Domains in Motion: A NLP Framework for Mapping Wind Energy Terminology

Abstract

Wind energy constitutes a dynamic and interdisciplinary domain, shaped by technological innovation, evolving societal debates, and the interplay of diverse knowledge fields. Understanding its terminol- ogy is challenging, as concepts change quickly and overlap across different areas. This study introduces LUMEN, a computational method that uses Large Language Models (LLMs) and semantic embeddings to identify and organize subdomains within wind energy. Using a corpus of texts from 2016 to 2024 col- lected via Sketch Engine, LUMEN maps relationships among terms and highlights connections across the field. By providing translators and terminologists with a clear framework to visualize and navigate these complex terminological networks, the method demonstrates how NLP-based approaches can make the analysis of evolving, interdisciplinary domains both more precise and accessible.

Sassi S., Lops A. (2025) "Domains in Motion: A NLP Framework for Mapping Wind Energy Terminology ", Journal of Digital Terminology and Lexicography, 1(2), 49-66. DOI: 10.25430/pupj.jdtl.1763641832  
Year of Publication
2025
Journal
Journal of Digital Terminology and Lexicography
Volume
1
Issue Number
2
Start Page
49
Last Page
66
Date Published
11/2025
ISSN Number
3103-3601
Serial Article Number
4
DOI
10.25430/pupj.jdtl.1763641832
Issue
Section
Article