Incremental Capacity Analysis-Based Impact Study of Diverse Usage Patterns on Lithium-Ion Battery Aging in Electrified Vehicles

Aging assessment is critical for lithium-ion batteries (LIBs) as the technology of choice for energy storage in electrified vehicles (EVs). Existing research is mainly focused on either increasing modeling precision or improving algorithm efficiency, while the significance of data applied for aging...

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Main Author: Meng Huang
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Batteries
Subjects:
Online Access:https://www.mdpi.com/2313-0105/5/3/59
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spelling doaj-8edac280ea2c4a2bb3aad22a8079c8ca2020-11-25T01:54:25ZengMDPI AGBatteries2313-01052019-09-01535910.3390/batteries5030059batteries5030059Incremental Capacity Analysis-Based Impact Study of Diverse Usage Patterns on Lithium-Ion Battery Aging in Electrified VehiclesMeng Huang0Department of Mechanical and Aerospace Engineering, the Ohio State University, 201 W 19th Ave, Columbus, OH 43210, USAAging assessment is critical for lithium-ion batteries (LIBs) as the technology of choice for energy storage in electrified vehicles (EVs). Existing research is mainly focused on either increasing modeling precision or improving algorithm efficiency, while the significance of data applied for aging assessment has been largely overlooked. Moreover, reported studies are mostly confined to a specific condition without considering the impacts of diverse usage patterns on battery aging, which is practically challenging and can greatly affect battery degradation. This paper addresses these issues through incremental capacity (IC) analysis, which can both utilize data directly available from on-board sensors and interpret degradations from a physics-based perspective. Through IC analysis, the optimal health feature (HF) and the state of charge (SOC)-based optimal data profile for battery aging assessment have been identified. Four stress factors, i.e., depth-of-discharge (DOD), charging C-rate, operating mode, and temperature, have been selected to jointly characterize diverse usage patterns. Impact analysis of different stress factors through the optimal HF with the SOC-based optimal data profile from aging campaign experiments have generated practical guidance on usage patterns to improve battery health monitoring and lifetime control strategies.https://www.mdpi.com/2313-0105/5/3/59lithium-ion batteryagingcapacity fadeincremental capacity analysisusage patternhealth featureoptimal data profileelectrified vehicle
collection DOAJ
language English
format Article
sources DOAJ
author Meng Huang
spellingShingle Meng Huang
Incremental Capacity Analysis-Based Impact Study of Diverse Usage Patterns on Lithium-Ion Battery Aging in Electrified Vehicles
Batteries
lithium-ion battery
aging
capacity fade
incremental capacity analysis
usage pattern
health feature
optimal data profile
electrified vehicle
author_facet Meng Huang
author_sort Meng Huang
title Incremental Capacity Analysis-Based Impact Study of Diverse Usage Patterns on Lithium-Ion Battery Aging in Electrified Vehicles
title_short Incremental Capacity Analysis-Based Impact Study of Diverse Usage Patterns on Lithium-Ion Battery Aging in Electrified Vehicles
title_full Incremental Capacity Analysis-Based Impact Study of Diverse Usage Patterns on Lithium-Ion Battery Aging in Electrified Vehicles
title_fullStr Incremental Capacity Analysis-Based Impact Study of Diverse Usage Patterns on Lithium-Ion Battery Aging in Electrified Vehicles
title_full_unstemmed Incremental Capacity Analysis-Based Impact Study of Diverse Usage Patterns on Lithium-Ion Battery Aging in Electrified Vehicles
title_sort incremental capacity analysis-based impact study of diverse usage patterns on lithium-ion battery aging in electrified vehicles
publisher MDPI AG
series Batteries
issn 2313-0105
publishDate 2019-09-01
description Aging assessment is critical for lithium-ion batteries (LIBs) as the technology of choice for energy storage in electrified vehicles (EVs). Existing research is mainly focused on either increasing modeling precision or improving algorithm efficiency, while the significance of data applied for aging assessment has been largely overlooked. Moreover, reported studies are mostly confined to a specific condition without considering the impacts of diverse usage patterns on battery aging, which is practically challenging and can greatly affect battery degradation. This paper addresses these issues through incremental capacity (IC) analysis, which can both utilize data directly available from on-board sensors and interpret degradations from a physics-based perspective. Through IC analysis, the optimal health feature (HF) and the state of charge (SOC)-based optimal data profile for battery aging assessment have been identified. Four stress factors, i.e., depth-of-discharge (DOD), charging C-rate, operating mode, and temperature, have been selected to jointly characterize diverse usage patterns. Impact analysis of different stress factors through the optimal HF with the SOC-based optimal data profile from aging campaign experiments have generated practical guidance on usage patterns to improve battery health monitoring and lifetime control strategies.
topic lithium-ion battery
aging
capacity fade
incremental capacity analysis
usage pattern
health feature
optimal data profile
electrified vehicle
url https://www.mdpi.com/2313-0105/5/3/59
work_keys_str_mv AT menghuang incrementalcapacityanalysisbasedimpactstudyofdiverseusagepatternsonlithiumionbatteryaginginelectrifiedvehicles
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