Systematically uncovering transition dynamics: An STCA of the Dutch energy system using LLMs
Summary
While transition studies have produced critical insights into how socio-technical transitions
unfold, only a handful of studies have tried to systematically identify long-term patterns of
transitions. This thesis addresses this gap by exploring a novel methodological approach for
analyzing socio-technical transitions. This novel approach uses Socio-Technical Configuration
Analysis (STCA) complemented by a Large Language Model (GPT-4o-mini), allowing
automated coding of 9,867 trade journal issues. While the primary contribution of this thesis is
methodological, it also provides valuable empirical insights into the Dutch energy system by
analyzing changes in its socio-technical configurations. This analysis covers the period from
1880 to 1966, offering new insights into the evolution of technologies, markets, and institutions
in the Dutch energy system. The findings reveal five systematic patterns in transition dynamics,
including the geographical diffusion of innovation and the co-evolution of selection
environments. These patterns support and extend existing theories such as the Triple Helix
model, the Multi-Level Perspective, and the Deep Transition framework. By combining
theoretical development and methodological innovation, this thesis advances both the
methodological tools and empirical understanding needed to guide society into a more
sustainable future.