“…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).
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