Abstract
Real-world infrastructure planning increasingly involves strategic interactions among autonomous agents competing over congestible, limited resources. Applications such as Electric Vehicle (EV) charging, emergency response, and intelligent transportation require coordinated resource placement and pricing decisions, while anticipating the adaptive behaviour of decentralised, self-interested agents.
We propose a novel multi-agent framework for joint placement and pricing under such interactions, formalised as a bi-level optimisation model. The upper level represents a central planner, while the lower level captures agent responses via coupled non-atomic congestion games. Motivated by the EV charging domain, we study a setting where a central planner provisions chargers and road capacity under budget and profitability constraints.
The agent population includes both EV drivers and non-charging drivers (NCDs), who respond to congestion, delays, and costs. To solve the resulting NP-hard problem, we introduce ABO-MPN, a double-layer approximation framework that decouples agent types, applies integer adjustment and rounding, and targets high-impact placement and pricing decisions. Experiments on benchmark networks show that our model reduces social cost by up to 40% compared to placement- or pricing-only baselines, and generalises to other MAS-relevant domains.
We propose a novel multi-agent framework for joint placement and pricing under such interactions, formalised as a bi-level optimisation model. The upper level represents a central planner, while the lower level captures agent responses via coupled non-atomic congestion games. Motivated by the EV charging domain, we study a setting where a central planner provisions chargers and road capacity under budget and profitability constraints.
The agent population includes both EV drivers and non-charging drivers (NCDs), who respond to congestion, delays, and costs. To solve the resulting NP-hard problem, we introduce ABO-MPN, a double-layer approximation framework that decouples agent types, applies integer adjustment and rounding, and targets high-impact placement and pricing decisions. Experiments on benchmark networks show that our model reduces social cost by up to 40% compared to placement- or pricing-only baselines, and generalises to other MAS-relevant domains.
| Original language | English |
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| Title of host publication | Multi-Agent Systems |
| Subtitle of host publication | 22nd European Conference, EUMAS 2025, Bucharest, Romania, September 03-05, 2025, Proceedings |
| Publisher | Springer |
| Publication status | Accepted/In press - 3 Aug 2025 |
| Event | The 22nd European Conference on Multi-Agent Systems - Central Library, National University of Science and Technology POLITEHNICA of Bucharest, Bucharest, Romania Duration: 3 Sept 2025 → 5 Sept 2025 Conference number: 22 https://euramas.github.io/eumas2025/ |
Publication series
| Name | Lecture Notes in Computer Science (LNCS) |
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| ISSN (Print) | 0302-9743 |
| ISSN (Electronic) | 1611-3349 |
Conference
| Conference | The 22nd European Conference on Multi-Agent Systems |
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| Abbreviated title | EUMAS 2025 |
| Country/Territory | Romania |
| City | Bucharest |
| Period | 3/09/25 → 5/09/25 |
| Internet address |