1 research outputs found
A Self-adaptive SAC-PID Control Approach based on Reinforcement Learning for Mobile Robots
Proportional-integral-derivative (PID) control is the most widely used in
industrial control, robot control and other fields. However, traditional PID
control is not competent when the system cannot be accurately modeled and the
operating environment is variable in real time. To tackle these problems, we
propose a self-adaptive model-free SAC-PID control approach based on
reinforcement learning for automatic control of mobile robots. A new
hierarchical structure is developed, which includes the upper controller based
on soft actor-critic (SAC), one of the most competitive continuous control
algorithms, and the lower controller based on incremental PID controller. Soft
actor-critic receives the dynamic information of the mobile robot as input, and
simultaneously outputs the optimal parameters of incremental PID controllers to
compensate for the error between the path and the mobile robot in real time. In
addition, the combination of 24-neighborhood method and polynomial fitting is
developed to improve the adaptability of SAC-PID control method to complex
environments. The effectiveness of the SAC-PID control method is verified with
several different difficulty paths both on Gazebo and real mecanum mobile
robot. Futhermore, compared with fuzzy PID control, the SAC-PID method has
merits of strong robustness, generalization and real-time performance.Comment: 20 oages, 12 figure