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Recursive identification of Hammerstein systems with application to electrically stimulated muscle.

Journal Contribution - Journal Article

Abstract: Modeling of electrically stimulated muscle is considered in this paper where a Hammerstein structure is selected to represent the isometric response. Motivated by the slowly time-varying properties of the muscle system, recursive identification of Hammerstein structures is investigated. A recursive algorithm is then developed to address limitations in the approaches currently available. The linear and nonlinear parameters are separated and estimated recursively in a parallel manner, with each updating algorithm using the most up-to-date estimation produced by the other algorithm at each time instant. Hence the procedure is termed the alternately recursive least square (ARLS) algorithm. When compared with the leading approach in this application area, ARLS exhibits superior performance in both numerical simulations and experimental tests with electrically stimulated muscle.
Journal: Control Eng Pract
ISSN: 0967-0661
Volume: 20
Pages: 386-396
Publication year:2012
Keywords:Recursive identification, Hammerstein system, Muscle model, Functional electrical stimulation
  • ORCID: /0000-0001-9976-9685/work/69212526
  • Scopus Id: 84857190107