ArXiv TLDR

Evolving the Complete Muscle: Efficient Morphology-Control Co-design for Musculoskeletal Locomotion

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2604.12855

Lidong Sun, Wentao Zhao, Ye Wang, Huaping Liu, Fuchun Sun

cs.RO

TLDR

This paper introduces a co-design framework for musculoskeletal robots, simultaneously evolving muscle strength, velocity, and stiffness for improved locomotion.

Key contributions

  • Introduces a Complete Musculoskeletal Morphological Evolution Space for muscle strength, velocity, and stiffness.
  • Proposes Spectral Design Evolution (SDE) for efficient co-optimization of morphology and control.
  • Uses bilateral symmetry and PCA to project complex muscle parameters onto a low-dimensional manifold.
  • Achieves superior learning efficiency and locomotion stability on diverse MyoSuite tasks.

Why it matters

Existing musculoskeletal robots are limited by fixed muscle parameters, hindering performance in complex tasks. This work addresses that by co-designing morphology and control. It enables more versatile and robust locomotion, pushing the boundaries of musculoskeletal robot capabilities.

Original Abstract

Musculoskeletal robots offer intrinsic compliance and flexibility, providing a promising paradigm for versatile locomotion. However, existing research typically relies on models with fixed muscle physiological parameters. This static physical setting fails to accommodate the diverse dynamic demands of complex tasks, inherently limiting the robot's performance upper bound. In this work, we focus on the morphology and control co-design of musculoskeletal systems. Unlike previous studies that optimize single physiological attributes such as stiffness, we introduce a Complete Musculoskeletal Morphological Evolution Space that simultaneously evolves muscle strength, velocity, and stiffness. To overcome the exponential expansion of the exploration space caused by this comprehensive evolution, we propose Spectral Design Evolution (SDE), a high-efficiency co-optimization framework. By integrating a bilateral symmetry prior with Principal Component Analysis (PCA), SDE projects complex muscle parameters onto a low-dimensional spectral manifold, enabling efficient morphological exploration. Evaluated on the MyoSuite framework across four tasks (Walk, Stair, Hilly, and Rough terrains), our method demonstrates superior learning efficiency and locomotion stability compared to fixed-morphology and standard evolutionary baselines.

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