Affiliation:
1. Organization Department of Party Committee Civil Aviation Flight University of China Guanghan China
2. Civil Aviation Administration of China Academy of Flight Technology and Safety Civil Aviation Flight University of China Guanghan China
3. Institute of Electronic and Electrical Engineering Civil Aviation Flight University of China Guanghan China
4. Institute of Electrical Engineering Chinese Academy of Sciences Beijing China
5. School of Air Traffic Management Civil Aviation Flight University of China Guanghan China
Abstract
SummaryIn the rapidly developing field of unmanned aerial vehicle (UVA) technology, solving local optimal problems and achieving efficient smooth planning are crucial for improving the operational efficiency and safety of UVA systems. To address these needs, our study introduces a novel optimization algorithm, called IWPA‐APF, which aims to improve path planning efficiency. This algorithm is a fusion of the artificial potential field (APF) method and the improved wolf‐pack algorithm (IWPA) to solve common problems such as local optima and inefficient planning in the path planning process. The IWPA‐APF algorithm improves search efficiency and accuracy by incorporating an adaptive step size that significantly refines the key behaviors of the traditional IWPA, which is based on the wolf pack algorithm (WPA). In addition, the algorithm incorporates specific planning constraints, such as turn angles and tolerance limits, to minimize getting stuck in local optima. The process involves generating initial plans through multiple iterations of the IWPA, followed by further refinement using the method of integrating APF's repulsive force field. Simulation results show that the IWPA‐APF algorithm outperforms traditional methods, offering shorter flight distances and improved safety, thereby establishing itself as a robust solution for UAV path planning in obstacle‐rich environments.
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