论文标题
可解释的机器学习,用于高梯度RF腔中的故障预测
Explainable Machine Learning for Breakdown Prediction in High Gradient RF Cavities
论文作者
论文摘要
真空弧或射频(RF)故障的发生是限制粒子加速器中正常导电RF腔的高梯度性能的最普遍的因素之一。在本文中,我们通过将机器学习策略应用于CERN的高梯度腔数据中,从CERN的测试站应用于紧凑型线性碰撞器(CLIC),从而搜索与RF故障发生率相关的先前未认识的特征。通过用可解释的人工智能(AI)来解释学到的模型的参数,我们可以反向工程师的物理属性,以得出快速,可靠和简单的基于规则的模型。基于6个月的历史数据和专用实验,我们的模型显示了对崩溃发生的数据的分数。具体而言,结果表明,初始分解后发射电流的场与此后不久发生另一种崩溃的可能性密切相关。结果还表明,在将来的实验中,应通过增加时间分辨率来监测腔压力,以进一步探索与分解相关的真空活性。
The occurrence of vacuum arcs or radio frequency (rf) breakdowns is one of the most prevalent factors limiting the high-gradient performance of normal conducting rf cavities in particle accelerators. In this paper, we search for the existence of previously unrecognized features related to the incidence of rf breakdowns by applying a machine learning strategy to high-gradient cavity data from CERN's test stand for the Compact Linear Collider (CLIC). By interpreting the parameters of the learned models with explainable artificial intelligence (AI), we reverse-engineer physical properties for deriving fast, reliable, and simple rule-based models. Based on 6 months of historical data and dedicated experiments, our models show fractions of data with a high influence on the occurrence of breakdowns. Specifically, it is shown that the field emitted current following an initial breakdown is closely related to the probability of another breakdown occurring shortly thereafter. Results also indicate that the cavity pressure should be monitored with increased temporal resolution in future experiments, to further explore the vacuum activity associated with breakdowns.