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Humans plan for the near future to walk economically on uneven terrain

2022-07-16 20:27:23
Osman Darici, Arthur D. Kuo
     

Abstract

Humans experience small fluctuations in their gait when walking on uneven terrain. The fluctuations deviate from the steady, energy-minimizing pattern for level walking, and have no obvious organization. But humans often look ahead when they walk, and could potentially plan anticipatory fluctuations for the terrain. Such planning is only sensible if it serves some an objective purpose, such as maintaining constant speed or reducing energy expenditure, that is also attainable within finite planning capacity. Here we show that humans do plan and perform optimal control strategies on uneven terrain. Rather than maintain constant speed, they make purposeful, anticipatory speed adjustments that are consistent with minimizing energy expenditure. A simple optimal control model predicts economical speed fluctuations that agree well with experiments with humans (N = 12) walking on seven different terrain profiles (correlated with model r = 0.517 std. 0.109, P < 0.05 all terrains). Participants made repeatable speed fluctuations starting about seven to eight steps ahead of each terrain feature (up to 7.5 cm height difference each step, up to 16 consecutive features). They need not plan farther ahead, because each leg collision with ground dissipates energy, preventing momentum from persisting indefinitely. About seven to eight steps of continuous look-ahead and working memory thus suffice to practically optimize for any length of terrain. Humans reason about walking in the near future to plan complex optimal control sequences.

Abstract (translated)

URL

https://arxiv.org/abs/2207.11224

PDF

https://arxiv.org/pdf/2207.11224.pdf


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