The aim of this study is to propose a stochastic radial basis (RB) artificial neural network (ANN) and the scale conjugate gradient (SCG) called as RB-ANN-SCG for the the diarrhea disease model including treatment and vaccination (DDMTV). The diarrhea disease system is basically a susceptible, infected and recovered model that includes the factor of treatment and vaccination. The dataset is obtained by using the Adam solver, which lessens the mean square error with the distribution of testing (12%), authentication (13%), and training (75%). A transfer radial basis function together with sixteen neurons is used in the hidden layers for solving the DDMTV, while the optimization is performed by the SCG. The scheme’s correctness is obtained via overlapping of the reference and achieved results. The insignificant calculated absolute error and best validation performances present the accuracy of the solver. Furthermore, the constancy and dependability of the RB-ANN-SCG is pragmatic through the histogram curves, function fitness, and correlation/regression for solving the DDMTV.
Gómez-Aguilar et al. (Thu,) studied this question.
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