An online path planning approach of mobile robot based on particle filter

作者:Gao, Yang*; Sun, Shu-dong; Hu, Da-wei; Wang, Lai-jun
来源:Industrial Robot-The International Journal of Robotics Research and Application, 2013, 40(4): 305-319.
DOI:10.1108/01439911311320813

摘要

Purpose - Path planning in unknown or partly unknown environment is a quite complex task, partly because it is an evolving globally optimal path affected by the motion of the robot and the changing of environmental information. The purpose of this paper is to propose an online path planning approach for a mobile robot, which aims to provide a better adaptability to the motion of the robot and the changing of environmental information. Design/methodology/approach - This approach treats the globally optimal path as a changing state and estimates it online with two steps: prediction step, which predicts the globally optimal path based on the motion of the robot; and updating step, which uses the up-to-date environmental information to refine the prediction. Findings - Simulations and experiments show that this approach needs less time to reach the destination than some classical algorithms, provides speedy convergence and can adapt to unexpected obstacles or very limited prior environmental information. The better performances of this approach have been proved in both field and indoor environments. Originality/value - Compared with previous works, the paper's approach has three main contributions. First, it can reduce the time consumed in reaching the destination by adopting an online path planning strategy. Second, it can be applied in such environments as those with unexpected obstacles or with only limited prior environmental information. Third, both motion error of the robot and the changing of environmental information are considered, so that the global adaptability to them is improved.

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