Integrating socio-psychological factors in the SEIR model optimized by a genetic algorithm for COVID-19 trend analysis
Haonan Wang,
Danhong Wu,
Jie Luo
et al.
Abstract:The global spread of COVID-19 has profoundly affected health and economies, highlighting the need for precise epidemic trend predictions for effective interventions. In this study, we used infectious disease models to simulate and predict the trajectory of COVID-19. An SEIR (susceptible, exposed, infected, removed) model was established using Wuhan data to reflect the pandemic. We then trained a genetic algorithm-based SEIR (GA-SEIR) model using data from a specific U.S. region and focused on individual suscep… Show more
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