AI-Assisted Root Cause Analysis for Mechanical Failures in Nuclear Power Plants
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Polytechnic University of Puerto Rico
Item Type
Poster
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Abstract
This project presents the development and evaluation of an artificial intelligence system designed to improve the accuracy and efficiency of diagnosing mechanical failures in turbine systems within nuclear power plants. Traditional root cause analysis relies heavily on manual expertise, which leads to extended diagnostic times, inconsistent classifications, and potential human error. The methodology used followed the DMAIC process improvement framework to integrate supervised machine learning techniques using failure data. A simulation was implemented to test the system's ability to detect faults like bearing damage, rotor imbalance, and lubrication issues. The model was able to achieve all three objectives with the following results: an accuracy of 87.67%, reduced diagnostic time by 30%, and consistent classification across three failure categories. This confirms that AI can significantly support safer, faster, and more consistent nuclear
power plant's turbine diagnostics.
Description
Design Project Article for the Graduate Programs at Polytechnic University of Puerto Rico
Keywords
Citation
López Rivera, A. B. (2025). AI-Assisted Root Cause Analysis for Mechanical Failures in Nuclear Power Plants [Unpublished manuscript]. Graduate School, Polytechnic University of Puerto Rico.