TY - JOUR
T1 - Automatic Path Planning for Spraying Drones Based on Deep Q-Learning
AU - Huang, Ya Yu
AU - Li, Zi Wen
AU - Yang, Chun Hao
AU - Huang, Yueh Min
N1 - Publisher Copyright:
© 2023 Taiwan Academic Network Management Committee. All rights reserved.
PY - 2023
Y1 - 2023
N2 - The reduction of the agricultural workforce due to the rapid development of technology has resulted in labor shortages. Agricultural mechanization, such as drone use for pesticide spraying, can solve this problem. However, the terrain, culture, and operational limitations in mountainous orchards in Taiwan make pesticide spraying challenging. By combining reinforcement learning with deep neural networks, we propose to train drones to avoid obstacles and find optimal paths for pesticide spraying that reduce operational difficulties, pesticide costs, and battery consumption. We experimented with different reward mechanisms, neural network depths, flight direction granularities, and environments to devise a plan suitable for sloping orchards. Reinforcement learning is more effective than traditional algorithms for solving path planning in complex environments.
AB - The reduction of the agricultural workforce due to the rapid development of technology has resulted in labor shortages. Agricultural mechanization, such as drone use for pesticide spraying, can solve this problem. However, the terrain, culture, and operational limitations in mountainous orchards in Taiwan make pesticide spraying challenging. By combining reinforcement learning with deep neural networks, we propose to train drones to avoid obstacles and find optimal paths for pesticide spraying that reduce operational difficulties, pesticide costs, and battery consumption. We experimented with different reward mechanisms, neural network depths, flight direction granularities, and environments to devise a plan suitable for sloping orchards. Reinforcement learning is more effective than traditional algorithms for solving path planning in complex environments.
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U2 - 10.53106/160792642023052403001
DO - 10.53106/160792642023052403001
M3 - Article
AN - SCOPUS:85163316162
SN - 1607-9264
VL - 24
SP - 565
EP - 575
JO - Journal of Internet Technology
JF - Journal of Internet Technology
IS - 3
ER -