Characterization of Human Balance through a Reinforcement Learning-based Muscle Controller

08/08/2023
by   Kübra Akbaş, et al.
0

Balance assessment during physical rehabilitation often relies on rubric-oriented battery tests to score a patient's physical capabilities, leading to subjectivity. While some objective balance assessments exist, they are often limited to tracking the center of pressure (COP), which does not fully capture the whole-body postural stability. This study explores the use of the center of mass (COM) state space and presents a promising avenue for monitoring the balance capabilities in humans. We employ a musculoskeletal model integrated with a balance controller, trained through reinforcement learning (RL), to investigate balancing capabilities. The RL framework consists of two interconnected neural networks governing balance recovery and muscle coordination respectively, trained using Proximal Policy Optimization (PPO) with reference state initialization, early termination, and multiple training strategies. By exploring recovery from random initial COM states (position and velocity) space for a trained controller, we obtain the final BR enclosing successful balance recovery trajectories. Comparing the BRs with analytical postural stability limits from a linear inverted pendulum model, we observe a similar trend in successful COM states but more limited ranges in the recoverable areas. We further investigate the effect of muscle weakness and neural excitation delay on the BRs, revealing reduced balancing capability in different regions. Overall, our approach of learning muscular balance controllers presents a promising new method for establishing balance recovery limits and objectively assessing balance capability in bipedal systems, particularly in humans.

READ FULL TEXT

page 13

page 16

page 20

page 22

research
08/22/2022

Learning Ball-balancing Robot Through Deep Reinforcement Learning

The ball-balancing robot (ballbot) is a good platform to test the effect...
research
06/28/2021

Instantaneous Capture Input for Balancing the Variable Height Inverted Pendulum

Balancing is a fundamental need for legged robots due to their unstable ...
research
07/23/2022

Epersist: A Self Balancing Robot Using PID Controller And Deep Reinforcement Learning

A two-wheeled self-balancing robot is an example of an inverse pendulum ...
research
08/13/2023

Impact-Aware Multi-Contact Balance Criteria

Intentionally applying impacts while maintaining balance is challenging ...
research
07/02/2020

Line Walking and Balancing for Legged Robots with Point Feet

The ability of legged systems to traverse highly-constrained environment...
research
11/16/2020

An Efficient Paradigm for Feasibility Guarantees in Legged Locomotion

Developing feasible body trajectories for legged systems on arbitrary te...
research
05/19/2021

Improved Exploring Starts by Kernel Density Estimation-Based State-Space Coverage Acceleration in Reinforcement Learning

Reinforcement learning (RL) is currently a popular research topic in con...

Please sign up or login with your details

Forgot password? Click here to reset