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Renewal Processes
Kosto V. Mitov
Professor, Faculty of Aviation - National Military University, D. Mitropolia, Pleven, Bulgaria
Michael A. Zazanis
Professor, Department of Statistics
Athens University of Economics and Business, Athens, Greece
Let be a sequence of independent, identically distributed random variables with values in and distribution function . The process defined by means of , , is called an ordinary renewal process. The non-negative random variables are called increments or, in many applications, inter-event times. In connection with the sequence of random points in time, , one can define the counting process , , where designates the indicator function of the event (which is 1 if occurs and 0 otherwise). The renewal function associated with a renewal process is the increasing, right-continuous function where denotes the -fold convolution of the distribution function with itself (hence ).
Renewal processes are intimately related to the theory of the so-called renewal equation which is a linear integral equation of the form
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(1) |
where is a Borel function, bounded on finite intervals, and a probability distribution on . and are assumed to be given and the object is to determine the (unique) solution which is bounded on finite intervals, and study its asymptotic behavior as . Its solution is given, in terms of the renewal function by the convolution .
Renewal processes are important as special cases of random point processes. In this respect the Poisson process on the real line is the simplest and most important renewal process. They occur naturally in the theory of replacement of industrial equipment, the theory of queues, in branching processes, and in many other applications. In the framework of perpetual replacement of a single item, is the life of the th such item which, as soon as it fails, is replaced by a new one with independent duration distributed according to . Then is the number of items used in the time interval and is the time of the last replacement before . We define three additional processes , , and as follows: is the age, is the remaining life, and is the total life duration of the item currently in use. (The age and remaining life are also known as the backward and forward recurrence times.) The statistics of these processes can be described by means of appropriate renewal equations. For instance, if then conditioning on (using the so-called ``renewal argument'') we obtain
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(2) |
If we allow the first increment to have a different distribution from all the others, i.e. if we set and , where is independent of the and, unlike them, has distribution , different from , we obtain a delayed renewal process. This type of process is important because it provides additional flexibility in accommodating different initial conditions. Of course, its limiting properties are not affected by this modification. Of particular importance, assuming the mean to be finite, is the choice , given by
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(3) |
With this choice, becomes a stationary point process. is called the integrated tail distribution associated with the distribution .
Of fundamental importance are the limit theorems related to renewal processes. If denotes the mean of the increments, then the Elementary Renewal Theorem states that . (The result holds also in the case provided that we interpret as 0.) A refinement is possible if the increments have finite second moment, in which case . An analogous bound, due to Lorden (1970), also holds for all : . When the second moment exists we also have a Central Limit Theorem for the number of events up to time : As , where is a standard Normal random variable and .
Much deeper is Blackwell's Theorem which states that, if in non-lattice and the mean is finite then
(A distribution on is lattice with lattice size if there exists such that the support of is a subset of and is the largest such number.) If is lattice ( ) then (4) still holds, provided that is an integer multiple of . Also, if the theorem still holds with . Blackwell's original proof (1948) of (4) depended on harmonic analysis techniques. In the 1970's with the widespread use of coupling techniques simpler probabilistic proofs of the renewal theorem became available. (See [11] for a complete account.) An integral version of Blackwell's theorem, the Key Renewal Theorem, states that, if is directly Riemann integrable then the limit exists and equals . This then gives the limiting behavior of any function which satisfies a renewal equation (1). (Direct Riemann integrability is a direct extension of the Riemann integral from bounded intervals to unbounded ones: Fix and let , . Set and . Clearly, if then , though these quantities may not necessarily be finite. If and exist and are equal then is directly Riemann integrable. It should be noted that the direct Riemann integral is more restrictive than either the improper Riemann integral or the Lebesgue integral.)
The discrete version of the renewal theorem is simpler but not elementary. Suppose we are given a probability distribution which is non-arithmetic, i.e. g.c.d. and has mean , and define the renewal sequence via , . Then (interpreted as 0 when ). This is the celebrated Erdös-Feller-Pollard (1948) renewal theorem (see [7], vol. 1, ch. 13) which marks the beginning of modern renewal theory and played a central rôle in the treatment of with countable state space. Interesting behavior arises if the non-arithmetic distribution function has infinite mean: Suppose that where and is a slowly varying function. (A real function is said to be slowly varying if it is positive, measurable, and for every , as .) Then (Garsia and Lamperti, 1962) . If , this can be sharpened to . Analogous results in continuous time are also proved. Suppose that is continuous, and
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(5) |
where and is a slowly varying function at infinity. Under these conditions the growth rate of is given by (see e.g. [3], Ch. 8),
Erickson (1970) proved a version of Blackwell's theorem in the infinite mean cycle case. It states that if in (5), then for any fixed 
If then has to be replaced by Several versions of the Key Renewal Theorem in the infinite mean cycle case are also proved in Teugels (1968), Erickson (1970), and Anderson and Athreya (1987).
Using the Key Renewal Theorem one can obtain the asymptotic behavior of the age and the current and residual life. If is a random variable with distribution and is uniform in and independent of , then
 as
In particular the limiting marginal distribution of the age (which is the same as that of the residual life) is
the integrated tail distribution given in (3). The limiting behavior of these processes gives rise to the so called ``renewal paradox''. For instance, the limiting distribution of the item currently in use is
with corresponding mean, provided that the second moment of exists, given by . Hence if we inspect such a process a long time after it has started operating (and is therefore in equilibrium) the part we are going to see will have longer life duration than average. Of course this is simply an instance of length-biased sampling and its effects are more pronounced when the variability of the distribution around its mean is large.
