Uncertainty-aware automated assessment of the arm impedance with upper-limb exoskeletons

Front Neurorobot. 2023 Aug 24:17:1167604. doi: 10.3389/fnbot.2023.1167604. eCollection 2023.

Abstract

Providing high degree of personalization to a specific need of each patient is invaluable to improve the utility of robot-driven neurorehabilitation. For the desired customization of treatment strategies, precise and reliable estimation of the patient's state becomes important, as it can be used to continuously monitor the patient during training and to document the rehabilitation progress. Wearable robotics have emerged as a valuable tool for this quantitative assessment as the actuation and sensing are performed on the joint level. However, upper-limb exoskeletons introduce various sources of uncertainty, which primarily result from the complex interaction dynamics at the physical interface between the patient and the robotic device. These sources of uncertainty must be considered to ensure the correctness of estimation results when performing the clinical assessment of the patient state. In this work, we analyze these sources of uncertainty and quantify their influence on the estimation of the human arm impedance. We argue that this mitigates the risk of relying on overconfident estimates and promotes more precise computational approaches in robot-based neurorehabilitation.

Keywords: human-exoskeleton interaction; neuromechanical state estimation; reliable automated assessment; sensitivity analysis; uncertainty quantification; uncertainty-aware simulation.

Grants and funding

This work was supported by the Horizon 2020 research and innovation program of the European Union under grant agreement no. 871767 of the project ReHyb.