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Towards Local Minima-Free Robotic Navigation: Model Predictive Path Integral Control Via Repulsive Potential Augmentation

Takahiro Fuke, Masafumi Endo, Kohei Honda, Genya Ishigami

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Abstract

Model-based control is a crucial component of robotic navigation. However, it often struggles with entrapment in local minima due to its inherent nature as a finite, myopic optimization procedure. Previous studies have addressed this issue but sacrificed either solution quality due to their reactive nature or computational efficiency in generating explicit paths for proactive guidance. To this end, we propose a motion planning method that proactively avoids local minima without any guidance from global paths. The key idea is repulsive poten- tial augmentation, integrating high-level directional information into the Model Predictive Path Integral control as a single repulsive term through an artificial potential field. We evaluate our method through theoretical analysis and simulations in environments with obstacles that induce local minima. Results show that our method guarantees the avoidance of local minima and outperforms existing methods in terms of global optimality without decreasing computational efficiency.

Index terms

Motion and Path Planning Control Theory and Technology Autonomous Vehicle Navigation