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Abstract
Nuclear energy plays an important role in global energy supply, especially as a key low-carbon source of power. However, safe operation is very critical in nuclear power plants (NPPs). Given the significant impact of human-caused errors on three serious nuclear accidents in history, artificial intelligence (AI) has increasingly been used in assisting operators with regard to making various decisions. In particular, data-driven AI algorithms have been used to identify the presence of accidents and their root causes. However, there is a lack of an open NPP accident dataset for measuring the performance of various algorithms, which is very challenging. This paper presents a first-of-its-kind open dataset created using PCTRAN, a pre-developed and widely used simulator for NPPs. The dataset, namely nuclear power plant accident data (NPPAD), basically covers the common types of accidents in typical pressurised water reactor NPPs, and it contains time-series data on the status or actions of various subsystems, accident types, and severity information. Moreover, the dataset incorporates other simulation data (e.g., radionuclide data) for conducting research beyond accident diagnosis.
Measurement(s) | nuclear power plant accident data |
Technology Type(s) | nuclear power plant similulation |
Factor Type(s) | accident |
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Details

1 Tsinghua University, Institute of Nuclear and New Energy Technology, Beijing, China (GRID:grid.12527.33) (ISNI:0000 0001 0662 3178)
2 Micro-Simulation Technology, Montville, United States of America (GRID:grid.12527.33)