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Research on electric vehicle (EV) driving range prediction method based on PSO-LSSVM | IEEE Conference Publication | IEEE Xplore

Research on electric vehicle (EV) driving range prediction method based on PSO-LSSVM


Abstract:

Electric vehicle (EV) driving range directly reflects EVs' performance, safety, reliability and economy. EV has gained wide attention in recent years. However, most of re...Show More

Abstract:

Electric vehicle (EV) driving range directly reflects EVs' performance, safety, reliability and economy. EV has gained wide attention in recent years. However, most of researches are carried out under ideal conditions and the existing methods have numerous drawbacks. This paper presents a novel prediction method based on a least squares support vector machine (LSSVM) model with parameters γ and σ2 optimized by particle swarm optimization (PSO). The main parameters which cannot be obtained directly by drivers such as days, temperature, depth of discharge (DOD) of battery pack are used for training model to predict EV driving range. Furthermore, the performance of PSO-LSSVM model is illustrated by statistical parameters (RE and AARE). AARE of training data and testing data is 1.99% and 5.99% respectively. The results suggest that the model has a stability, generalization ability and reliable predictive performance to predict EV driving range. Meanwhile, the results can also provide a guidance for drivers to grasp and manage their EVs' health conditions and predict the driving range.
Date of Conference: 19-21 June 2017
Date Added to IEEE Xplore: 03 August 2017
ISBN Information:
Conference Location: Dallas, TX, USA
Citations are not available for this document.

I. Introduction

As the environmental problems and energy crisis are becoming more and more serious, electric vehicles (EVs) are considered to be the most significant green transportation alternative for the foreseeable future [1]. However, because the energy density of commonly used lithium-ion batteries are far lower than the fuel like gasoline or diesel [2], limited driving range is the biggest obstacle of developing EVs. Drivers are seriously concerned about EV driving range because EV driving range can directly reflect EVs' performance, safety, health and reliability. Therefore, it is significant to predict EV driving range and analyze the primary factors determining EV driving range.

Cites in Papers - |

Cites in Papers - IEEE (3)

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1.
Seokjoon Hong, Shengmin Cui, Hoyeon Hwang, Inwhee Joe, Won-Tae Kim, "Personalized Energy Consumption Prediction of CAEVs With Personal Driving Cycle Selection", IEEE Access, vol.10, pp.54459-54473, 2022.
2.
Ozgur Aktekin, Gokhan Gumus, Cuneyt Haspolat, Mehmet Ali Ongun, "Average Consumption-Based Range Estimator Design for a Human-Electric Hybrid Vehicle", 2019 11th International Conference on Electrical and Electronics Engineering (ELECO), pp.840-844, 2019.
3.
Shan Zhang, Xiaoli Li, Yang Li, Jianxiang Mei, "Prediction of Urban PM2.5 Concentration Based on Wavelet Neural Network", 2018 Chinese Control And Decision Conference (CCDC), pp.5514-5519, 2018.

Cites in Papers - Other Publishers (4)

1.
Shilong Zhuo, Heng Li, Muaaz Bin Kaleem, Hui Peng, Yue Wu, "Digital Twin-Based Remaining Driving Range Prediction for Connected Electric Vehicles", SAE International Journal of Electrified Vehicles, vol.13, no.1, 2023.
2.
Yuntao Hou, Zequan Wu, Xiaohua Cai, Zhongge Dong, "Prediction Method of Soft Fault and Service Life of DC-DC-Converter Circuit Based on Improved Support Vector Machine", Entropy, vol.24, no.3, pp.402, 2022.
3.
Sheng Tian, Chengwei Li, Qing Lv, Jia Li, "Method for predicting the remaining mileage of electric vehicles based on dimension expansion and model fusion", IET Intelligent Transport Systems, vol.16, no.8, pp.1074, 2022.
4.
Abhinav Tiwari, Hany Farag, "Analysis and Modeling of Value Creation Opportunities and Governing Factors for Electric Vehicle Proliferation", Energies, vol.16, no.1, pp.438, 2022.
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References

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