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Principle:ARISE Initiative Robosuite Dynamics Randomization

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Overview

Technique for randomizing physical simulation parameters (friction, mass, damping, density) to improve dynamic robustness of learned control policies.

Description

Dynamics randomization varies the physical parameters of the simulation including: global properties (medium density, viscosity), body properties (mass, inertia, position, quaternion), geom properties (friction, contact solver params), and joint properties (stiffness, damping, armature, frictionloss). This addresses the dynamic domain gap where simulated physics do not perfectly match real-world mechanics.

Usage

Use when control policies need to transfer to real robots where exact physical parameters (friction, mass) are uncertain.

Theoretical Basis

Physical simulation parameters are never perfectly known. By training across a distribution of plausible physical parameters, the policy learns adaptive control strategies. Perturbation ratios (relative) are used for mass-like quantities; absolute perturbation sizes for damping-like quantities.

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