Abstract

Coordinated charging of electric vehicles (EVs) improves the overall efficiency of the power grid as it avoids distribution system overloads, increases power quality, and decreases voltage fluctuations. Moreover, the coordinated charging supports flattening the load profile. Therefore, an effective coordination technique is crucial for the protection of the distribution grid and its components. The substantial power used through charging EVs has undeniable negative impacts on the power grid. Additionally, with the increasing use of EVs, an effective solution for the coordination of EVs charging, particularly when considering the anticipated proliferation of EV fast chargers, is imminently required. In this paper, different machine learning (ML) approaches are compared for the coordination of EVs charging. The ML models can predict the power to be used in EVs charging stations (EVCS). Due to its ability to use historical data to learn and identify patterns for making future decisions with minimal user intervention, ML has been utilized. ML models used in this paper are (1) Decision Tree (DT), (2) Random Forest (RF), (3) Support Vector Machine (SVM), (4) Naïve Bayes (NB), (5) K-Nearest Neighbors (KNN), (6) Deep Neural Networks (DNN), and (7) Long Short-Term Memory (LSTM). These approaches are chosen as they are classifiers known to have the leading results for multiclass classification problems. The results found shed insight on the importance of the techniques used and their high potential in providing a reliable solution for the coordinated charging of EVs, thus improving the performance of the power grid, and reducing power losses and voltage fluctuations. The use of ML provides a less complex method to coordinate EVs, in comparison with conventional optimization techniques such as quadratic programming, and the use of ML is faster as it requires less computational power. LSTM provided the best results with an accuracy of 95% for predicting the most appropriate power rating (PR) for EVCS, followed by RF, DT, DNN, SVM, KNN, and NB. Additionally, LSTM was also the model with the smallest error rate, at a value of ±0.7%, followed by RF, DT, KNN, SVM, DNN, and NB. The results obtained from the LSTM model were similar to the results obtained from past literature using quadratic programming, with the increased speed and simplicity of ML.

Highlights

  • The electric vehicle (EV) industry is rapidly expanding with more countries adopting electric vehicles charging stations (EVCS)

  • machine learning (ML) models used in this paper are (1) Decision Tree (DT), (2) Random Forest (RF), (3) Support Vector Machine (SVM), (4) Naïve Bayes (NB), (5) K-Nearest Neighbors (KNN), (6) Deep Neural Networks (DNN), and (7) Long Short-Term Memory (LSTM)

  • LSTM provided the best results with an accuracy of 95% for predicting the most appropriate power rating (PR) for EVCS, followed by RF, DT, DNN, SVM, KNN, and NB

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Summary

Introduction

The electric vehicle (EV) industry is rapidly expanding with more countries adopting electric vehicles charging stations (EVCS). It is vital to be able to control the charging stations by coordinating the charging of EVs in a way that protects the power grid and its components. The presented system in this paper can adopt such charging methods as loads and control their operation in the same way as standard EVCS. Using ML to choose the most appropriate mode of operation for the EVCS, which include fast charging, conventional charging, and supporting the grid (discharging), and comparing the use of ML with quadratic programming for minimizing load variance while operating EVCS.

Electric Vehicles Charging Stations
Decision Support Systems and Prediction Modeling
Coordinated Charging of Electric Vehicles
Distribution Network and Electric Vehicles Charging Stations Operation
Optimization Problem
Machine Learning Techniques
Naïve Bayes
K-Nearest Neighbors
Support Vector Machine
Decision Tree
Random Forest
Deep Neural Networks
Recurrent Neural Networks
Machine Learning for Coordinated Electric Vehicles Charging
System Limitations
Model Parameters
Data Description
Model Construction
Machine Learning Predictive Models
Results
Classification Accuracy
Comparison Between ML Models
Effect of Coordinated Electric Vehicles Charging on the Grid
Conclusions
10. Future Work
Full Text
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