Integration of on-line machine learning-based endpoint control and run-to-run control for an atomic layer etching process

IF 3 Q2 ENGINEERING, CHEMICAL
Henrik Wang , Feiyang Ou , Julius Suherman , Gerassimos Orkoulas , Panagiotis D. Christofides
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引用次数: 0

Abstract

Control methods for Atomic Layer Etching (ALE) processes are constantly evolving due to the increasing level of precision needed to manufacture next-gen semiconductor devices. This work presents a novel, real-time Endpoint-based (EP) control approach for an Al2O3 ALE process in a discrete feed reactor. The proposed method dynamically adjusts the process time of both ALE half-cycles to ensure an optimal process outcome. The EP controller uses a machine learning-based transformer to take in variable-length, time-series pressure profiles to identify when the ALE process is complete. However, this model requires a large amount of process data to ensure that it will perform well even when under a variety of kinetic and pressure disturbances that mimic common issues in a real-world manufacturing environment. Thus, this work uses a multiscale modeling method that integrates a macroscopic Computational Fluid Dynamics (CFD) and a mesoscopic kinetic Monte Carlo (kMC) simulation to generate process data and test the proposed controllers. After testing the performance of the EP controller on individual runs, various combinations of ex-situ Run-to-Run (R2R) and EP controllers are examined in order to determine the strongest control strategy in a manufacturing environment. The final results show that the EP controller is highly accurate when trained on conditions that are representative of its implementation environment. Compared to traditional EWMA controllers, it has significantly fewer misprocesses, which enhances the overall control performance and efficiency of the ALE process.
原子层蚀刻过程中基于在线机器学习的端点控制与运行对运行控制的集成
由于制造下一代半导体器件所需的精度水平不断提高,原子层蚀刻(ALE)工艺的控制方法也在不断发展。这项工作提出了一种新颖的、实时的、基于端点的(EP)控制方法,用于离散进料反应器中的Al2O3 ALE过程。该方法动态调整两个ALE半周期的工艺时间,以保证最优的工艺结果。EP控制器使用基于机器学习的变压器来接收可变长度的时间序列压力曲线,以确定ALE过程何时完成。然而,该模型需要大量的过程数据,以确保即使在模拟现实世界制造环境中常见问题的各种动力学和压力干扰下,它也能表现良好。因此,这项工作使用了一种多尺度建模方法,该方法集成了宏观计算流体动力学(CFD)和介观动力学蒙特卡罗(kMC)模拟来生成过程数据并测试所提出的控制器。在测试了EP控制器在个别运行中的性能后,为了确定制造环境中最强大的控制策略,研究人员检查了非原位运行到运行(R2R)和EP控制器的各种组合。最终结果表明,EP控制器在代表其实现环境的条件下训练时具有很高的精度。与传统的EWMA控制器相比,该控制器的误处理显著减少,提高了ALE过程的整体控制性能和效率。
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CiteScore
3.10
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