利用
新颖性
过程(计算)
工业工程
计算机科学
智能制造
数字化制造
生产力
产品(数学)
数据建模
工程类
制造工程
软件工程
计算机安全
操作系统
哲学
宏观经济学
经济
数学
神学
几何学
作者
Jonas Friederich,Deena P. Francis,Sanja Lazarova‐Molnar,Nader Mohamed
标识
DOI:10.1016/j.compind.2021.103586
摘要
Adoption of digital twins in smart factories, that model real statuses of manufacturing systems through simulation with real time actualization, are manifested in the form of increased productivity, as well as reduction in costs and energy consumption. The sharp increase in changing customer demands has resulted in factories transitioning rapidly and yielding shorter product life cycles. Traditional modeling and simulation approaches are not suited to handle such scenarios. As a possible solution, we propose a generic data-driven framework for automated generation of simulation models as basis for digital twins for smart factories. The novelty of our proposed framework is in the data-driven approach that exploits advancements in machine learning and process mining techniques, as well as continuous model improvement and validation. The goal of the framework is to minimize and fully define, or even eliminate, the need for expert knowledge in the extraction of the corresponding simulation models. We illustrate our framework through a case study.
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