A bicycle can be balanced by stochastic optimal feedback control but only with accurate speed estimates
Eric Maris

TL;DR
This paper models bicycle balancing using stochastic optimal feedback control, highlighting that accurate speed estimates are crucial for effective balance, and demonstrates the model's robustness to certain inaccuracies through simulations.
Contribution
It introduces a neurobiological computational model of bicycle balance control based on stochastic OFC, emphasizing the importance of accurate speed estimates.
Findings
Model balances bicycle under realistic conditions
Robust to inaccuracies in sensorimotor noise parameters
Not robust to errors in speed estimates
Abstract
Balancing a bicycle is typical for the balance control humans perform as a part of a whole range of behaviors (walking, running, skating, skiing, etc.). This paper presents a general model of balance control and applies it to the balancing of a bicycle. Balance control has both a physics (mechanics) and a neurobiological component. The physics component pertains to the laws that govern the movements of the rider and his bicycle, and the neurobiological component pertains to the mechanisms via which the central nervous system (CNS) uses these laws for balance control. This paper presents a computational model of this neurobiological component, based on the theory of stochastic optimal feedback control (OFC). The central concept in this model is a computational system, implemented in the CNS, that controls a mechanical system outside the CNS. This computational system uses an internal…
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Taxonomy
TopicsControl Systems and Identification
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
