利用机器人规模化生产电动汽车电池的数字孪生设计与分析

Digital twin design and analytics for scaling up electric vehicle battery production using robots

International Journal of Production Research · 2022
被引 28
ABS 3

中文导读

针对电动汽车电池产能瓶颈,提出三阶段数字孪生设计与分析方法,开发机器人装配线配置,优化速度和成本,为实践者提供启发式方法确定装配线配置和所需机器人数量。

Abstract

As electric vehicle adoption accelerates and demand increases, the inability to produce batteries in sufficient quantities has emerged as a critical bottleneck in the electric vehicle supply chain. Given the impending climate change crisis, resolving this bottleneck is imperative to accelerate the transition to a zero-emission electric mobility future. One potential solution is the use of robotics for fast and cost-effective assembly of batteries at scale. This study proposes a three-stage digital twin design and analysis method to develop robotic workcells for fast and cost-effective assembly of electric vehicle battery modules. Using digital twin design and simulation, robotic assembly line configurations have been developed for battery module production at different scales. Digital twin analytics was used to evaluate and optimise the proposed robotic battery assembly system for speed and cost. Industrial automation experts were consulted to further improve robotic work cell layouts to minimise investment in robots. Because digital twins of robotic workcells have been used, the configurations of the battery assembly line, as designed and validated, are ready for immediate implementation. For practitioners, this study offers heuristic methods to determine the appropriate assembly line configuration, the required number of robots and humans, for a desired production volume. For researchers, this study outlines promising areas for future investigation.

电动汽车电池生产机器人自动化数字孪生制造工程