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A Discrete-Time Extended Kalman Filter Approach Tailored for Multibody Models: State-Input Estimation

机译:针对多体模型定制的离散时间扩展卡尔曼滤波器方法:状态输入估计

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摘要

Model-based force estimation is an emerging methodology in the mechatronic community given the possibility to exploit physically inspired high-fidelity models in tandem with ready-to-use cheap sensors. In this work, an inverse input load identification methodology is presented combining high-fidelity multibody models with a Kalman filter-based estimator and providing the means for an accurate and computationally efficient state-input estimation strategy. A particular challenge addressed in this work is the handling of the redundant state-description encountered in common multibody model descriptions. A novel linearization framework is proposed on the time-discretized equations in order to extract the required system model matrices for the Kalman filter. The presented framework is experimentally validated on a slider-crank mechanism. The nonlinear kinematics and dynamics are well represented through a rigid multibody model with lumped flexibilities to account for localized interaction phenomena among bodies. The proposed methodology is validated estimating the input torque delivered by a driver electro-motor together with the system states and comparing the experimental data with the estimated quantities. The results show the stability and accuracy of the estimation framework by only employing the angular motor velocity, measured by the motor encoder sensor and available in most of the commercial electro-motors.
机译:基于模型的力估计是机电统计社区的新出现方法,因为可以利用物理启发的高保真模型与现成的廉价传感器进行串联。在这项工作中,将高保真多体模型与基于卡尔曼滤波器的估计器组合并提供了一种逆输入负载识别方法,并为准确和计算有效的状态输入估计策略提供手段。在这项工作中解决的特定挑战是处理常见的多体模型描述中遇到的冗余状态描述。在时间离散方程上提出了一种新的线性化框架,以便提取卡尔曼滤波器所需的系统模型矩阵。本框架在滑块曲柄机构上进行实验验证。非线性运动学和动力学通过刚性多体模型具有很好的代表,具有集体灵活性,以考虑局部局部的局部相互作用现象。验证了所提出的方法,验证了驱动器电动电动机输送的输入扭矩以及系统状态,并将实验数据与估计数进行比较。结果表明,仅采用由电动机编码器传感器测量的角度电机速度并在大多数商业电动机中使用的估计框架的稳定性和准确性。

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