Saved in:
Bibliographic Details
Main Authors: Wei, Yunyue, Zhuang, Shanning, Zhuang, Vincent, Sui, Yanan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.08238
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913834393927680
author Wei, Yunyue
Zhuang, Shanning
Zhuang, Vincent
Sui, Yanan
author_facet Wei, Yunyue
Zhuang, Shanning
Zhuang, Vincent
Sui, Yanan
contents Controlling high-dimensional nonlinear systems, such as those found in biological and robotic applications, is challenging due to large state and action spaces. While deep reinforcement learning has achieved a number of successes in these domains, it is computationally intensive and time consuming, and therefore not suitable for solving large collections of tasks that require significant manual tuning. In this work, we introduce Model Predictive Control with Morphology-aware Proportional Control (MPC^2), a hierarchical model-based learning algorithm for zero-shot and near-real-time control of high-dimensional complex dynamical systems. MPC^2 uses a sampling-based model predictive controller for target posture planning, and enables robust control for high-dimensional tasks by incorporating a morphology-aware proportional controller for actuator coordination. The algorithm enables motion control of a high-dimensional human musculoskeletal model in a variety of motion tasks, such as standing, walking on different terrains, and imitating sports activities. The reward function of MPC^2 can be tuned via black-box optimization, drastically reducing the need for human-intensive reward engineering.
format Preprint
id arxiv_https___arxiv_org_abs_2505_08238
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Motion Control of High-Dimensional Musculoskeletal Systems with Hierarchical Model-Based Planning
Wei, Yunyue
Zhuang, Shanning
Zhuang, Vincent
Sui, Yanan
Robotics
Controlling high-dimensional nonlinear systems, such as those found in biological and robotic applications, is challenging due to large state and action spaces. While deep reinforcement learning has achieved a number of successes in these domains, it is computationally intensive and time consuming, and therefore not suitable for solving large collections of tasks that require significant manual tuning. In this work, we introduce Model Predictive Control with Morphology-aware Proportional Control (MPC^2), a hierarchical model-based learning algorithm for zero-shot and near-real-time control of high-dimensional complex dynamical systems. MPC^2 uses a sampling-based model predictive controller for target posture planning, and enables robust control for high-dimensional tasks by incorporating a morphology-aware proportional controller for actuator coordination. The algorithm enables motion control of a high-dimensional human musculoskeletal model in a variety of motion tasks, such as standing, walking on different terrains, and imitating sports activities. The reward function of MPC^2 can be tuned via black-box optimization, drastically reducing the need for human-intensive reward engineering.
title Motion Control of High-Dimensional Musculoskeletal Systems with Hierarchical Model-Based Planning
topic Robotics
url https://arxiv.org/abs/2505.08238