Document Type
Conference Paper
Publication Date
2025
DOI
10.13182/xyz-46960
Publication Title
Nuclear Plant Instrumentation and Control and Human-Machine Interface Technology (NPIC & HMIT 2025)
Pages
330-339
Conference Name
Nuclear Plant Instrumentation and Control and Human-Machine Interface Technology (NPIC & HMIT 2025), June 15-18, 2025, Chicago, IL
Abstract
Emerging technologies such as artificial intelligence (AI) and machine learning are rapidly evolving and promising tools for efficient and continued safe operations of the U.S. nuclear power plants (NPPs). Emerging AI techniques like large language models (LLMs) are one such technology that may help personnel at existing NPPs perform work more efficiently. For example, operators may query the current operational status of a power plant via a chat interface, leveraging LLMs to access plant-related information in an interactive manner rather than manually collecting various sensor data for surveillance or work order tasks. This is a fundamental shift in the way operators perform their tasks today. The literature of human-automation interaction indicates that trust is a crucial factor that drives a successful interaction between a human operator and an automated system, like an AI-infused NPP application. This work presents the results of a literature review on key factors that relate to trust in AI/LLM technologies for NPP applications. These key factors include trustworthiness, performance characteristics, operator skill, and perceived risk. This preliminary literature review will guide model development and evaluation involving the key factors influencing trust in AI and will develop a framework for a human-centered design for an interface between humans and AI. By addressing trust, this work supports developing a technical basis for designing key characteristics of AI/LLM to support calibrated trust, which will ultimately support widescale adoption of AI/LLM technologies, as well as ensure their safe, effective, and reliable use.
Rights
© 2026 American Nuclear Society.
Included with the kind written permission of the lead author and the copyright holder.
Original Publication Citation
Yamani, Y., Jackson, A., Kovesdi, C., Joe, J., & Mohon, J. (2025). Trustworthiness and trust: Identifying factors that drive successful human-AI interaction in nuclear power plant applications [Paper presentation]. Nuclear Plant Instrumentation and Control and Human-Machine Interface Technology (NPIC & HMIT 2025), Chicago, Illinois. https://www.ans.org/pubs/proceedings/article-58881/
ORCID
0000-0001-8990-0010 (Yamani),
Repository Citation
Yamani, Yusuke; Jackson, Austin; Kovesdi, Casey; Joe, Jeffrey; and Mohon, Jeremy, "Trustworthiness and Trust: Identifying Factors that Drive Successful Human-AI Interaction in Nuclear Power Plant Applications" (2025). Psychology Faculty Publications. 244.
https://digitalcommons.odu.edu/psychology_fac_pubs/244
Included in
Artificial Intelligence and Robotics Commons, Energy Policy Commons, Energy Systems Commons, Psychology Commons