Abstract

This paper studies and proposes some supervisory techniques to update the vaccination and control gains through time in a modified SI (susceptible-infectious) epidemic model involving the susceptible and subpopulations. Since the presence of linear feedback controls are admitted, a compensatory recovered (or immune) extra subpopulation is added to the model under zero initial conditions to deal with the recovered subpopulations transferred from the vaccination and antiviral/antibiotic treatment on the susceptible and the infectious, respectively. Therefore, the modified model is referred to as an SI(RC) epidemic model since it integrates the susceptible, infectious and compensatory recovered subpopulations. The defined time-integral supervisory loss function can evaluate weighted losses involving, in general, both the susceptible and the infectious subpopulations. It is admitted, as a valid supervisory loss function, that which involves only either the infectious or the susceptible subpopulations. Its concrete definition involving only the infectious is related to the Shannon information entropy. The supervision problem is basically based on the implementation of a parallel control structure with different potential control gains to be judiciously selected and updated through time. A higher decision level structure of the supervisory scheme updates the appropriate active controller (i.e., that with the control gain values to be used along the next time window), as well as the switching time instants. In this way, the active controller is that which provides the best associated supervisory loss function along the next inter-switching time interval. Basically, a switching action from one active controller to another one is decided as a better value of the supervisory loss function is detected for distinct controller gain values to the current ones.

Highlights

  • A popular and well-known entropy concept is that of Shannon’s information entropy, which is a tool to measure the uncertainty in different processes.Such an entropy is typically interpreted as a quantification of information loss [1,2,3,7,8,9]

  • Sci. 2020, 10, 7183 pointed out that entropy-based techniques have been used for the evaluation of epidemic models and other kinds of dynamical systems and to decide about the necessary related public control interventions

  • (a) Susceptible. (b) Infectious. (c) Immune. It is mechanism based on the supervisory loss function selects the highest values for the feedback control notice that 2b,c the switching mechanism based on the supervisory function selectsvalue the for gains interesting

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Summary

Introduction

A popular and well-known entropy concept is that of Shannon’s information entropy, which is a tool to measure the uncertainty in different processes (see, for instance, [1,2,3,4,5,6] and References therein). A set of potential control gains is predefined (or updated through time from some starting generator initial values) Such control gains together with the model parameterization define a parallel structure where each element is processing its own data. The one which is proposed in this paper, with no loss in generality against other potential alternative ones, can be interpreted as a continuous Shannon entropy [30,31,32] for the normalized model (that is, that with unity total population while the others representing fractions of it) Such an interpretation arises when the integral of the supervisory loss function runs from zero to infinity and only the infectious are weighted in such a function. Jqj (ti ) of minimum value and, the onewhich defines the current selected vaccination and treatment control gains

The Controlled Epidemic Model
About the Positivity and Equilibrium Points
Supervisory Objective to Update the Control Gains
Updating Algorithms
Results
Performance of the for βfor
Evolution of the model’s populations valuesofofλ λand and
Comparison
Performance

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