2022
DOI: 10.3390/robotics11010020
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Model-Based Mid-Level Regulation for Assist-As-Needed Hierarchical Control of Wearable Robots: A Computational Study of Human-Robot Adaptation

Abstract: The closed-loop human–robot system requires developing an effective robotic controller that considers models of both the human and the robot, as well as human adaptation to the robot. This paper develops a mid-level controller providing assist-as-needed (AAN) policies in a hierarchical control setting using two novel methods: model-based and fuzzy logic rule. The goal of AAN is to provide the required extra torque because of the robot’s dynamics and external load compared to the human limb free movement. The h… Show more

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Cited by 17 publications
(11 citation statements)
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“…Here, we are using a machine-learning model from Nasr et al (Nasr et al, 2021a) to estimate the user intent from the IMU and sEMG sensors. The mid-level unit transforms the high-level estimation and prediction into mode-specific reference trajectories, or the desired wrench, using the biomechatronic system’s dynamic equations. In the past, this level of control was achieved using a conventional control method: finite state machines/prerecorded motion (Long et al, 2017), master–slave (Lee et al, 2012), proportional (Tang et al, 2014), CTM (Nasr et al, 2022b), fuzzy-logic (Han et al, 2021; Nasr et al, 2022b), impedance control (Brahmi et al, 2021), haptic/admittance control (Menga and Ghirardi, 2019), or adaptive control (Nasiri et al, 2021). Recently, positive results for the mid-level controller have been demonstrated using the AAN-CTM approach, which augments rather than replaces muscular activity (Nasr et al, 2022b).…”
Section: Hierarchical Controllersmentioning
confidence: 99%
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“…Here, we are using a machine-learning model from Nasr et al (Nasr et al, 2021a) to estimate the user intent from the IMU and sEMG sensors. The mid-level unit transforms the high-level estimation and prediction into mode-specific reference trajectories, or the desired wrench, using the biomechatronic system’s dynamic equations. In the past, this level of control was achieved using a conventional control method: finite state machines/prerecorded motion (Long et al, 2017), master–slave (Lee et al, 2012), proportional (Tang et al, 2014), CTM (Nasr et al, 2022b), fuzzy-logic (Han et al, 2021; Nasr et al, 2022b), impedance control (Brahmi et al, 2021), haptic/admittance control (Menga and Ghirardi, 2019), or adaptive control (Nasiri et al, 2021). Recently, positive results for the mid-level controller have been demonstrated using the AAN-CTM approach, which augments rather than replaces muscular activity (Nasr et al, 2022b).…”
Section: Hierarchical Controllersmentioning
confidence: 99%
“…In the past, this level of control was achieved using a conventional control method: finite state machines/prerecorded motion (Long et al, 2017 ), master–slave (Lee et al, 2012 ), proportional (Tang et al, 2014 ), CTM (Nasr et al, 2022b ), fuzzy-logic (Han et al, 2021 ; Nasr et al, 2022b ), impedance control (Brahmi et al, 2021 ), haptic/admittance control (Menga and Ghirardi, 2019 ), or adaptive control (Nasiri et al, 2021 ). Recently, positive results for the mid-level controller have been demonstrated using the AAN-CTM approach, which augments rather than replaces muscular activity (Nasr et al, 2022b ). The low-level agent computes the error between the measured states (from the kinematic and kinetic sensors) and the desired device states (from the mid-level controller) and uses common control algorithms like proportional-integral-derivative (PID) control.…”
Section: Hierarchical Controllersmentioning
confidence: 99%
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