TY - EJOU AU - Tan, Weicong AU - Wu, Qiwu AU - Jiang, Lingzhi AU - Tong, Tao AU - Su, Yunchen TI - Dung Beetle Optimization Algorithm Based on Bounded Reflection Optimization and Multi-Strategy Fusion for Multi-UAV Trajectory Planning T2 - Computers, Materials \& Continua PY - 2025 VL - 85 IS - 2 SN - 1546-2226 AB - This study introduces a novel algorithm known as the dung beetle optimization algorithm based on bounded reflection optimization and multi-strategy fusion (BFDBO), which is designed to tackle the complexities associated with multi-UAV collaborative trajectory planning in intricate battlefield environments. Initially, a collaborative planning cost function for the multi-UAV system is formulated, thereby converting the trajectory planning challenge into an optimization problem. Building on the foundational dung beetle optimization (DBO) algorithm, BFDBO incorporates three significant innovations: a boundary reflection mechanism, an adaptive mixed exploration strategy, and a dynamic multi-scale mutation strategy. These enhancements are intended to optimize the equilibrium between local exploration and global exploitation, facilitating the discovery of globally optimal trajectories that minimize the cost function. Numerical simulations utilizing the CEC2022 benchmark function indicate that all three enhancements of BFDBO positively influence its performance, resulting in accelerated convergence and improved optimization accuracy relative to leading optimization algorithms. In two battlefield scenarios of varying complexities, BFDBO achieved a minimum of a 39% reduction in total trajectory planning costs when compared to DBO and three other high-performance variants, while also demonstrating superior average runtime. This evidence underscores the effectiveness and applicability of BFDBO in practical, real-world contexts. KW - Dung beetle optimizer algorithm; swarm intelligence; multi-UAV; trajectory planning; complex environments DO - 10.32604/cmc.2025.068781