Stability Analysis of Delayed COVID-19 Models
Abstract
:1. Introduction
2. The Delayed SEIQRP Model
2.1. The Normalized Delayed Model
2.2. Equilibrium Points and the Basic Reproduction Number
2.3. Stability of the Normalized Delayed Model
- (i)
- Let . In this case, the Equation (10) becomesWe need to prove that all roots of the characteristic Equation (11) have negative real parts. It is easy to see that , and are roots of Equation (11) and all of them are real negative roots. Thus, we just need to analyze the fourth term of (11), here denoted by , that is,Using the Routh–Hurwitz criterion [38], we know that all roots of have negative real parts if, and only if, the coefficients of are strictly positive. In this case, we have andTherefore, we have just proved that the disease free equilibrium, , is locally asymptotically stable for , whenever .
- (ii)
- Let . In this case, we will use Rouché’s theorem [39,40] to prove that all roots of the characteristic Equation (10) cannot intersect the imaginary axis, i.e., the characteristic equation cannot have pure imaginary roots. Suppose the contrary, that is, suppose there exists such that is a solution of (10). Replacing y in the fourth term of (10), we get thatThen,By adding up the squares of both equations, and using the fundamental trigonometric formula, we obtain thatwhich is equivalent toIf , then , andso thatHence, we have , which is a contradiction. Therefore, we have proved that whenever , the characteristic Equation (10) cannot have pure imaginary roots and the disease free equilibrium is locally asymptotically stable, for any strictly positive time-delay .
- (iii)
- Suppose now that . We know that the characteristic Equation (10) has three real negative roots , , and . Thus, we need to check if the remaining roots ofhave negative real parts. It is easy to see that because we are assuming . On the other hand, . Therefore, by continuity of , there is at least one positive root of the characteristic Equation (10). Hence, we conclude that is unstable when .
- (i)
- Let . In this case, the Equation (16) becomeswhere , and . We need to prove that all the roots of the characteristic Equation (17) have negative real parts. It is easy to see that and are roots of (17) and both are real negative roots. Thus, we just need to consider the third term of the above equation. LetUsing the Routh–Hurwitz criterion [38], we know that all roots of have negative real parts if, and only if, the coefficients of are strictly positive and . If , then
- (ii)
- Let . Using Rouché’s theorem, we prove that all the roots of the characteristic Equation (16) cannot intersect the imaginary axis, i.e., the characteristic equation cannot have pure imaginary roots. Suppose the opposite, that is, assume there exists such that is a solution of (16). Replacing y into the third term of (16), we get thatThen,By adding up the squares of both equations, and using the fundamental trigonometric formula, we obtain thatwhereAssume that the basic reproduction number satisfies relations (14) and (15) with the following condition:Then,In contrast, if satisfies relations (14) and (15) with the conditionthen we havewhich is equivalent toThus,Under the assumption that the basic reproduction number satisfies relations (14) and (15), we haveTherefore, if we assume that the basic reproduction number satisfies relations (14) and (15) with condition (20), thenif satisfies relations (14) and (15) with condition (19), then we havewhich is equivalent toand also equivalent toThus,We conclude that the left hand-side of equation (16) is strictly positive, which implies that this equation is not possible. Therefore, (17) does not have imaginary roots, which implies that is locally asymptotically stable for any time delay .
3. The Delayed SEIQRPW Model with Vaccination
3.1. Normalized Delayed Model with Vaccination
3.2. Equilibrium Points and the Basic Reproduction Number
3.3. Stability of the Normalized Delayed Model with Vaccination
- (i)
- Let . In this case, the Equation (30) becomesWe need to prove that all roots of the characteristic Equation (31) have negative real parts. It is easy to see that , and are roots of Equation (31) and the three are real and negative. Thus, we just need to consider the fourth term of Equation (31). LetUsing the Routh–Hurwitz criterion [38], we know that all roots of have negative real parts if, and only if, the coefficients of are strictly positive. In this case, andTherefore, we have proved that the disease free equilibrium, , is locally asymptotically stable for , whenever .
