Analysis of a SEIR-KS Mathematical Model For Computer Virus Propagation in a Periodic Environment
Abstract
1. Introduction
1.1. Scope
1.2. The Generalized SEIR-KS Mathematical Model
- (A1)
- The network at time t is formed by a total of nodes. Then, we have the following relation at each time t.
- (A2)
- There is a behavior similar to vital dynamics of biological virus. More specifically, related with births and deaths, there is two characteristics in the process: (i) the new nodes are connected to the network at constant rate b and a fraction p are of susceptible type and the remaining fraction are of exposed type; and (ii) each node, by system crash or network interruption, are disconnected from the network at constant rate .
- (A3)
- The dynamics of exposed nodes are characterized by three facts: (i) the susceptible nodes are transformed in exposed nodes with probability per unit time with a constant; (ii) the exposed nodes are converted into infected ones at constant rate ; and (iii) the exposed nodes are converted into kill signals ones at constant rate .
- (A4)
- The infected nodes are converted into kill signals nodes or recovered ones at constant rates and , respectively.
- (A5)
- The kill signal nodes satisfy two additional premises: (i) the susceptible nodes receive the kill signal and converted into recovered ones with probability ; and (ii) the infected nodes receives and relays the kill signal nodes with probability . Here and are constants.
1.3. Reformulation of System in Equation (2) as Operator Equation
1.4. Main Results
- (a)
- If and are such that , the following inequalitiesholds for all
- (b)
- If are such that , the following inequalitiesholds for all
1.5. Related Works
1.6. Outline of the Paper
2. Preliminaries
2.1. The Mawhin’s Continuation Theorem
- (i)
- There are two continuous projectors and such that and .
- (ii)
- is invertible and its inverse is denoted by .
- (iii)
- There is an isomorphism .
- (C1)
- for each .
- (C2)
- for each
- (C3)
- .
2.2. L Is a Fredholm Operator of Index Zero
2.3. Construction of the Projectors and the Operator
- (a)
- . We prove that as follows: from the isomorphism given on Lemma 1, we observe that is equivalent to the fact that is constant for all which at the same time implies that , since for constant we have that Conversely, the proof of the inclusion is deduced by the following facts: for there is such that and from Equation (21) we obtain that which implies by differentiation the fact that or
- (b)
- . From the definition of Q given in Equation (21) we have that is equivalent to and from the characterization of given on Lemma 1 is at the same time equivalent to
- (c)
- . Let , then there is such that , which implies thatand, from the characterization of given on Lemma 1, we get that Thus, we obtain that . By analogous arguments, we can prove the inclusion .
- (d)
- Operators and The notation is is introduced for the restriction of L to i.e., is the operator defined from to and on . The symbol is used to denote the inverse of , and is precisely defined as the operator such thatWe notice that, we can prove that the operator is the inverse of the operator by application of the following identitywhich is valid only for all
2.4. N Defined on Equation (6) Is a Continuous Operator
2.5. N Defined on Equation (6) Is L-Compact on any Ball of X Centered at .
2.6. A Useful Auxiliary Result
3. Proof of Theorem 2
3.1. Four Useful Lemmata
- (i)
- we prove that for
- (ii)
- we prove Equation (45) for
- (iii)
- we prove Equation (47) for
- (iv)
- we prove Equation (46) for
- (v)
- we prove Equation (47) for
3.2. Proof of (a)
3.3. Proof of (b)
4. Proof of Theorem 3
4.1. A Previous Lemma
- (C1)
- Let us assume that there are and such that Then, by application of Theorem 2-(a) we deduce that which is a contradiction to the assumption that
- (C2)
- Let us assume that there is such that Then, by application of Theorem 2-(b) we deduce that which is a contradiction to the assumption that
- (C3)
- Let us define the mapping by the following relationWe prove that when and . From Lemma 1 we recall that is a constant. Let us consider that the conclusion is false, then the constant vector with satisfies , that is,Then, by following similar reasoning steps to the proof of Theorem 2-(a) we get that , which contradicts to the assumption that .Let us consider such that , then by applying the Homotopy Invariance Theorem of Topology Degree, using the fact that the systemhas a unique solution noticing that the determinant of the Jacobian of at is given bywith and the positive functionsand by Definition 3, we have thatHence, we get that and prove that (C3) is valid.
4.2. Proof of Theorem 3
5. Proof of Theorem 4
6. An Example
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Coronel, A.; Huancas, F.; Hess, I.; Lozada, E.; Novoa-Muñoz, F. Analysis of a SEIR-KS Mathematical Model For Computer Virus Propagation in a Periodic Environment. Mathematics 2020, 8, 761. https://doi.org/10.3390/math8050761
Coronel A, Huancas F, Hess I, Lozada E, Novoa-Muñoz F. Analysis of a SEIR-KS Mathematical Model For Computer Virus Propagation in a Periodic Environment. Mathematics. 2020; 8(5):761. https://doi.org/10.3390/math8050761
Chicago/Turabian StyleCoronel, Aníbal, Fernando Huancas, Ian Hess, Esperanza Lozada, and Francisco Novoa-Muñoz. 2020. "Analysis of a SEIR-KS Mathematical Model For Computer Virus Propagation in a Periodic Environment" Mathematics 8, no. 5: 761. https://doi.org/10.3390/math8050761
APA StyleCoronel, A., Huancas, F., Hess, I., Lozada, E., & Novoa-Muñoz, F. (2020). Analysis of a SEIR-KS Mathematical Model For Computer Virus Propagation in a Periodic Environment. Mathematics, 8(5), 761. https://doi.org/10.3390/math8050761

