Li Yinglei, Hu Qingping, Sun Shiyan, Ying Wenjian, Yan Xiaojia
Graduate School, Naval University of Engineering, 717 Jiefang Road, Qiaokou District, Wuhan 430030, China.
Sensors (Basel). 2025 Jul 11;25(14):4340. doi: 10.3390/s25144340.
The realization of high-precision target positioning requires the systematic suppression of nonlinear perturbations in the UAV optoelectronic system and the optimization of the cumulative deviation of coordinate transformations through error transfer modeling. This study proposes an error allocation method based on the improved raccoon optimization algorithm (KYCOA) to resolve the problem of degradation of positioning accuracy due to multi-source error coupling during UAV target positioning. Firstly, a multi-coordinate system transformation model is established to analyze the nonlinear transfer characteristics of the error, and the Taylor expansion is used to linearize the error transfer process and derive the synthetic error model under the geocentric coordinate system. Secondly, the KYCOA is proposed to optimize the error allocation by combining the good point set initialization strategy to enhance the population diversity, and the golden sine algorithm to improve the position updating mechanism in response to the defect of the traditional optimization algorithm, which easily falls into the local optimum. Simulation experiments show that the positioning error distance of the KYCOA is reduced by 66.75%, 41.89%, and 62.06% when compared with that of the original Coati Optimization Algorithm (COA), Grey Wolf Optimizer (GWO), and Whale Optimization Algorithm (WOA), respectively. In the real flight test, the target point localization error of the KYCOA is reduced by more than 40% on average when compared with that of other algorithms, which verifies the effectiveness of the proposed method in improving the target localization accuracy and robustness of UAVs.
高精度目标定位的实现需要系统地抑制无人机光电系统中的非线性扰动,并通过误差传递建模优化坐标变换的累积偏差。本研究提出一种基于改进浣熊优化算法(KYCOA)的误差分配方法,以解决无人机目标定位过程中因多源误差耦合导致的定位精度下降问题。首先,建立多坐标系变换模型来分析误差的非线性传递特性,并利用泰勒展开对误差传递过程进行线性化,推导地心坐标系下的综合误差模型。其次,提出KYCOA,通过结合良好点集初始化策略增强种群多样性以及黄金正弦算法改进位置更新机制,以应对传统优化算法易陷入局部最优的缺陷,从而优化误差分配。仿真实验表明,与原始浣熊优化算法(COA)、灰狼优化算法(GWO)和鲸鱼优化算法(WOA)相比,KYCOA的定位误差距离分别降低了66.75%、41.89%和62.06%。在实际飞行测试中,与其他算法相比,KYCOA的目标点定位误差平均降低了40%以上,验证了所提方法在提高无人机目标定位精度和鲁棒性方面的有效性。