ROLGApr 2, 2025

Inverse RL Scene Dynamics Learning for Nonlinear Predictive Control in Autonomous Vehicles

arXiv:2504.01336v11 citationsh-index: 5IEEE Trans Neural Netw Learn Syst
Originality Incremental advance
AI Analysis

It addresses navigation challenges for autonomous vehicles, offering a novel integration of inverse reinforcement learning and predictive control, though it appears incremental as it builds on existing model predictive and reinforcement learning techniques.

This paper tackles autonomous navigation by introducing DL-NMPC-SD, a method that combines a nominal vehicle model with a learned scene dynamics model to estimate desired trajectories and adjust system models, achieving improved performance over baselines like DWA and state-of-the-art methods in virtual, indoor/outdoor, and public road tests.

This paper introduces the Deep Learning-based Nonlinear Model Predictive Controller with Scene Dynamics (DL-NMPC-SD) method for autonomous navigation. DL-NMPC-SD uses an a-priori nominal vehicle model in combination with a scene dynamics model learned from temporal range sensing information. The scene dynamics model is responsible for estimating the desired vehicle trajectory, as well as to adjust the true system model used by the underlying model predictive controller. We propose to encode the scene dynamics model within the layers of a deep neural network, which acts as a nonlinear approximator for the high order state-space of the operating conditions. The model is learned based on temporal sequences of range sensing observations and system states, both integrated by an Augmented Memory component. We use Inverse Reinforcement Learning and the Bellman optimality principle to train our learning controller with a modified version of the Deep Q-Learning algorithm, enabling us to estimate the desired state trajectory as an optimal action-value function. We have evaluated DL-NMPC-SD against the baseline Dynamic Window Approach (DWA), as well as against two state-of-the-art End2End and reinforcement learning methods, respectively. The performance has been measured in three experiments: i) in our GridSim virtual environment, ii) on indoor and outdoor navigation tasks using our RovisLab AMTU (Autonomous Mobile Test Unit) platform and iii) on a full scale autonomous test vehicle driving on public roads.

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