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simmediumlocomotionmetric · varies

Residual MPC: Blending Reinforcement Learning with GPU-Parallelized Model Predictive Control

Description

Model Predictive Control (MPC) provides interpretable, tunable locomotion controllers grounded in physical models, but its robustness depends on frequent replanning and is limited by model mismatch and real-time computational constraints. Reinforcement Learning (RL), by contrast, can produce highly robust behaviors through stochastic training but often lacks interpretability, suffers from out-of-distribution failures, and requires intensive reward engineering. This work presents a GPU-paralleliz

Source

http://arxiv.org/abs/2510.12717v1