Author:
Shaheed Nasir,Chen Xun,Wang Meng
Abstract
Abstract
The PandaX dark matter detection project searches for dark
matter particles using the technology of dual phase xenon time
projection chamber. The low expected rate of the signal events makes
the control of backgrounds crucial for the experiment success. In
addition to reducing external and internal backgrounds during the
construction and operation of the detector, special techniques are
employed to suppress the background events during the data analysis.
In this article, we demonstrate the use of deep neural networks
(DNNs) for suppressing the accidental backgrounds, as an alternative
to the boosted-decision-tree method used in previous analysis of
PandaX-II. A new data preparation approach is proposed to enhance
the stability of the machine learning algorithms to be run and
ultimately the sensitivity of the final data analysis.
Subject
Mathematical Physics,Instrumentation
Cited by
1 articles.
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