1. Introduction
In this paper, we study the existence of solutions to the semilinear integro-differential inclusion
with the initial condition
, where
E is a real Banach space. Here,
is a family of linear operators acting on the Banach space,
is a given set-valued map, and
k is a nonnegative real function.
Currently, many researchers around the world are investigating the semilinear integro-differential equations or inclusions, as witnessed, for example, by the recent articles [
1,
2,
3,
4,
5,
6,
7,
8]. One of the main reasons for this research is that these equations are well suited to serve as a model for real phenomena such as heat transfer or the spread of epidemics or population dynamics, in which it is significant to take into account the spatial diffusion of the phenomenon or the past of the phenomenon itself (e.g., [
9,
10]).
The need to introduce delays in models describing real phenomena has appeared clear since the beginning of the last century, due to the fact that some of the processes involved in the dynamics may depend on the past status of the population. Think, for example, of the study of a phenomenon in which only individuals of childbearing age are to be considered. Clearly, in this case, the time between birth and the moment when the individual is involved in the reproductive process is not irrelevant, leading to a non-negligible maturation delay influencing the evolution of the population over time. Among all the pioneers’ works on delay equations, we wish to recall that of Volterra, from which a whole class of differential equations will take his name (see [
11] for a historical review). In the decades following the 1950s, the delay equations have been studied either in the case of concentrated delay, distributed delay, or functional delay. We refer to the papers [
12,
13] for the first studies concerning semilinear differential equations with delay, to the monographs [
14,
15,
16] for a more in depth treatment on delay differential equations, and to [
17] for the use of delays in population models.
Along this line, we will apply the results of the investigation on the semilinear integro-differential inclusion (
1) to the study of a population dynamics model described by the parametric integro-differential equation involving a distributed delay
subject to feedback controls given by
Here, and are given functions, while is a multimap.
The real value represents the population density at time t and place x, the removal coefficient the death rate and displacement of the population, and the nonlinearity the population development law.
The function
g includes a Volterra integral, and this is what formalizes the distributed delay in the model, providing a spanning effect by means of the memory kernel
This kernel is given by the exponential distribution of probability . Since k is decreasing, the two-variable function k assigns a greater weight to the most recent events, increasingly fading the influence of those further away in time. Note that this happens in a maximum range indicated by T. In fact, the positive number T provides the width of the action of the kernel: the larger T is, the more the system’s memory is extended to past events affecting its present state. Thus, we can say that the value T shows the range of significance of the delay. We point out that, inasmuch as the process is set on the whole half-line, the number T can be chosen arbitrarily large. In other words, the relevance of the delay on the status of the solution trajectory can be chosen arbitrarily, thus making the model particularly versatile.
The set-valued function
W provides the sets where the feedback controls can be taken. Feedback controls often appear in models from the life Sciences, especially in systems biology. For a detailed description of the topic see [
18].
Further, we consider the presence of infinitely many impulses on the system. These are represented by given functions acting in correspondence to times
, where
is an increasing diverging sequence of positive numbers, and leading to jumps on the solutions’ functions according to relations for all
or
in case we deal with the general integro-differential inclusion (
1) or the model’s parametric differential Equation (
2), respectively.
Problems involving instantaneous impulses have been extensively studied in the literature and are still a topic of considerable interest, as can be seen in recent articles [
19,
20,
21,
22,
23,
24,
25]. For a first approach to the subject, we refer to the now classic monographs [
26,
27]. The reason lies in that impulse functions are needed in the modeling of a wide range of real phenomena whenever an external factor that extends for a very short period of time—to the point of being considered instantaneous—intervenes to disturb the system, causing sudden changes in the evolution of the trajectories that describe the evolutionary dynamics of the process. For example, but not limited to them, impulse functions can represent the administration of antibiotics on a bacterial population in the treatment of a disease, or abrupt changes of prices in economics, or the use of pesticides in pre-established times to keep a pest in a crop below a certain threshold (in biology, these functions are called “regulation functions”).
This paper is organized as follows:
The most important notions necessary to place the topics covered in the manuscript are shortly collected in
Section 2.
