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Real-Time Vessel Trajectory Data-Based Collison Risk Assessment in Crowded Inland Waterways

机译:内陆拥挤水道中基于实时船只轨迹数据的碰撞风险评估

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摘要

With the rapid development of maritime industries, the vessel traffic density has been gradually increased leading to increasing the potential risk of ship collision accidents in crowded inland waterways. It will bring negative effects on human life safety and enterprise economy. Therefore, it is of vital significance to study the risk of ship collision in practical applications. This paper proposes to quantitatively estimate the ship collision risk based on ship domain modeling and real-time vessel trajectory data. In particular, the trajectory data quality is improved using the cubic spline interpolation method. We assume that the ship collision risk is highly related to the cross areas of ship domains between different ships, which are computed via the Monte Carlo probabilistic algorithm. For the sake of better understanding, the kernel density estimation method is adopted to visually generate the ship collision risk in maps. Experimental results have illustrated the effectiveness of the proposed method in crowded inland waterways.
机译:随着海洋工业的快速发展,船舶交通密度逐渐增加,导致内陆拥挤航道发生船舶撞船事故的风险增加。它将对人类生命安全和企业经济带来负面影响。因此,在实际应用中研究船舶撞船风险具有至关重要的意义。本文提出了基于船舶领域建模和实时船舶轨迹数据来定量评估船舶碰撞风险的方法。特别地,使用三次样条插值方法改善了轨迹数据的质量。我们假设船舶碰撞风险与不同船舶之间的船舶域的跨区域高度相关,这是通过蒙特卡洛概率算法计算的。为了更好的理解,采用核密度估计方法在地图上直观生成船舶碰撞风险。实验结果证明了该方法在拥挤内陆水道中的有效性。

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