基于广义预测控制和 BP 神经网络 PI 控制的光刻机温度控制算法

Zhou Lan, Jingsong Chen, Cheng Xue, Jun Lan, Bing Wang, Yupu Wang, Yong Yang
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引用次数: 0

摘要

温度稳定性是影响光刻系统中大多数子系统性能的关键因素,这是因为系统组件精度高,对温度变化敏感。光刻机的温度控制系统具有惯性常数大、时间延迟特性以及易受多种干扰的特点。光刻机的温度控制系统主要要求响应速度快、精度高、温度控制稳定恒定。本研究的贡献不仅在于避免了基于实时参数估计和神经网络自调整的复杂精密建模过程,还在于提高了外部干扰下的实时温度控制性能。成功地提出了一种基于广义预测控制(GPC)和反向传播(BP)神经网络比例积分(PI)控制的级联结构的新型自适应算法,用于具有大惯性常数、时间延迟和多重干扰的光刻机的高精度温度控制。本研究首先开发了基于热交换器和加热器的液体循环温度控制系统。其次,成功地提出了一种由 GPC 和 BP 神经网络 PI 控制组成的自适应控制器。利用 BP 神经网络实现了 PI 控制器参数的实时调节,并通过最小二乘法实时确定了控制系统的数学模型参数。此外,还从鲁棒性和误差分析的定量研究方面,评估了拟议控制器与传统 PI 控制器和 GPC 控制器的性能比较。最后,通过在不同工作场景下的仿真结果,研究了采用所提出的自适应 GPC-PI 算法控制的温度控制系统的温度稳定性和鲁棒性。仿真结果表明,在干扰输入的作用下,所提出算法的稳态误差小于 0.01°C。它能有效抵消环境干扰和系统参数时变的影响。仿真实验结果表明,与传统控制方法相比,所提出的自适应 GPC 和 PI 控制算法在控制精度、抗干扰能力和鲁棒性等方面具有显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A temperature control algorithm for lithography machine based on generalized predictive control and BP neural network PI control
Temperature stability is a critical factor affecting the performance of the most subsystems in the lithography system, due to the high precision and sensitivity of system components to temperature variations. The temperature control system of the lithography machine is characterized by its large inertial constant, time delay characteristics, as well as susceptibility to multiple disturbances. The temperature control system of the lithography machine chiefly requires response speed, high accuracy, and stable and constant temperature control. The contribution of this study is not only avoiding complex precision modeling processes based on real-time parameter estimation and neural network self-tuning but also improving the performance of temperature control in real time under external disturbances. A novel adaptive algorithm with a cascade structure based on generalized predictive control (GPC) and backpropagation (BP) neural network proportional-integral (PI) control is successfully proposed for high accuracy temperature control of lithography machine with a large inertial constant, time delay, and multiple disturbances. In this study, firstly, the liquid circulating temperature control system is developed based on heat exchanger and heater. Secondly, an adaptive controller composed of GPC and BP neural network PI control is successfully proposed. A BP neural network is employed to enable the parameters of the PI controller to adjust in real time, and the mathematical model parameters of the control system are identified in real time by the least square method. Also, the performance of the proposed controller is evaluated comparing with conventional PI controller and GPC controller in terms of robustness and quantitative study of error analysis. Finally, the temperature stability and robustness of the temperature control system controlled with the proposed adaptive GPC-PI algorithm has been investigated by the simulation results carried out in different working scenarios. The simulation results show that the steady-state error from the proposed algorithm is less than 0.01°C under the action of disturbance input. It can effectively counteract the influence of environmental interference and time-varying system parameters. The results of the simulation experiment indicate that the proposed adaptive GPC and PI control algorithm exhibits significant advantages in terms of control accuracy, anti-interference ability, and robustness compared to the conventional control method.
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