Towards a Systematic Computational Framework for Modeling Multi-Agent Decision-Making at Micro Level for Smart Vehicles in a Smart World

09/25/2020
by   Qi Dai, et al.
0

We propose a multi-agent based computational framework for modeling decision-making and strategic interaction at micro level for smart vehicles in a smart world. The concepts of Markov game and best response dynamics are heavily leveraged. Our aim is to make the framework conceptually sound and computationally practical for a range of realistic applications, including micro path planning for autonomous vehicles. To this end, we first convert the would-be stochastic game problem into a closely related deterministic one by introducing risk premium in the utility function for each individual agent. We show how the sub-game perfect Nash equilibrium of the simplified deterministic game can be solved by an algorithm based on best response dynamics. In order to better model human driving behaviors with bounded rationality, we seek to further simplify the solution concept by replacing the Nash equilibrium condition with a heuristic and adaptive optimization with finite look-ahead anticipation. In addition, the algorithm corresponding to the new solution concept drastically improves the computational efficiency. To demonstrate how our approach can be applied to realistic traffic settings, we conduct a simulation experiment: to derive merging and yielding behaviors on a double-lane highway with an unexpected barrier. Despite assumption differences involved in the two solution concepts, the derived numerical solutions show that the endogenized driving behaviors are very similar. We also briefly comment on how the proposed framework can be further extended in a number of directions in our forthcoming work, such as behavioral calibration using real traffic video data, computational mechanism design for traffic policy optimization, and so on.

READ FULL TEXT

page 19

page 23

research
05/05/2021

Calibration of Human Driving Behavior and Preference Using Naturalistic Traffic Data

Understanding human driving behaviors quantitatively is critical even in...
research
09/21/2020

Solution Concepts in Hierarchical Games with Applications to Autonomous Driving

With autonomous vehicles (AV) set to integrate further into regular huma...
research
09/02/2021

Multi-Agent Inverse Reinforcement Learning: Suboptimal Demonstrations and Alternative Solution Concepts

Multi-agent inverse reinforcement learning (MIRL) can be used to learn r...
research
02/08/2023

Non-zero-sum Game Control for Multi-vehicle Driving via Reinforcement Learning

When a vehicle drives on the road, its behaviors will be affected by sur...
research
09/27/2021

A taxonomy of strategic human interactions in traffic conflicts

In order to enable autonomous vehicles (AV) to navigate busy traffic sit...
research
03/05/2020

Efficient Uncertainty-aware Decision-making for Automated Driving Using Guided Branching

Decision-making in dense traffic scenarios is challenging for automated ...
research
08/21/2023

"Guinea Pig Trials" Utilizing GPT: A Novel Smart Agent-Based Modeling Approach for Studying Firm Competition and Collusion

Firm competition and collusion involve complex dynamics, particularly wh...

Please sign up or login with your details

Forgot password? Click here to reset