基于运动约束卡尔曼滤波的可穿戴折纸机器人传感器融合

Emiliano Quinones Yumbla, D. Li, Tolemy M. Nibi, Daniel M. Aukes, Wenlong Zhang
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摘要

可穿戴机器人的传感是一个持续的挑战,特别是考虑到最近软柔性机器人的趋势。最近,一种可穿戴的折纸外壳被设计出来,可以感知用户的躯干运动并提供行动辅助。外外壳的材料有助于轻量级设计,具有柔性关节,这是可穿戴设备的理想特性。普通的传感器并不理想,因为它们损害了这些设计特性。旋转编码器通常是刚性金属装置,增加了相当大的重量,并损害了关节的灵活性。IMU传感器受多变电磁场环境的影响,因此不适合可穿戴应用。霍尔效应传感器和陀螺仪被用作替代兼容传感器,这引入了他们自己的一组挑战:噪声测量和漂移由于传感器偏差。为了缓解这一问题,我们设计了陀螺仪和霍尔效应传感器融合的运动约束卡尔曼滤波器,目的是估计人的躯干和机器人的关节角度。为了补偿漂移,我们增加了与躯干角度相关的偏置状态。将机器人的正运动学作为状态约束纳入卡尔曼滤波,以解决躯干角度及其相关偏差的不可观测性。与单个传感器和标准卡尔曼滤波器相比,该算法提高了躯干角及其偏差的估计性能,并通过台架测试和人体用户实验证明了这一点。
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A Kinematically Constrained Kalman Filter for Sensor Fusion in a Wearable Origami Robot
Sensing for wearable robots is an ongoing challenge, especially given the recent trend of soft and com- pliant robots. Recently, a wearable origami exoshell has been designed to sense the user's torso motion and provide mobility assistance. The materials of the exoshell contribute to a lightweight design with compliant joints, which are ideal characteristics for a wearable device. Common sensors are not ideal for the exoshell as they compromise these design characteristics. Rotary encoders are often rigid metal devices that add considerable weight and compromise the flexibility of the joints. IMU sensors are affected by environments with variable electromagnetic fields, and therefore not ideal for wearable applications. Hall effect sensors and gyroscopes are utilized as alternative compatible sensors, which introduce their own set of challenges: noisy measurements and drift due to sensor bias. To mitigate this, we designed the Kinematically Constrained Kalman Filter for sensor fusion of gyroscopes and Hall effect sensors, with the goal of estimating the human's torso and robot joint angles. We augmented the states to consider bias related to the torso angle in order to compensate for drift. The forward kinematics of the robot are incorporated into the Kalman Filter as state constraints to address the unobservability of the torso angle and its related bias. The proposed algorithm improved the estimation performance of the torso angle and its bias, compared to the individual sensors and the standard Kalman Filter, as demonstrated through bench tests and experiments with a human user.
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