10 research outputs found

    Uncertainty aware path planning and collision avoidance for marine vehicles

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    Motion planning, already a challenging problem for any autonomous agent, becomes even more difficult for marine craft due to under-actuation, nonlinear and unmodelled dynamics, uncertainties and noise in sensor data, uncertain obstacles, wind and waves. We consider a marinecraft with unmodelled dynamics, subject to environmental disturbances and in the presence of moving obstacles with unknown dynamics. We utilise a Luenberger observer structure to estimate the marine craft and obstacles dynamics in real-time using sensor data. We furthermore bound the estimation error and subsequently use it explicitly in the determination of the guidance control laws. The modular nature of this algorithm enables combination with existing state-of-the-art path planning methods. The effectiveness of our proposed approach is illustrated and compared using Imazu benchmark scenarios and several existing planning methods, specifically, velocity obstacle method, geometric line-of-sight (LOS), time-critical LOS based guidance methods (finite-time),assuming unmodelled dynamics of the marine and obstacles craft, while being exposed to wind effects.<br/
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