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Improved Limits on Fierz Interference Using Asymmetry Measurements from the Ultracold Neutron Asymmetry (UCNA) Experiment

Physical Review C(2020)SCI 2区SCI 1区

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Abstract
The Ultracold Neutron Asymmetry (UCNA) experiment was designed to measure the $\beta$-decay asymmetry parameter, $A_0$, for free neutron decay. In the experiment, polarized ultracold neutrons are transported into a decay trap, and their $\beta$-decay electrons are detected with $\approx 4\pi$ acceptance into two detector packages which provide position and energy reconstruction. The experiment also has sensitivity to $b_{n}$, the Fierz interference term in the neutron $\beta$-decay rate. In this work, we determine $b_{n}$ from the energy dependence of $A_0$ using the data taken during the UCNA 2011-2013 run. In addition, we present the same type of analysis using the earlier 2010 $A$ dataset. Motivated by improved statistics and comparable systematic errors compared to the 2010 data-taking run, we present a new $b_{n}$ measurement using the weighted average of our asymmetry dataset fits, to obtain $b_{n} = 0.066 \pm 0.041_{\text{stat}} \pm 0.024_{\text{syst}}$ which corresponds to a limit of $-0.012 < b_{n} < 0.144$ at the 90% confidence level.
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Neutron Lifetime Measurement
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要点】:论文利用UCNA实验中的极低温中子不对称性测量结果,通过分析$\beta$-衰变不对称参数$A_0$的能量依赖性,改进了对中子$\beta$-衰变中的Fierz干涉项$b_{n}$的限制。

方法】:作者通过在UCNA实验中测量极低温中子的$\beta$-衰变电子的能量和位置,计算得出$A_0$,进而根据$A_0$的能量依赖性确定$b_{n}$的值。

实验】:实验使用的数据集来自UCNA 2011-2013运行周期以及2010年的数据,通过加权平均拟合得到$b_{n}$的测量值为$0.066 \pm 0.041_{\text{stat}} \pm 0.024_{\text{syst}}$,对应90%置信水平下的限制为$-0.012 < b_{n} < 0.144$。