Dissertação de Mestrado
Radioactive hot-spot detection using machine learning algorithms
2021
—Informações chave
Autores:
Orientadores:
Publicado em
27/01/2021
Resumo
The detection of radioactive hot-spots has been a challenge for the security sector, especially in situations involving chemical, biological, radiological and nuclear (CBRN) threats. This work proposes a solution based on Machine Learning techniques, with a focus on Artificial Neural Networks (ANNs), so observations of radiological intensity counts and corresponding localizations can be used to estimate not only the number of unknown radioactive sources present in a given scenario, but also their location and activity at the same time. For this, a simulator is used to generate a training data set for the training process, and so, using the model already trained through a Divide and Conquer algorithm, fast and accurate predictions are achieved, ensuring the reliability of such an ANN-based approach. The proposed solution is then tested in scenarios with multiple sources, with obstacles included, and with non-point-like sources. Unlike most existing algorithms, which begin failing in scenarios with those conditions, ANNs have shown that are capable of performing an accurate hot-spots detection, with a low number of limitations. Additionally, experimental results, done in lab environments and real scenarios located at old deposits of radioactive ore, have shown that the algorithm is scalable for very large regions, as well as for very short scenarios. Thus, ANNs have demonstrated the capability of being an emerging tool with the potential to make a difference in the nuclear field, by helping in the development of novel techniques and new solutions in order to safeguard human lives.
Detalhes da publicação
Autores da comunidade :
Miguel Tomé Ramos e Barros
ist425711
Orientadores desta instituição:
Alberto Manuel Martinho Vale
ist13968
Bruno Miguel Soares Gonçalves
ist24515
Domínio Científico (FOS)
physical-sciences - Física
Idioma da publicação (código ISO)
por - Português
Acesso à publicação:
Embargo levantado
Data do fim do embargo:
16/11/2021
Nome da instituição
Instituto Superior Técnico