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A Strong Tracking Mixed-Degree Cubature Kalman Filter Method and Its Application in a Quadruped Robot

机译:强大的跟踪混合度Cubature Kalman滤波方法及其在四足机器人中的应用

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摘要

The motion state of a quadruped robot in operation changes constantly. Due to the drift caused by the accumulative error, the function of the inertial measurement unit (IMU) will be limited. Even though multi-sensor fusion technology is adopted, the quadruped robot will lose its ability to respond to state changes after a while because the gain tends to be constant. To solve this problem, this paper proposes a strong tracking mixed-degree cubature Kalman filter (STMCKF) method. According to system characteristics of the quadruped robot, this method makes fusion estimation of forward kinematics and IMU track. The combination mode of traditional strong tracking cubature Kalman filter (TSTCKF) and strong tracking is improved through demonstration. A new method for calculating fading factor matrix is proposed, which reduces sampling times from three to one, saving significantly calculation time. At the same time, the state estimation accuracy is improved from the third-degree accuracy of Taylor series expansion to fifth-degree accuracy. The proposed algorithm can automatically switch the working mode according to real-time supervision of the motion state and greatly improve the state estimation performance of quadruped robot system, exhibiting strong robustness and excellent real-time performance. Finally, a comparative study of STMCKF and the extended Kalman filter (EKF) that is commonly used in quadruped robot system is carried out. Results show that the method of STMCKF has high estimation accuracy and reliable ability to cope with sudden changes, without significantly increasing the calculation time, indicating the correctness of the algorithm and its great application value in quadruped robot system.
机译:在操作中的四弦机器人的运动状态不断变化。由于由累积误差引起的漂移,惯性测量单元(IMU)的功能将受到限制。尽管采用了多传感器融合技术,但是四足机器人将失去其响应状态变化的能力,因为增益趋于恒定。为了解决这个问题,本文提出了一种强大的跟踪混合度Cubature Kalman滤波器(STMCKF)方法。根据四足机器人的系统特征,该方法使前向运动学和IMU轨道的融合估算。通过演示改善了传统强追踪Cuberature Kalman滤波器(TSTCKF)和强跟踪的组合模式。提出了一种计算衰落因子矩阵的新方法,从而减少了三到一个的采样时间,节省了显着的计算时间。同时,状态估计精度从泰勒级膨胀到第五层精度的三维精度提高。该算法可以根据运动状态的实时监控自动切换工作模式,并大大提高了四足机器人系统的状态估计性能,表现出强大的鲁棒性和优异的实时性能。最后,执行了常用于四弦机器人系统的STMCKF和扩展卡尔曼滤波器(EKF)的比较研究。结果表明,STMCKF的方法具有高估计精度和可靠的应对突然变化的能力,而不是显着增加计算时间,表明算法的正确性及其在四足机器人系统中的应用价值。

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