DS1 spectrogram: AdaReP:Adaptive Re-Planning under Model Mismatch for Neural World-Model Predictive Control

AdaReP:Adaptive Re-Planning under Model Mismatch for Neural World-Model Predictive Control

2606.23079

Authors

Yutian Cheng,Xiaojian Ma,Xianhao Wang,Rongpeng Su,Hangxin Liu

Abstract

Neural world models coupled with model predictive control (MPC) replan at every environment step to bound accumulated prediction error, but this incurs substantial computational overhead. Reusing a cached plan reduces this overhead, yet its effectiveness depends on how prediction mismatch propagates through the local dynamics.

We analyze this trade-off with a perturbation-based dynamic-regret framework and show that stale-plan penalties scale with the reuse tolerance, the accumulated mismatch since the last replanning step, and the local dynamics sensitivity. Based on this structure, we propose AdaReP, a training-free wrapper that adapts the replanning tolerance online using the current deviation from the cached rollout and a local sensitivity estimate, without modifying the learned world model or planner.

Across image-space planning, latent-space control, and real-world robotic manipulation, AdaReP substantially reduces planner-side computation while maintaining comparable task performance, including over 80% fewer queries on a 50-trial physical robot study.

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