G. Galgóczi, Gábor Albrecht, G. Hamar, Dezső Varga
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引用次数: 0
摘要
本文介绍了一种机器学习算法(深度神经网络),用于抑制主要针对火山的 muography 应用中的背景。此外,它还可应用于大型地质结构,如蛇绿岩。本文所研究的探测器系统是通过在 8 个探测器中应用多达 5 层铅吸收层来抑制低能量背景的。这个复杂的系统是用基于蒙特卡洛粒子模拟的方法模拟的,为机器学习算法提供了教学样本。结果表明,所开发的深度神经网络能够比经典跟踪算法更好地抑制低能量背景,因此,这种额外的机器学习抑制效果显著提高。火山的目标区域位于大约一千米的岩石之下,只有百分之一的μ介子有足够的能量穿透岩石。机器学习算法利用了吸收器的方向变化以及μ介子能量与探测器沉积能量之间的相关性。识别高能μ介子也是一项挑战:经典算法会丢弃相当一部分 1 TeV μ介子,这些μ介子会因轫致辐射而产生多次撞击,而机器学习算法很容易适应这种模式。
Background suppression for volcano muography with machine learning
A machine learning algorithm (deep neural network) is presented to suppress background in muography applications mainly targeting volcanoes. Additionally it could be applied for large scale geological structures, such as ophiolites. The detector system investigated in this article is designed to suppress the low energy background by applying up to 5 lead absorber layers arranged among 8 detectors. This complicated system was simulated with a Monte-Carlo based particle simulation to provide teaching sample for the machine learning algorithm. It is shown that the developed deep neural network is capable of suppressing the low energy background considerably better than the classical tracking algorithm, therefore this additional suppression with machine learning yields in a significant improvement. The target areas of volcanoes lie beneath approximately a kilometer of rock that only fraction of a percent of muons have enough energy to penetrate. The machine learning algorithm takes advantage of the directional changes in the absorbers, as well as the correlation between the muons energy and the deposited energy in the detectors. Identifying very high energy muons is also a challenge: the classical algorithm discards considerable fraction of 1 TeV muons which create multiple hits due to brehmstrahlung, while the machine learning algorithm easily adapts to accept such patterns.