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基于深度学习的小麦分蘖期麦田杂草靶向喷雾控制

Deep learning-based target spraying control of weeds in wheat fields at tillering stage.

作者信息

Wang Haiying, Chen Yu, Zhang Shuo, Guo Peijie, Chen Yuxiang, Hu Guangrui, Ma Yuxuan

机构信息

College of Mechanical and Electronic Engineering, Northwest A&F University, Yangling, China.

School of Design, Xi'an Technological University, Xian, China.

出版信息

Front Plant Sci. 2025 Mar 27;16:1540722. doi: 10.3389/fpls.2025.1540722. eCollection 2025.

Abstract

In this study, a target spraying decision and hysteresis algorithm is designed in conjunction with deep learning, which is deployed on a testbed for validation. The overall scheme of the target spraying control system is first proposed. Then YOLOv5s is lightweighted and improved. Based on this, a target spraying decision and hysteresis algorithm is designed, so that the target spraying system can precisely control the solenoid valve and differentiate spraying according to the distribution of weeds in different areas, and at the same time, successfully solve the operation hysteresis problem between the hardware. Finally, the algorithm was deployed on a testbed and simulated weeds and simulated tillering wheat were selected for bench experiments. Experiments on a dataset of realistic scenarios show that the improved model reduces the GFLOPs (computational complexity) and size by 52.2% and 42.4%, respectively, with mAP and F1 of 91.4% and 85.3%, which is an improvement of 0.2% and 0.8%, respectively, compared to the original model. The results of bench experiments showed that the spraying rate under the speed intervals of 0.3-0.4m/s, 0.4-0.5m/s and 0.5-0.6m/s reached 99.8%, 98.2% and 95.7%, respectively. Therefore, the algorithm can provide excellent spraying accuracy performance for the target spraying system, thus laying a theoretical foundation for the practical application of target spraying.

摘要

在本研究中,结合深度学习设计了一种目标喷雾决策与滞后算法,并将其部署在试验台上进行验证。首先提出了目标喷雾控制系统的总体方案。然后对YOLOv5s进行轻量化和改进。在此基础上,设计了目标喷雾决策与滞后算法,使目标喷雾系统能够精确控制电磁阀,并根据不同区域杂草的分布进行差异化喷雾,同时成功解决了硬件之间的操作滞后问题。最后,将该算法部署在试验台上,选择模拟杂草和模拟分蘖小麦进行台架实验。在真实场景数据集上的实验表明,改进后的模型将GFLOPs(计算复杂度)和模型大小分别降低了52.2%和42.4%,mAP和F1分别为91.4%和85.3%,与原始模型相比分别提高了0.2%和0.8%。台架实验结果表明,在0.3 - 0.4m/s、0.4 - 0.5m/s和0.5 - 0.6m/s的速度区间下,喷雾率分别达到99.8%、98.2%和95.7%。因此,该算法可为目标喷雾系统提供优异的喷雾精度性能,从而为目标喷雾的实际应用奠定理论基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7175/11983634/3befedec0027/fpls-16-1540722-g001.jpg

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