DiSECt: A Differentiable Simulator for Parameter Inference and Control in Robotic Cutting
Eric Heiden, Miles Macklin, Yashraj Narang, Dieter Fox, Animesh Garg,, Fabio Ramos

TL;DR
DiSECt is a novel differentiable simulator for soft material cutting that enables efficient parameter inference and control optimization, facilitating applications in robotics, surgical tools, and food processing.
Contribution
It introduces the first differentiable cutting simulator combining FEM with continuous contact and damage models, enabling gradient-based calibration and control in soft material cutting.
Findings
Simulator accurately matches real-world and commercial solver data.
Bayesian inference over hundreds of parameters is significantly faster.
Optimized slicing motions reduce cutting forces by over 40%.
Abstract
Robotic cutting of soft materials is critical for applications such as food processing, household automation, and surgical manipulation. As in other areas of robotics, simulators can facilitate controller verification, policy learning, and dataset generation. Moreover, differentiable simulators can enable gradient-based optimization, which is invaluable for calibrating simulation parameters and optimizing controllers. In this work, we present DiSECt: the first differentiable simulator for cutting soft materials. The simulator augments the finite element method (FEM) with a continuous contact model based on signed distance fields (SDF), as well as a continuous damage model that inserts springs on opposite sides of the cutting plane and allows them to weaken until zero stiffness, enabling crack formation. Through various experiments, we evaluate the performance of the simulator. We first…
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Taxonomy
TopicsSoft Robotics and Applications · Robot Manipulation and Learning · Tunneling and Rock Mechanics
