Trym Tengesdal, S. Rothmund, Erlend A. Basso, Henrik Schmidt-Didlaukies, Tor Johansen
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引用次数: 1
Abstract
In this article, full-scale experiments with a dynamic obstacle intention-aware Collision Avoidance System (CAS) are presented. The CAS consists of the Probabilistic Scenario-Based Model Predictive Control (PSB-MPC) for trajectory planning, dynamic obstacle avoidance, and antigrounding, with a Dynamic Bayesian Network (DBN) used for inferring obstacle intentions online. The novelty of this article lies in the utilization of intention information in deliberate collision-free planning. By inferring multiple different intention states on how and if nearby obstacles adhere to the COLREGS, the PSB-MPC can plan COLREGS-compliant avoidance maneuvers when possible, taking into account its awareness of the situation. The experiments put emphasis on hazardous situations where this intention information is both useful and necessary in order to avoid high collision risk. To the authors’ knowledge, the work is the first field experimental validation of such a probabilistic intention-aware CAS with consideration of multiple intention states. The experimental results demonstrate the validity of the proposed CAS scheme, with adherence to the traffic rules (COLREGS) 7, 8 and 13–17 in a diverse set of situations. The strengths and weaknesses of the proposed CAS are also discussed, giving insights that can be useful for researchers and practitioners in the field. Here, challenges related to detecting obstacle maneuvers and making the intention inference more robust to noise should be addressed as future work to make the scheme better suited for general usage on ships engaged in real traffic.
本文介绍了动态障碍物意图感知避撞系统(CAS)的全尺寸实验。该系统包括用于轨迹规划、动态避障和反绕行的基于概率场景的模型预测控制(PSB-MPC),以及用于在线推断障碍物意图的动态贝叶斯网络(DBN)。本文的新颖之处在于利用意图信息进行有意的无碰撞规划。通过推断附近障碍物如何以及是否遵守 COLREGS 的多种不同意图状态,PSB-MPC 可以在可能的情况下,根据其对情况的认识,规划符合 COLREGS 的避让机动。实验的重点是危险情况,在这种情况下,为了避免高碰撞风险,这种意图信息既有用又必要。据作者所知,这项工作是首次对这种考虑到多种意图状态的概率意图感知 CAS 进行实地实验验证。实验结果表明,所提出的 CAS 方案在各种情况下都能遵守交通规则(COLREGS)7、8 和 13-17。实验还讨论了所提出的 CAS 方案的优缺点,为该领域的研究人员和从业人员提供了有用的见解。在此,与检测障碍物机动和使意图推断对噪声更稳健相关的挑战应作为未来工作加以解决,以使该方案更适合在从事实际交通的船舶上普遍使用。