一种基于VFOSELM-SRP的无人帆船路径预测方法

A VFOSELM-SRP-based Method for Path Prediction of Autonomous Sailboats

  • 摘要: 无人帆船作为一种新兴的海洋观测平台,能够执行长时间、大范围和高时空分辨率的海洋观测任务。然而,由于海洋环境复杂多变且无人帆船的工作时空跨度较大,其行驶轨迹难以通过固定模型进行准确预报。针对这一现象,本文提出了一种基于VFOSELM-SRP(基于可变遗忘因子的在线顺序极限学习机-流式随机补丁)模型的路径预测方法,旨在解决“海鸥号”自主导航无人帆船的路径预测难题。该方法利用VFOSELM对无人帆船的坐标点进行实时预测,并采用SRP对预测误差进行补偿。为验证算法的有效性,在中国南海开展了“海鸥号”的实船实验并进行了数据采集。采集到的数据以流式形式输入模型,并对模型的预测性能进行了评估。实验结果表明,与固定遗忘机制的在线顺序极限学习机相比,本文提出的算法将平均距离误差减小了77.4%,均方根误差减小了78.3%,预测性能得到了显著提升。此外,为全面评估本文VFOSELM-SRP模型的预测效果,将其与其他先进的轨迹预测算法在训练时间和预测精度2个方面进行了比较,结果显示VFOSELM-SRP模型在训练时间与精度两方面均具有显著优势。

     

    Abstract: Autonomous sailboats, as cutting-edge platforms for ocean observation, offer unparalleled capabilities for long-duration, large-scale, and high spatiotemporal resolution marine monitoring tasks. However, it is difficult to predict the trajectories of autonomous sailboats accurately by fixed models, due to the complex and variable nature of the marine environment, coupled with the extensive temporal and spatial scope of their operations. To address this challenge, a path prediction method based on VFOSELM-SRP (variable-forgetting-factor-based online sequential extreme learning machine) model is proposed, to tackle the trajectory prediction difficulties of the Seagull autonomous navigation sailboat. The proposed method leverages the VFOSELM for real-time prediction of the sailboat's coordinates, and utilizes SRP to compensate for prediction errors. To validate the effectiveness of this method, an experiment is conducted in the South China Sea using the Seagull, during which relevant data are collected. These data are fed into the model in a streaming form, and the prediction performance of the model is rigorously evaluated. Experimental results indicate that, compared to an online sequential extreme learning machine with a fixed forgetting mechanism, the proposed method reduces the mean distance error by 77.4% and the root mean square error by 78.3%, thereby significantly enhancing the prediction accuracy. Furthermore, it is compared with other advanced trajectory prediction algorithms in terms of training time and prediction accuracy, to comprehensively assess the prediction performance of the proposed VFOSELM-SRP model. The results indicate that the VFOSELM-SRP model demonstrates remarkable advantages in both training time and precision aspects.

     

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