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Clustered Multi-Task Sequence-to-Sequence Learning for Autonomous Vehicle Repositioning

机译:自动车辆重新定位的聚集多任务序列到序列学习

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Clustered multi-task learning, which aims to leverage the generalization performance over clustered tasks, has shown an outstanding performance in various machine learning applications. In this paper, a clustered multi-task sequence-to-sequence learning (CMSL) for autonomous vehicle systems (AVSs) in large-scale semiconductor fabrications (fab) is proposed, where AVSs are widely used for wafer transfers. Recently, as fabs become larger, the repositioning of idle vehicles to where they may be requested has become a significant challenge because inefficient vehicle balancing leads to transfer delays, resulting in production machine idleness. However, existing vehicle repositioning systems are mainly controlled by human operators, and it is difficult for such systems to guarantee efficiency. Further, we should handle the small data problem, which is insufficient for machine learning because of the irregular time-varying manufacturing environments. The main purpose of this study is to examine CMSL-based predictive control of idle vehicle repositioning to maximize machine utilization. We conducted an experimental evaluation to compare the prediction accuracy of CMSL with existing methods. Further, a case study in a real largescale semiconductor plant, demonstrated that the proposed predictive approach outperforms the existing approaches in terms of transfer efficiency and machine utilization.
机译:群集多任务学习,旨在利用群集任务的泛化性能,在各种机器学习应用中显示出出色的性能。在本文中,提出了一种大规模半导体制造(Fab)中的自主车辆系统(AVSS)的聚类多任务序列到序列学习(CMSL),其中AVSS广泛用于晶片传送。最近,由于Fabs变得更大,所以将怠速车辆重新定位到他们可以请求的地方已经成为一个重大挑战,因为效率低效的车辆平衡导致转移延迟,导致生产机器默许。然而,现有的车辆重新定位系统主要由人类运营商控制,并且这种系统难以保证效率。此外,我们应该处理小数据问题,由于不规则的时变的制造环境,这对机器学习不足。本研究的主要目的是检查空闲车辆重新定位的基于CMSL的预测控制,以最大限度地提高机器利用率。我们进行了一个实验评价,以比较CMSL与现有方法的预测准确性。此外,在真正的Largescale半导体工厂中的案例研究表明,所提出的预测方法在转移效率和机器利用方面优于现有的方法。

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