Smart City Gnosys

Smart city article details

Title Evkg: An Interlinked And Interoperable Electric Vehicle Knowledge Graph For Smart Transportation System
ID_Doc 25001
Authors Qi Y.; Mai G.; Zhu R.; Zhang M.
Year 2023
Published Transactions in GIS, 27, 4
DOI http://dx.doi.org/10.1111/tgis.13064
Abstract Over the past decade, the electric vehicle (EV) industry has experienced unprecedented growth and diversification, resulting in a complex ecosystem. To effectively manage this multifaceted field, we present an EV-centric knowledge graph (EVKG) as a comprehensive, cross-domain, extensible, and open geospatial knowledge management system. The EVKG encapsulates essential EV-related knowledge, including EV adoption, EV supply equipment, and electricity transmission network, to support decision-making related to EV technology development, infrastructure planning, and policy-making by providing timely and accurate information and analysis. To enrich and contextualize the EVKG, we integrate the developed EV-relevant ontology modules from existing well-known knowledge graphs and ontologies. This integration enables interoperability with other knowledge graphs in the Linked Data Open Cloud, enhancing the EVKG's value as a knowledge hub for EV decision-making. Using six competency questions, we demonstrate how the EVKG can be used to answer various types of EV-related questions, providing critical insights into the EV ecosystem. Our EVKG provides an efficient and effective approach for managing the complex and diverse EV industry. By consolidating critical EV-related knowledge into a single, easily accessible resource, the EVKG supports decision-makers in making informed choices about EV technology development, infrastructure planning, and policy-making. As a flexible and extensible platform, the EVKG is capable of accommodating a wide range of data sources, enabling it to evolve alongside the rapidly changing EV landscape. © 2023 John Wiley & Sons Ltd.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
23786 View0.864Šidlovský M.; Ravas F.Enhancing Efficiency In Transportation Data Storage For Electric Vehicles: The Synergy Of Graph And Time-Series DatabasesWorld Electric Vehicle Journal, 16, 5 (2025)
26972 View0.862Breschi V.; Ravazzi C.; Strada S.; Dabbene F.; Tanelli M.Fostering The Mass Adoption Of Electric Vehicles: A Network-Based ApproachIEEE Transactions on Control of Network Systems, 9, 4 (2022)
28780 View0.862Abraham A.; Aldhanhani T.; Hamidouche W.; Shaaban M.Harnessing The Power Of Large Language Models For Sustainable And Intelligent Transportation Systems In The Electric Vehicle EraLecture Notes in Intelligent Transportation and Infrastructure, Part F99 (2025)
32652 View0.852Cao Y.; Ahmad N.; Kaiwartya O.; Puturs G.; Khalid M.Intelligent Transportation Systems Enabled Ict Framework For Electric Vehicle Charging In Smart CityHandbook of Smart Cities: Software Services and Cyber Infrastructure (2018)
8926 View0.851Singh B.An Overview Of Knowledge Representation Learning Based On Er Knowledge GraphKnowledge Graph-Based Methods for Automated Driving (2025)