Exploration-based learning of a stabilizing controller predicts locomotor adaptation
Nidhi Seethapathi, Barrett C. Clark, Manoj Srinivasan
- 发表年份
- 2024
- 引用次数
- 33
- 访问权限
- 开放获取
摘要
Humans adapt their locomotion seamlessly in response to changes in the body or the environment. It is unclear how such adaptation improves performance measures like energy consumption or symmetry while avoiding falling. Here, we model locomotor adaptation as interactions between a stabilizing controller that reacts quickly to perturbations and a reinforcement learner that gradually improves the controller’s performance through local exploration and memory. This model predicts time-varying adaptation in many settings: walking on a split-belt treadmill (i.e. with both feet at different speeds), with asymmetric leg weights, or using exoskeletons — capturing learning and generalization phenomena in ten prior experiments and two model-guided experiments conducted here. The performance measure of energy minimization with a minor cost for asymmetry captures a broad range of phenomena and can act alongside other mechanisms such as reducing sensory prediction error. Such a model-based understanding of adaptation can guide rehabilitation and wearable robot control. People learn to walk better over time in novel situations, such as walking with new shoes. Here, the authors show that such adaptive behavior relies on a stabilizer that reacts quickly to keep the walker from falling, explaining how this stabilizer is gradually modified to improve performance.
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