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Fuzzy Social Force Model for Robot Soccer Navigation: A Preliminary Report

机译:机器人足球导航模糊社会力模型:初报

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This paper proposes an adaptive control strategy to improve the performance of the Social Force Model (SFM) based mobile soccer robot navigation using the Fuzzy Inference System (FIS). The combination of FIS dan SFM is then called a Fuzzy Social Force Model (FSFM). In the FSFM strategy, FIS is used to adaptively adjust the parameters of SFM based on the stimulus from the external condition, namely the obstacle’s relative distance to the robot, d, and its direction, γ, so that the robot’s reactivity and responsiveness can be automatically adjusted. Currently, we adjust only one parameter, namely obstacle’s gain value, k. Obstacle’s gain value will control the amount of forces produced by the closest obstacle. We tested our proposed method using a realistic 3D simulator, called V-Rep, by utilizing an omnidirectional robot model from Festo, namely Robotino. Our experimental results show that our proposed FSFM can work well by always successfully finishing all of the trials with less collision with obstacles. The comparison results with the fixed-parameter method prove that our proposed method is better and very promising to be implemented for real robot applications.
机译:本文提出了一种自适应控制策略,可以使用模糊推理系统(FIS)来提高基于社会力量模型(SFM)的移动足球机器人导航的性能。然后将FIS DAN SFM的组合称为模糊社会力量模型(FSFM)。在FSFM策略中,FIS用于基于来自外部条件的刺激自行调整SFM的参数,即障碍物到机器人的相对距离,D和其方向,γ,使机器人的反应性和响应能力可以是自动调整。目前,我们只调整一个参数,即障碍物的增益值k。障碍的增益值将控制最接近障碍物产生的力量。我们通过利用Festo的全向机器人模型来测试我们的建议方法,使用来自Festo,即机器人的全向机器人模型。我们的实验结果表明,我们提出的FSFM可以通过始终成功完成所有与障碍碰撞的所有试验良好。与固定参数方法的比较结果证明了我们所提出的方法更好,并且非常有前途对于真实的机器人应用来实现。

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