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Characterization, Signal Estimation and Analyzing of Cold Button BPMs for a Low-Β Helium/proton Superconducting LINAC

Nuclear Instruments & Methods in Physics Research Section A-accelerators Spectrometers Detectors and...(2022)SCI 3区SCI 4区

Chinese Acad Sci | Univ Chinese Acad Sci

Cited 1|Views15
Abstract
CAFe is a low-fl helium/proton superconducting LINAC. It is as a demo LINAC for China initiative Accelerator -Driven System and constructed at the Institute of Modern Physics, Chinese Academy of Sciences. In this paper, an off-site characterization focusing on the capacitance measurements of cold button BPMs is presented firstly. Furthermore, a signal estimation and analysis of cold button BPMs is performed with regard to two kinds of beam commissioning, helium and proton beams. A good agreement between the calculation and the measurement proves that the developed theoretical model could accurately estimate the output signal of cold button BPMs. It considers the influence of low-fl effect and long cable issues. Based on the transformation of the estimated signal from the time domain to the frequency domain, it is found that the amplitude spectra of cold button BPMs expand with the energy increasing and the bunch length shortening. The amplitude at the first harmonic frequency decreases, which causes the summed values from BPM electronics to be declined in the LINAC. However, the decline in summed values is not proportional to the decreasing of beam current. This is the reason why BPMs only give relative intensity and not absolute value for low-fl beams when BPMs' electronics using a narrow-band digital signal processing. These developments will be used for the cold BPM system and the fast machine protection system. It is dedicated to the driven LINAC of China initiative Accelerator-Driven System, which will deliver a 500 MeV, 5 mA proton beam in continuous wave operation mode.
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Cold button BPM,Signal estimation,Low-&beta,beams,Superconducting LINAC,CiADS project
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要点】:本文针对低β氦/质子超导直线加速器CAFe的冷按钮束流位置监测器(BPMs)进行了特性分析、信号估计与分析,并提出了适用于低β束流的信号处理方法。

方法】:通过离线测试,对冷按钮BPMs的电容进行测量,并结合理论模型估计BPMs的输出信号,考虑了低β效应和长电缆问题的影响。

实验】:实验在中国科学院现代物理研究所的低β氦/质子超导直线加速器CAFe上进行,使用氦束和质子束进行信号估计与分析,证明了理论模型能够准确估计BPMs的输出信号,且在频域分析中发现信号幅度随能量增加和束团长度缩短而扩展,但基波频率的幅度减小,导致LINAC中BPM电子学累加值下降。