基于位置的内河船舶快速精确轨迹预测通用模型

Navreet S. Thind, Justus Hering, D. Söffker
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引用次数: 0

摘要

船舶运动仿真以及基于模型的船舶精确轨迹预测都需要精确的船舶动力学特性模型。预测船舶轨迹行为的能力将在未来船舶自主导航预测其他船只行为的情况下变得相关。模型或参数的定义可以通过第一性原理或使用实验建模方法来实现,从而得到时不变或变模型。现有的水动力建模方法基于数学方法,使用质量、水动力、风速、龙骨下深度、载荷参数等参数。因此,确定动态血管的模型是一项复杂的任务,因为模型是特定于血管的。对于自主船舶或辅助船舶的避碰,尤其需要对遇到其他船舶的轨迹进行预测。由于缺少所需的信息/测量,不可能在线使用遇到船只的复杂流体动力学模型。即使现有的深度学习方法提供了更好的预测,但在强动态变化的情况下仍然不足以避免碰撞,因为考虑的输入序列很长。由于输入序列较长,模型不能适应较强的动态变化。在这项工作中,开发了一种简单的基于参数的方法来预测使用测量位置变量的最后一秒的预期行为。其想法是全局识别船舶的模型参数,该参数在情况下保持不变,另外还有两个参数用于局部适应,这些参数用于适应每次更新的输入序列。通常情况下,舵角、风速和水流等参数会影响船只的性能。引入的方法采用滑动窗口方法,在识别全局系统后,根据船舶的最后80次测量结果识别局部值。对180s的预测视界进行了轨迹预测(假设没有额外的舵基机动)。为了确认新方法的稳健性,我们使用了一艘德国内陆研究船对不同场景和航行条件(包括“满载”和“空载”航行情况)的真实AIS/ gps测量结果。此外,对于不同采样率的位置数据信息,给出了附加结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and Precise Generic Model for Position-Based Trajectory Prediction of Inland Waterway Vessels
Vessel motion simulation as well as model-based accurate trajectory prediction of vessels require accurate models with respect to related dynamic properties. The ability to predict vessel’s trajectory behaviors will become relevant in the case of future autonomous navigation of vessels to predict the behavior of others. The definition of models or parameters can be realized via first principles or by using experimental modeling methods leading to a time invariant or variant model. Existing hydrodynamical modeling approaches are based on mathematical approaches, which use parameters like mass, hydrodynamic forces, wind velocity, depth under the keel, loading parameters, etc. So, determining a dynamic vessel’s model is a complex task, since the model is vessel-specific. For collision avoidance of autonomous or assisted vessels, the trajectory prediction of encountering other vessels is especially required. It is not possible to use complex hydrodynamical models of encountering vessels online due to missing required information/measurements. Even existing deep learning approaches provide better predictions, but are still insufficient for collision avoidance in the case of strong dynamical changes, since the considered input sequences are long. Due to long input sequences, the model does not adapt to strong dynamical changes. In this work, a simple parameter-based approach is developed to predict the intended behavior using the last seconds of the measured position variables. The idea is to globally identify the model parameters of the vessel, which remains constant for the situation, and additionally two parameters for local adaptation, which adapt at every updated input sequence. Typically parameters like rudder angle, wind velocities, and water current affect the behavior of vessels. The introduced approach works with a sliding window approach for which, after identification of the global system, local values are identified based on the last 80 measurements of the vessels. A trajectory prediction (assuming no additional rudder-based maneuvering) is realized for the prediction horizon of 180 s. To confirm the robustness of the new approach, real AIS/GPS-based measurements from a German research inland vessel for different scenarios and sailing conditions including ‘loaded’ and ‘empty’ sailing cases are used. Furthermore, additional results are shown for position data information of different sample rates.
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