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首页> 外文期刊>Advances in high energy physics >Azimuthal Anisotropy in High-Energy Nuclear Collision: An Approach Based on Complex Network Analysis
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Azimuthal Anisotropy in High-Energy Nuclear Collision: An Approach Based on Complex Network Analysis

机译:高能量核碰撞中方位角各向异性:一种基于复杂网络分析的方法

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Recently, a complex network based method of visibility graph has been applied to confirmthe scale-freeness and presence of fractal properties in the process of multiplicity fluctuation. Analysis of data obtained from experiments on hadron-nucleus and nucleus-nucleus interactions results in values of Power of Scale-Freeness of Visibility Graph (PSVG) parameter extracted from the visibility graphs. Here, the relativistic nucleus-nucleus interaction data have been analysed to detect azimuthal anisotropy by extending the visibility graph method and extracting the average clustering coefficient, one of the important topological parameters, from the graph. Azimuthal-distributions corresponding to different pseudorapidity regions around the central pseudorapidity value are analysed utilising the parameter. Here we attempt to correlate the conventional physical significance of this coefficient with respect to complex network systems, with some basic notions of particle production phenomenology, like clustering and correlation. Earlier methods for detecting anisotropy in azimuthal distribution were mostly based on the analysis of statistical fluctuation. In this work, we have attempted to find deterministic information on the anisotropy in azimuthal distribution by means of precise determination of topological parameter from a complex network perspective.
机译:最近,已经应用了一种复杂的基于网络的可视性方法方法,以确认在多重波动过程中的尺度培养和分形特性的存在。从高核和核 - 核相互作用的实验中获得的数据分析导致从可见性图表中提取的可见性曲线(PSVG)参数的尺度范围的功率值。这里,已经分析了相互作用的核 - 核相互作用数据以通过延长可见性图方法并从图中提取一个重要的拓扑参数之一来检测方位角各向异性。利用该参数分析与中央伪型值周围的不同伪型区域对应的方位角分布。在这里,我们试图将该系数的传统物理意义与复杂网络系统相关联,具有一些基本概念的粒子生产现象学,如聚类和相关性。早期用于检测方位调分布各向异性的方法主要基于统计波动的分析。在这项工作中,我们试图通过精确确定复杂网络透视的精确确定拓扑参数的方位调分布中的各向异性确定性信息。

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