Areas of Expertise
Optimization, Operations Research, and Artificial Intelligence
Description
My research focuses on the design and development of advanced optimization methodologies at the intersection of Operations Research and Artificial Intelligence. Particular emphasis is placed on hybrid approaches combining exact optimization methods, metaheuristics, evolutionary computation, machine learning, and data-driven decision-making techniques. Research interests include AI-assisted optimization, learning-enhanced metaheuristics, surrogate-assisted optimization, reinforcement learning for optimization, graph-based learning for combinatorial problems, and interactive multi-objective optimization. These methods are applied to address complex real-world challenges in logistics, transportation, energy systems, healthcare, scheduling, and industrial decision support.
Publications
-
An Optimization Framework for EV Charging: A Hybrid Genetic Algorithm Enhanced by Reinforcement Learning (2026) Conference paperROADEF 2026
-
Enhanced Exact Methods for Optimizing Energy Delivery in Preemptive Electric Vehicle Charging Scheduling Problems (2025) ArticleMathematical and computational applications
-
Advanced Techniques for Maximizing Demand Satisfaction in EV Charging Scheduling (2025) Conference paperGECCO '25 Companion: Genetic and Evolutionary Computation Conference Companion
-
Advanced models and a hybrid method for electric vehicle charging scheduling with diverse charger characteristics (2025) ArticleRAIRO - Operations Research
-
Advanced models and a hybrid method for electric vehicle charging scheduling with diverse charger characteristics (2025) ArticleRAIRO - Operations Research