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Gseagen Code by KM3NeT: an Efficient Tool to Propagate Muons Simulated with CORSIKA

S. Aiello, A. Albert J. Zúñiga, N. Zywucka

arXiv · Experiment(2024)

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Abstract
The KM3NeT Collaboration has tackled a common challenge faced by the astroparticle physics community, namely adapting the experiment-specific simulation software to work with the CORSIKA air shower simulation output. The proposed solution is an extension of the open-source code gSeaGen, allowing for the transport of muons generated by CORSIKA to a detector of any size at an arbitrary depth. The gSeaGen code was not only extended in terms of functionalities but also underwent a thorough redesign of the muon propagation routine, resulting in a more accurate and efficient simulation. This paper presents the capabilities of the new gSeaGen code as well as prospects for further developments.
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要点】:本文介绍了KM3NeT合作团队开发的高效工具gSeaGen Code,它能将CORSIKA模拟生成的μ子传播至任意大小和深度的探测器,并提高了模拟的准确性和效率。

方法】:作者通过扩展开源代码gSeaGen的功能,并对μ子传播程序进行了彻底的重构。

实验】:文中展示了gSeaGen Code的能力,并展望了未来发展的可能性,但没有具体说明实验过程和数据集名称。