Krenczyk Damian, Paprocka Iwona
Department of Engineering Processes Automation and Integrated Manufacturing Systems, Silesian University of Technology, Konarskiego 18A Str., 44-100 Gliwice, Poland.
Materials (Basel). 2023 Mar 14;16(6):2339. doi: 10.3390/ma16062339.
The integration of discrete simulations, artificial intelligence methods, and the theory of probability in order to obtain a high flexibility of the production system is crucial. In this paper, the concept of a smart factory operation is proposed along with the idea of data exchange architecture, simulation creation, performance optimization, and predictive analysis of the production process conditions. A Digital Twin for a hybrid flow shop from the automotive industry is presented as a case study. In the paper, the Ant Colony Optimization (ACO) algorithm is developed for multi-criteria scheduling problems in order to obtain a production plan without delays and maximum resource utilization. The ACO is compared to the immune algorithm and genetic algorithm. The best schedules are achieved with low computation time for the Digital Twin. By predicting the reliability parameters of the limited resources of the Digital Twin, stable deadlines for the implementation of production tasks are achieved. Mean Time To Failure and Mean Time of Repair are predicted for a real case study of an electric steering gear production line. The presented integration and data exchange between the elements of the smart factory: a Digital Twin, a computing module including an optimization, prediction, and simulation methods fills the gap between theory and practice for Industry 4.0. The paper presents measurable benefits of integration of discrete simulation tools, historical data analysis, and optimization methods.
集成离散模拟、人工智能方法和概率论以实现生产系统的高度灵活性至关重要。本文提出了智能工厂运营的概念以及数据交换架构、模拟创建、性能优化和生产过程条件预测分析的思路。作为案例研究,展示了汽车行业混合流水车间的数字孪生。本文针对多准则调度问题开发了蚁群优化(ACO)算法,以获得无延迟且资源利用率最大化的生产计划。将ACO与免疫算法和遗传算法进行了比较。数字孪生以低计算时间实现了最佳调度。通过预测数字孪生有限资源的可靠性参数,实现了生产任务执行的稳定期限。针对电动转向器生产线的实际案例研究预测了平均无故障时间和平均修复时间。智能工厂各要素之间呈现的集成与数据交换:数字孪生、包括优化、预测和模拟方法的计算模块填补了工业4.0理论与实践之间的差距。本文展示了集成离散模拟工具、历史数据分析和优化方法的可衡量益处。