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Continuous Control of an Underground Loader Using Deep Reinforcement Learning

Sofi Backman

2021MDPI (MDPI AG)47 citationsDOIOpen Access PDF

Abstract

The reinforcement learning control of an underground loader was investigated in a simulated environment by using a multi-agent deep neural network approach. At the start of each loading cycle, one agent selects the dig position from a depth camera image of a pile of fragmented rock. A second agent is responsible for continuous control of the vehicle, with the goal of filling the bucket at the selected loading point while avoiding collisions, getting stuck, or losing ground traction. This relies on motion and force sensors, as well as on a camera and lidar. Using a soft actor–critic algorithm, the agents learn policies for efficient bucket filling over many subsequent loading cycles, with a clear ability to adapt to the changing environment. The best results—on average, 75% of the max capacity—were obtained when including a penalty for energy usage in the reward.

Topics & Concepts

LoaderReinforcement learningPileComputer scienceArtificial neural networkTraction (geology)DrumReinforcementArtificial intelligencePoint (geometry)SimulationEngineeringStructural engineeringMechanical engineeringAlgorithmOperating systemGeometryMathematicsIterative Learning Control SystemsHydraulic and Pneumatic SystemsElevator Systems and Control
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