ROAILGAug 29, 2025

First Order Model-Based RL through Decoupled Backpropagation

arXiv:2509.00215v24 citationsh-index: 5
Originality Incremental advance
AI Analysis

This addresses the challenge of impractical simulator gradients in reinforcement learning for robotics, offering an incremental improvement over existing methods.

The paper tackles the problem of inefficient gradient computation in model-based reinforcement learning by proposing a hybrid approach that decouples trajectory generation from gradient computation, enabling first-order policy optimization without simulator gradients and achieving sample efficiency comparable to specialized optimizers like SHAC while maintaining generality.

There is growing interest in reinforcement learning (RL) methods that leverage the simulator's derivatives to improve learning efficiency. While early gradient-based approaches have demonstrated superior performance compared to derivative-free methods, accessing simulator gradients is often impractical due to their implementation cost or unavailability. Model-based RL (MBRL) can approximate these gradients via learned dynamics models, but the solver efficiency suffers from compounding prediction errors during training rollouts, which can degrade policy performance. We propose an approach that decouples trajectory generation from gradient computation: trajectories are unrolled using a simulator, while gradients are computed via backpropagation through a learned differentiable model of the simulator. This hybrid design enables efficient and consistent first-order policy optimization, even when simulator gradients are unavailable, as well as learning a critic from simulation rollouts, which is more accurate. Our method achieves the sample efficiency and speed of specialized optimizers such as SHAC, while maintaining the generality of standard approaches like PPO and avoiding ill behaviors observed in other first-order MBRL methods. We empirically validate our algorithm on benchmark control tasks and demonstrate its effectiveness on a real Go2 quadruped robot, across both quadrupedal and bipedal locomotion tasks.

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