2023
DOI: 10.35335/eh0bph05
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AI-Driven approach for enhancing nuclear reactor safety predictive anomaly detection and risk assessment

Qureshi Sethu Russell,
Nichols Peng Linzi

Abstract: Nuclear power plays a vital role in meeting global energy demands, but ensuring the safety of nuclear reactors remains a paramount challenge. In recent years, the emergence of artificial intelligence (AI) technologies has opened new avenues to significantly enhance nuclear reactor safety through predictive anomaly detection and risk assessment. This research proposes an innovative AI-driven approach that integrates machine learning techniques and data analytics to monitor, detect, and assess potential anomalie… Show more

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