Model Predictive Control with Reference Learning for Soft Robotic Intracranial Pressure Waveform Modulation
By: Fabian Flürenbrock , Yanick Büchel , Johannes Köhler and more
Potential Business Impact:
Helps doctors study brain pressure for diseases.
This paper introduces a learning-based control framework for a soft robotic actuator system designed to modulate intracranial pressure (ICP) waveforms, which is essential for studying cerebrospinal fluid dynamics and pathological processes underlying neurological disorders. A two-layer framework is proposed to safely achieve a desired ICP waveform modulation. First, a model predictive controller (MPC) with a disturbance observer is used for offset-free tracking of the system's motor position reference trajectory under safety constraints. Second, to address the unknown nonlinear dependence of ICP on the motor position, we employ a Bayesian optimization (BO) algorithm used for online learning of a motor position reference trajectory that yields the desired ICP modulation. The framework is experimentally validated using a test bench with a brain phantom that replicates realistic ICP dynamics in vitro. Compared to a previously employed proportional-integral-derivative controller, the MPC reduces mean and maximum motor position reference tracking errors by 83 % and 73 %, respectively. In less than 20 iterations, the BO algorithm learns a motor position reference trajectory that yields an ICP waveform with the desired mean and amplitude.
Similar Papers
Model Predictive Control via Probabilistic Inference: A Tutorial
Robotics
Helps robots learn better and faster.
Deep Learning Model Predictive Control for Deep Brain Stimulation in Parkinson's Disease
Optimization and Control
Helps Parkinson's patients by fine-tuning brain jolts.
Reference-Free Sampling-Based Model Predictive Control
Robotics
Robots learn to walk, jump, and balance themselves.