Abstract
As a kind of service supply chain, logistics service supply chain is an important trend in the development of logistics industry. Compared with developed countries in foreign countries, the level of logistics development in China is lagging behind. Facing the unprecedented competition pressure from foreign logistics enterprises, how to realize the construction and operation with high quality and low cost in logistics service supply chain is one of the key problems at present. Quality cost is the cross field of quality management and cost control, and its function has been widely verified at home and abroad. Therefore, through the research and analysis of the quality cost, the construction and cost optimization method of logistics service supply chain based on cloud genetic algorithm is proposed. The quality cost theory is applied to the related research of logistics service supply chain to realize the integration between integrated logistics service providers and functional logistics service providers with high quality and low cost. At the same time, it can provide the basis and means for quality management and cost control in the long-term operation of logistics service supply chain. Finally, the effectiveness of quality cost in the construction and operation optimization of logistics service supply chain is verified through the case of S Company.
Similar content being viewed by others
References
Dasgupta, K., Mandal, B., Dutta, P., et al. (2013). A genetic algorithm (GA) based load balancing strategy for cloud computing. Procedia Technology, 10(2), 340–347.
Qiu, M., Zhong, M., Li, J., et al. (2015). Phase-change memory optimization for green cloud with genetic algorithm. IEEE Transactions on Computers, 64(12), 3528–3540.
Tao, F., Feng, Y., Zhang, L., et al. (2014). CLPS-GA: A case library and Pareto solution-based hybrid genetic algorithm for energy-aware cloud service scheduling. Applied Soft Computing, 19(6), 264–279.
Huang, S. C., Jiau, M. K., & Lin, C. H. (2015). A genetic-algorithm-based approach to solve carpool service problems in cloud computing. IEEE Transactions on Intelligent Transportation Systems, 16(1), 352–364.
Verma, A., & Kaushal, S. (2014). Deadline constraint heuristic-based genetic algorithm for workflow scheduling in cloud. International Journal of Grid and Utility Computing, 5(2), 96–106.
Ding, J., & Yang, S. (2013). Classification rules mining model with genetic algorithm in cloud computing. International Journal of Computer Applications, 48(18), 24–32.
Moghaddam, F. F., Moghaddam, R. F., & Cheriet, M. (2015). Carbon-aware distributed cloud: Multi-level grouping genetic algorithm. Cluster Computing, 18(1), 477–491.
Kaaouache, M. A., & Bouamama, S. (2015). Solving bin packing problem with a hybrid genetic algorithm for VM placement in cloud. Procedia Computer Science, 60(1), 1061–1069.
Messias, V. R., Estrella, J. C., Ehlers, R., et al. (2016). Combining time series prediction models using genetic algorithm to autoscaling Web applications hosted in the cloud infrastructure. Neural Computing and Applications, 27(8), 2383–2406.
Sellami, K., Ahmed-Nacer, M., Tiako, P. F., et al. (2013). Immune genetic algorithm for scheduling service workflows with QoS constraints in cloud computing. South African Journal of Industrial Engineering, 24(24), 68–82.
Guo, W., & Wang, X. (2015). A data placement strategy based on genetic algorithm in cloud computing platform. International Journal of Intelligence Science, 5(3), 145–157.
Jung, D., Suh, T., Yu, H., et al. (2014). A workflow scheduling technique using genetic algorithm in spot instance-based cloud. Ksii Transactions on Internet and Information Systems, 8(9), 3126–3145.
Ramezani, F., Lu, J., Taheri, J., & Hussain, F. K. (2015). Evolutionary algorithm-based multi-objective task scheduling optimization model in cloud environments. World Wide Web-internet and Web Information Systems, 18(6), 1737–1757.
Janani, N., Jegan, S. R. D., & Prakash, P. (2015). Optimization of virtual machine placement in cloud environment using genetic algorithm. Research Journal of Applied Sciences Engineering and Technology, 10(3), 274–287.
Zhang, C., & Guoli, X. U. (2014). Prediction for traffic flow of RBF neural network based on cloud genetic algorithm. Computer Engineering and Applications, 43(1), 91–116.
Acknowledgements
The author acknowledged the follow projects: (1) Statistics and Scientific Research Project of China in 2016: The Measurement and Evaluation on the Regional logistics capability of Silk Road economic belt (2016334); (2) International Science and Technology Cooperation and Exchange Project in Shaanxi Province: Food Safety Supervision and System Development Based on Internet of Things (2016kw_045); (3) 2018 Scientific Research Project of Shaanxi Provincial Department of Education: Food safety traceability platform Programming based on Internet of Things.
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Xue, Y., Ge, L. Cost Optimization Control of Logistics Service Supply Chain Based on Cloud Genetic Algorithm. Wireless Pers Commun 102, 3171–3186 (2018). https://doi.org/10.1007/s11277-018-5335-z
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11277-018-5335-z