den Eichen 87, Berlin, 12205, Germany.
Fraunhofer Institute for Mechanics of Materials IWM, Wöhlerstrasse 11, Freiburg, 79108, Germany.
Sci Data. 2024 Apr 30;11(1):434. doi: 10.1038/s41597-024-03169-4.
This study applies Semantic Web technologies to advance Materials Science and Engineering (MSE) through the integration of diverse datasets. Focusing on a 2000 series age-hardenable aluminum alloy, we correlate mechanical and microstructural properties derived from tensile tests and dark-field transmission electron microscopy across varied aging times. An expandable knowledge graph, constructed using the Tensile Test and Precipitate Geometry Ontologies aligned with the PMD Core Ontology, facilitates this integration. This approach adheres to FAIR principles and enables sophisticated analysis via SPARQL queries, revealing correlations consistent with the Orowan mechanism. The study highlights the potential of semantic data integration in MSE, offering a new approach for data-centric research and enhanced analytical capabilities.
本研究应用语义网技术,通过整合不同数据集,推动材料科学与工程(MSE)的发展。研究聚焦于 2000 系列时效铝合金,将从拉伸试验和暗场透射电子显微镜获得的力学和微观结构性质与不同时效时间相关联。一个可扩展的知识图谱,使用与 PMD 核心本体对齐的拉伸试验和析出相几何形状本体构建,实现了这种集成。这种方法符合 FAIR 原则,并通过 SPARQL 查询进行复杂的分析,揭示了与奥罗万机制一致的相关性。该研究强调了语义数据集成在 MSE 中的潜力,为数据驱动的研究提供了新方法,并增强了分析能力。