ROAIOct 31, 2025

Learning Soft Robotic Dynamics with Active Exploration

arXiv:2510.27428v11 citationsh-index: 14
Originality Incremental advance
AI Analysis

This addresses the challenge of data-efficient and adaptable control for soft robots, which is incremental as it builds on existing active exploration methods.

The paper tackled the problem of modeling soft robotic dynamics, which are difficult due to compliance and nonlinearity, by introducing SoftAE, an active exploration framework that learns generalizable models; it achieved more accurate dynamics and superior zero-shot control on unseen tasks compared to baselines.

Soft robots offer unmatched adaptability and safety in unstructured environments, yet their compliant, high-dimensional, and nonlinear dynamics make modeling for control notoriously difficult. Existing data-driven approaches often fail to generalize, constrained by narrowly focused task demonstrations or inefficient random exploration. We introduce SoftAE, an uncertainty-aware active exploration framework that autonomously learns task-agnostic and generalizable dynamics models of soft robotic systems. SoftAE employs probabilistic ensemble models to estimate epistemic uncertainty and actively guides exploration toward underrepresented regions of the state-action space, achieving efficient coverage of diverse behaviors without task-specific supervision. We evaluate SoftAE on three simulated soft robotic platforms -- a continuum arm, an articulated fish in fluid, and a musculoskeletal leg with hybrid actuation -- and on a pneumatically actuated continuum soft arm in the real world. Compared with random exploration and task-specific model-based reinforcement learning, SoftAE produces more accurate dynamics models, enables superior zero-shot control on unseen tasks, and maintains robustness under sensing noise, actuation delays, and nonlinear material effects. These results demonstrate that uncertainty-driven active exploration can yield scalable, reusable dynamics models across diverse soft robotic morphologies, representing a step toward more autonomous, adaptable, and data-efficient control in compliant robots.

Foundations

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