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Using self-organising maps to predict and contain natural disasters and pandemics.

Raymond MoodleyFrancisco ChiclanaFabio CaraffiniMario Gongora
Published in: International journal of intelligent systems (2021)
The unfolding coronavirus (COVID-19) pandemic has highlighted the global need for robust predictive and containment tools and strategies. COVID-19 continues to cause widespread economic and social turmoil, and while the current focus is on both minimising the spread of the disease and deploying a range of vaccines to save lives, attention will soon turn to future proofing. In line with this, this paper proposes a prediction and containment model that could be used for pandemics and natural disasters. It combines selective lockdowns and protective cordons to rapidly contain the hazard while allowing minimally impacted local communities to conduct "business as usual" and/or offer support to highly impacted areas. A flexible, easy to use data analytics model, based on Self Organising Maps, is developed to facilitate easy decision making by governments and organisations. Comparative tests using publicly available data for Great Britain (GB) show that through the use of the proposed prediction and containment strategy, it is possible to reduce the peak infection rate, while keeping several regions (up to 25% of GB parliamentary constituencies) economically active within protective cordons.
Keyphrases
  • big data
  • sars cov
  • decision making
  • electronic health record
  • coronavirus disease
  • healthcare
  • working memory
  • current status
  • machine learning
  • fluorescent probe
  • deep learning
  • single molecule
  • quantum dots