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基于激光雷達導航的玉米噴藥機器人設計與試驗
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國家自然科學基金項目(52172396)


Design and Experiment of Corn-spraying Robot with LiDAR Navigation
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    摘要:

    針對現有玉米噴藥機器人存在轉向響應慢,、作物行檢測方法以及跟蹤控制器穩(wěn)定性差等問題,設計一種基于激光雷達導航系統(tǒng)的四輪驅動,、差速轉向式線控底盤噴藥機器人,。首先設計機器人整機結構,根據工作原理對關鍵部件進行設計,。提出一種基于3D激光雷達的作物行檢測方法,,經過點云預處理和地面點云濾波得到機器人前方的作物點云,根據點云在橫向坐標軸的分布數量劃分不同的作物行,,并利用分段幾何中心擬合作物行中心線,。同時,設計一個雙輸入單輸出的模糊控制器,,以作物行中心線獲取的偏航角和橫向偏差為輸入,,利用49條模糊規(guī)則和Mamdani法進行模糊推理,再通過重心法將輸出量解模糊為線控底盤兩側車輪輪速差,。在苗期玉米田進行機器人行駛性能試驗和導航性能試驗,。試驗結果表明,機器人能夠爬越坡度20°以下斜坡,,差速原地轉向360°時幾何中心位置平均偏差為7.66 cm,,具有足夠的驅動力和較好的轉向靈活性;激光雷達檢測三葉期和小喇叭口期的玉米作物行時,平均誤差角分別為0.93°和0.85°,,平均檢測時間為0.031 s,,據此確定的定位信息具有較高的精度且滿足實時性;通過定位信息和模糊控制器跟蹤作物行時,機器人平均跟蹤誤差為0.061 m,,標準差為0.038 m,,能夠滿足苗期玉米田的自動導航需求。

    Abstract:

    Aiming at the problems of slow steering response, crop row detection methods, and poor stability of tracking controllers in existing sprayers, a four-wheel-drive, differential-steering spraying robot was designed based on a light detection and ranging (LiDAR) navigation system. The whole structure of the robot was firstly designed, and the key components were designed according to the working principle. Then a crop row detection method based on 3D LiDAR was proposed. This method involved obtaining the crop point cloud in front of the robot through point cloud preprocessing and ground point cloud filtering. Subsequently, different crop rows were identified by analyzing the distribution of point cloud data across the transverse coordinate axes. The centerlines of the crop rows were then determined by fitting segmented geometric centers. Meanwhile, a dual-input single-output fuzzy controller was designed to use the yaw angle and lateral deviation obtained from the centerlines of the crop rows as inputs. The controller performed fuzzy inference by using 49 fuzzy rules and the Mamdani method. The outputs were then defuzzified into the differential wheel speeds for the wheels on both sides of the wire-controlled chassis by using the center-of-gravity method. Finally, the robot driving performance test and navigation performance test were conducted in the seeding cornfield. The results showed that the robot can successfully climb slopes over 20°, and the average deviation of the geometric center was 7.66 cm when performing a turn at differential speed. This indicated that the robot possessed adequate driving force and excellent steering flexibility. When LiDAR detected corn crop rows at the three-leaf stage and the small trumpet stage, the average error angles were 0.93° and 0.85°, respectively, with an average running time of 0.031 s. Utilizing this localization information, the robot achieved an average tracking error of 0.061 m with a standard deviation of 0.038 m when navigating the crop rows through the fuzzy control algorithm. This level of accuracy can meet the requirements for automatic navigation in corn fields during the seedling stage.

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班超,遲瑞娟,黃修煉,董乃昔,蘇童,孫曉光.基于激光雷達導航的玉米噴藥機器人設計與試驗[J].農業(yè)機械學報,2024,55(s2):200-209. BAN Chao, CHI Ruijuan, HUANG Xiulian, DONG Naixi, SU Tong, SUN Xiaoguang. Design and Experiment of Corn-spraying Robot with LiDAR Navigation[J]. Transactions of the Chinese Society for Agricultural Machinery,2024,55(s2):200-209.

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  • 收稿日期:2024-07-19
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  • 在線發(fā)布日期: 2024-12-10
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