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Autotuning PID control using Actor-Critic Deep Reinforcement Learning

2022-11-29 11:15:50
Vivien van Veldhuizen

Abstract

This work is an exploratory research concerned with determining in what way reinforcement learning can be used to predict optimal PID parameters for a robot designed for apple harvest. To study this, an algorithm called Advantage Actor Critic (A2C) is implemented on a simulated robot arm. The simulation primarily relies on the ROS framework. Experiments for tuning one actuator at a time and two actuators a a time are run, which both show that the model is able to predict PID gains that perform better than the set baseline. In addition, it is studied if the model is able to predict PID parameters based on where an apple is located. Initial tests show that the model is indeed able to adapt its predictions to apple locations, making it an adaptive controller.

Abstract (translated)

URL

https://arxiv.org/abs/2212.00013

PDF

https://arxiv.org/pdf/2212.00013.pdf


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