A Hybrid Evolutionary and Multiagent Reinforcement Learning Approach to Accelerate the Computation of Traffic Assignment: (Extended Abstract)
نویسندگان
چکیده
Traditionally, traffic assignment allocates trips to links in a traffic network. Nowadays it is also useful to recommend routes. Here, it is interesting to recommend routes that are as close as possible to the system optimum, while also considering the user equilibrium. To compute an approximation of such an assignment, we use a hybrid approach in which an optimization process based on an evolutionary algorithm is combined with multiagent reinforcement learning. This has two advantages: first, the convergence is accelerated; second, the multiagent reinforcement learning resembles the adaptive route choice that drivers perform in order to seek the user equilibrium. In short, our hybrid approach aims at incorporating both the system and the user perspectives in the traffic assignment problem. Results confirm that this hybridization accelerates the computation and delivers an efficient assignment.
منابع مشابه
Integrating System Optimum and User Equilibrium in Traffic Assignment via Evolutionary Search and Multiagent Reinforcement Learning
Traffic assignment is fundamentally a tool for transportation planning. It allocates trips within the traffic network. However, modern uses of traffic assignment also include shorter time horizons and even real-time use (e.g., for route recommendation). In the latter case, it is interesting to recommend routes that are as close as possible to the system optimum. To compute an approximation of t...
متن کاملMulticast Routing in Wireless Sensor Networks: A Distributed Reinforcement Learning Approach
Wireless Sensor Networks (WSNs) are consist of independent distributed sensors with storing, processing, sensing and communication capabilities to monitor physical or environmental conditions. There are number of challenges in WSNs because of limitation of battery power, communications, computation and storage space. In the recent years, computational intelligence approaches such as evolutionar...
متن کاملMulti-objective multiagent credit assignment in reinforcement learning and NSGA-II
Multiagent systems have had a powerful impact on the real world. Many of the systems it studies (air traffic, satellite coordination, rover exploration) are inherently multi-objective, but they are often treated as single-objective problems within the research. A key concept within multiagent systems is that of credit assignment: quantifying an individual agent’s impact on the overall system pe...
متن کاملMultiagent Learning with a Noisy Global Reward Signal
Scaling multiagent reinforcement learning to domains with many agents is a complex problem. In particular, multiagent credit assignment becomes a key issue as the system size increases. Some multiagent systems suffer from a global reward signal that is very noisy or difficult to analyze. This makes deriving a learnable local reward signal very difficult. Difference rewards (a particular instanc...
متن کاملCooperative, hybrid agent architecture for real-time traffic signal control
This paper presents a new hybrid, synergistic approach in applying computational intelligence concepts to implement a cooperative, hierarchical, multiagent system for real-time traffic signal control of a complex traffic network. The large-scale traffic signal control problem is divided into various subproblems, and each subproblem is handled by an intelligent agent with fuzzy neural decision-m...
متن کامل