| Literature DB >> 29186878 |
Wei Zhang1, Shilin Wei2, Yanbin Teng3, Jianku Zhang4, Xiufang Wang5, Zheping Yan6.
Abstract
In view of a dynamic obstacle environment with motion uncertainty, we present a dynamic collision avoidance method based on the collision risk assessment and improved velocity obstacle method. First, through the fusion optimization of forward-looking sonar data, the redundancy of the data is reduced and the position, size and velocity information of the obstacles are obtained, which can provide an accurate decision-making basis for next-step collision avoidance. Second, according to minimum meeting time and the minimum distance between the obstacle and unmanned underwater vehicle (UUV), this paper establishes the collision risk assessment model, and screens key obstacles to avoid collision. Finally, the optimization objective function is established based on the improved velocity obstacle method, and a UUV motion characteristic is used to calculate the reachable velocity sets. The optimal collision speed of UUV is searched in velocity space. The corresponding heading and speed commands are calculated, and outputted to the motion control module. The above is the complete dynamic obstacle avoidance process. The simulation results show that the proposed method can obtain a better collision avoidance effect in the dynamic environment, and has good adaptability to the unknown dynamic environment.Entities:
Keywords: dynamic collision avoidance; forward-looking sonar; unmanned underwater vehicle; velocity obstacle method
Year: 2017 PMID: 29186878 PMCID: PMC5750666 DOI: 10.3390/s17122742
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Collision cone and velocity obstacle: (a) The relationship between UUV and an obstacle in X-Y coordinate system; (b) The relationship between UUV and an obstacle in speed obstacle avoidance system.
Figure 2Process analysis of speed collision avoidance.
Figure 3The sketch map of DCPA and TCPA.
Figure 4The calculation of VR.
Figure 5Flow chart of the dynamic obstacle avoidance.
Figure 6The dynamic avoidance results.
Figure 7The dynamic avoidance results in different phase: (a) The first phase of dynamic avoidance; (b) The second phase of dynamic avoidance; (c) The third phase of dynamic avoidance; (d) The fourth phase of dynamic avoidance.
Figure 8The heading, velocity and the shortest distance.
Figure 9Expression sonar image by occupancy grid: (a) Sonar sensor and PC104 processor; (b) Sonar images of object; (c) the grid figure.
Figure 10The dynamic avoidance results.