2025

TechRxiv

CEINMS-RT: an open-source framework for the continuous neuro-mechanical model-based control of wearable robots

Massimo Sartori, Mohamed I. Refai, Lucas Avanci Gaudio, Christopher P. Cop, Donatella Simonetti, Federica Damonte, David G. Lloyd, Claudio Pizzolato, Guillaume Durandau

Chair of Neuromuscular Robotics, University of Twente, Enschede, Netherlands

Keywords

bionic limbs, emg-driven modelling, exoskele tons, model-based control, musculoskeletal modelling, neuro mechanics, wearable robotics

Abstract

Human movement emerges from the interplay be tween nervous, muscular, and skeletal systems, interacting with the environment. Understanding these processes is crucial for developing wearable robotic technologies to restore movement following neuro-muscular injuries. Movement neuro-mechanics is often studied via computer models of the composite neuro musculoskeletal system, which use static, dynamic optimization or reinforcement learning to estimate muscle activation and resulting mechanical forces from kinematic and kinetic data. However, such approaches often fail at capturing the variability in multi-muscle neural recruitment and force generation across movements, anatomies, and conditions (i.e., ageing or injury). Electromyography (EMG)-driven musculoskeletal modeling uses measured EMGs and joint angles for simulating muscle-tendon level mechanics with no assumptions on how muscles are recruited by the central nervous system. EMG-driven mod els enabled task-agnostic, myoelectric model-based controllers for bionic limbs and exoskeletons. However, real-time neuro mechanical models still remain largely proprietary, hindering their widespread use, progress and standardization. Here, we introduce CEINMS-RT, a freely available, open-source, neuro mechanical modeling framework for the real-time myoelectric model-based control of wearable robots, including exoskeletons, exosuits, haptic devices, and bionic limbs. CEINMS-RT explicitly models person-specific movement neuro-mechanics and estimates EMG-dependent variables including muscle activation, muscle tendon force, and resulting joint dynamics. This represents an open-source alternative to end-to-end neural regressors, which do not estimate intermediate biomechanicasl variables that would be critical for roboust wearable robot control (e.g., joint stiffness, damping or underlying muscle-tendon impedance). Here, we introduce the CEINMS-RT framework and provide application results in the context of wearable robotic control.

Moticon's Summary

The study introduces CEINMS-RT, an open-source framework for real-time control of wearable robots using EMG-driven neuromusculoskeletal models. The framework estimates muscle activation, muscle-tendon force, and joint dynamics from EMG data, enabling the development of task-agnostic controllers for devices like exoskeletons and prostheses. While the document mentions the use of wearable sensors for data input, it does not specifically mention moticon sensor insoles.

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