Por favor, use este identificador para citar o enlazar este ítem: https://repositorio.uca.edu.ar/handle/123456789/21935
Título: Low-Cost, High-Accuracy Reactivity Modeling: integrating Genetic Algorithms and Machine Learning with Multilevel DFT Calculations
Autor: Pérez, José A. 
Zanardi, María Marta 
Sarotti, Ariel Marcelo 
Palabras clave: MACHINE LEARNINGGENETICAALGORITMOSQUIMICA COMPUTACIONAL
Fecha de publicación: 2025
Editorial: American Chemical Society
Resumen: Accurate prediction of Gibbs activation energies (ΔG‡) for Diels–Alder (DA) reactions remains a critical challenge in computational chemistry, as conventional density functional theory (DFT) methods often fail to consistently achieve chemical accuracy (<1 kcal mol–1). In this work, we demonstrate that no single method reliably meets this threshold through a systematic evaluation of 720 DFT approaches across 24 DA reactions. Here, we introduce a proof-of-concept framework that integrates a genetic algorithm and machine learning (GA-ML) to intelligently select cost-effective, multilevel DFT combinations. Our optimized GA1 model identified four low-cost DFT combinations that yield ΔG‡ predictions with a mean absolute error (MAE) of 0.4 kcal mol–1 in both training and external validation sets, matching the accuracy of high-level CCSD(T) calculations at a fraction of the computational cost. To further enhance adaptability, we introduce Dynamic Generalization-Driven Transfer Learning (DGDTL), a novel method that adaptively optimizes linear coefficients, ensuring robust predictions for both known and unseen reactions. The integration of GA-ML and DGDTL establishes a scalable, high-fidelity paradigm for reactivity prediction, with potential applications in catalysis, drug design, and materials science.
URI: https://repositorio.uca.edu.ar/handle/123456789/21935
ISSN: 1549-9596
DOI: 10.1021/acs.jcim.5c02048
Derechos: Atribución-NoComercial-CompartirIgual 4.0 Internacional
Fuente: Journal of Chemical Information and Modeling, 2025, 65 (22), 12422-12436
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