EUPHORIA: Efficient Universal Planning via Hybrid Optimization for Robust Industrial Robotic Assembly
Shih-Yu Lai, Chia-Ching Yen, Yang-Ting Shen, Peter Yichen Chen, Yu-Lun Liu, Bing-Yu Chen

TL;DR
EUPHORIA is a unified robotic assembly framework that combines meta-learning, physics-informed attention, and residual optimization to adapt quickly and operate efficiently on complex, unseen geometries.
Contribution
It introduces a hybrid optimization strategy with a Meta-Geometric Encoder and Physics-Informed Graph Transformer for universal, few-shot adaptable robotic assembly planning.
Findings
Reduces energy consumption compared to decoupled baselines
Achieves state-of-the-art success rates on unseen geometries
Enables rapid adaptation without retraining for complex structures
Abstract
Robotic assembly in architectural construction faces a persistent bottleneck: existing planners are either highly specialized, requiring prohibitive retraining for every new geometric design, or operationally inefficient, treating structural sequencing and kinematic motion as disjoint processes. We present EUPHORIA, a unified framework that achieves universal few-shot adaptability and dynamic efficiency through a hybrid optimization strategy. To overcome the retraining bottleneck, we propose a Meta-Geometric Encoder based on Graph Hypernetworks: unlike standard contrastive learning, which performs only feature-level recognition, our hypernetwork dynamically generates policy parameters from a minimal support set, enabling parameter-level adaptation to complex topologies (e.g., domes, arches) without gradient-based retraining. For structural reasoning, we introduce a Physics-Informed…
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