Lu Xuliang, Wang Zhongbin, Tan Chao, Yan Haifeng, Si Lei, Wei Dong
School of Mechatronic Engineering, China University of Mining and Technology, Daxue Road, Xuzhou 221116, China.
Sensors (Basel). 2020 Sep 23;20(19):5459. doi: 10.3390/s20195459.
To measure the support attitude of hydraulic support, a support attitude sensing system composed of an inertial measurement unit with microelectromechanical system (MEMS) was designed in this study. Yaw angle estimation with magnetometers is disturbed by the perturbed magnetic field generated by coal rock structure and high-power equipment of shearer in automatic coal mining working face. Roll and pitch angles are estimated using the MEMS gyroscope and accelerometer, and the accuracy is not reliable with time. In order to eliminate the measurement error of the sensors and obtain the high-accuracy attitude estimation of the system, an unscented Kalman filter based on quaternion according to the characteristics of complementation of the magnetometer, accelerometer and gyroscope is applied to optimize the solution of sensor data. Then the gradient descent algorithm is used to optimize the key parameter of unscented Kalman filter, namely process noise covariance, to improve the accuracy of attitude calculation. Finally, an experiment and industrial application show that the average measurement error of yaw angle is less than 2° and that of pitch angle and roll angle is less than 1°, which proves the efficiency and feasibility of the proposed system and method.
为了测量液压支架的支护姿态,本研究设计了一种由微机电系统(MEMS)惯性测量单元组成的支架姿态传感系统。在自动化采煤工作面,磁力计的偏航角估计会受到煤岩结构和采煤机大功率设备产生的干扰磁场的影响。滚转角和俯仰角采用MEMS陀螺仪和加速度计进行估计,且随着时间推移精度不可靠。为了消除传感器的测量误差并获得系统高精度的姿态估计,根据磁力计、加速度计和陀螺仪互补的特性,应用基于四元数的无迹卡尔曼滤波器对传感器数据的解算进行优化。然后采用梯度下降算法对无迹卡尔曼滤波器的关键参数——过程噪声协方差进行优化,以提高姿态计算的精度。最后,通过实验和工业应用表明,偏航角的平均测量误差小于2°,俯仰角和滚转角的平均测量误差小于1°,证明了所提系统和方法的有效性和可行性。