Evolving Embodied Intelligence: Graph Neural Network--Driven Co-Design of Morphology and Control in Soft Robotics
arXiv cs.AI / 3/23/2026
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Key Points
- The paper studies embodied intelligence by jointly co-designing morphology and control for soft robots using a graph neural network framework.
- Each robot is represented as a graph with a graph attention network (GAT) encoding node features and an MLP head producing actuator commands or value estimates.
- During evolution, inheritance follows a topology-consistent mapping: shared GAT layers are reused, MLP hidden layers are transferred intact, matched actuator outputs are copied, and unmatched ones are randomly initialized and fine-tuned, enabling the controller to adapt to body mutations.
- On benchmarks, the GAT-based co-design achieves higher final fitness and stronger adaptability to morphological variations compared with traditional MLP-only co-design methods.
- The results indicate that graph-structured policies provide a more effective interface between evolving morphologies and control for embodied intelligence.
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