Then, in
Section 3, the Cauchy problem driven by the semilinear integro-differential inclusion (
1) is formally stated, and the existence of mild solutions is provided, both in and out of the presence of impulses. We achieve our main existence result by means of an “extension-with-memory” process, which generates an impulsive mild solution starting from the mild solutions of an ordered iterative sequence of non-impulsive Cauchy problems. As far as we know, this method was first used in [
28] and in [
29] without memory and with functional delay, respectively, but on a compact interval in both cases. More recently, it has been firstly used on the half-line in [
25] to provide the existence of mild solutions of an impulsive Cauchy problem driven by the semilinear differential equation with functional delay
where
. Contrary to what one might think at first glance, the analogous problem governed by the semilinear integro-differential equation
was still open, even on a compact interval. Indeed, the different nature between function
and function
does not allow the same demonstration arguments to be used. In the present work, we provide an answer to this open problem, even in the multivalued case. The key of our procedure is given by the introduction of suitable auxiliary set-valued functions, which “imitate”, satisfying its own properties (cf. next Lemma 1), the original set-valued nonlinearity
F at any step of the problems’ iteration. Furthermore, we would like to point out that the extension-with-memory method enables the existence of solutions with no hypothesis on the impulse functions, unlike other approaches adopted in the literature, for which those functions are supposed to be at least continuous.
In
Section 4, we consider the system governed by the parametric integro-differential equation with distributed delay (
2) under the action of feedback controls and impulses. We solve the feedback control problem by rewriting the model as an impulsive Cauchy problem driven by a semilinear integro-differential inclusion in the space
. In this way, we can apply the general result obtained in
Section 3 and lead to the existence of a pair, trajectory-control, providing the controllability of the population dynamics process.
2. Essential Preliminary Notions
We recall some basic notations and definitions.
Let X and Y be two topological spaces. A set-valued function (or “multivalued map”, or, shortly, “multimap”) is upper semicontinuous at if, for every open such that , there exists a neighborhood U of such that for every . A multimap is upper semicontinuous if it is upper semicontinuous at every .
Let
E be a real Banach space endowed with the norm
. By the symbol
, we denote the space of
E-valued continuous functions on a closed, bounded interval
, while by
we denote the space of all functions
such that their
p-power is Bochner integrable endowed with the norm
(shortly,
and
, respectively, if
),
. Moreover, for any
, by the symbol
, we mean the space of all functions
such that
for every compact
(shortly,
if
). Then, throughout the paper for a given function
and a fixed
, we will use the symbol
whenever the limit exists.
A family
of bounded linear operators on
E is said to be a
(strongly continuous) evolution system on the half-line (see, e.g., [
30]) if
- (T1)
, for ; and
- (T2)
for every , the map is continuous.
Further, a family of linear operators
generates an evolution system on the half-line
(see, e.g., [
31]) if
- (T3)
We conclude this section recalling that the
Hausdorff measure of noncompactness in
E is the function
on the family of nonempty subsets of
E taking nonnegative real values defined by
The symbol
will denote the Hausdorff MNC in
. For the properties of the Hausdorff measure of noncompactness, we refer to [
32].
3. Existence of Impulsive Mild Solutions on the Half-Line
Let
E be a real Banach space, and
a set of fixed real numbers such that
and
. By the symbol
, we denote the set of functions
Let
be fixed, and consider the corresponding initial value problem driven by a semilinear integro-differential inclusion subject to impulses
,
at the given times
In this Section we suppose that:
- (A)
is a family of linear operators, dense subset of E not depending on t, generating an evolution system on the half-line ;
- (F)
is a multimap satisfying the properties:
- (F0)
F takes compact and convex values;
- (F1)
for every , the multimap admits a strongly measurable selection;
- (F2)
for a.e. , the multimap is upper semicontinuous;
- (F3)
there exists a nonnegative function
such that, for a.e.
and all
,
where
; and
- (F4)
there exists a nonnegative function
such that
for a.e.
and every bounded
;
- (k)
, is a continuous function.
We study the existence of mild solutions to , according to the following definition:
Definition 1. A functionis said to be a mild solution
to ifwhere is a -function on such thatwith the agreement that if . Note that every mild solution also satisfies the conditions.
Before stating the main theorem of this section, we provide a preliminary result. It will be a strategic and decisive tool in applications. Indeed, thanks to the property stated by Lemma 1, we can apply the extension-with-memory technique (later shown) to integro-differential equations or inclusions having a two-variables kernel inside the Volterra integral, which is new in the literature, as far as we know. As a consequence, our existence theorem will be allowed to operate in a much wider class of models than is possible with the current results, to our knowledge.
Lemma 1. Let E be a real Banach space, and a sequence of real numbers such that and .
Assume that and , respectively, satisfy (F) and (k).
Then, for every and every set of functions , the multimap defined bysatisfies (F) in its-restricted version. Proof. Let and be fixed. For the sake of simplicity, we denote the properties on by (F0), …, (F4), as the corresponding on . Clearly, property (F0) trivially holds.
Then, let us fix
and consider the multimap on
(see (
6))
We notice that it can be seen as the Nemytskii superposition operator
of the function
,
by the function
,
Obviously, by (F0) of F we have that takes compact values, by (F1) that has a strongly measurable selector for every , and by (F2) that is upper semicontinuous for a.e. .
