Sensitivity Analysis of the Battery Model for Model Predictive Control: Implementable to a Plug-In Hybrid Electric Vehicle

Developing an efficient online predictive modeling system (PMS) is a major issue in the field of electrified vehicles as it can help reduce fuel consumption, greenhouse gasses (GHG) emission, but also the aging of power-train components, such as the battery. For this manuscript, a model predictive c...

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Main Authors: Nicolas Sockeel, Jian Shi, Masood Shahverdi, Michael Mazzola
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:World Electric Vehicle Journal
Subjects:
Online Access:https://www.mdpi.com/2032-6653/9/4/45
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spelling doaj-de3c4f7005ca4b68bd5673d01a2c40732020-11-25T02:11:07ZengMDPI AGWorld Electric Vehicle Journal2032-66532018-11-01944510.3390/wevj9040045wevj9040045Sensitivity Analysis of the Battery Model for Model Predictive Control: Implementable to a Plug-In Hybrid Electric VehicleNicolas Sockeel0Jian Shi1Masood Shahverdi2Michael Mazzola3Energy Production and Infrastructure Center, University of North Carolina, Charlotte, NC 28223, USACenter for Advanced Vehicular Systems, Mississippi State University, Starkville, MS 39759, USAElectrical and Computer Engineering Department, California State University, Los Angeles, CA 90032, USAEnergy Production and Infrastructure Center, University of North Carolina, Charlotte, NC 28223, USADeveloping an efficient online predictive modeling system (PMS) is a major issue in the field of electrified vehicles as it can help reduce fuel consumption, greenhouse gasses (GHG) emission, but also the aging of power-train components, such as the battery. For this manuscript, a model predictive control (MPC) has been considered as PMS. This control design has been defined as an optimization problem that uses the projected system behaviors over a finite prediction horizon to determine the optimal control solution for the current time instant. In this manuscript, the MPC controller intents to diminish simultaneously the battery aging and the equivalent fuel consumption. The main contribution of this manuscript is to evaluate numerically the impacts of the vehicle battery model on the MPC optimal control solution when the plug hybrid electric vehicle (PHEV) is in the battery charge sustaining mode. Results show that the higher fidelity model improves the capability of accurately predicting the battery aging.https://www.mdpi.com/2032-6653/9/4/45battery modelinghybrid electric vehiclemodel predictive controloptimization algorithmsensitivity analysis
collection DOAJ
language English
format Article
sources DOAJ
author Nicolas Sockeel
Jian Shi
Masood Shahverdi
Michael Mazzola
spellingShingle Nicolas Sockeel
Jian Shi
Masood Shahverdi
Michael Mazzola
Sensitivity Analysis of the Battery Model for Model Predictive Control: Implementable to a Plug-In Hybrid Electric Vehicle
World Electric Vehicle Journal
battery modeling
hybrid electric vehicle
model predictive control
optimization algorithm
sensitivity analysis
author_facet Nicolas Sockeel
Jian Shi
Masood Shahverdi
Michael Mazzola
author_sort Nicolas Sockeel
title Sensitivity Analysis of the Battery Model for Model Predictive Control: Implementable to a Plug-In Hybrid Electric Vehicle
title_short Sensitivity Analysis of the Battery Model for Model Predictive Control: Implementable to a Plug-In Hybrid Electric Vehicle
title_full Sensitivity Analysis of the Battery Model for Model Predictive Control: Implementable to a Plug-In Hybrid Electric Vehicle
title_fullStr Sensitivity Analysis of the Battery Model for Model Predictive Control: Implementable to a Plug-In Hybrid Electric Vehicle
title_full_unstemmed Sensitivity Analysis of the Battery Model for Model Predictive Control: Implementable to a Plug-In Hybrid Electric Vehicle
title_sort sensitivity analysis of the battery model for model predictive control: implementable to a plug-in hybrid electric vehicle
publisher MDPI AG
series World Electric Vehicle Journal
issn 2032-6653
publishDate 2018-11-01
description Developing an efficient online predictive modeling system (PMS) is a major issue in the field of electrified vehicles as it can help reduce fuel consumption, greenhouse gasses (GHG) emission, but also the aging of power-train components, such as the battery. For this manuscript, a model predictive control (MPC) has been considered as PMS. This control design has been defined as an optimization problem that uses the projected system behaviors over a finite prediction horizon to determine the optimal control solution for the current time instant. In this manuscript, the MPC controller intents to diminish simultaneously the battery aging and the equivalent fuel consumption. The main contribution of this manuscript is to evaluate numerically the impacts of the vehicle battery model on the MPC optimal control solution when the plug hybrid electric vehicle (PHEV) is in the battery charge sustaining mode. Results show that the higher fidelity model improves the capability of accurately predicting the battery aging.
topic battery modeling
hybrid electric vehicle
model predictive control
optimization algorithm
sensitivity analysis
url https://www.mdpi.com/2032-6653/9/4/45
work_keys_str_mv AT nicolassockeel sensitivityanalysisofthebatterymodelformodelpredictivecontrolimplementabletoapluginhybridelectricvehicle
AT jianshi sensitivityanalysisofthebatterymodelformodelpredictivecontrolimplementabletoapluginhybridelectricvehicle
AT masoodshahverdi sensitivityanalysisofthebatterymodelformodelpredictivecontrolimplementabletoapluginhybridelectricvehicle
AT michaelmazzola sensitivityanalysisofthebatterymodelformodelpredictivecontrolimplementabletoapluginhybridelectricvehicle
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