Neural network-based energy management of multi-source (battery/UC/FC) powered electric vehicle
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Date
2020
Authors
Huseyin Ayhan Yavasoglu
Yusuf Engin Tetik
Huseyin Gunhan Ozcan
Journal Title
Journal ISSN
Volume Title
Publisher
John Wiley and Sons Ltd
Open Access Color
GOLD
Green Open Access
Yes
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Publicly Funded
No
Abstract
Due to increased environmental pollution and global warming concerns the use of energy storage units that can be supported by renewable energy resources in transportation becomes more of an issue and plays a vital role in terms of clean energy solutions. However utilization of multiple energy storage units together in an electric vehicle makes the powertrain system more complex and difficult to control. For this reason the present study proposes an advanced energy management strategy (EMS) for range extended battery electric vehicles (BEVs) with complex powertrain structure. Hybrid energy storage system (HESS) consists of battery ultra-capacitor (UC) fuel cell (FC) and the vehicle is propelled with two complementary propulsion machines. To increase powertrain efficiency traction power is simultaneously shared at different rates by propulsion machines. Propulsion powers are shared by HESS units according to following objectives: extending battery lifetime utilizing UC and FC effectively. Primarily to optimize the power split in HESS a convex optimization problem is formulated to meet given objectives that results 5 years prolonged battery lifetime. However convex optimization of complex systems can be arduous due to the excessive number of parameters that has to be taken into consideration and not all systems are suitable for linearization. Therefore a neural network (NN)-based machine learning (ML) algorithm is proposed to solve multi-objective energy management problem. Proposed NN model is trained with convex optimization outputs and according to the simulation results the trained NN model solves the optimization problem within 92.5% of the convex optimization one. © 2020 Elsevier B.V. All rights reserved.
Description
Keywords
Artificial Neural Network, Convex Optimization, Electric Vehicle, Energy Management Strategy, Fuel Cell, Hybrid Energy Storage System, Machine Learning, Ultra-capacitor, Battery Electric Vehicles, Complex Networks, Convex Optimization, Energy Management, Energy Storage, Fuel Cells, Fuel Storage, Global Warming, Machine Learning, Neural Networks, Powertrains, Propulsion, Renewable Energy Resources, Convex Optimization Problems, Energy Management Strategies (ems), Environmental Pollutions, Hybrid Energy Storage Systems (hess), Management Problems, Neural Network (nn), Optimization Problems, Power-train Systems, Automotive Batteries, Battery electric vehicles, Complex networks, Convex optimization, Energy management, Energy storage, Fuel cells, Fuel storage, Global warming, Machine learning, Neural networks, Powertrains, Propulsion, Renewable energy resources, Convex optimization problems, Energy management strategies (EMS), Environmental pollutions, Hybrid energy storage systems (HESS), Management problems, Neural network (nn), Optimization problems, Power-train systems, Automotive batteries, Ultra-capacitor, Artificial Neural Network, Hybrid Energy Storage System, Fuel Cell, Electric Vehicle, Energy Management Strategy, Convex Optimization, Machine Learning
Fields of Science
0211 other engineering and technologies, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
62
Source
International Journal of Energy Research
Volume
44
Issue
15
Start Page
12416
End Page
12429
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Citations
CrossRef : 27
Scopus : 74
Captures
Mendeley Readers : 85
SCOPUS™ Citations
74
checked on Apr 10, 2026
Web of Science™ Citations
64
checked on Apr 10, 2026
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