LGHCSPNov 14, 2025

Multi-Joint Physics-Informed Deep Learning Framework for Time-Efficient Inverse Dynamics

arXiv:2511.10878v1h-index: 20
Originality Incremental advance
AI Analysis

This addresses a critical need for clinical assessment and assistive device control by reducing computational costs and eliminating the need for high-quality labeled datasets, though it is incremental as it builds on existing physics-informed and deep learning approaches.

The paper tackles the problem of time-efficient estimation of muscle activations and forces in multi-joint systems by proposing a physics-informed deep learning framework that directly uses kinematics, achieving performance comparable to supervised methods without labeled data.

Time-efficient estimation of muscle activations and forces across multi-joint systems is critical for clinical assessment and assistive device control. However, conventional approaches are computationally expensive and lack a high-quality labeled dataset for multi-joint applications. To address these challenges, we propose a physics-informed deep learning framework that estimates muscle activations and forces directly from kinematics. The framework employs a novel Multi-Joint Cross-Attention (MJCA) module with Bidirectional Gated Recurrent Unit (BiGRU) layers to capture inter-joint coordination, enabling each joint to adaptively integrate motion information from others. By embedding multi-joint dynamics, inter-joint coupling, and external force interactions into the loss function, our Physics-Informed MJCA-BiGRU (PI-MJCA-BiGRU) delivers physiologically consistent predictions without labeled data while enabling time-efficient inference. Experimental validation on two datasets demonstrates that PI-MJCA-BiGRU achieves performance comparable to conventional supervised methods without requiring ground-truth labels, while the MJCA module significantly enhances inter-joint coordination modeling compared to other baseline architectures.

Foundations

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