An Analysis of Fuzzy Graph Coloring Techniques and Their Applications
Keywords:
Fuzzy graph, chromatic number, graph coloring, α-cut, combinatorial optimizationAbstract
Fuzzy graph coloring is a generalization of classical graph coloring that incorporates the uncertainty and imprecision inherent in real-world systems. This paper presents a comprehensive analysis of fuzzy graph coloring techniques including vertex coloring, edge coloring, total coloring, and picture fuzzy graph coloring along with their practical applications in scheduling, traffic signal optimization, network design, and resource allocation. The primary objective of this study is to systematically evaluate major fuzzy graph coloring approaches through comparative performance analysis using data sourced from published experimental benchmarks. A descriptive-analytical methodology is adopted, utilizing established fuzzy graph datasets and chromatic number results available in the literature. The central hypothesis is that fuzzy graph coloring techniques outperform classical chromatic methods when the underlying relational data is inherently uncertain. Results confirm that fuzzy chromatic methods reduce color usage by 15–30% compared to classical approaches in uncertain scheduling environments. The discussion aligns these findings with current applications in COVID-19 regional analysis, phishing detection, and traffic management. The paper concludes that fuzzy graph coloring constitutes a powerful, flexible tool for combinatorial optimization under uncertainty.










