Automatic target spraying and field evaluation of unstructured orchard based on millimeter-wave radar

IF 6.3 Q1 AGRICULTURAL ENGINEERING
Xing Xu , Jianying Li , Dongying Shen , Jieli Duan , Zhou Yang , Yinlong Jiang
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Abstract

Pesticide precision spraying and efficient deposition is an important development direction of smart agriculture. Aiming at the problems of low pesticide spraying efficiency and severe pesticide loss in unstructured orchards in hilly and mountainous areas, this study proposes an automatic target spray control method. A tracked orchard sprayer based on millimeter-wave radar is designed to address these issues. The information transmission between millimeter wave radar, controller and sprayer are realized, and automatic target spray operation of "Walking-Sensing-Spraying" are realized. Based on the improved self-adaptive DBSCAN clustering algorithm, the improved self-adaptive Alpha_Shape algorithm (a surface reconstruction algorithm) and the least squares circle fitting, the three-dimensional reconstruction and parameter extraction of the target canopy were realized. The results showed that the average relative errors of plant height, canopy width and volume after correction were 1.51 %, 1.96 % and 3.24 %, respectively. The maximum absolute error is 9.59 cm, 5.96 cm and 0.22 m3. The millimeter-wave radar point cloud can effectively characterize the plant height, canopy width and volume information of the target canopy, and meet the detection accuracy requirements of target spraying. Field experiment results show that the spray coverage under t automatic target spray meets the needs of orchard pest control, the application of pesticides is reduced by 36.12 %, which achieves the purpose of increasing efficiency, reducing application and precise application. Meanwhile, it can also provide methodological reference for other research on automatic target operation and other fields of automatic target spray technology.

Abstract Image

基于毫米波雷达的非结构化果园自动目标喷洒及田间评价
农药精准喷洒和高效沉降是智慧农业的重要发展方向。针对丘陵山区非结构化果园农药喷洒效率低、农药流失严重的问题,提出了一种自动目标喷洒控制方法。一种基于毫米波雷达的履带式果园喷雾器被设计用于解决这些问题。实现了毫米波雷达、控制器和喷雾器之间的信息传输,实现了“行走-感知-喷雾器”的自动目标喷雾器操作。基于改进的自适应DBSCAN聚类算法、改进的自适应Alpha_Shape算法(一种曲面重建算法)和最小二乘圆拟合,实现了目标冠层的三维重建和参数提取。结果表明,校正后的株高、冠宽和体积的平均相对误差分别为1.51%、1.96%和3.24%。最大绝对误差分别为9.59 cm、5.96 cm和0.22 m3。毫米波雷达点云能够有效表征目标冠层的株高、冠层宽度和体积信息,满足目标喷洒的检测精度要求。田间试验结果表明,自动靶喷下的喷雾覆盖率满足果园病虫害防治的需要,农药用量减少36.12%,达到了增效、减量、精准施药的目的。同时也可以为其他自动目标操作和自动目标喷涂技术领域的研究提供方法论参考。
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