In the infinite mean cycle case the life time processes and have a linear growth to infinity, i.e. the normalized processes and have non-degenerate limit laws, jointly or separately. This result is usually called the Dynkin-Lamperti theorem (Dynkin, 1955, Lamperti, 1962). (See also [3], Ch. 8). The theorem states that the condition (5) with is necessary and sufficient for the existence of non-degenerate limit laws for , ,
An important and immediate generalization of the renewal equation (1) is to allow to be a general positive finite measure on . Setting one distinguishes the excessive case where , the defective case where , and the proper case we have already discussed, where . In the excessive case one can always find a (unique) such that . One can define then a probability distribution function via the relationship , . Multiplying both sides of (1) by and setting , , the proper renewal equation is obtained. The Key Renewal Theorem then yields
which establishes that, asymptotically, grows exponentially with rate . We should point out that the defective case is not entirely similar. While formally one again tries to identify so that , this may or may not be possible according to whether the distribution function is light-tailed or heavy-tailed. In the former case one proceeds just as in the excessive case. (For more details see [7], vol. 2 ch. 11). This type of analysis is characteristic of the applications of renewal theory to areas such as population dynamics, the theory of collective insurance risk, and to the economic theory or replacement and depreciation (Jorgenson (1974), Feldstein and Rothchild (1974)).
Alternating renewal processes arise in a natural way in many situations, like queueing systems and reliability of industrial equipment, where working(busy) periods ( ) interchange with idle periods ( ). Consider a sequence of random vectors with non-negative coordinates . It defines an alternating renewal sequence as follows An interpretation in terms of the reliability theory is the following. There are two types of renewal events: is the moment when the installation of a new element begins (The installation takes time ); is the moment when the installation ends and the new element starts working. (The working period has length ). The renewal process counts the pairs of renewal events in the interval The processes - spent working time and - residual working time generalize the lifetime processes and . Their properties are derived in Mitov and Yanev (2001) in the infinite mean cycle case.
The central place that renewal theory holds in the analysis of stochastic systems is due to the concept of regeneration. Let be a process with values in (e.g. a Euclidean space ) and sample paths that are càdlàg (right-continuous with left-hand limits) a.s.. Such a process is called regenerative with respect to a (possibly delayed) renewal process , defined on the same probability space, if, for each the post process is independent of and its distribution does not depend on , i.e. for all . The existence of an embedded, non-lattice renewal process with respect to which the process is regenerative, together with the finiteness of the mean is enough to guarantee the existence of a ``stationary version'', say , to which converges as goes to infinity. The statistics of can be determined by analyzing the behavior of over any regenerative cycle, i.e. a random time interval of the form . If , , , and is any bounded, continuous function then
Nowadays, our view of whole areas of probability, including parts of the theory of is influenced by renewal theoretic tools and related concepts of regeneration. The analysis of many stochastic models is greatly facilitated if one identifies certain embedded points in time that occur according to a renewal process and with respect to which the process is regenerative. The fact that these regeneration cycles are independent, identically distributed, also facilitates the statistical analysis of the output of regenerative systems.
A detailed representation of the renewal theory and its applications could be found, for instance, in the following books [1], [3], [7], and [14].
Reprinted with permission from Lovric, Miodrag (2011), International Encyclopedia of Statistical Science. Heidelberg: Springer Science +Business Media, LLC.
- 1
- Asmussen, S. (2003). Applied Probability and Queues. Second Edition. Springer Verlag.
- 2
- Anderson, K. K.; Athreya, K. B. (1987). A renewal theorem in the infinite mean case, The Annals of Probability, 15, 388-393.
- 3
- Bingham, N. H.; Goldie, C. M.; Teugels, J. L. (1987). Regular Variation, Cambridge University Press: Cambridge.
- 4
- Dynkin, E. B. (1955). Limit theorems for sums of independent random quantities, Izves. Akad. Nauk U.S.S.R., 19, 247-266.
- 5
- Erickson, K. B. (1970). Strong renewal theorems with infinite mean, Transactions of the American Mathematical Society, 151, 263-291.
- 6
- Feldshtein, M.; Rotschild, M. (1974). Toward An Economic Theory of Replacement Investment, Econometrica, 42(3), 393-423.
- 7
- Feller, W. (1968, 1971). An Introduction to Probability Theory and its Applications, Vol I and II, John Wiley.
- 8
- Garsia, A.; Lamperti, J. (1962) A discrete renewal theorem with infinite mean. Comment. Math. Helv., 37, 221-234.
- 9
- Jorgenson, D. W. (1974). Investment and Production: A Review. In Frontiers of Quantitative Economics, Vol 2, eds. M. Intriligator and D. Kendrick, Amsterdam: North-Holland, 341-366.
- 10
- Lamperti, J. (1962). An invariance principle in renewal theory, Annals of Mathematical Statistics, 33, 685-696.
- 11
- Lindvall, T. (1992). Lectures on the Coupling Method, John Wiley.
- 12
- Lorden, G. (1970). On the excess over the boundary, Ann. Math. Statist., 41, 520-527.
- 13
- Mitov, K. V.; Yanev, N. M. (2001). Limit theorems for alternating renewal processes in the infinite mean case, Advances in Applied Probability, 33, 896-911.
- 14
- Resnick, S. (1992). Adventures in . Birkhäuser.
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