首页 /研究 /O-ConNet: Geometry-Aware End-to-End Inference of Over-Constrained Spatial Mechanisms
LEARNING

O-ConNet: Geometry-Aware End-to-End Inference of Over-Constrained Spatial Mechanisms

Haoyu Sun, Meng Zhao, Tianhao Wang, Jianxu Wu

发表年份
2026
访问权限
开放获取

摘要

Deep learning has shown strong potential for scientific discovery, but its ability to model macroscopic rigid-body kinematic constraints remains underexplored. We study this problem on spatial over-constrained mechanisms and propose O-ConNet, an end-to-end framework that infers mechanism structural parameters from only three sparse reachable points while reconstructing the full motion trajectory, without explicitly solving constraint equations during inference. On a self-constructed Bennett 4R dataset of 42,860 valid samples, O-ConNet achieves Param-MAE 0.276 +/- 0.077 and Traj-MAE 0.145 +/- 0.018 (mean +/- std over 10 runs), outperforming the strongest sequence baseline (LSTM-Seq2Seq) by 65.1 percent and 88.2 percent, respectively. These results suggest that end-to-end learning can capture closed-loop geometric structure and provide a practical route for inverse design of spatial over-constrained mechanisms under extremely sparse observations.

关键词

cs.RO

相关论文

查看 LEARNING 分类全部论文