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Multi-Criteria, Co-Evolutionary Charging Behavior: An Agent-Based Simulation of Urban Electromobility

Lennart Adenaw, Markus Lienkamp

2021World Electric Vehicle Journal30 citationsDOIOpen Access PDF

Abstract

In order to electrify the transport sector, scores of charging stations are needed to incentivize people to buy electric vehicles. In urban areas with a high charging demand and little space, decision-makers are in need of planning tools that enable them to efficiently allocate financial and organizational resources to the promotion of electromobility. As with many other city planning tasks, simulations foster successful decision-making. This article presents a novel agent-based simulation framework for urban electromobility aimed at the analysis of charging station utilization and user behavior. The approach presented here employs a novel co-evolutionary learning model for adaptive charging behavior. The simulation framework is tested and verified by means of a case study conducted in the city of Munich. The case study shows that the presented approach realistically reproduces charging behavior and spatio-temporal charger utilization.

Topics & Concepts

Order (exchange)Promotion (chess)Computer scienceOperations researchAgent-based modelEnvironmental economicsBusinessEconomicsArtificial intelligenceEngineeringFinancePoliticsPolitical scienceLawElectric Vehicles and InfrastructureTransportation and Mobility InnovationsUrban Transport and Accessibility
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