Responsibility-associated Multi-agent Collision Avoidance with Social Preferences - Robotics Institute Carnegie Mellon University

Responsibility-associated Multi-agent Collision Avoidance with Social Preferences

Yiwei Lyu, Wenhao Luo, and John M. Dolan
Conference Paper, Proceedings of International Conference on Intelligent Transportation Systems (ICITS '22), pp. 3645 - 3651, October, 2022

Abstract

This paper introduces a novel social preference-aware decentralized safe control framework to address the responsibility allocation problem in multi-agent collision avoidance. Considering that agents do not necessarily cooperate in symmetric ways, this paper focuses on semi-cooperative behavior among heterogeneous agents with varying cooperation levels. Drawing upon the idea of Social Value Orientation (SVO) for quantifying the individual selfishness, we propose a novel concept of Responsibility-associated Social Value Orientation (R-SVO) to express the intended relative social implications between pairwise agents. This is used to redefine each agent's social preferences or personalities in terms of corresponding responsibility shares in contributing to the coordination scenario, such as semi-cooperative collision avoidance where all agents interact in an asymmetric way. By incorporating such relative social implications through proposed Local Pairwise Responsibility Weights, we develop a Responsibility-associated Control Barrier Function-based safe control framework for individual agents, and multi-agent collision avoidance is achieved with formally provable safety guarantees. Simulations are provided to demonstrate the effectiveness and efficiency of the proposed framework in several multi-agent navigation tasks, such as a position-swapping game, a self-driving car highway ramp merging scenario, and a circular position swapping game.

BibTeX

@conference{Lyu-2022-134790,
author = {Yiwei Lyu and Wenhao Luo and John M. Dolan},
title = {Responsibility-associated Multi-agent Collision Avoidance with Social Preferences},
booktitle = {Proceedings of International Conference on Intelligent Transportation Systems (ICITS '22)},
year = {2022},
month = {October},
pages = {3645 - 3651},
keywords = {multi-agent systems, collision avoidance, social preferences, social value orientation, Control Barrier Function, safe control},
}