基于时变侧滑角补偿的无人艇自适应LOS制导方法

Research on adaptive LOS guidance with time-varying sideslip compensation under environmental disturbances

  • 摘要:
    目的 针对无人艇在复杂环境(如风速变化和初始位置偏差等不确定因素)下路径跟随精度和稳定性不足的问题,提出一种基于时变侧滑角补偿的自适应视线(TSC-ALOS)制导方法。
    方法 首先引入基于实时风速、风向测量数据的时变侧滑角补偿机制,改进形成 TSC-ALOS 算法,动态补偿环境扰动导致的侧滑角变化,优化无人艇期望航向输出。然后,设计基于比例微分(PD) 的航向控制器,将 TSC-ALOS 算法生成的期望航向转化为实际舵角控制,确保无人艇能快速、稳定跟踪目标航向,实现从高层导航策略到低层控制执行的有效衔接。最后,利用实海域数值仿真,在无风、固定风和随机风3种工况下,分别对TSC-ALOS、自适应LOS(ALOS)和传统LOS算法进行性能对比,重点分析横向跟踪偏差与航向稳定性等指标。
    结果 仿真结果显示,在无风环境中,TSC-ALOS与ALOS算法的路径跟随精度均优于传统LOS,尤其在路径转弯处表现突出;在风速分别为8.37 m/s和16.73 m/s的固定风与随机风工况下,TSC-ALOS显著降低了横向跟踪偏差,展现出更强的抗扰动能力。在初始位置偏差的情形下,TSC-ALOS相较于ALOS和LOS算法的平均横向跟踪偏差分别降低了24.6%和36.8%。
    结论 TSC-ALOS算法在多种复杂环境下均表现出卓越的制导性能,尤其在应对环境干扰和位置偏差方面优势明显,为无人艇自主航行系统的研发提供技术支持的同时,也为算法的进一步优化提供了方向。

     

    Abstract:
    Objective To address the problem of inadequate path-following accuracy and stability in unmanned surface vehicles (USVs) operating in complex environments (characterized by uncertainties such as fluctuating wind speeds and initial position deviations), a guidance method called time-varying sideslip compensated adaptive line-of-sight (TSC-ALOS) is proposed.
    Method First, a time-varying sideslip compensation mechanism is introduced based on real-time measurements of wind speed and direction, which forms the foundation of the improved TSC-ALOS algorithm. This mechanism dynamically compensates for sideslip angle variations induced by environmental disturbances, thereby optimizing the desired heading output of the USV. Subsequently, a proportional-derivative (PD)-based heading controller is designed. This controller translates the desired heading generated by the TSC-ALOS algorithm into actual rudder angle commands, enabling the USV to rapidly and stably track the target heading. This also establishes an effective connection between high-level navigation strategies and low-level control execution. Finally, numerical simulations emulating real marine environments are conducted. The performance of TSC-ALOS algorithm is compared with that of adaptive LOS (ALOS) and traditional LOS algorithms under three operational conditions: no wind, steady wind, and variable wind. Key metrics such as cross-track error and heading stability are specifically analyzed.
    Results Simulation results demonstrate that under no-wind conditions, both TSC-ALOS and ALOS algorithms achieve higher path-following accuracy than traditional LOS algorithm, particularly in handling turning segments. Under steady wind (wind speed: 8.37 m/s) and variable wind (wind speed: 16.73 m/s) conditions, TSC-ALOS significantly reduces the cross-track error, showcasing stronger resilience to environmental disturbances. In scenarios with initial position deviations, the average cross-track error of TSC-ALOS is reduced by 24.6% and 36.8% compared to ALOS and LOS algorithms, respectively.
    Conclusion The TSC-ALOS algorithm demonstrates superior guidance performance across various complex environments, with particularly notable advantages in addressing environmental disturbances and initial position deviations. It offers essential technical support for the development of autonomous navigation systems for USVs and provides insights into future research directions for algorithm optimization.

     

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