首页> 外文会议>Annual International Meeting of the American Society of Agricultural and Biological Engineers >Sensor Fusion for Roll and Pitch Estimation Improvement of an Agricultural Sprayer Vehicle
【24h】

Sensor Fusion for Roll and Pitch Estimation Improvement of an Agricultural Sprayer Vehicle

机译:用于农用喷雾器车辆的辊子和俯仰估计的传感器融合

获取原文

摘要

Sensor fusion technique has been commonly used for improving the navigation of autonomous agricultural vehicles by means of combining complimentary sensors mounted on such vehicles for the position and attitude angle measurements. In this research, sensor fusion via an Extended Kalman Filter (EKF) was used to integrate the attitude angle estimates from the Digital Elevation Models (DEMs) and Terrain Compensation Module (TCM) sensor to improve the roll and pitch angle measurements of a self propelledsprayer. The fusion algorithm was also developed to improve the three-dimensional positioning of the sprayer, in particular the elevation measurements of a GPS receiver mounted on the sprayer. Vehicle attitude and field elevation were measured at two speeds, 5.6 km/h and 9.6 km/h, using a set of onboard sensors including a real-time kinematic-differential GPS receiver (RTK-DGPS), a TCM sensor and an Inertial Measurement Unit (IMU). A second order auto-regressive (AR) model was developed to model the TCMroll and GPS-based pitch errors. The derived error states were incorporated into the EKF algorithm and the measurement noise covariance was estimated from the AR model, which limited the fine tuning of noise covariance to the process noise covariance only. The EKF estimations were compared with the IMU measurements to validate the performance of the developed fusion algorithm. For the slow speed test data, the mean and standard deviation of the errors of roll (Mean: -0.2244 deg, Std. Dev.:1.471 deg ) and pitch (Mean: 0.0597 deg, Std. Dev.; 0.6621 deg ) from the EKF estimates were reduced considerably compared to that of the errors of roll (Mean: 0.2157 deg, Std. Dev.: 2.4610 deg ) and pitch (Mean: 0.0473 deg, Std. Dev.: 1.3230 deg ) from DEM. Medium speed test data also showed considerable improvement in the attitude angles estimated using the developed EKF algorithm. The fusion algorithm for improving the elevation measurement of the GPS also showed promising results. Thus, the fusion algorithm waseffective in improving attitude and the navigational accuracy of the self-propelled agricultural sprayer, which in turn will also facilitate the automatic control of the implements that interact with the soil surface on undulated topographic surfaces.
机译:传感器融合技术通常用于通过组合安装在这些车辆上的互动传感器来改善自主农用车辆的导航,以用于位置和姿态角度测量。在本研究中,通过扩展卡尔曼滤波器(EKF)的传感器融合用于将姿态角度估计与数字高度模型(DEMS)和地形补偿模块(TCM)传感器集成,以改善自我PropelledSprayer的滚动和俯仰角度测量。还开发了融合算法以改善喷雾器的三维定位,特别是安装在喷雾器上的GPS接收器的高度测量。使用一组车载传感器,使用一组车载传感器,包括实时运动型GPS接收器(RTK-DGPS),TCM传感器和惯性测量,以两种速度,5.6 km / h和9.6 km / h测量车辆姿态和现场高度。单位(IMU)。开发了二阶自动回归(AR)模型以模拟TCMRoll和基于GPS的间距误差。派生错误状态被纳入EKF算法,并且从AR模型估计测量噪声协方差,这限制了噪声协方差仅对过程噪声协方差的微调。将EKF估计与IMU测量进行比较,以验证发达的融合算法的性能。对于低速测试数据,轧辊的误差的平均值和标准偏差(平均数:-0.2244度,标准Dev.:1.471度)和间距(平均数:0.0597度,标准偏差; 0.6621度)从与滚动误差相比,EKF估计值得大大减少(平均:0.2157°,STD。DEV。:2.4610°)和音高(平均:0.0473°,STD。DEM)。中速测试数据还显示了使用开发的EKF算法估计的姿态角度的相当大的改进。改善GPS高程测量的融合算法也显示出有前途的结果。因此,融合算法在提高姿态和自推进农药喷雾器的导航精度方面是无效的,这又会有助于自动控制与下波状地形表面相互作用的工具。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号