Post-hoc Interpretability based Parameter Selection for Data Oriented Nuclear Reactor Accident Diagnosis System
Chengyuan Li, Meifu Li, Zhifang Qiu

TL;DR
This paper introduces a post-hoc interpretability method to select key parameters for nuclear reactor accident diagnosis, reducing training time and maintaining high accuracy with fewer parameters.
Contribution
It proposes a novel parameter selection approach using post-hoc interpretability on a deep learning model for nuclear accident diagnosis.
Findings
Selected 15 key parameters out of 38, reducing training time by 75%.
Achieved diagnostic accuracy within 1.5% of the full-parameter model.
Successfully identified break position and size in LOCA with fewer parameters.
Abstract
During applying data-oriented diagnosis systems to distinguishing the type of and evaluating the severity of nuclear power plant initial events, it is of vital importance to decide which parameters to be used as the system input. However, although several diagnosis systems have already achieved acceptable performance in diagnosis precision and speed, hardly have the researchers discussed the method of monitoring point choosing and its layout. For this reason, redundant measuring data are used to train the diagnostic model, leading to high uncertainty of the classification, extra training time consumption, and higher probability of overfitting while training. In this study, a method of choosing thermal hydraulics parameters of a nuclear power plant is proposed, using the theory of post-hoc interpretability theory in deep learning. At the start, a novel Time-sequential Residual…
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Taxonomy
TopicsNuclear Engineering Thermal-Hydraulics · Nuclear reactor physics and engineering · Fault Detection and Control Systems
