Differential Evolution
Differential evolution (DE) is a population-based metaheuristic optimization algorithm used to find near-optimal solutions for complex problems where gradient information is unavailable. Current research focuses on enhancing DE's performance through adaptive parameter control, hybridization with other algorithms (e.g., genetic algorithms, gradient-based methods), and the development of novel mutation and crossover strategies tailored to specific problem types (e.g., constrained optimization, high-dimensional spaces, mixed-integer problems). These advancements are driving improvements in diverse fields, including robotics, computational neuroscience, and machine learning, by enabling efficient optimization of complex models and systems.
Papers
Vertical GaN Diode BV Maximization through Rapid TCAD Simulation and ML-enabled Surrogate Model
Albert Lu, Jordan Marshall, Yifan Wang, Ming Xiao, Yuhao Zhang, Hiu Yung Wong
Large-scale matrix optimization based multi microgrid topology design with a constrained differential evolution algorithm
Wenhua Li, Shengjun Huang, Tao Zhang, Rui Wang, Ling Wang