Traffic-Condition-Prediction-Based HMA-FIS Energy-Management Strategy for Fuel-Cell Electric Vehicles

In the field of Fuel Cell Electric Vehicles (FCEVs), a fuel-cell stack usually works together with a battery to improve powertrain performance. In this hybrid-power system, an Energy Management Strategy (EMS) is essential to configure the hybrid-power sources to provide sufficient energy for driving...

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Main Authors: Gang Yao, Changbo Du, Quanbo Ge, Haoyu Jiang, Yide Wang, Mourad Ait-Ahmed, Luc Moreau
Format: Article
Language:English
Published: MDPI AG 2019-11-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/12/23/4426
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spelling doaj-6664e22c3b55419ead337a6997dda70e2020-11-25T02:17:17ZengMDPI AGEnergies1996-10732019-11-011223442610.3390/en12234426en12234426Traffic-Condition-Prediction-Based HMA-FIS Energy-Management Strategy for Fuel-Cell Electric VehiclesGang Yao0Changbo Du1Quanbo Ge2Haoyu Jiang3Yide Wang4Mourad Ait-Ahmed5Luc Moreau6Sino-Dutch Mechatronics Engineering Department, Shanghai Maritime University, Shanghai 201306, ChinaSino-Dutch Mechatronics Engineering Department, Shanghai Maritime University, Shanghai 201306, ChinaSchool of Electronics and Information Engineering, Tongji University, Shanghai 201804, ChinaHangzhou Zhongheng Power Cloud Technology Co., Ltd, Hangzhou 310053, ChinaIETR-UMR CNRS 6164, l’Universite de Nantes/Polytech Nantes, 44300 Nantes, FranceIREENA, l’Universite de Nantes/Polytech Nantes, 44602 Nantes, FranceIREENA, l’Universite de Nantes/Polytech Nantes, 44602 Nantes, FranceIn the field of Fuel Cell Electric Vehicles (FCEVs), a fuel-cell stack usually works together with a battery to improve powertrain performance. In this hybrid-power system, an Energy Management Strategy (EMS) is essential to configure the hybrid-power sources to provide sufficient energy for driving the FCEV in different traffic conditions. The EMS determines the overall performance of the power supply system; accordingly, EMS research has important theoretical significance and application values on the improvement of energy-utilization efficiency and the serviceability of vehicles’ hybrid-power sources. To overcome the deficiency of apparent filtering lag and improve the adaptability of an EMS to different traffic conditions, this paper proposes a novel EMS based on traffic-condition predictions, frequency decoupling and a Fuzzy Inference System (FIS). An Artificial Neural Network (ANN) was designed to predict traffic conditions according to the vehicle’s running parameters; then, a Hull Moving Average (HMA) algorithm, with filter-window width decided by the prediction result, is introduced to split the demanded power and keep low-frequency components in order to meet the load characteristics of the fuel cell; afterward, an FIS was applied to manage power flows of the FCEV’s hybrid-power sources and maintain the State of Change (SoC) of the battery in a predefined range. Finally, an FCEV simulation platform was built with MATLAB/Simulink and comparison simulations were carried out with the standard test cycle of the Worldwide harmonized Light vehicle Test Procedures (WLTPs). Simulation results showed that the proposed EMS could efficiently coordinate the hybrid-power sources and support the FCEV in following the reference speed with negligible control errors and sufficient power supply; the SoC of the battery was also maintained with good adaptability in different driving conditions.https://www.mdpi.com/1996-1073/12/23/4426fuel-cell electric vehiclebatteriesenergy-management strategyroad-condition predictionhull moving averagefuzzy inference system
collection DOAJ
language English
format Article
sources DOAJ
author Gang Yao
Changbo Du
Quanbo Ge
Haoyu Jiang
Yide Wang
Mourad Ait-Ahmed
Luc Moreau
spellingShingle Gang Yao
Changbo Du
Quanbo Ge
Haoyu Jiang
Yide Wang
Mourad Ait-Ahmed
Luc Moreau
Traffic-Condition-Prediction-Based HMA-FIS Energy-Management Strategy for Fuel-Cell Electric Vehicles
Energies
fuel-cell electric vehicle
batteries
energy-management strategy
road-condition prediction
hull moving average
fuzzy inference system
author_facet Gang Yao
Changbo Du
Quanbo Ge
Haoyu Jiang
Yide Wang
Mourad Ait-Ahmed
Luc Moreau
author_sort Gang Yao
title Traffic-Condition-Prediction-Based HMA-FIS Energy-Management Strategy for Fuel-Cell Electric Vehicles
title_short Traffic-Condition-Prediction-Based HMA-FIS Energy-Management Strategy for Fuel-Cell Electric Vehicles
title_full Traffic-Condition-Prediction-Based HMA-FIS Energy-Management Strategy for Fuel-Cell Electric Vehicles
title_fullStr Traffic-Condition-Prediction-Based HMA-FIS Energy-Management Strategy for Fuel-Cell Electric Vehicles
title_full_unstemmed Traffic-Condition-Prediction-Based HMA-FIS Energy-Management Strategy for Fuel-Cell Electric Vehicles
title_sort traffic-condition-prediction-based hma-fis energy-management strategy for fuel-cell electric vehicles
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2019-11-01
description In the field of Fuel Cell Electric Vehicles (FCEVs), a fuel-cell stack usually works together with a battery to improve powertrain performance. In this hybrid-power system, an Energy Management Strategy (EMS) is essential to configure the hybrid-power sources to provide sufficient energy for driving the FCEV in different traffic conditions. The EMS determines the overall performance of the power supply system; accordingly, EMS research has important theoretical significance and application values on the improvement of energy-utilization efficiency and the serviceability of vehicles’ hybrid-power sources. To overcome the deficiency of apparent filtering lag and improve the adaptability of an EMS to different traffic conditions, this paper proposes a novel EMS based on traffic-condition predictions, frequency decoupling and a Fuzzy Inference System (FIS). An Artificial Neural Network (ANN) was designed to predict traffic conditions according to the vehicle’s running parameters; then, a Hull Moving Average (HMA) algorithm, with filter-window width decided by the prediction result, is introduced to split the demanded power and keep low-frequency components in order to meet the load characteristics of the fuel cell; afterward, an FIS was applied to manage power flows of the FCEV’s hybrid-power sources and maintain the State of Change (SoC) of the battery in a predefined range. Finally, an FCEV simulation platform was built with MATLAB/Simulink and comparison simulations were carried out with the standard test cycle of the Worldwide harmonized Light vehicle Test Procedures (WLTPs). Simulation results showed that the proposed EMS could efficiently coordinate the hybrid-power sources and support the FCEV in following the reference speed with negligible control errors and sufficient power supply; the SoC of the battery was also maintained with good adaptability in different driving conditions.
topic fuel-cell electric vehicle
batteries
energy-management strategy
road-condition prediction
hull moving average
fuzzy inference system
url https://www.mdpi.com/1996-1073/12/23/4426
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