Neural Robot Dynamics

Agentic AI
Published: arXiv: 2508.15755v1
Authors

Jie Xu Eric Heiden Iretiayo Akinola Dieter Fox Miles Macklin Yashraj Narang

Abstract

Accurate and efficient simulation of modern robots remains challenging due to their high degrees of freedom and intricate mechanisms. Neural simulators have emerged as a promising alternative to traditional analytical simulators, capable of efficiently predicting complex dynamics and adapting to real-world data; however, existing neural simulators typically require application-specific training and fail to generalize to novel tasks and/or environments, primarily due to inadequate representations of the global state. In this work, we address the problem of learning generalizable neural simulators for robots that are structured as articulated rigid bodies. We propose NeRD (Neural Robot Dynamics), learned robot-specific dynamics models for predicting future states for articulated rigid bodies under contact constraints. NeRD uniquely replaces the low-level dynamics and contact solvers in an analytical simulator and employs a robot-centric and spatially-invariant simulation state representation. We integrate the learned NeRD models as an interchangeable backend solver within a state-of-the-art robotics simulator. We conduct extensive experiments to show that the NeRD simulators are stable and accurate over a thousand simulation steps; generalize across tasks and environment configurations; enable policy learning exclusively in a neural engine; and, unlike most classical simulators, can be fine-tuned from real-world data to bridge the gap between simulation and reality.

Paper Summary

Problem
Robot simulation is a crucial step in robotics, but traditional analytical simulators have limitations. They often require application-specific training, fail to generalize to novel tasks and environments, and can be inefficient for complex robots. Neural simulators have emerged as a promising alternative, but they also have limitations, such as requiring application-specific training and failing to generalize.
Key Innovation
The researchers propose a new approach called Neural Robot Dynamics (NeRD), which learns robot-specific dynamics models for predicting future states of articulated rigid bodies. NeRD replaces the low-level dynamics and contact solvers in traditional analytical simulators and employs a robot-centric and spatially-invariant simulation state representation. This allows NeRD to generalize across tasks and environment configurations, enable policy learning exclusively in a neural engine, and be fine-tuned from real-world data.
Practical Impact
NeRD has the potential to revolutionize robotics by providing a more efficient and accurate simulation approach. It can be applied to various robotics applications, such as policy learning, safe and scalable robotic control evaluation, and computational optimization of robot designs. NeRD can also be fine-tuned from real-world data, bridging the gap between simulation and reality. This can lead to more efficient and effective robotics development, testing, and deployment.
Analogy / Intuitive Explanation
Imagine trying to predict the motion of a complex machine, such as a robotic arm. Traditional analytical simulators would require a detailed model of the machine's mechanics, which can be time-consuming and prone to errors. NeRD is like a machine learning model that learns to predict the motion of the robotic arm by observing its behavior in different scenarios. It can generalize across different tasks and environments, making it a powerful tool for robotics development.
Paper Information
Categories:
cs.RO cs.AI cs.GR cs.LG
Published Date:

arXiv ID:

2508.15755v1

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