Estimation of Electric Vehicle Public Charging Demand using Cellphone
Data and Points of Interest-based Segmentation
- URL: http://arxiv.org/abs/2206.11065v1
- Date: Thu, 2 Jun 2022 09:54:11 GMT
- Title: Estimation of Electric Vehicle Public Charging Demand using Cellphone
Data and Points of Interest-based Segmentation
- Authors: Victor Radermecker and Lieselot Vanhaverbeke
- Abstract summary: The race for road electrification has started, and convincing drivers to switch from fuel-powered vehicles to electric vehicles requires robust Electric Vehicle (EV) charging infrastructure.
This article proposes an innovative EV charging demand estimation and segmentation method.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The race for road electrification has started, and convincing drivers to
switch from fuel-powered vehicles to electric vehicles requires robust Electric
Vehicle (EV) charging infrastructure. This article proposes an innovative EV
charging demand estimation and segmentation method. First, we estimate the
charging demand at a neighborhood granularity using cellular signaling data.
Second, we propose a segmentation model to partition the total charging needs
among different charging technology: normal, semi-rapid, and fast charging. The
segmentation model, an approach based on the city's points of interest, is a
state-of-the-art method that derives useful trends applicable to city planning.
A case study for the city of Brussels is proposed.
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