@incollection{fong_analysis_2022, address = {Cham}, title = {Analysis of the {COVID19} {Pandemic} {Behaviour} {Based} on the {Compartmental} {SEAIRD} and {Adaptive} {SVEAIRD} {Epidemiologic} {Models}}, isbn = {978-3-030-95281-5}, url = {https://doi.org/10.1007/978-3-030-95281-5_2}, abstract = {A significant number of people infected by COVID19 do not get sick immediately but become carriers of the disease. These patients might have a certain incubation period. However, the classical compartmental model, SEIR, was not originally designed for COVID19. We used the simple, commonly used SEIR model to retrospectively analyse the initial pandemic data from Singapore. Here, the SEIR model was combined with the actual published Singapore pandemic data, and the key parameters were determined by maximizing the nonlinear goodness of fit R2 and minimizing the root mean square error. These parameters served for the fast and directional convergence of the parameters of an improved model. To cover the quarantine and asymptomatic variables, the existing SEIR model was extended to an infectious disease model with a greater number of population compartments, and with parameter values that were tuned adaptively by solving the nonlinear dynamics equations over the available pandemic data, as well as referring to previous experience with SARS. The contribution presented in this paper is a new model called the adaptive SEAIRD model; it considers the new characteristics of COVID19 and is therefore applicable to a population including asymptomatic carriers. The predictive value is enhanced by tuning of the optimal parameters, whose values better reflect the current pandemic.}, language = {en}, urldate = {2022-09-21}, booktitle = {Epidemic {Analytics} for {Decision} {Supports} in {COVID19} {Crisis}}, publisher = {Springer International Publishing}, author = {Fong, Simon James and Marques, João Alexandre Lobo and Li, G. and Dey, N. and Crespo, Rubén G. and Herrera-Viedma, E. and Gois, F. Nauber Bernardo and Neto, José Xavier}, editor = {Marques, Joao Alexandre Lobo and Fong, Simon James}, year = {2022}, doi = {10.1007/978-3-030-95281-5_2}, keywords = {Adaptive SEAIRD model, Adaptive SVEAIRD model, Asymptomatic cases, Prediction models}, pages = {17--64}, } @incollection{fong_comparison_2022, address = {Cham}, title = {The {Comparison} of {Different} {Linear} and {Nonlinear} {Models} {Using} {Preliminary} {Data} to {Efficiently} {Analyze} the {COVID}-19 {Outbreak}}, isbn = {978-3-030-95281-5}, url = {https://doi.org/10.1007/978-3-030-95281-5_3}, abstract = {The COVID-19 pandemic spread generated an urgent need for computational systems to model its behavior and support governments and healthcare teams to make proper decisions. There are not many cases of global pandemics in history, and the most recent one has unique characteristics, which are tightly connected to the current society’s lifestyle and beliefs, creating an environment of uncertainty. Because of that, the development of mathematical/computational models to forecast the pandemic behavior since its beginning, i.e., with a restricted amount of data collected, is necessary. This chapter focuses on the analysis of different data mining techniques to allow the pandemic prediction with a small amount of data. A case study is presented considering the data from Wuhan, the Chinese city where the virus was first detected, and the place where the major outbreak occurred. The PNN + CF method (Polynomial Neural Network with Corrective Feedback) is presented as the technique with the best prediction performance. This is a promising method that might be considered in future eventual waves of the current pandemic or event to have a suitable model for future epidemic outbreaks around the world.}, language = {en}, urldate = {2022-09-21}, booktitle = {Epidemic {Analytics} for {Decision} {Supports} in {COVID19} {Crisis}}, publisher = {Springer International Publishing}, author = {Fong, Simon James and Marques, João Alexandre Lobo and Li, G. and Dey, N. and Crespo, Rubén G. and Herrera-Viedma, E. and Gois, F. Nauber Bernardo and Neto, José Xavier}, editor = {Marques, Joao Alexandre Lobo and Fong, Simon James}, year = {2022}, doi = {10.1007/978-3-030-95281-5_3}, keywords = {Artificial neural networks, Epidemiology, Machine learning, Prediction models}, pages = {65--81}, }