Affiliation:
1. 1 The Higher Educational Key Laboratory for Flexible Manufacturing Equipment Integration of Fujian Province (Xiamen Institute of Technology) , Xiamen , Fujian , , China .
Abstract
Abstract
In this paper, we first use particle swarm optimization to improve the BP neural network algorithm to optimize the neural network connection weights and thresholds and then apply it to the flexible manufacturing system to build a complete, flexible manufacturing process of mass customization. Based on the nonlinear mapping relationship between customer demand and product structure, a three-layer network is used to identify the effective demand of customers as well as the actual risk of the enterprise in order to satisfy the common users who do not care about the product structure and the optimization of industrial structure. After completing the configuration, the system is applied to an automobile company and a manufacturing company for testing purposes. After a long time of use, the average accuracy error is 0.0061. The value of the body module ignored by the customer is as high as 0.129, and the weight of the indicator system of the traveling control module is as low as 0.072, but it has become one of the most important indicators of the potential demand of the customer. Supply chain risk has a maximum difference of 6% when compared to the actual values. The manufacturer’s expectation value of 3.8967 for SCRF11 is “low”.
Reference24 articles.
1. Borenstein, D. (2017). Idssflex: an intelligent dss for the design and evaluation of flexible manufacturing systems. Journal of the Operational Research Society.
2. Diaz, J. L. C., & Ocampo-Martinez, C. (2021). Non-centralised control strategies for energy-efficient and flexible manufacturing systems. Journal of Manufacturing Systems(59-), 59.
3. Hu, L., Liu, Z., Hu, W., Wang, Y., & Wu, F. (2020). Petri-net-based dynamic scheduling of flexible manufacturing system via deep reinforcement learning with graph convolutional network. Journal of Manufacturing Systems, 55, 1-14.
4. Peter Koál, Andrea Mudriková, Stefan Václav, Dávid Michal, & Ronald Díaz Cazaas. (2019). Manufacturing component base broadening in the flexible manufacturing system by using a group technology. Materials Science Forum, 952, 45-54.
5. Cong, X. Y., Gu, C., Uzam, M., Chen, Y. F., Al-Ahmari, A. M., & Wu, N. Q., et al. (2018). Design of optimal petri net supervisors for flexible manufacturing systems via weighted inhibitor arcs. Asian Journal of Control.