- (ii)
- Let . Using Rouché’s theorem, we prove that all roots of the characteristic Equation (30) cannot have pure imaginary roots. Suppose the contrary, i.e., that there exists such that is a solution of (30). Replacing y in the fourth term of (30), we getThen,By adding up the squares of both equations and using the fundamental trigonometric formula, one haswhich is equivalent toIf , then , andso thatHence, we have which is a contradiction. Therefore, we have proved that if , then the characteristic Equation (30) cannot have pure imaginary roots and the disease free equilibrium is locally asymptotically stable, for any strictly positive time delay .
- (iii)
- Suppose now that . We know that the characteristic Equation (30) has three real negative roots and Thus, we need to check if the remaining roots ofhave negative real parts. It is easy to see that , because we are assuming . On the other hand, . Therefore, by continuity of , there is at least one positive root of the characteristic Equation (30). Hence, we conclude that is unstable, for any .
- (i)
- Let . In this case, Equation (37) becomeswhere , and . Looking at the roots of the characteristic Equation (38), it is easy to see that and are real negative roots of (38). Considering the third term of the above equation, letUsing the Routh–Hurwitz criterion [38], we know that all roots of have negative real parts if, and only if, the coefficients of are strictly positive andIf , then
- (ii)
- Let . By Rouché’s theorem, we prove that all roots of the characteristic Equation (37) cannot intersect the imaginary axis, i.e., the characteristic equation cannot have pure imaginary roots. Suppose the opposite, i.e., that there exists such that is a solution of (37). Replacing y in the third term of (37), we getThen,By adding up the squares of both equations and using the fundamental trigonometric formula, we obtain thatwhereAssume that the basic reproduction number satisfies relations (34) and (35) with the conditionThen,In contrast, if satisfies relations (34) and (35) under the conditionthen we havewhich is equivalent toThus,Under the assumption that the basic reproduction number satisfies relations (34) and (35), we haveTherefore, if we assume that the basic reproduction number satisfies relations (34) and (35) with condition (41), thenif satisfies (34) and (35) with condition (40), then we havewhich is equivalent toand also equivalent toThus,We have just proved that the left hand-side of Equation (37) is strictly positive, which implies that this equation is not possible. Therefore, (38) does not have imaginary roots, and is locally asymptotically stable, for any time delay , whenever satisfies conditions (34) and (35).
4. Numerical Simulations and Discussion
4.1. Local Stability of the Delayed Model
4.2. Delayed Model with Vaccination: COVID-19 in Italy
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Parameter | Value | Units | Ref |
|---|---|---|---|
| b | 1 | Assumed | |
| 1 | Assumed | ||
| 1 | Assumed | ||
| 1 | day | Assumed | |
| 12 | day | Assumed | |
| 1 | day | Assumed | |
| 1 | day | Assumed | |
| 30 | day | Assumed |
| Parameter | Value | Units | Ref. |
|---|---|---|---|
| b | 7.391‰ | [43] | |
| 10.658‰ | [43] | ||
| 1.1775 | day | [44] | |
| 3.97 | day | [44] | |
| 0.0048 | day | [44] | |
| 0.0182256 | day | [44] | |
| 0.1432 | [44] | ||
| 90 | day | Assumed |
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Zaitri, M.A.; Silva, C.J.; Torres, D.F.M. Stability Analysis of Delayed COVID-19 Models. Axioms 2022, 11, 400. https://doi.org/10.3390/axioms11080400
Zaitri MA, Silva CJ, Torres DFM. Stability Analysis of Delayed COVID-19 Models. Axioms. 2022; 11(8):400. https://doi.org/10.3390/axioms11080400
Chicago/Turabian StyleZaitri, Mohamed A., Cristiana J. Silva, and Delfim F. M. Torres. 2022. "Stability Analysis of Delayed COVID-19 Models" Axioms 11, no. 8: 400. https://doi.org/10.3390/axioms11080400
APA StyleZaitri, M. A., Silva, C. J., & Torres, D. F. M. (2022). Stability Analysis of Delayed COVID-19 Models. Axioms, 11(8), 400. https://doi.org/10.3390/axioms11080400

