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基于神经网络的驻波加速结构单腔频率计算方法研究

赵静远 杨誉 李丹阳 秦成 雷瀚 杨京鹤 朱志斌

原子能科学技术2025,Vol.59Issue(z2):489-497,9.
原子能科学技术2025,Vol.59Issue(z2):489-497,9.DOI:10.7538/yzk.2025.youxian.0215

基于神经网络的驻波加速结构单腔频率计算方法研究

Single-cavity Frequency Calculating Method for Standing Wave Accelerating Structure Based on Neural Network

赵静远 1杨誉 1李丹阳 1秦成 1雷瀚 1杨京鹤 1朱志斌1

作者信息

  • 1. 中国原子能科学研究院,北京 102413
  • 折叠

摘要

Abstract

The standing wave accelerating structure,which usually consists of a series of resonant cavity chains,is the core component of electron linear accelerators.For these cavities in the accelerating structure,the frequency detuning is an ineluctable concern due to manufacturing errors including thermal deformation and machining tolerances.And precise measurement and correction of such frequency detuning constitute the critical objective in the tuning processes to achieve the designed single-cavity frequency.Traditional cavity detuning diagnostic method is implemented by inserting two inflexible conductive probes into the accelerating structure and measuring the resonant frequencies of each cavity one by one,which has a great risk of damage the cavity inner surface.Especially in complex application scenarios,such as fully enclosed accelerating structures and side-coupling structures,the traditional method has great limitations in applicability and diagnostic accuracy.With the development of intelligent optimization algorithm,neural networks and trust region optimization algorithms are gradually applied in the design and tuning of accelerating structures.Neural networks demonstrate superior feature extraction capabilities while trust region optimization algorithms provide high-precision search mechanisms,and their combination is an effective solution for complex system parameter optimization.In this paper,the relationship between reflection coefficients and single-cavity frequency based on equivalent circuit theory were established and a cavity frequency calculation method combining neural network and trust region optimization algorithm was proposed for the standing wave accelerating structures.After measuring the reflection coefficients of the accelerating structure from the input waveguide,the frequency of each cavity can be estimated with this method.Therefore,the risks and limitations of the traditional method can be avoided.In the tuning process,the coarse estimation of the cavity frequency was obtained by the neural network model at first.And then the cavity frequency could be accurately calculated by the trust region algorithm.By minimizing the deviation between the measured reflection results and the reflection coefficients calculated by the estimated cavity frequencies,the frequency of each single-cavity could be obtained.After modeling and training the neural network,three accelerating structures in S-band and C-band were analyzed.The comparation between the simulated cavity frequencies and the calculated results obtained by this method using the simulated reflection coefficients confirmed the feasibility of this method.Then,two real S-band accelerating structures were tested by this method and the traditional way.The results show that this method can reveal the trend of frequency deviation when single-cavity frequency exhibit significant deviations from design value,and the most deviations between this method and the traditional way are small in general situations.Therefore,this method can be used to guide the tuning of the standing wave accelerating structure and serve as a good supplement to the traditional method in the tuning of fully enclosed accelerating structures and side-coupling structures.

关键词

驻波加速结构/调谐方法/卷积神经网络/信赖域

Key words

standing wave accelerating structure/tuning method/convolutional neural network/trust region

分类

能源科技

引用本文复制引用

赵静远,杨誉,李丹阳,秦成,雷瀚,杨京鹤,朱志斌..基于神经网络的驻波加速结构单腔频率计算方法研究[J].原子能科学技术,2025,59(z2):489-497,9.

基金项目

中核集团"青年英才"项目 ()

原子能科学技术

OA北大核心

1000-6931

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