Abstract

With the escalating contradiction between the growing demand for electric buses and limited supporting resources of cities to deploy electric charging infrastructure, it is a great challenge for decision-makers to synthetically plan the location and decide on the expansion sequence of electric charging stations. In light of the location decisions of electric charging stations having long-term impacts on the deployment of electric buses and the layout of city traffic networks, a comprehensive framework for planning the locations and deciding on the expansion of electric bus charging stations should be developed simultaneously. In practice, construction or renovation of a new charging station is limited by various factors, such as land resources, capital investment, and power grid load. Thus, it is necessary to develop an evaluation structure that combines these factors to provide integrated decision support for the location of bus charging stations. Under this background, this paper develops a gridded affinity propagation (AP) clustering algorithm that combines the superiorities of the AP clustering algorithm and the map gridding rule to find the optimal candidate locations for electric bus charging stations by considering multiple impacting factors such as land cost, traffic conditions, and so on. Based on the location results of the candidate stations, the expansion sequence of these candidate stations is proposed. In particular, a sequential expansion rule for planning the charging stations is proposed that considers the development trends of the charging demand. To verify the performance of the gridded AP clustering and the effectiveness of the proposed sequential expansion rule, an empirical investigation of Guiyang City, the capital of Guizhou province in China, is conducted. The results of the empirical investigation demonstrate that the proposed framework that helps find optimal locations for electric bus charging stations and the expansion sequence of these locations are decided with less capital investment pressure. This research shows that the combination of gridded AP clustering and the proposed sequential expansion rule can systematically solve the problem of finding the optimal locations and deciding on the best expansion sequence for electric bus charging stations, which denotes that the proposed structure is pretty pragmatic and would benefit the government for long-term investment in electric bus station deployment.

Highlights

  • According to the report “International Energy Outlook 2019” released by the U.S.Energy Information Administration (EIA) [1], the consumption of global energy is expected to increase by 50% from 2018 to 2050

  • The main contribution of the paper is mainly reflected in following three aspects: (a) For the first time, this study combines the superiorities of affinity propagation (AP) clustering and the gridding method to find the best locations of electric bus charging stations by considering multiple factors, e.g., the power consumption cost, the innovation cost, and the traffic demand, which provides new considerations in the field of electric bus charging stations

  • The comparison scheme was arranged so that based on the candidate locations obtained by gridded AP clustering, all the charging stations would be expanded simultaneously, and the component costs and total cost were taken for comparison

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Summary

Introduction

According to the report “International Energy Outlook 2019” released by the U.S. Energy Information Administration (EIA) [1], the consumption of global energy is expected to increase by 50% from 2018 to 2050. Considering the limitation and scarcity of urban traffic spaces, inappropriate locations and decisions regarding the size of electric bus charging stations would cause negative effects on the further development of electric-based public transit services. (a) For the first time, this study combines the superiorities of AP clustering and the gridding method to find the best locations of electric bus charging stations by considering multiple factors, e.g., the power consumption cost, the innovation cost, and the traffic demand, which provides new considerations in the field of electric bus charging stations.

Gridded AP Clustering for Location Planning
AP Clustering
Gridded AP Clustering
The Case of Guiyang City
Data Preprocessing
Sequential Expansion Model
Sequential Expansion Rule
A Case Study on Guiyang
Conclusions
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