1. Introduction
The delayed renewal process is a variation of the normal renewal process, which allows the first arrival time to be different from other processes. Traditionally, the arrival interval is regarded as a random variable, so the classical renewal process is also called a random renewal process. In practice, the probability theory can be applied—the estimated probability distribution is close to the cumulative frequency. However, sometimes we cannot get the real frequency. In this case, we have to invite some domain experts to give “possibility” in every event. Because this “possibility” is usually much larger than the range of probability distribution, it can not deal with probability theory [
1]. To solve these problems, Liu [
2] founded the uncertainty theory in 2007 and refined in 2009 [
3]. Under the uncertainty theory framework, Liu [
4] proposed a definition of uncertain process, and then an uncertain renewal process was proposed to simulate the sudden jump in uncertain systems. Then, Liu [
5] further discusses this process and applies it to insurance models. In addition, Yao and Li [
6] proposed an uncertain alternating renewal process, in which the closing time and opening time are regarded as uncertain variables. Zhang et al. [
7] proposed an uncertain delayed renewal process.
In many practical problems, there are both uncertainty and randomness in complex systems. To describe such a system, Liu [
8] founded the chance theory and proposed chance measure, defined uncertain random variables, gave their chance distribution, and defined the expected value and variance of uncertain random variables. Then, Liu [
9] proposed the operation law of uncertain random variables. Following that, Yao and Gao [
10], Gao and Sheng [
11], and Sheng et al. [
12] verified some laws of large numbers of uncertain random variable sequences based on different assumptions. Gao and Yao [
13] researched an uncertain random process and an uncertain random renewal process. Yao and Zhou [
14] further studied an uncertain random renewal reward process and applied it to the block replacement policy.
In this paper, we mainly study a delayed renewal process in a hybrid environment. In fact, all uncertain variables and uncertain random variables given in both uncertainty theory and chance theory are symmetrical. Therefore, this paper studies the uncertain random delayed renewal process under the framework of symmetry, and gives some properties of the uncertain random delayed renewal process, some renewal theorems, and delayed renewal rates. The contributions of this paper have three aspects. Firstly, the concept of the uncertain random delay renewal process is proposed, regarding the arrival interval as uncertain random variables, and allowing the chance distribution of the first arrival interval to be different from other times. Secondly, we prove a basic delay renewal theorem for the uncertain random delay renewal process, we discuss this uncertain random delay renewal process and average delay renewal rate. Thirdly, we study some properties of this process. Meanwhile, we prove that the average delayed renewal rate converges under the chance distribution. The rest of the paper is structured as follows. In
Section 2, this paper introduces the preliminary knowledge of uncertain variables and uncertain random variables. In
Section 3, we discuss the concept of the uncertain random delayed renewal process. In
Section 4, we discuss the chance distribution of the uncertain random delayed renewal processes and some theorems about the average delayed renewal rate. Finally, in
Section 5, conclusions are given.
3. Uncertain Random Delayed Renewal Process
Gao and Yao [
13] researched an uncertain random process to describe the evolution of the indeterminacy phenomena with time or space in 2015. Then, they further defined the uncertain random renewal process, and the chance distribution of the average renewal rate is given. On this basis, the definition of the uncertain random delay renewal process was proposed, and its average delay renewal rate was discussed.
Let
be random variables with probability distributions
respectively and
be uncertain variables with uncertainty distributions
, respectively. Denote by
a measurable function of two variables. Define
and
Definition 9 (Gao and Yao [
13]).
Assume that are independently and identically distributed random variables, and are uncertain variables. If the function , then is called an uncertain random renewal process. Following, we propose a concept of the uncertain random delay renewal process to describe a both uncertain and random system with delay.
Definition 10. Let be independent random variables, and be independent uncertain variables. Assume that are identically distributed with common probability distribution , which is different from , and are identically distributed with common uncertainty distribution , which is different from . If the function f is positive and strictly monotone, then is called an uncertain random renewal process with inter-arrival times .
It follows from Definition 10 that an uncertain random delayed renewal process is just like an uncertain random ordinary one, except that the first arrival time is different from the other inter-arrival times. It is clear that is an uncertain random variable, and we call the uncertain random delayed renewal variable.
Remark 1. An uncertain random delayed renewal process degenerates to an uncertain random renewal process if has the common uncertainty distribution as , , ⋯, and has the common probability distribution as , , ⋯.
Remark 2. If each of the uncertain sequence degenerates into a crisp number, then the associated uncertain random delayed renewal process becomes a stochastic delayed renewal process since the uncertain random sequence degenerates into a random sequence.
