Automation of superconducting cavity cooldown process using two-layer surrogate model and model predictive control method

IF 1.8 3区 工程技术 Q3 PHYSICS, APPLIED
Li Mei, Chang Zhengze, Zhu Keyu, Han Ruixiong, Ye Rui, Sun Liangrui, Sang Minjing, Jiang Yongcheng, Li Shaopeng, Zhai Jiyuan, Sha Peng, Li Xiaoping, Ge Rui
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引用次数: 0

Abstract

Superconducting cavity is the key equipment of the superconducting accelerator, which provides higher acceleration voltage and higher frequency power per unit length, and saves equipment space. Superconducting cavities need to be gradually cooled from ambient temperature (300 K) to the superconducting temperature (4.2 K or below) during the test and operation. The temperature difference on the cavity must be strictly limited during the cooldown process to prevent excessive thermal stress on the surface of the superconducting cavity. Since this cooldown process for the superconducting cavity is a typical large hysteresis, non-linear process that is difficult to control automatically using decoupled proportion integral derivative (PID) methods directly, a less efficient manual control scheme is normally adopted. In this paper, 3D numerical simulation, 1D pipe and 0D tank model with artificial neural network (ANN) were combined to generate a two-layer surrogate model that can balance computational accuracy and speed, to improve the automation and cooling efficiency of the superconducting cavity cooldown process. In order to achieve automatic control of the cooling procedure for the superconducting cavity, a model predictive control (MPC) approach was also built on the basis of this two-layer surrogate model. According to the results of the experiment test, the improved method could realize a quick and smooth cooldown process of the superconducting cavity, during which the temperature difference on the cavity could satisfy the requirements. Additionally, the improved automatic cooldown method was more adaptable and saved 29 % more time than the original manual control method. The foundation for a more intelligent automated control of future large cryogenic systems or other system with the large hysteresis, non-linear properties, was laid.

Abstract Image

利用双层代用模型和模型预测控制方法实现超导空腔冷却过程自动化
超导腔是超导加速器的关键设备,它能在单位长度上提供更高的加速电压和更高的频率功率,并节省设备空间。在测试和运行过程中,超导腔需要从环境温度(300 K)逐渐冷却到超导温度(4.2 K 或以下)。在冷却过程中,必须严格限制腔体上的温差,以防止超导腔体表面产生过大的热应力。由于超导腔的冷却过程是一个典型的大滞后、非线性过程,难以直接使用解耦比例积分导数(PID)方法进行自动控制,因此通常采用效率较低的手动控制方案。本文将三维数值模拟、一维管道和零维水箱模型与人工神经网络(ANN)相结合,生成了一种能兼顾计算精度和速度的双层代用模型,以提高超导空腔冷却过程的自动化程度和冷却效率。为了实现超导腔冷却过程的自动控制,还在该双层代用模型的基础上建立了模型预测控制(MPC)方法。实验测试结果表明,改进后的方法可以实现快速平稳的超导腔体冷却过程,冷却过程中腔体上的温差可以满足要求。此外,改进后的自动冷却方法适应性更强,比原来的手动控制方法节省了 29% 的时间。这为未来大型低温系统或其他具有大滞后、非线性特性的系统实现更智能的自动控制奠定了基础。
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来源期刊
Cryogenics
Cryogenics 物理-热力学
CiteScore
3.80
自引率
9.50%
发文量
0
审稿时长
2.1 months
期刊介绍: Cryogenics is the world''s leading journal focusing on all aspects of cryoengineering and cryogenics. Papers published in Cryogenics cover a wide variety of subjects in low temperature engineering and research. Among the areas covered are: - Applications of superconductivity: magnets, electronics, devices - Superconductors and their properties - Properties of materials: metals, alloys, composites, polymers, insulations - New applications of cryogenic technology to processes, devices, machinery - Refrigeration and liquefaction technology - Thermodynamics - Fluid properties and fluid mechanics - Heat transfer - Thermometry and measurement science - Cryogenics in medicine - Cryoelectronics
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