Liban, Roble IbrahimTurk, FurkanKeskin, Ulku SultanYildizel, Sadik Alper2025-12-242025-12-2420252053-1591https://doi.org/10.1088/2053-1591/ae1ed7https://hdl.handle.net/123456789/12727This study examines the optimization of natural zeolite-based ternary geopolymer mortars via an integrated Taguchi-Grey Relational Analysis-Genetic Algorithm (Taguchi-GRA-GA) framework to improve mechanical performance and durability. Natural zeolite (NZ) was partially substituted (up to 50 wt%) with fly ash (FA) and calcium hydroxide (CH) to enhance binder reactivity and matrix density. A Taguchi L9 orthogonal design was utilized to determine ideal activator values, subsequently employing GRA to amalgamate compressive strength findings at 7, 28, and 90 days into a singular performance index.The top-performing mixtures (F20C20, F25C25, and F30C30) were experimentally validated and utilized to develop regression-based predictive models for subsequent GA optimization. The genetic algorithm identified an optimal formulation (NZ = 214.6 g dm-3, FA = 116.4 g dm-3, CH = 116.4 g dm-3) that achieved a predicted compressive strength of 33.01 MPa, with experimental validation showing a deviation of less than 1.1%. This integrated method demonstrates that the combination of statistical design, data-driven modeling, and evolutionary optimization provides an efficient strategy for developing sustainable, high-performance binders. The resulting materials enhance strength and durability, allowing low-carbon, sustainable construction solutions aligned with global sustainability objectives.eninfo:eu-repo/semantics/openAccessGeopolymer ConcreteTaguchiOptimizationGAZeolite-Based GeopolymerCompressive Strength Optimization of Natural Zeolite-Based Geopolymers Via Taguchi Design, Grey Relational Analysis, and Genetic AlgorithmsArticle10.1088/2053-1591/ae1ed7