Sha Yi * Xueqian Bai* Adabhav Singh Jianglong Ye Michael T Tolley Xiaolong Wang
UC San Diego
Abstract
For robot manipulation, both the controller and end-effector design are crucial. Soft grippers are generalizable by deforming to different geometries, but designing such a gripper and finding its grasp pose remains challenging. In this paper, we propose a co-design framework that generates an optimized soft gripper's block-wise stiffness distribution and its grasping pose, using a neural physics model trained in simulation. We derived a uniform-pressure tendon model for a flexure-based soft finger, then generated a diverse dataset by randomizing both gripper pose and design parameters. A neural network is trained to approximate this forward simulation, yielding a fast, differentiable surrogate. We embed that surrogate in an end-to-end optimization loop to optimize the ideal stiffness configuration and best grasp pose. Finally, we 3D-print the optimized grippers of various stiffness by changing the structural parameters. We demonstrate that our co-designed grippers significantly outperform baseline designs in both simulation and hardware experiments.
Tendon Routing
Uniform Waypoints Routing
Uniform Pressure Routing
Simulation Results
3D Printing Different Stiffness

Rounded edge utilize the infill more than vertical walls

Different infills give different results
Hardware Results
* All videos are 1.5x speed unless otherwise specified.
Rigid Gripper
Soft Gripper
⭐ Optimized Gripper
BibTeX
@inproceedings{yi2025codesign,
title = {Co-Design of Soft Gripper with Neural Physics},
author = {Yi, Sha and Bai, Xueqian and Singh, Adabhav and Ye, Jianglong and Tolley, Michael T and Wang, Xiaolong},
}