A cross-enterprise collaborative production scheduling decision support algorithm with multi-agent support
Published Online: Jul 09, 2024
Received: Feb 28, 2024
Accepted: May 26, 2024
DOI: https://doi.org/10.2478/amns-2024-1757
Keywords
© 2024 Lili Chen et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
This study harnesses the capabilities of intelligent agent technology to develop a framework for cross-enterprise collaborative production scheduling decision-making. It conducts a comprehensive examination of the business processes and production scheduling decisions encapsulated within this framework. The research begins by pinpointing the challenges inherent in cross-enterprise collaborative production scheduling. Subsequently, it introduces a genetic algorithm tailored for agent-based decision-making in this context and delineates its algorithmic parameters. The effectiveness of this approach is validated through a series of simulation experiments focused on a case study of cross-enterprise collaborative production scheduling from an agent-oriented perspective. The findings indicate that implementing the agent structure and genetic algorithms in a scenario involving ten workpieces and ten machines (10×10) results in a new job reach time of 30, a workshop load of 0.5338, and an average reduction in scheduling time of 11.60%. These results underscore the efficacy of the proposed agent structure and genetic algorithms in enhancing decision support for cross-enterprise collaborative production scheduling, thereby laying a scientific foundation for achieving heightened production efficiency through intelligent agent technology.