Abstract

This study presents an approach to collect and classify usage data of public charging infrastructure in order to predict usage based on socio-demographic data within a city. The approach comprises data acquisition and a two-step machine learning approach, classifying and predicting usage behavior. Data is acquired by gathering information on charging points from publicly available sources. The first machine learning step identifies four relevant usage patterns from the gathered data using an agglomerative clustering approach. The second step utilizes a Random Forest Classification to predict usage patterns from socio-demographic factors in a spatial context. This approach allows to predict usage behavior at locations for potential new charging points. Applying the presented approach to Munich, a large city in Germany, results confirm the adaptability in complex urban environments. Visualizing the spatial distribution of the predicted usage patterns shows the prevalence of different patterns throughout the city. The presented approach helps municipalities and charging infrastructure operators to identify areas with certain usage patterns and, hence different technical requirements, to optimize the charging infrastructure in order to help meeting the increasing demand of electric mobility.

Highlights

  • IntroductionWith the rise of electric mobility, the task to provide charging infrastructure (CI)

  • With the rise of electric mobility, the task to provide charging infrastructure (CI)has gained importance over the last few years

  • Using the 32 features listed in Table 4 as input and the usage pattern, represented by the cluster ID, as output data, the classification model explains the usage patterns with an overall accuracy of 0.897, the test accuracy is lower with a score of 0.76

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Summary

Introduction

With the rise of electric mobility, the task to provide charging infrastructure (CI). Has gained importance over the last few years. CI had to be deployed without a priori knowledge about potential utilization, today, a growing network of CI allows for data-based decisions concerning the amount and type of CI to be built. The quality of decisions depends on the availability of data. As most operators of CI keep (at least parts of) the information on charging events (CEs) private, a big challenge is the scarcity of information. The paper at hand deals with the information that can be retrieved from publicly available sources on the utilization of CI.

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