Moreover,
is strongly measurable; indeed, the functions
,
, defined by
are continuous on
as product of continuous functions (cf. (k)). Thus,
is in turn continuous on
and hence strongly measurable.
It is therefore possible to apply Theorem 1.3.5 of [
33] and claim that
N has a strongly measurable selector. Thus
satisfies (F1).
Now, let us fix
such that
is upper semicontinuous, and consider the multimap on
(see (
6) again)
Since the vector
is a fixed element in
E, the map
is just a translation function, thus
is the composition of a continuous single-valued function and an upper semicontinuous multimap. Thus, it is upper semicontinuous as well. Hence, property (F2) is satisfied by
.
In order to prove that
satisfies (F3), let us fix
, and
such that
F satisfies inequality (
3). Then, according to (
6), we have
Recalling that
k is a positive continuous function (see (k)), for every
there exist
Hence, we get
being
.
Finally, concerning (F4), let us fix two bounded sets
, and
such that
F satisfies inequality (
4). By (
6) and the properties of algebraic sub-additivity and nonsingularity of the Hausdorff measure of noncompactness, we have
showing the property. □
To obtain the existence of mild solutions to our impulsive Cauchy problem , we consider an ordered iterative sequence of non-impulsive Cauchy problems, whose mild solutions generate the solutions of the impulsive problem by means of an extension-with-memory process.
Theorem 1. Let E be a real Banach space, , with and , and for be given. Suppose that , F and k, respectively, satisfy hypotheses (A), (F), and (k). Then, problem has at least one mild solution on .
Proof. In association to problem , let us consider an iterative sequence of Cauchy problems related to the intervals given by the increasing sequence as follows.
If
, we consider the problem
If
, we define a multimap
as
(of course, here we mean
) and a vector in
E as
and consider the problem
where
is a mild solution of problem
.
We prove that these mild solutions really exist, by extension.
First, we consider
. It is easy to check that, when restricted to
, the hypotheses on the family
and on the maps
F and
k come down to the hypotheses of Theorem 5.1 in [
34]; actually, that theorem acts on an interval
, but it still holds in
(recall that
is fixed greater or equal to 0). Thus we can claim that
has at least one mild solution
, i.e., a continuous function on the interval
such that
Let us now fix
. It is clear that in the interval
we have for
and
k the same situation as in
. Concerning
, notice that it can be rewritten as
That is, for
Equation (
6) holds. Hence, by Lemma 1 we can claim that
satisfies (F). Therefore, we can use [
34] [Theorem 5.1] again and achieve the existence of a mild solution
to
, i.e., a continuous function on the interval
having the following representation:
We wish to prove that the function
defined by
is a mild solution to
.
To this aim, we firstly put (see (10), (12))
Thus, naturally,
. Further, we show that it is a selector of the multimap
almost everywhere in
. Indeed, note that by (10) we have
Thus, by recalling (
13) we obtain
Let us now consider any
. By (12), we get
By using the expression of
(see (
7)) and the definition of
(see (
13)), we can therefore write
Now, we can prove that
satisfies condition (
5) (cf. Definition 1).
If
, then by (
13), (
9), (
14) we have
If
, then by (
13), (
11), (
8), we get
By (
9), (T1), (
14), (
13) we obtain
Thus, by the same arguments, we can say that if
for any
it holds that
and this concludes the proof. □
From careful reading of the proof, it appears that no hypotheses are needed on the impulse functions. Hence, they can be chosen arbitrarily. Thus, if we pick for every and , we immediately have the following existence result.
Corollary 1. Let E be a real Banach space and be given. Suppose that , F, and k, respectively satisfy hypotheses (A), (F), and (k). Then, there exists at least one mild solution on to the Cauchy problem Of course, in this case, a mild solution is a function
such that
with
a
-function on
and
for a.e.
.
4. Example of Application: The Controllability of a Population Dynamics Process with Distributed Delay and Impulses
In this section, we apply Theorem 1 to the study of the following process with feedback controls described by a parametric integro-differential equation with distributed delay and subject to impulses.
Fixed
, with
, and
, we consider the system
In this model, the real value represents the density of a population depending on time t and place x, considering the spatial range normalized to interval , while the nonlinearity represents the population development law.
The dependence from the past state of the system is provided by the Volterra integral . Indeed, the positive number T gives the width of the action of the kernel, here given by the exponential distribution of probability . The larger T is, the more the system’s memory is extended to past events affecting its present state. Hence, T establishes the width of the range of significance of the delay. Notice that, being the above problem set on the whole half-line, the value of T can be chosen arbitrarily large. This means that the relevance of the delay on the status of the solution trajectory can be chosen arbitrarily, leading to a particularly versatile model.
