4.7 Article

Obstacle avoidance method based on double DQN for agricultural robots

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ELSEVIER SCI LTD
DOI: 10.1016/j.compag.2022.107546

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Obstacle avoidance; Reinforcement learning; Automatic navigation; Agricultural robot

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This paper introduces a high-performance obstacle avoidance control method based on reinforcement learning for agricultural vehicles. A neural network model is constructed and embedded in the Double DQN architecture to decide the output action according to the input state. Field experiments show that the proposed controller has advantages over traditional methods in terms of space utilization and time efficiency.
In a complex farm environment, the lack of an intelligent obstacle avoidance function is a major barrier to the large-scale adoption of automatic navigation technology for agricultural vehicles. This paper introduces a highperformance obstacle avoidance control method based on reinforcement learning. The process of obstacle avoidance is modeled to define the state and action spaces in the Double Deep Q-Network (DQN) architecture, and a reward function is designed to evaluate and guide the model training. A neural network model is constructed and embedded in the Double DQN architecture to decide the output action according to the input state. To train models efficiently, three encounter situations (Confronted, Cross, and Overtaking) are established in a Multi-Joint dynamics with Contact (MuJoCo) simulation environment in which validation tests verify the stability and performance of the proposed obstacle avoidance controller. In field experiments, the averages of the shortest distance, trajectory length, and time of obstacle avoidance are 2.37 m, 0.53 m, and 2.7 s, respectively, which indicate the availability of the proposed controller. The proposed Double DQN-based controller shows a significant advantage over the traditional Risk Index-based control method in terms of both space utilization and time efficiency, and its performance facilitates automatic navigation in complex farmland.

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