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Path Planning for Agricultural UAVs Based on Deep Reinforcement Learning and Energy Consumption Constraints

Haitao Fu, Li Zheng, Weijian Zhang, Yuxuan Feng, Li Zhu, Yun‐Ze Long, Jian Li

2025Agriculture9 citationsDOIOpen Access PDF

Abstract

Traditional pesticide application methods pose systemic threats to sustainable agriculture due to inefficient spraying practices and ecological contamination. Although agricultural drones demonstrate potential to address these challenges, they face critical limitations in energy-constrained complete coverage path planning for field operations. This study proposes a novel BiLG-D3QN algorithm by integrating deep reinforcement learning with Bi-LSTM and Bi-GRU architectures, specifically designed to optimize segmented coverage path planning under payload-dependent energy consumption constraints. The methodology encompasses four components: payload-energy consumption modeling, soybean cultivation area identification using Google Earth Engine-derived spatial distribution data, raster map construction, and enhanced segmented coverage path planning implementation. Through simulation experiments, the BiLG-D3QN algorithm demonstrated superior coverage efficiency, outperforming DDQN by 13.45%, D3QN by 12.27%, Dueling DQN by 14.62%, A-Star by 15.59%, and PPO by 22.15%. Additionally, the algorithm achieved an average redundancy rate of only 2.45%, which is significantly lower than that of DDQN (18.89%), D3QN (17.59%), Dueling DQN (17.59%), A-Star (21.54%), and PPO (25.12%). These results highlight the notable advantages of the BiLG-D3QN algorithm in addressing the challenges of pesticide spraying tasks in agricultural UAV applications.

Topics & Concepts

Reinforcement learningEnergy consumptionMotion planningAgriculturePath (computing)Consumption (sociology)Agricultural engineeringReinforcementComputer scienceEnergy (signal processing)Environmental scienceArtificial intelligenceEngineeringMathematicsBiologyEcologyStatisticsElectrical engineeringComputer networkRobotSociologyStructural engineeringSocial scienceRobotic Path Planning AlgorithmsControl and Dynamics of Mobile RobotsUAV Applications and Optimization
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