Predictive simulation generates human adaptations during loaded and inclined walking.

Predictive simulation is a powerful approach for analyzing human locomotion. Unlike techniques that track experimental data, predictive simulations synthesize gaits by minimizing a high-level objective such as metabolic energy expenditure while satisfying task requirements like achieving a target ve...

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Main Authors: Tim W Dorn, Jack M Wang, Jennifer L Hicks, Scott L Delp
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0121407
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spelling doaj-543aeaa32a4f4790a777793d20fa7aa72021-03-04T11:41:09ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01104e012140710.1371/journal.pone.0121407Predictive simulation generates human adaptations during loaded and inclined walking.Tim W DornJack M WangJennifer L HicksScott L DelpPredictive simulation is a powerful approach for analyzing human locomotion. Unlike techniques that track experimental data, predictive simulations synthesize gaits by minimizing a high-level objective such as metabolic energy expenditure while satisfying task requirements like achieving a target velocity. The fidelity of predictive gait simulations has only been systematically evaluated for locomotion data on flat ground. In this study, we construct a predictive simulation framework based on energy minimization and use it to generate normal walking, along with walking with a range of carried loads and up a range of inclines. The simulation is muscle-driven and includes controllers based on muscle force and stretch reflexes and contact state of the legs. We demonstrate how human-like locomotor strategies emerge from adapting the model to a range of environmental changes. Our simulation dynamics not only show good agreement with experimental data for normal walking on flat ground (92% of joint angle trajectories and 78% of joint torque trajectories lie within 1 standard deviation of experimental data), but also reproduce many of the salient changes in joint angles, joint moments, muscle coordination, and metabolic energy expenditure observed in experimental studies of loaded and inclined walking.https://doi.org/10.1371/journal.pone.0121407
collection DOAJ
language English
format Article
sources DOAJ
author Tim W Dorn
Jack M Wang
Jennifer L Hicks
Scott L Delp
spellingShingle Tim W Dorn
Jack M Wang
Jennifer L Hicks
Scott L Delp
Predictive simulation generates human adaptations during loaded and inclined walking.
PLoS ONE
author_facet Tim W Dorn
Jack M Wang
Jennifer L Hicks
Scott L Delp
author_sort Tim W Dorn
title Predictive simulation generates human adaptations during loaded and inclined walking.
title_short Predictive simulation generates human adaptations during loaded and inclined walking.
title_full Predictive simulation generates human adaptations during loaded and inclined walking.
title_fullStr Predictive simulation generates human adaptations during loaded and inclined walking.
title_full_unstemmed Predictive simulation generates human adaptations during loaded and inclined walking.
title_sort predictive simulation generates human adaptations during loaded and inclined walking.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Predictive simulation is a powerful approach for analyzing human locomotion. Unlike techniques that track experimental data, predictive simulations synthesize gaits by minimizing a high-level objective such as metabolic energy expenditure while satisfying task requirements like achieving a target velocity. The fidelity of predictive gait simulations has only been systematically evaluated for locomotion data on flat ground. In this study, we construct a predictive simulation framework based on energy minimization and use it to generate normal walking, along with walking with a range of carried loads and up a range of inclines. The simulation is muscle-driven and includes controllers based on muscle force and stretch reflexes and contact state of the legs. We demonstrate how human-like locomotor strategies emerge from adapting the model to a range of environmental changes. Our simulation dynamics not only show good agreement with experimental data for normal walking on flat ground (92% of joint angle trajectories and 78% of joint torque trajectories lie within 1 standard deviation of experimental data), but also reproduce many of the salient changes in joint angles, joint moments, muscle coordination, and metabolic energy expenditure observed in experimental studies of loaded and inclined walking.
url https://doi.org/10.1371/journal.pone.0121407
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AT jackmwang predictivesimulationgenerateshumanadaptationsduringloadedandinclinedwalking
AT jenniferlhicks predictivesimulationgenerateshumanadaptationsduringloadedandinclinedwalking
AT scottldelp predictivesimulationgenerateshumanadaptationsduringloadedandinclinedwalking
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