论文标题
部分可观测时空混沌系统的无模型预测
Data-driven modeling of beam loss in the LHC
论文作者
论文摘要
在大型强子对撞机中,横梁损耗持续测量以进行机器保护。根据设计,大多数粒子损失发生在准直系统中,其中振动幅度高或大动量误差的粒子从梁上刮下来。通常通过更改多个控制参数来手动优化粒子损耗的水平,例如,在碰撞器沿对聚焦和散热器中的电流。通常,由于系统中各种(非线性)效应(例如电子云,共振效应等)以及多种不确定性来源,基于控制参数(非线性)效应而导致的控制参数进行建模和预测损失通常具有挑战性。同时,了解控制参数对损失的影响对于改善加速器的操作和绩效以及未来的设计非常重要。现有的结果表明,很难概括模型,这些模型从整个一年的填充到另一年的数据,假设损失的回归模型。为了避免这种情况,我们建议使用自回归建模方法,不仅要考虑到观察到的控制参数,还考虑了先前的损失值。我们使用等效的卡尔曼滤波器(KF)公式,以有效地估计具有不同滞后的模型。
In the Large Hadron Collider, the beam losses are continuously measured for machine protection. By design, most of the particle losses occur in the collimation system, where the particles with high oscillation amplitudes or large momentum error are scraped from the beams. The level of particle losses typically is optimized manually by changing multiple control parameters, among which are, for example, currents in the focusing and defocusing magnets along the collider. It is generally challenging to model and predict losses based on the control parameters due to various (non-linear) effects in the system, such as electron clouds, resonance effects, etc, and multiple sources of uncertainty. At the same time understanding the influence of control parameters on the losses is extremely important in order to improve the operation and performance, and future design of accelerators. Existing results showed that it is hard to generalize the models, which assume the regression model of losses depending on control parameters, from fills carried out throughout one year to the data of another year. To circumvent this, we propose to use an autoregressive modeling approach, where we take into account not only the observed control parameters but also previous loss values. We use an equivalent Kalman Filter (KF) formulation in order to efficiently estimate models with different lags.