User experience evaluation of an AI-based decision-support tool for power grid congestion management
Abstract
The electricity system is changing rapidly, due to the increasing efforts against climate change. In the control room, power grid operators are already being challenged by the changing system behaviour, and maintaining a high level of security of supply is expected to become even more challenging in the future. To cope with these challenges, new tools and functionalities, such as AI-based decision support tools (DSTs) are needed. Developers of future DSTs must consider not only technical aspects, but also whether new systems are usable by power system operators. This study presents a case study of user experience (UX) evaluation applied to a DST for power grid congestion management. The evaluation approach employs a broad range of UX metrics. More precisely, we (i) introduce entirely new UX metrics based on a cognitive analysis of the human-AI interactions, (ii) provide a questionnaire and a set of tasks that are tailor-made for the DST to assess acceptance, trust, and performance, and (iii) apply established generic questionnaires to assess usability and workload. At the same time, the employed methods are mostly simple such that the evaluation requires relatively low effort. The complete end-user population participated in the study, and the DST exhibits high scores in almost all UX metrics. The results form a baseline of summative user research which enables benchmarking of future congestion management tools (or future releases of the same tool).
Keywords: User Experience, Joint Control Framework, Decision Support Tool, Control Room Operators, AI
DOI: 10.54941/ahfe1006694
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