Automatic Path Planning for Spraying Drones Based on Deep Q-Learning

Ya-Yu Huang Ya-Yu Huang, Zi-Wen Li Ya-Yu Huang, Chun-Hao Yang Zi-Wen Li, Yueh-Min Huang Chun-Hao Yang
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引用次数: 0

Abstract

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.  
基于深度q -学习的喷涂无人机自动路径规划
由于技术的快速发展,农业劳动力的减少导致了劳动力短缺。农业机械化,如无人机喷洒农药,可以解决这个问题。然而,台湾山区果园的地形、文化和操作限制使农药喷洒具有挑战性。通过将强化学习与深度神经网络相结合,我们提出训练无人机避开障碍物并找到喷洒农药的最佳路径,从而降低操作难度、农药成本和电池消耗。我们尝试了不同的奖励机制、神经网络深度、飞行方向粒度和环境,以设计一个适合倾斜果园的计划。在解决复杂环境下的路径规划问题时,强化学习比传统算法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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