TY - JOUR
T1 - Anti-Aging Scheduling in Single-Server Queues
T2 - A Systematic and Comparative Study
AU - Liu, Zhongdong
AU - Huang, Liang
AU - Li, Bin
AU - Ji, Bo
N1 - Publisher Copyright:
© 2021 KICS.
PY - 2021/4
Y1 - 2021/4
N2 - The age of information (AoI) is a new performance metric recently proposed for measuring the freshness of information in information-update systems. In this work, we conduct a systematic and comparative study to investigate the impact of scheduling policies on the AoI performance in single-server queues and provide useful guidelines for the design of AoI-efficient scheduling policies. Specifically, we first perform extensive simulations to demonstrate that the update-size information can be leveraged for achieving a substantially improved AoI compared to non-size-based (or arrival-time-based) policies. Then, by utilizing both the update-size and arrival-time information, we propose three AoI-based policies. Observing improved AoI performance of policies that allow service preemption and that prioritize informative updates, we further propose preemptive, informative, AoI-based scheduling policies. Our simulation results show that such policies empirically achieve the best AoI performance among all the considered policies. However, compared to the best delay-efficient policies (such as shortest remaining processing time (SRPT)), the AoI improvement is rather marginal in the settings with exogenous arrivals. Interestingly, we also prove sample-path equivalence between some size-based policies and AoI-based policies. This provides an intuitive explanation for why some size-based policies (such as SRPT) achieve a very good AoI performance.
AB - The age of information (AoI) is a new performance metric recently proposed for measuring the freshness of information in information-update systems. In this work, we conduct a systematic and comparative study to investigate the impact of scheduling policies on the AoI performance in single-server queues and provide useful guidelines for the design of AoI-efficient scheduling policies. Specifically, we first perform extensive simulations to demonstrate that the update-size information can be leveraged for achieving a substantially improved AoI compared to non-size-based (or arrival-time-based) policies. Then, by utilizing both the update-size and arrival-time information, we propose three AoI-based policies. Observing improved AoI performance of policies that allow service preemption and that prioritize informative updates, we further propose preemptive, informative, AoI-based scheduling policies. Our simulation results show that such policies empirically achieve the best AoI performance among all the considered policies. However, compared to the best delay-efficient policies (such as shortest remaining processing time (SRPT)), the AoI improvement is rather marginal in the settings with exogenous arrivals. Interestingly, we also prove sample-path equivalence between some size-based policies and AoI-based policies. This provides an intuitive explanation for why some size-based policies (such as SRPT) achieve a very good AoI performance.
UR - https://www.scopus.com/pages/publications/85152132412
UR - https://www.scopus.com/inward/citedby.url?scp=85152132412&partnerID=8YFLogxK
U2 - 10.23919/JCN.2021.000005
DO - 10.23919/JCN.2021.000005
M3 - Article
AN - SCOPUS:85152132412
SN - 1229-2370
VL - 23
SP - 91
EP - 105
JO - Journal of Communications and Networks
JF - Journal of Communications and Networks
IS - 2
ER -