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Main Authors: Zhang, Yutian, Xu, Liwen, Tao, Shaocong, Guan, Quanxue, Li, Quan, Zeng, Haipeng
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.01384
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author Zhang, Yutian
Xu, Liwen
Tao, Shaocong
Guan, Quanxue
Li, Quan
Zeng, Haipeng
author_facet Zhang, Yutian
Xu, Liwen
Tao, Shaocong
Guan, Quanxue
Li, Quan
Zeng, Haipeng
contents In recent years, the global adoption of electric vehicles (EVs) has surged, prompting a corresponding rise in the installation of charging stations. This proliferation has underscored the importance of expediting the deployment of charging infrastructure. Both academia and industry have thus devoted to addressing the charging station location problem (CSLP) to streamline this process. However, prevailing algorithms addressing CSLP are hampered by restrictive assumptions and computational overhead, leading to a dearth of comprehensive evaluations in the spatiotemporal dimensions. Consequently, their practical viability is restricted. Moreover, the placement of charging stations exerts a significant impact on both the road network and the power grid, which necessitates the evaluation of the potential post-deployment impacts on these interconnected networks holistically. In this study, we propose CSLens, a visual analytics system designed to inform charging station deployment decisions through the lens of coupled transportation and power networks. CSLens offers multiple visualizations and interactive features, empowering users to delve into the existing charging station layout, explore alternative deployment solutions, and assess the ensuring impact. To validate the efficacy of CSLens, we conducted two case studies and engaged in interviews with domain experts. Through these efforts, we substantiated the usability and practical utility of CSLens in enhancing the decision-making process surrounding charging station deployment. Our findings underscore CSLens's potential to serve as a valuable asset in navigating the complexities of charging infrastructure planning.
format Preprint
id arxiv_https___arxiv_org_abs_2410_01384
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CSLens: Towards Better Deploying Charging Stations via Visual Analytics -- A Coupled Networks Perspective
Zhang, Yutian
Xu, Liwen
Tao, Shaocong
Guan, Quanxue
Li, Quan
Zeng, Haipeng
Human-Computer Interaction
In recent years, the global adoption of electric vehicles (EVs) has surged, prompting a corresponding rise in the installation of charging stations. This proliferation has underscored the importance of expediting the deployment of charging infrastructure. Both academia and industry have thus devoted to addressing the charging station location problem (CSLP) to streamline this process. However, prevailing algorithms addressing CSLP are hampered by restrictive assumptions and computational overhead, leading to a dearth of comprehensive evaluations in the spatiotemporal dimensions. Consequently, their practical viability is restricted. Moreover, the placement of charging stations exerts a significant impact on both the road network and the power grid, which necessitates the evaluation of the potential post-deployment impacts on these interconnected networks holistically. In this study, we propose CSLens, a visual analytics system designed to inform charging station deployment decisions through the lens of coupled transportation and power networks. CSLens offers multiple visualizations and interactive features, empowering users to delve into the existing charging station layout, explore alternative deployment solutions, and assess the ensuring impact. To validate the efficacy of CSLens, we conducted two case studies and engaged in interviews with domain experts. Through these efforts, we substantiated the usability and practical utility of CSLens in enhancing the decision-making process surrounding charging station deployment. Our findings underscore CSLens's potential to serve as a valuable asset in navigating the complexities of charging infrastructure planning.
title CSLens: Towards Better Deploying Charging Stations via Visual Analytics -- A Coupled Networks Perspective
topic Human-Computer Interaction
url https://arxiv.org/abs/2410.01384