TY - JOUR
T1 - Exploring reliable edge-cloud computing for service latency optimization in sustainable cyber-physical systems
AU - Cao, Kun
AU - Wei, Tongquan
AU - Chen, Mingsong
AU - Li, Keqin
AU - Weng, Jian
AU - Tan, Wuzheng
N1 - Publisher Copyright:
© 2021 John Wiley & Sons, Ltd.
PY - 2021/11
Y1 - 2021/11
N2 - In recent years, the advance in information technology has promoted a wide span of emerging cyber-physical systems (CPS) applications such as autonomous automobile systems, healthcare monitoring, and process control systems. For these CPS applications, service latency management is extraordinarily important for the sake of providing high quality-of-experience to terminal users. Edge-cloud computing, integrating both edge computing and cloud computing, is regarded as a promising computation paradigm to achieve low service latency for terminal users in CPS. However, existing latency-aware edge-cloud computing methods dedicated for CPS fail to jointly consider energy budgets and reliability requirements, which may greatly degrade the sustainability of CPS applications. In this article, we explore the problem of minimizing service latency of edge-cloud computing coupled CPS under the constraints of energy budgets and reliability requirements. We propose a two-stage approach composed of static and dynamic service latency optimization. At static stage, Monte-Carlo simulation with integer-linear-programming technique is adopted to find the optimal computation offloading mapping and task backup number. At dynamic stage, a backup-adaptive dynamic mechanism is developed to avoid redundant data transmissions and executions for achieving additional energy savings and service latency enhancement. Experimental results show that our solution is able to reduce system service latency by up to 18.3% compared with representative baseline solutions.
AB - In recent years, the advance in information technology has promoted a wide span of emerging cyber-physical systems (CPS) applications such as autonomous automobile systems, healthcare monitoring, and process control systems. For these CPS applications, service latency management is extraordinarily important for the sake of providing high quality-of-experience to terminal users. Edge-cloud computing, integrating both edge computing and cloud computing, is regarded as a promising computation paradigm to achieve low service latency for terminal users in CPS. However, existing latency-aware edge-cloud computing methods dedicated for CPS fail to jointly consider energy budgets and reliability requirements, which may greatly degrade the sustainability of CPS applications. In this article, we explore the problem of minimizing service latency of edge-cloud computing coupled CPS under the constraints of energy budgets and reliability requirements. We propose a two-stage approach composed of static and dynamic service latency optimization. At static stage, Monte-Carlo simulation with integer-linear-programming technique is adopted to find the optimal computation offloading mapping and task backup number. At dynamic stage, a backup-adaptive dynamic mechanism is developed to avoid redundant data transmissions and executions for achieving additional energy savings and service latency enhancement. Experimental results show that our solution is able to reduce system service latency by up to 18.3% compared with representative baseline solutions.
KW - cyber-physical systems
KW - edge-cloud computing
KW - energy
KW - reliability
KW - service latency minimization
UR - https://www.scopus.com/pages/publications/85099405976
U2 - 10.1002/spe.2942
DO - 10.1002/spe.2942
M3 - 文章
AN - SCOPUS:85099405976
SN - 0038-0644
VL - 51
SP - 2225
EP - 2237
JO - Software - Practice and Experience
JF - Software - Practice and Experience
IS - 11
ER -