Abstract
For cloud-based, large-scale complex manufacturing system simulation (CMSS), allocating appropriate service instances (virtual machines or nodes) is a promising way to improve execution efficiency. However, the complex interactions among and frequent aperiodic synchronizations of the entities of a CMSS make it challenging to estimate the influence of service instances’ computing power and network latency on the execution efficiency. This hinders the appropriate allocation of service instances for CMSS. To solve this problem, we construct a performance estimation model (PEM) using the executed events and synchronization algorithms to evaluate the running time of CMSS on different service instance combinations. Further, an intelligent scheduling algorithm that introduces PEM as fitness function is proposed to search for a near-optimal allocation scheme of CMSS service instances. To be specific, the PEM-based optimization algorithm (PEMOA) incorporates simulated annealing into the mutation phase of a genetic algorithm to strengthen its local searching ability. A series of experiments were performed on a computer cluster to compare the proposed PEMOA with two representative algorithms: an adapted first-come-first-service-based and the max-min-based allocation algorithms. The experimental results demonstrate that the PEMOA can reduce the running time by more than 7%. In particular, the improvement of PEMOA increases when the manufacturing system simulation is communication-intensive or spans a small number of service instance combinations.









Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.Notes
Each entity in real system is modeled as a simulation entity. For simplicity, when referring to simulation, a simulation entity is referred to as an entity.
References
Xu X (2012) From cloud computing to cloud manufacturing. Robot Comput Integr Manuf 28(1):75–86
Schaefer D (2014) Cloud-based design and manufacturing. Springer, Berlin
Negahban A, Smith S (2014) Simulation for manufacturing system design and operation: literature review and analysis. J Manuf Syst 33(2):241–261
Mourtzis D, Doukas M, Bernidaki D (2014) Simulation in manufacturing: review and challenges. In: International conference on digital enterprise technology—Det, Rio Patras, Greece
Heilala J, Vatanen S, Tonteri H, Montonen J, Lind S, Johansson B, Stahre J (2008) Simulation based sustainable manufactuing system design. In: Proceedings of the winter simulation conference
Han Y, Gong D, Jin Y, Pan Q (2019) Evolutionary multiobjective blocking lot-streaming flow shop scheduling with machine breakdowns. IEEE Trans Cybern 49(1):184–197
Chen H, Zhu X, Liu G, Pedrycz W (2018) Uncertainty-aware online scheduling for real-time workflows in cloud service environment. IEEE Trans Serv Comput (to be published)
Gong D, Han Y, Sun J (2018) A novel hybrid multi-objective artificial bee colony algorithm for blocking lot-streaming flow shop scheduling problems. Knowl Based Syst 148:115–130
Mezmaz M, Melab N, Kessaci Y, Lee YC, Talbi EG, Zomaya AY, Tuyttens D (2011) A parallel bi-objective hybrid metaheuristic for energy-aware scheduling for cloud computing systems. J Parallel Distrib Comput 71(11):1497–1508
Jena T, Mohanty JR (2018) Ga-based customer-conscious resource allocation and task scheduling in multi-cloud computing. Arab J Sci Eng 43(8):4115–4130
Dam S, Mandal G, Dasgupta K, Dutta P (2016) Genetic algorithm and gravitational emulation based hybrid load balancing strategy in cloud computing. In: Third international conference on computer, communication, control and information technology (C3IT)
Wei G, Vasilakos AV, Zheng Y, Xiong N (2010) A game-theoretic method of fair resource allocation forcloud computing services. J Supercomput 54(2):252–269
Chen XJ, Jing Z, Jun-Huai LI (2011) Key technology for multi-virtual machine collaborative computing oriented to path search tasks. Comput Integr Manuf Syst 17(10):2298–2308
Beaumont O, Carter L, Ferrante J, Legrand A, Marchal L, Robert Y (2008) Centralized versus distributed schedulers for bag-of-tasks applications. IEEE Trans Parallel Distrib Syst 19(5):698–709
Fujimoto RM, Malik AW, Park AJ (2010) Parallel and distributed simulation in the cloud. SCS M&S Mag 3:1–10
Netto S, Netto S, Buyya R (2009) Adaptive co-allocation of distributed resources for parallel applications. PhD thesis, University of Melbourne, Department of Computer Science and software Engineering
Chen H, Zhu X, Qiu D, Liu L, Du Z (2017) Scheduling for workflows with security-sensitive intermediate data by selective tasks duplication in clouds. IEEE Trans Parallel Distrib Syst 28(9):2674–2688
Yang C, Chai X, Zhang F (2012) Research on co-simulation task scheduling based on virtualization technology under cloud simulation. Springer, Berlin
Culler D, Karp R, Patterson D, Sahay A, Schauser KE, Santos E, Subramonian R, Von Eicken T (1993) Logp: towards a realistic model of parallel computation. ACM Sigplan Not 28(7):1–12
Park EJ, Eidenbenz S, Santhi N, Chapuis G, Settlemyer B (2015) Parameterized benchmarking of parallel discrete event simulation systems: communication, computation, and memory. In: Winter simulation conference
Li WD, Ong SK, Nee AYC (2002) Hybrid genetic algorithm and simulated annealing approach for the optimization of process plans for prismatic parts. Int J Prod Res 40(8):1899–1922
Han Y-Y, Gong D, Sun X (2015) A discrete artificial bee colony algorithm incorporating differential evolution for the flow-shop scheduling problem with blocking. Eng Optim 47(7):927–946
Liang Y, Leung K-S (2011) Genetic algorithm with adaptive elitist-population strategies for multimodal function optimization. Appl Soft Comput 11(1):2017–2034
Zafeirios P, Helen K (2015) Scheduling bags of tasks and gangs in a distributed system. In: 2015 international conference on computer, information and telecommunication systems (CITS)
Santhosh B, Manjaiah DH (2016) A hybrid avgtask-min and max-min algorithm for scheduling tasks in cloud computing. In: International Conference on Control, Instrumentation, Communication and Computational Technologies
Buquan LIU, Yiping YAO, Wang H (2012) On the technology of high-performance parallel simulation. Chin J Electron 21(1):1–6
ThinkWiki (2018) How to use cpufrequtils. http://www.thinkwiki.ort/wiki/How_to_use_cpufrequtils. Accessed 8 Aug 2018
Srinivas M, Patnaik LM (1994) Adaptive probabilities of crossover and mutation in genetic algorithms. IEEE Trans Syst Man Cybern 24(4):656–667
Acknowledgements
This work was financially supported by the National Natural Science Foundation of China (61702527, 61802422, 61773120).
Author information
Authors and Affiliations
Contributions
FY and TL wrote the paper; YY, LX, ZL and HC revised this paper.
Corresponding author
Ethics declarations
Conflict of interest
The authors declare no conflict of interest.
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Yao, F., Yao, Y., Xing, L. et al. An intelligent scheduling algorithm for complex manufacturing system simulation with frequent synchronizations in a cloud environment. Memetic Comp. 11, 357–370 (2019). https://doi.org/10.1007/s12293-019-00284-3
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12293-019-00284-3