Structure-property modeling of physicochemical properties of fractal trigonal triphenylenoids by means of novel degree-based topological indices

IF 1.8 4区 物理与天体物理 Q4 CHEMISTRY, PHYSICAL The European Physical Journal E Pub Date : 2024-06-18 DOI:10.1140/epje/s10189-024-00438-3
K. Jyothish, Roy Santiago, S. Govardhan, Sakander Hayat
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Abstract

Trigonal triphenylenoids (TTPs) are a fascinating class of organic molecules with unique structural and electronic properties. Their diverse applications, ranging from organic electronics to nonlinear optics, have spurred significant research interest in understanding their physicochemical behavior. Topological indices, mathematical descriptors derived from the molecular graph, offer valuable insights into the structural complexity and potential properties of TTPs. This work focuses on exploring the utility of degree-based topological indices in characterizing and predicting the properties of trigonal triphenylenoids. We systematically calculate various degree-based topological indices, for a diverse set of TTPs with varying substituents and topologies. The relationships between these indices and key physicochemical properties, such as HOMO-LUMO energy gap, thermodynamic stability, and reactivity are investigated using statistical and machine learning approaches. We identify significant correlations between specific degree-based indices and different properties, allowing for potential prediction of these properties based solely on the topological information.

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利用基于新度的拓扑指数建立分形三苯基烯类化合物理化性质的结构-性质模型。
三苯并菲(TTPs)是一类迷人的有机分子,具有独特的结构和电子特性。从有机电子学到非线性光学,它们的应用多种多样,激发了人们对了解其物理化学行为的浓厚兴趣。拓扑指数是从分子图中衍生出来的数学描述符,为了解 TTPs 的结构复杂性和潜在特性提供了宝贵的见解。这项研究的重点是探索基于度数的拓扑指数在表征和预测三苯基烯类化合物性质方面的实用性。我们针对一系列具有不同取代基和拓扑结构的三苯基烯烃,系统地计算了各种基于度数的拓扑指数。我们采用统计和机器学习方法研究了这些指数与 HOMO-LUMO 能隙、热力学稳定性和反应性等关键理化性质之间的关系。我们确定了特定度基指数与不同性质之间的重要相关性,从而可以仅根据拓扑信息对这些性质进行潜在预测。
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来源期刊
The European Physical Journal E
The European Physical Journal E CHEMISTRY, PHYSICAL-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
2.60
自引率
5.60%
发文量
92
审稿时长
3 months
期刊介绍: EPJ E publishes papers describing advances in the understanding of physical aspects of Soft, Liquid and Living Systems. Soft matter is a generic term for a large group of condensed, often heterogeneous systems -- often also called complex fluids -- that display a large response to weak external perturbations and that possess properties governed by slow internal dynamics. Flowing matter refers to all systems that can actually flow, from simple to multiphase liquids, from foams to granular matter. Living matter concerns the new physics that emerges from novel insights into the properties and behaviours of living systems. Furthermore, it aims at developing new concepts and quantitative approaches for the study of biological phenomena. Approaches from soft matter physics and statistical physics play a key role in this research. The journal includes reports of experimental, computational and theoretical studies and appeals to the broad interdisciplinary communities including physics, chemistry, biology, mathematics and materials science.
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