TY - JOUR
T1 - Queues with service resetting
AU - Bonomo, Ofek Lauber
AU - Yechiali, Uri
AU - Reuveni, Shlomi
N1 - Publisher Copyright:
© 2025 The Author(s)
PY - 2025
Y1 - 2025
N2 - Service time fluctuations heavily affect the performance of queueing systems, causing long waiting times and backlogs. Recently, it was shown that when service times are solely determined by the server, service resetting can mitigate the deleterious effects of service time fluctuations and drastically improve queue performance (Bonomo et al., 2022). Yet, in many queueing systems, service times have two independent sources: the intrinsic server slowdown (S) and the jobs’ inherent size (X). In these, so-called S&X queues (Gardner et al., 2017), service resetting results in a newly drawn server slowdown while the inherent job size remains unchanged. Remarkably, resetting can be useful even then. To show this, we develop a comprehensive theory of S&X queues with service resetting. We consider cases where the total service time is either a product or a sum of the service slowdown and the jobs’ inherent size. For both cases, we derive expressions for the total service time distribution and its mean under a generic service resetting policy. Two prevalent resetting policies are discussed in more detail. We first analyze the constant-rate (Poissonian) resetting policy and derive explicit conditions under which resetting reduces the mean service time and improves queue performance. Next, we consider the sharp (deterministic) resetting policy. While results hold regardless of the arrival process, we dedicate special attention to the S&X-M/G/1 queue with service resetting, and obtain the distribution of the number of jobs in the system and their sojourn time. Our analysis highlights situations where service resetting can be used as an effective tool to improve the performance of S&X queueing systems. Several examples are given to illustrate our analytical results, which are corroborated using numerical simulations.
AB - Service time fluctuations heavily affect the performance of queueing systems, causing long waiting times and backlogs. Recently, it was shown that when service times are solely determined by the server, service resetting can mitigate the deleterious effects of service time fluctuations and drastically improve queue performance (Bonomo et al., 2022). Yet, in many queueing systems, service times have two independent sources: the intrinsic server slowdown (S) and the jobs’ inherent size (X). In these, so-called S&X queues (Gardner et al., 2017), service resetting results in a newly drawn server slowdown while the inherent job size remains unchanged. Remarkably, resetting can be useful even then. To show this, we develop a comprehensive theory of S&X queues with service resetting. We consider cases where the total service time is either a product or a sum of the service slowdown and the jobs’ inherent size. For both cases, we derive expressions for the total service time distribution and its mean under a generic service resetting policy. Two prevalent resetting policies are discussed in more detail. We first analyze the constant-rate (Poissonian) resetting policy and derive explicit conditions under which resetting reduces the mean service time and improves queue performance. Next, we consider the sharp (deterministic) resetting policy. While results hold regardless of the arrival process, we dedicate special attention to the S&X-M/G/1 queue with service resetting, and obtain the distribution of the number of jobs in the system and their sojourn time. Our analysis highlights situations where service resetting can be used as an effective tool to improve the performance of S&X queueing systems. Several examples are given to illustrate our analytical results, which are corroborated using numerical simulations.
KW - Queueing
KW - Service time fluctuations
KW - Stochastic processes
KW - Stochastic resetting
UR - http://www.scopus.com/inward/record.url?scp=85215612907&partnerID=8YFLogxK
U2 - 10.1016/j.ejor.2024.12.044
DO - 10.1016/j.ejor.2024.12.044
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AN - SCOPUS:85215612907
SN - 0377-2217
VL - 322
SP - 908
EP - 919
JO - European Journal of Operational Research
JF - European Journal of Operational Research
IS - 3
ER -