果园割草机低成本高精度定位系统研究

Ke Fei, Chaodong Mai, Runpeng Jiang, Ye Zeng, Zhe Ma, Jiamin Cai, Jun Li
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引用次数: 0

摘要

为了调节果园生态系统的能量流动,维护果园环境,除草已成为果农的必要措施,而使用自动除草机有助于降低人工成本,提高果园的经济效益。然而,由于果园地理和空间环境的复杂性,特别是路面松散起伏、卫星信号受大树干扰等,降低了割草机定位系统的定位精度和稳定性,传感器的高成本也影响了智能割草机在这些应用领域的普及。针对上述问题,本文通过低成本的全球导航卫星系统(GNSS)、惯性测量单元(IMU)和里程计构建了一个定位系统,并利用基于误差状态的卡尔曼滤波算法实现了 GNSS/IMU 的组合定位,从而使惯性导航系统在 GNSS 信号较差时也能保持较高的定位精度。考虑到牵引式割草机里程计的侧滑和误差累积问题,利用 GNSS/IMU 组合定位信息优化里程计模型,提高导航和定位精度。为了减少 IMU 的测量误差和误差累积问题,本文利用割草机的非整体约束(NHC)抑制 IMU 测量误差的离散性,并结合割草机在该区域内导航运行的行进路径,构建周期性和非周期性零速度更新(ZUPT)策略,更新 IMU 数据,以提高定位精度和定位系统的稳定性。实验表明,构建的定位系统平均误差控制在0.15米以内,最大误差保持在0.3米左右,利用低成本传感器构建的定位系统可达到与差分全球导航卫星系统(DGNSS)相近的定位精度,有利于智能割草机在果园中的推广应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on a Low-Cost High-Precision Positioning System for Orchard Mowers
To regulate the energy flow in orchard ecosystems and maintain the environment, weeding has become a necessary measure for fruit farmers, and the use of automated mowers can help reduce labor costs and improve the economic efficiency of orchards. However, due to the complexity of the geographic and spatial environment of the orchard, in particular, the loose and undulating road surface, the interference of satellite signals by large trees, etc., which decreases the positioning accuracy and stability of the positioning system of the mower, and the high cost of the sensor also affect the popularization of intelligent mowers for these applications. To address the above problems, this paper constructs a positioning system through a low-cost global navigation satellite system (GNSS), inertial measurement unit (IMU), and odometry, and utilizes the Kalman filter algorithm based on the error state for a combined GNSS/IMU positioning so that the inertial navigation system can maintain a more accurate positioning when the GNSS signals are poor. Considering the side-slip and error accumulation problems of the odometry of the traction mower, the combined GNSS/IMU positioning information is used to optimize the odometry model and improve the navigation and positioning accuracy. To reduce the measurement error of the IMU and the problem of error accumulation, this paper utilizes the nonholonomic constraint (NHC) of a lawn mower to suppress the dispersion of IMU measurement errors and constructs periodic and nonperiodic zero-velocity updating (ZUPT) strategies in combination with the travel paths of lawn mower navigation operations in the region to update the IMU data to improve the positioning accuracy and stability of the positioning system. The experiments show that the average error of the constructed positioning system is controlled within 0.15 m, the maximum error is maintained at approximately 0.3 m, and the positioning system constructed by using low-cost sensors can achieve a positioning accuracy similar to that of the differential global navigation satellite system (DGNSS), which is beneficial for the promotion and application of intelligent mowers in orchards.
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