Nuclear applications

Woking closely with industry, we apply and develop computational and experimental methods to detect radioactive and nuclear material across security, energy and medical applications. Our research draws on the latest artificial intelligence approaches including neural networks and genetic algorithms. 

Past projects

Selected publications and proceedings

PhD thesis

Areas of research interest include

  • Convolutional neutral networks applied to Nuclear Security
  • Machine leaning within Nuclear Health
  • Physics informed machine learning for the Nuclear Industry
  • AI deep learning methods applied to Nuclear Applications 
  • Genetic algorithms, sparse data techniques, fuzzy logic

Browse the University's frequently updated list of self-funded and funded studentships open for applications.

Areas of research interest include

  • Convolutional neutral networks applied to Nuclear Security
  • Machine leaning within Nuclear Health
  • Physics informed machine learning for the Nuclear Industry
  • AI deep learning methods applied to Nuclear Applications 
  • Genetic algorithms, sparse data techniques, fuzzy logic

Browse the University's frequently updated list of self-funded and funded studentships open for applications.