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Predictive Model for EV Charging Load Incorporating Multimodal Travel Behavior and Microscopic Traffic Simulation
by
Zhou, Chengang
, Zhang, Zhiyuan
, Bian, Haihong
, Guo, Zhengyang
, Ren, Quance
, Wang, Ximeng
in
Algorithms
/ Battery chargers
/ Behavior
/ Case studies
/ charging load predictive model
/ Data processing
/ Decision-making
/ electric vehicle
/ Electric vehicles
/ Electricity distribution
/ Energy consumption
/ microscopic traffic simulation
/ optimal path decision-making
/ Probability
/ Roads & highways
/ Simulation
/ Simulation methods
/ Traffic congestion
/ Traffic control
/ Traffic flow
/ Transportation planning
/ Travel
/ travel spatiotemporal model
2024
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Predictive Model for EV Charging Load Incorporating Multimodal Travel Behavior and Microscopic Traffic Simulation
by
Zhou, Chengang
, Zhang, Zhiyuan
, Bian, Haihong
, Guo, Zhengyang
, Ren, Quance
, Wang, Ximeng
in
Algorithms
/ Battery chargers
/ Behavior
/ Case studies
/ charging load predictive model
/ Data processing
/ Decision-making
/ electric vehicle
/ Electric vehicles
/ Electricity distribution
/ Energy consumption
/ microscopic traffic simulation
/ optimal path decision-making
/ Probability
/ Roads & highways
/ Simulation
/ Simulation methods
/ Traffic congestion
/ Traffic control
/ Traffic flow
/ Transportation planning
/ Travel
/ travel spatiotemporal model
2024
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Predictive Model for EV Charging Load Incorporating Multimodal Travel Behavior and Microscopic Traffic Simulation
by
Zhou, Chengang
, Zhang, Zhiyuan
, Bian, Haihong
, Guo, Zhengyang
, Ren, Quance
, Wang, Ximeng
in
Algorithms
/ Battery chargers
/ Behavior
/ Case studies
/ charging load predictive model
/ Data processing
/ Decision-making
/ electric vehicle
/ Electric vehicles
/ Electricity distribution
/ Energy consumption
/ microscopic traffic simulation
/ optimal path decision-making
/ Probability
/ Roads & highways
/ Simulation
/ Simulation methods
/ Traffic congestion
/ Traffic control
/ Traffic flow
/ Transportation planning
/ Travel
/ travel spatiotemporal model
2024
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Predictive Model for EV Charging Load Incorporating Multimodal Travel Behavior and Microscopic Traffic Simulation
Journal Article
Predictive Model for EV Charging Load Incorporating Multimodal Travel Behavior and Microscopic Traffic Simulation
2024
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Overview
A predictive model for the spatiotemporal distribution of electric vehicle (EV) charging load is proposed in this paper, considering multimodal travel behavior and microscopic traffic simulation. Firstly, the characteristic variables of travel time are fitted using advanced techniques such as Gaussian mixture distribution. Simultaneously, the user’s multimodal travel behavior is delineated by introducing travel purpose transfer probabilities, thus establishing a comprehensive travel spatiotemporal model. Secondly, the improved Floyd algorithm is employed to select the optimal path, taking into account various factors including signal light status, vehicle speed, and the position of starting and ending sections. Moreover, the approach of multi-lane lane change following and the utilization of cellular automata theory are introduced. To establish a microscopic traffic simulation model, a real-time energy consumption model is integrated with the aforementioned techniques. Thirdly, the minimum regret value is leveraged in conjunction with various other factors, including driving purpose, charging station electricity price, parking cost, and more, to simulate the decision-making process of users regarding charging stations. Subsequently, an EV charging load predictive framework is proposed based on the approach driven by electricity prices and real-time interaction of coupled network information. Finally, this paper conducts large-scale simulations to analyze the spatiotemporal distribution characteristics of EV charging load using a regional transportation network in East China and a typical power distribution network as case studies, thereby validating the feasibility of the proposed method.
Publisher
MDPI AG
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