Moreover, the multimap gives the sets of controls, and the impulse functions and represent instantaneous external forces acting on the system.
Finally, the death rate and displacement of the population is given by the removal coefficient .
We assume that the function satisfies the following conditions:
- (b1)
b is measurable;
- (b2)
there exists
such that
for every
, a.e.
; and
- (b3)
for every , the function is continuous.
Consider the family of linear functions
,
, defined by
By [
35] [Section 3.1] and [
4] [Proposition 3.2 and Remark 3.1], we know that properties (b1)–(b3) imply that the family
defined by (
15) generates the noncompact evolution system
Hence, the next proposition holds.
Proposition 1. Under assumptions (b.1)-(b.3), the family defined by (15) satisfies property (A). On the other functions appearing in the model, we assume the next hypotheses.
The function is such that
- (g0)
, for every , ;
- (g1)
for every , the function is (strongly) measurable;
- (g2)
for a.e. , the function is continuous;
- (g3)
there exists a nonnegative function
such that
for a.e.
and every
; and
- (g4)
there exists a nonnegative function
such that
for a.e.
and every bounded
.
The multimap satisfies the properties
- (W0)
W takes compact convex values;
- (W1)
W is upper semicontinuous;
- (W2)
there exists
such that, for every
,
where
; and
- (W3)
there exists
such that
for every bounded
.
Now, we put:
as
as
,
, as
It is easy to check that by these positions we can write the feedback control problem
as the impulsive Cauchy problem with feedback controls driven by a semilinear integro-differential equation in
.
Finally, let us put:
as
Then, (FCP) can be further rewritten as
which is nothing more than a problem of the type
in the space
.
In order to give the controllability of problem we need the next result.
Proposition 2. Under assumptions (g0)–(g4) and (W0)–(W3), the multimap F defined in (21) satisfies (F). Proof. First of all, we observe that by (g0), and recalling (
18), one gets
for every
,
, so that
F is well-defined. Moreover, hypothesis (W0) ensures that
F satisfies (F0).
With regard to property (F1), it immediately follows from (g1). Indeed, fixed , the function is (strongly) measurable. Hence, its translation given by , where is an arbitrary element of , is again measurable and represents a measurable selector of .
Now, fixed
for which (g2) and (g3) hold, the map
is continuous. In fact, for arbitrarily fixed
, consider a sequence
in
. Then, by (g2) we can write
By (g3), we obtain the following estimate:
We can therefore apply the Lebesgue dominated convergence theorem obtaining
and hence
The arbitrariness of
leads to the continuity of
. As a consequence, the multimap
is the sum of a continuous single-valued function and an upper semicontinuous multimap (see (
21) and (W1)), so it is upper semicontinuous as well, i.e.,
F satisfies (F2).
Let us prove that
F satisfies (F3). To this aim, we fix
for which (g3) holds and any
. We clearly have
so that
Therefore, by using also (W2), we get
where
. The function
belongs to
since
does.
Finally, let us fix
for which (g4) holds and any bounded
. Then, by (
21), (
18), and (W3), we have
where
. As above,
implies
, so that
F satisfies (F4). □
We can now state the main result of this section. In this regard, we should bear in mind that problem
is
controllable if there exists at least one
admissible pair for, that is, a couple
of functions
such that:
for every
;
, for all
;
u satisfies the identity
for every
, where
, a.e.
.
Theorem 2. Under assumptions (b1)–(b3), (g0)–(g4), and (W0)–(W3), the problem is controllable.
Proof. The hypotheses of the theorem ensure that we can use Proposition 1 and then deduce that the family of linear operators
defined in (
15) satisfies property (A). On the other hand, we can also use Proposition 2 and thus infer that the multimap
F defined in (
21) satisfies property (F). Therefore, we can apply Theorem 1 to problem (
22) and obtain the existence of a function
such that
where
is a locally summable selector of
on
.
Recalling now conditions (
16)–(
21), we can rewrite (
23) as
where
and
, for
and a.e.
, concluding the proof. □
We conclude the section providing an example of nonlinearity g which satisfies properties (g0)–(g4).
Example 1. Let us consider the functiondefined by It is easy to check that (g0)-(g3) are satisfied by g. As for (g4), we recall that in the spacethe Hausdorff measure of noncompactness is equivalent to the measure of noncompactnessfor every bounded, according to the relation(see, e.g., [36]). Then, let us fixandbounded subsets of. We have that Thus, bearing in mind (25) and (26), we deduce the next estimateHence, (g4) is fulfilled by taking , . Lastly, we observe that Example 1 can be easily generalized to a function
where
is any
-function.