Computational models to synthesize human walking

Lei Ren, Howard David, Kenney Laurence

    Research output: Contribution to journalArticlepeer-review

    Abstract

    The synthesis of human walking is of great interest in biomechanics and biomimetic engineering due to its predictive capabilities and potential applications in clinical biomechanics, rehabilitation engineering and biomimetic robotics. In this paper, the various methods that have been used to synthesize human walking are reviewed from an engineering viewpoint. This involves a wide spectrum of approaches, from simple passive walking theories to large-scale computational models integrating the nervous, muscular and skeletal systems. These methods are roughly categorized under four headings: models inspired by the concept of a CPG (Central Pattern Generator), methods based on the principles of control engineering, predictive gait simulation using optimisation, and models inspired by passive walking theory. The shortcomings and advantages of these methods are examined, and future directions are discussed in the context of providing insights into the neural control objectives driving gait and improving the stability of the predicted gaits. Future advancements are likely to be motivated by improved understanding of neural control strategies and the subtle complexities of the musculoskeletal system during human locomotion. It is only a matter of time before predictive gait models become a practical and valuable tool in clinical diagnosis, rehabilitation engineering and robotics. © 2006 Jilin University.
    Original languageEnglish
    Pages (from-to)127-138
    JournalJournal of Bionic Engineering
    Volume3
    DOIs
    Publication statusPublished - Sept 2006

    Keywords

    • bipedal walking
    • human walking
    • predictive gait modelling

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