Harmonic analysis of non-stationary signals with application to LHC beam measurements

G. Russo, G. Franchetti, M. Giovannozzi, E. H. Maclean
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Abstract

Harmonic analysis has provided powerful tools to accurately determine the tune from turn-by-turn data originating from numerical simulations or beam measurements in circular accelerators and storage rings. Methods that have been developed since the 1990s are suitable for stationary signals, i.e., time series whose properties do not vary with time and are represented by stationary signals. However, it is common experience that accelerator physics is a rich source of time series in which the signal amplitude varies over time. Furthermore, the properties of the amplitude variation of the signal often contain essential information about the phenomena under consideration. In this paper, a novel approach is presented, suitable for determining the tune of a non-stationary signal, which is based on the use of the Hilbert transform. The accuracy of the proposed methods is assessed in detail, and an application to the analysis of beam data collected at the CERN Large Hadron Collider is presented and discussed in detail.
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应用于大型强子对撞机光束测量的非稳态信号谐波分析
谐波分析提供了强大的工具,可以从数字模拟或环形加速器和存储环中的光束测量数据中精确确定调谐。自 20 世纪 90 年代以来开发的方法适用于静态信号,即特性不随时间变化且由静态信号表示的时间序列。此外,信号振幅变化的特性包含了所考虑现象的重要信息。本文提出了一种适用于确定非稳态信号调谐的新方法,该方法基于希尔伯特变换的使用。本文详细评估了所提方法的准确性,并介绍和讨论了在欧洲核子研究中心大型强子对撞机收集的光束数据分析中的应用。
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