Towards Uncovering Dark Matter Effects on Neutron Star Properties: A Machine Learning Approach

Particles Pub Date : 2024-01-15 DOI:10.3390/particles7010005
P. Thakur, Tuhin Malik, T. K. Jha
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Abstract

Over the last few years, researchers have become increasingly interested in understanding how dark matter affects neutron stars, helping them to better understand complex astrophysical phenomena. In this paper, we delve deeper into this problem by using advanced machine learning techniques to find potential connections between dark matter and various neutron star characteristics. We employ Random Forest classifiers to analyze neutron star (NS) properties and investigate whether these stars exhibit characteristics indicative of dark matter admixture. Our dataset includes 32,000 sequences of simulated NS properties, each described by mass, radius, and tidal deformability, inferred using recent observations and theoretical models. We explore a two-fluid model for the NS, incorporating separate equations of state for nucleonic and dark matter, with the latter considering a fermionic dark matter scenario. Our classifiers are trained and validated in a variety of feature sets, including the tidal deformability for various masses. The performance of these classifiers is rigorously assessed using confusion matrices, which reveal that NS with admixed dark matter can be identified with approximately 17% probability of misclassification as nuclear matter NS. In particular, we find that additional tidal deformability data do not significantly improve the precision of our predictions. This article also delves into the potential of specific NS properties as indicators of the presence of dark matter. Radius measurements, especially at extreme mass values, emerge as particularly promising features. The insights gained from our study are pivotal for guiding future observational strategies and enhancing the detection capabilities of dark matter in NS. This study is the first to show that the radii of neutron stars at 1.4 and 2.07 solar masses, measured using NICER data from pulsars PSR J0030+0451 and PSR J0740+6620, strongly suggest that the presence of dark matter in a neutron star is more likely than only hadronic composition.
揭示暗物质对中子星特性的影响:机器学习方法
在过去几年里,研究人员对了解暗物质如何影响中子星越来越感兴趣,这有助于他们更好地理解复杂的天体物理现象。在本文中,我们利用先进的机器学习技术深入研究这一问题,寻找暗物质与中子星各种特征之间的潜在联系。我们采用随机森林分类器来分析中子星(NS)的特性,并研究这些恒星是否表现出暗物质掺杂的特征。我们的数据集包括 32,000 个模拟中子星特性的序列,每个序列都由质量、半径和潮汐变形性描述,这些都是利用最新观测数据和理论模型推断出来的。我们探索了 NS 的双流体模型,其中包含核物质和暗物质的独立状态方程,后者考虑了费米子暗物质的情况。我们的分类器在各种特征集(包括不同质量的潮汐变形性)中进行了训练和验证。使用混淆矩阵对这些分类器的性能进行了严格评估,结果表明,将掺杂暗物质的 NS 误判为核物质 NS 的概率约为 17%。特别是,我们发现额外的潮汐变形性数据并不能显著提高我们预测的精确度。本文还深入探讨了特定 NS 特性作为暗物质存在指标的潜力。半径测量,尤其是在极端质量值下的半径测量,是特别有前途的特征。从我们的研究中获得的启示,对于指导未来的观测策略和提高探测 NS 中暗物质的能力至关重要。这项研究首次表明,利用脉冲星PSR J0030+0451和PSR J0740+6620的NICER数据测量的1.4和2.07太阳质量的中子星的半径强烈表明,中子星中存在暗物质的可能性比只有强子构成的可能性更大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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3.20
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