Remark 3. If each of the random sequence degenerates into a crisp number, then the associated uncertain random delayed renewal process becomes an uncertain delayed renewal process since the uncertain random sequence degenerates into an uncertain sequence.
Theorem 1. Let be a delayed renewal process with uncertain random inter-arrival times. be independent uncertain variables. Assume that are identically distributed with common probability distribution Φ,
which is different from , and are identically distributed with common uncertainty distribution Υ, which is different from , the function f is positive and strictly monotone. Then the chance distribution of iswhere is the maximal integer less than or equal to x, we set and when . Proof. By Definition 4 and Definition 6, we have
for any integer
. Using Lemma 1, we have
We know that an uncertain random delay renewal process take integer values. So
Thus the theorem is completed. □
4. Elementary Uncertain Random Delayed Renewal Theorem
In the following, we prove an elementary uncertain random delayed renewal theorem. Note that this process is the total renewal time before t. Therefore, represents the average delayed renewal rate in the time interval . Similar to the classical delayed renewal process, an important problem is to discuss the chance distribution of the average delayed renewal rate. In order to prove the main results, we first need two lemmaes.
Lemma 5 (Sheng et al. [
12]).
Let and be independent random variables and independent uncertain variables, respectively. Assume that the function f is strictly monotone with the first argument. If for any , and meanwhile exists in probability distribution. Then converges in chance distribution to Lemma 6 (Kolmogorov’s Large Number Law [
18]).
Assume that has a different probability distribution from which are identically distributed, and , are finite. If , then the sequence converges almost sure to , which is indicated by Theorem 2. Let and be independent random variables and independent uncertain variables, respectively. Assume that are identically distributed with common probability distribution , which is different from , and are identically distributed with common uncertainty distribution , which is different from . Let the function g be strictly monotone. If, for any , are finite, and , then we havein the sense of convergence in chance distribution as . Proof. For any given
,
are obviously independent random variables. It follows from Lemma 6 that, for any
,
In addition, for each
, we have
and
as a result of which, we have
Further, it follows from Lemma 5 that
That is, the sequence converges in distribution to □
Theorem 3 (Uncertain Random Elementary Delayed Renewal Theorem).
Assume is an uncertain random delayed renewal process with inter-arrival times If for any , , are finite, and , then we havein the sense of convergence in chance distribution as . Proof. Since
y is a continuous point of
so we can obtain that
is a continuous point of
By Definition 10 that
where
represents the maximal integer less than or equal to
. Note that,
and for each
,
as
. Therefore, we have
and
Further, by Theorem 2 that
Since
and
it is obtained that
For any continuous point
y of
we have
So, we can obtain that the average delayed renewal rate is
in the sense of convergence in chance distribution as
. □
Remark 4. Assume that are positive and independent random variables and has a different probability distribution from , which are identically distributed. Let be a delayed renewal process with inter-arrival times . Then we have Remark 5. Assume that are positive and independent uncertain variables and has a different uncertainty distribution from , which are identically distributed. Let be a delayed renewal process with inter-arrival times . Then we have Remark 6. When an uncertain random delayed renewal process degenerates to an uncertain random renewal process, then the average delayed renewal rate degenerates to the average renewal rate, i.e.,which is consistent with the result of Gao and Yao [13]. Example 1. Let be positive and independent random variables and be positive and independent uncertain variables, respectively. Let be an uncertain random delayed renewal process with uncertain random inter-arrival times . Then we have In fact, by Theorem 3, we have
Further, by Remark 6, if random variables
are also identically distributed and uncertain variables
are also identically distributed, then we have
Example 2. Let be positive and independent random variables and be positive and independent uncertain variables, respectively. Let be an uncertain random delayed renewal process with uncertain random inter-arrival times . Then we have In fact, by Theorem 3, we have
By Remark 6, further, if random variables
are also identically distributed and uncertain variables
are also identically distributed, then we have
Example 3. Let be positive and independent random variables and be positive and independent uncertain variables, respectively. Let be an uncertain random delayed renewal process with uncertain random inter-arrival times . Then we have In fact, by Theorem 3, we have
Further, by Remark 6, if random variables
are also identically distributed and uncertain variables
are also identically distributed, then we have
Example 4. Let be positive and independent random variables and be positive and independent uncertain variables, respectively. Let be an uncertain random delayed renewal process with uncertain random inter-arrival times . Then we have In fact, by Theorem 3, we have Further, by Remark 6, if random variables are also identically distributed and uncertain variables are also identically distributed, then we have