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Learning Two-agent Motion Planning Strategies from Generalized Nash Equilibrium for Model Predictive Control

Authors :
Kim, Hansung
Zhu, Edward L.
Lim, Chang Seok
Borrelli, Francesco
Publication Year :
2024

Abstract

We introduce an Implicit Game-Theoretic MPC (IGT-MPC), a decentralized algorithm for two-agent motion planning that uses a learned value function that predicts the game-theoretic interaction outcomes as the terminal cost-to-go function in a model predictive control (MPC) framework, guiding agents to implicitly account for interactions with other agents and maximize their reward. This approach applies to competitive and cooperative multi-agent motion planning problems which we formulate as constrained dynamic games. Given a constrained dynamic game, we randomly sample initial conditions and solve for the generalized Nash equilibrium (GNE) to generate a dataset of GNE solutions, computing the reward outcome of each game-theoretic interaction from the GNE. The data is used to train a simple neural network to predict the reward outcome, which we use as the terminal cost-to-go function in an MPC scheme. We showcase emerging competitive and coordinated behaviors using IGT-MPC in scenarios such as two-vehicle head-to-head racing and un-signalized intersection navigation. IGT-MPC offers a novel method integrating machine learning and game-theoretic reasoning into model-based decentralized multi-agent motion planning.<br />Comment: Submitted to 2025 Learning for Dynamics and Control Conference (L4DC)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.13983
Document Type :
Working Paper