RISE controller tuning and system identification through machine learning for human lower limb rehabilitation via neuromuscular electrical stimulation

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TitreRISE controller tuning and system identification through machine learning for human lower limb rehabilitation via neuromuscular electrical stimulation
Type de publicationJournal Article
Year of Publication2021
AuteursArcolezi HH, Nunes WRBM, de Araujo RA, Cerna S, Sanches MAA, Teixeira MCM, de Carvalho AA
JournalENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE
Volume102
Pagination104294
Date PublishedJUN
Type of ArticleArticle
ISSN0952-1976
Mots-clésKnee joint, Machine learning, neuromuscular electrical stimulation, RISE controller, Spinal cord injury
Résumé

Neuromuscular electrical stimulation (NMES) has been effectively applied in many rehabilitation treatments of individuals with spinal cord injury (SCI). In this context, we introduce a novel, robust, and intelligent control-based methodology to closed-loop NMES systems. Our approach utilizes a robust control law to guarantee system stability and machine learning tools to optimize both the controller parameters and system identification. Regarding the latter, we introduce the use of past rehabilitation data to build more realistic data-driven identified models. Furthermore, we apply the proposed methodology for the rehabilitation of lower limbs using a control technique named the robust integral of the sign of the error (RISE), an offline improved genetic algorithm optimizer, and neural network models. Although in the literature, the RISE controller presented good results on healthy subjects, without any fine-tuning method, a trial and error approach would quickly lead to muscle fatigue for individuals with SCI. In this paper, for the first time, the RISE controller is evaluated with two paraplegic subjects in one stimulation session and with seven healthy individuals in at least two and at most five sessions. The results showed that the proposed approach provided a better control performance than empirical tuning, which can avoid premature fatigue on NMES-based clinical procedures.

DOI10.1016/j.engappai.2021.104294