A Mobility Performance Assessment on Plug-in EV Battery

This paper deals with mobility prediction of LiFeMnPO_4 batteries for an emission-free Electric Vehicle. The data-driven model has been developed based on empirical data from two different road types –highway and local streets –and two different driving modes – aggressive and moderate. Battery State...

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Main Authors: Jay Lee, Chuan Jiang, Seyed Mohammad Rezvanizaniani, Yixiang Huang
Format: Article
Language:English
Published: The Prognostics and Health Management Society 2012-12-01
Series:International Journal of Prognostics and Health Management
Subjects:
Online Access:https://www.phmsociety.org/node/922
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spelling doaj-24b38a78d4b54230babf90d3ba608c7c2021-07-02T05:27:33ZengThe Prognostics and Health Management SocietyInternational Journal of Prognostics and Health Management2153-26482012-12-01328088A Mobility Performance Assessment on Plug-in EV BatteryJay LeeChuan JiangSeyed Mohammad RezvanizanianiYixiang HuangThis paper deals with mobility prediction of LiFeMnPO_4 batteries for an emission-free Electric Vehicle. The data-driven model has been developed based on empirical data from two different road types –highway and local streets –and two different driving modes – aggressive and moderate. Battery State of Charge (SoC) can be predicted on any new roads based on the trained model by selecting the drving mode. In this paper, the performance of Adaptive Recurrent Neural Network (ARNN) and regression is evaluated using two benchmark data sets. The ARNN model at first estimates the speed profile of the new road based on slope and then both slope and speed is going to be used as the input to estimate battery current and SoC. Through comparison it is found that if ARNN system is appropriately trained, it performs with better accuracy than Regression in both two road types and driving modes. The results show that prediction SoC model follows the Columb-counting SoC according to the road slope.https://www.phmsociety.org/node/922Battery SoC Mobility Road condition driving behavior recurrent neural network
collection DOAJ
language English
format Article
sources DOAJ
author Jay Lee
Chuan Jiang
Seyed Mohammad Rezvanizaniani
Yixiang Huang
spellingShingle Jay Lee
Chuan Jiang
Seyed Mohammad Rezvanizaniani
Yixiang Huang
A Mobility Performance Assessment on Plug-in EV Battery
International Journal of Prognostics and Health Management
Battery SoC Mobility Road condition driving behavior recurrent neural network
author_facet Jay Lee
Chuan Jiang
Seyed Mohammad Rezvanizaniani
Yixiang Huang
author_sort Jay Lee
title A Mobility Performance Assessment on Plug-in EV Battery
title_short A Mobility Performance Assessment on Plug-in EV Battery
title_full A Mobility Performance Assessment on Plug-in EV Battery
title_fullStr A Mobility Performance Assessment on Plug-in EV Battery
title_full_unstemmed A Mobility Performance Assessment on Plug-in EV Battery
title_sort mobility performance assessment on plug-in ev battery
publisher The Prognostics and Health Management Society
series International Journal of Prognostics and Health Management
issn 2153-2648
publishDate 2012-12-01
description This paper deals with mobility prediction of LiFeMnPO_4 batteries for an emission-free Electric Vehicle. The data-driven model has been developed based on empirical data from two different road types –highway and local streets –and two different driving modes – aggressive and moderate. Battery State of Charge (SoC) can be predicted on any new roads based on the trained model by selecting the drving mode. In this paper, the performance of Adaptive Recurrent Neural Network (ARNN) and regression is evaluated using two benchmark data sets. The ARNN model at first estimates the speed profile of the new road based on slope and then both slope and speed is going to be used as the input to estimate battery current and SoC. Through comparison it is found that if ARNN system is appropriately trained, it performs with better accuracy than Regression in both two road types and driving modes. The results show that prediction SoC model follows the Columb-counting SoC according to the road slope.
topic Battery SoC Mobility Road condition driving behavior recurrent neural network
url https://www.phmsociety.org/node/922
work_keys_str_mv AT jaylee amobilityperformanceassessmentonpluginevbattery
AT chuanjiang amobilityperformanceassessmentonpluginevbattery
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AT jaylee mobilityperformanceassessmentonpluginevbattery
AT chuanjiang mobilityperformanceassessmentonpluginevbattery
AT seyedmohammadrezvanizaniani mobilityperformanceassessmentonpluginevbattery
AT yixianghuang mobilityperformanceassessmentonpluginevbattery
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