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Ground reaction force sensor fault detection and recovery method based on virtual force sensor for walking biped robots

机译:基于虚拟力传感器的地面反作用力传感器故障检测与恢复方法,用于走路又走路机器人

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This paper presents a novel method for ground force sensor faults detection and faulty signal reconstruction using Virtual force Sensor (VFS) for slow walking bipeds. The design structure of the VFS consists of two steps, the total ground reaction force (GRF) and its location estimation for each leg based on the center of mass (CoM) position, the leg kinematics, and the IMU readings is carried on in the first step. In the second step, the optimal estimation of the distributed reaction forces at the contact points in the feet sole of walking biped is carried on. For the optimal estimation, a constraint model is obtained for the distributed reaction forces at the contact points and the quadratic programming optimization method is used to solve for the GRF. The output of the VFS is used for fault detection and recovery. A faulty signal model is formed to detect the faults based on a threshold, and recover the signal using the VFS outputs. The sensor offset, drift, and frozen output faults are studied and tested. The proposed method detects and estimates the faults and recovers the faulty signal smoothly. The validity of the proposed estimation method was confirmed by simulations on 3D dynamics model of the humanoid robot SURALP while walking. The results are promising and prove themselves well in all of the studied fault cases.
机译:本文提出了一种用于慢走足动物地面力传感器故障检测和故障信号重建使用虚拟力传感器(VFS)的新方法。该VFS的设计结构由两个步骤组成,总地面反作用力(GRF),并基于质量(COM)位置时,腿运动学中心每条腿它的位置估计,并且所述IMU读数在上携带第一步。在第二步骤中,在行走的双足脚唯一的接触点分布的反作用力的最佳估计进行的。对于最优估计中,为分布式反作用力在接触点处获得的约束模型并且使用二次规划优化方法来求解GRF。该VFS的输出被用于故障检测和恢复。形成有故障的信号模型来检测基于阈值的故障,并恢复使用VFS输出信号。该传感器的偏移,漂移和进行了研究和测试冷冻输出故障。所提出的方法检测和估计故障和恢复顺利故障信号。通过仿真对人形机器人Suralp的3D动力学模型进行了拟议估计方法的有效性。该结果是令人鼓舞的,并证明自己以及所有的研究故障个案。

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