面向自主避碰测试的船舶追越场景泛化生成

Generalization generation of ship overtaking scenarios for autonomous collision avoidance testing

  • 摘要: 【目的】为测试智能船舶在高风险场景下的自主避碰性能,提出一种数据-模型驱动的船舶危险追越场景泛化生成方法。【方法】基于船舶AIS数据中的追越轨迹,提出了序列生成对抗网络与自注意力机制相融合的高风险追越轨迹生成方法。构建了以两船纵横向安全距离为基础的追越初始状态约束模型,以计算和调整危险追越场景下被测智能船与目标船的初始状态,并设计了自动生成危险追越场景的泛化算法。【结果】生成的500条高风险追越轨迹中,97.3%处于真实轨迹缓冲区内,与真实轨迹位置分布相符;目标追越船的航速概率密度于实际航速的分布一致,验证了方法在生成用于自主避碰测试的危险追越场景方面的有效性。【结论】方法能大规模生成追越场景中的目标船初始状态及其航行轨迹,为船舶自主避碰测试提供符合航海实际的危险追越场景。利用生成的场景进行测试,不仅可清晰界定自主避碰的安全性能边界,还能提升测试效率,加速智能船舶自主避碰技术的研发。

     

    Abstract: Objectives This paper introduces a novel data-driven approach for generating realistic hazardous overtaking scenarios, crucial for rigorously evaluating the autonomous collision avoidance capabilities of intelligent ships. Current methods for generating such scenarios often struggle to balance diversity, realism, and the representation of high-risk situations. Our method addresses this limitation by leveraging the wealth of information contained within Automatic Identification System (AIS) data to synthesize diverse and realistic overtaking encounters. Methods Specifically, we propose a hybrid model that integrates a sequence generative adversarial network (SeqGAN) with a self-attention mechanism. The SeqGAN learns the complex patterns and dynamics inherent in AIS-derived ship trajectories, enabling the generation of novel, yet plausible, overtaking maneuvers. The incorporation of a self-attention mechanism further enhances the model’s ability to capture long-range dependencies within the trajectories, resulting in more realistic and nuanced simulations. To ensure the generated scenarios accurately reflect high-risk situations, we have developed a constraint model that utilizes longitudinal and lateral safety distances between vessels to define realistic initial conditions. This model dynamically adjusts the initial positions and velocities of both the target vessel and the intelligent ship undergoing testing, guaranteeing that each generated scenario presents a genuine collision risk. Results The efficacy of our approach is validated through extensive simulations. We generated 500 high-risk overtaking scenarios, demonstrating a significant improvement in test scenario coverage. Impressively, 97.3% of these generated trajectories fall within a predefined buffer zone encompassing real-world trajectories, confirming the high fidelity of our model. Furthermore, the speed distributions of the generated target vessels closely match those observed in real-world AIS data, further corroborating the realism of our approach. Conclusions The enhanced realism and diversity of scenarios generated by this method significantly improve the efficiency of autonomous collision avoidance testing. This allows for a more precise definition of safety performance boundaries, accelerating the development and refinement of autonomous collision avoidance algorithms. Ultimately, this contribution facilitates the creation of safer and more reliable intelligent shipping capable of navigating the complexities of modern maritime environments.

     

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