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首页> 外文期刊>Journal of instrumentation: an IOP and SISSA journal >Machine learning accelerated likelihood-free event reconstruction in dark matter direct detection
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Machine learning accelerated likelihood-free event reconstruction in dark matter direct detection

机译:机器学习加速暗物质直接检测的无似然事件重建

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Reconstructing the position of an interaction for any dual-phase time projection chamber (TPC) with the best precision is key to directly detecting Dark Matter. Using the likelihood-free framework, a newalgorithm to reconstruct the 2-D (x; y) position and the size of the charge signal (e) of an interaction is presented. The algorithm uses the secondary scintillation light distribution (S2) obtained by simulating events using a waveform generator. To deal with the computational effort required by the likelihood-free approach, we employ the Bayesian Optimization for Likelihood- Free Inference (BOLFI) algorithm. Together with BOLFI, prior distributions for the parameters of interest (x, y, e) and highly informative discrepancy measures to performthe analyses are introduced. We evaluate the quality of the proposed algorithm by a comparison against the currently existing alternative methods using a large-scale simulation study. BOLFI provides a natural probabilistic uncertainty measure for the reconstruction and it improved the accuracy of the reconstruction over the next best algorithm by up to 15% when focusing on events at large radii (R > 30 cm, the outer 37% of the detector). In addition, BOLFI provides the smallest uncertainties among all the tested methods.
机译:重构与最佳精度的任何双相时间投影室(TPC)的相互作用的位置是直接检测暗物质的关键。使用无似的框架,提出了一种重建2-D(x; y)位置和相互作用电荷信号(e)的尺寸的较新轨道。该算法使用通过使用波形发生器模拟事件获得的辅助闪烁光分布(S2)。为了处理可能的可能性方法所需的计算工作,我们采用了贝叶斯优化的似然推理(Bolfi)算法。介绍了Bolfi,介绍了兴趣参数(X,Y,E)和高度信息丰富的执行分析的差异措施的分布。通过使用大规模仿真研究,通过对目前现有的替代方法进行比较来评估所提出的算法的质量。 BOLFI为重建提供了自然的概率不确定性措施,并且在将下一个最佳算法上重建的重建的准确性提高了15%,当在大半径(R> 30厘米,探测器的外部37%)的事件上聚焦时。此外,Bolfi提供了所有测试方法中最小的不确定性。

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