Classification of Safety Events at Nuclear Sites using Large Language Models
This work addresses the need for scalable and accurate safety event identification in nuclear power management, representing an incremental improvement over manual review methods.
The paper tackled the problem of classifying safety events at nuclear sites by developing an LLM-based classifier for Station Condition Records, achieving enhanced efficiency and accuracy in the safety classification process.
This paper proposes the development of a Large Language Model (LLM) based machine learning classifier designed to categorize Station Condition Records (SCRs) at nuclear power stations into safety-related and non-safety-related categories. The primary objective is to augment the existing manual review process by enhancing the efficiency and accuracy of the safety classification process at nuclear stations. The paper discusses experiments performed to classify a labeled SCR dataset and evaluates the performance of the classifier. It explores the construction of several prompt variations and their observed effects on the LLM's decision-making process. Additionally, it introduces a numerical scoring mechanism that could offer a more nuanced and flexible approach to SCR safety classification. This method represents an innovative step in nuclear safety management, providing a scalable tool for the identification of safety events.