The parameters of a well predicted model can be used as health characteristics for Lithium-ion battery. This article reports a parallelized parameter identification of the thermal-electrochemical model, which significantly reduces the time consumption of parameter identification. Since the P2D model has the most predictability, it is chosen for further research and expanded to the thermal-electrochemical model by coupling thermal effect and temperature-dependent parameters. Then Genetic Algorithm is used for parameter identification, but it takes too much time because of the long time simulation of model. For this reason, a computer cluster is built by surplus computing resource in our laboratory based on Parallel Computing Toolbox and Dist...
The dynamic characteristics of power batteries directly affect the performance of electric vehicles,...
The key challenge in developing a physico-chemical model is the model parameterization. The paper pr...
A gradient free function optimization technique, namely particle swarm optimization (PSO) algorithm,...
Lithium-ion batteries have been used in many applications owing to their high energy density and rec...
This paper proposes a multi-scale parameter identification algorithm for the lithium-ion battery (LI...
This thesis investigates novel algorithms for enabling the use of first-principle electrochemical mo...
Data and simulation files of the paper “Parameter Estimation of an Electrochemistry-based Lithium-io...
The electrochemical model is one of the important model of battery, since it represents the real dyn...
This paper presents an accurate Lithium-ion battery model representation in Matlab/Simulink. The Tre...
The main objective of the thesis is to construct high-performance, reduced order, electrochemical mo...
The proliferation and prevalence of lithium ion batteries has produced a surge in research into elec...
In this work, a LiFePO4/C commercial cylindrical battery cell is modeled with a P2D model coupled wi...
Underlying data and numerical model for the journal paper "A Multi-Step Parameter Identification of ...
The market for lithium-ion batteries is growing exponentially. The performance of battery cells is g...
The genetic algorithm (GA) is one of the most used methods to identify the parameters of Li-ion batt...
The dynamic characteristics of power batteries directly affect the performance of electric vehicles,...
The key challenge in developing a physico-chemical model is the model parameterization. The paper pr...
A gradient free function optimization technique, namely particle swarm optimization (PSO) algorithm,...
Lithium-ion batteries have been used in many applications owing to their high energy density and rec...
This paper proposes a multi-scale parameter identification algorithm for the lithium-ion battery (LI...
This thesis investigates novel algorithms for enabling the use of first-principle electrochemical mo...
Data and simulation files of the paper “Parameter Estimation of an Electrochemistry-based Lithium-io...
The electrochemical model is one of the important model of battery, since it represents the real dyn...
This paper presents an accurate Lithium-ion battery model representation in Matlab/Simulink. The Tre...
The main objective of the thesis is to construct high-performance, reduced order, electrochemical mo...
The proliferation and prevalence of lithium ion batteries has produced a surge in research into elec...
In this work, a LiFePO4/C commercial cylindrical battery cell is modeled with a P2D model coupled wi...
Underlying data and numerical model for the journal paper "A Multi-Step Parameter Identification of ...
The market for lithium-ion batteries is growing exponentially. The performance of battery cells is g...
The genetic algorithm (GA) is one of the most used methods to identify the parameters of Li-ion batt...
The dynamic characteristics of power batteries directly affect the performance of electric vehicles,...
The key challenge in developing a physico-chemical model is the model parameterization. The paper pr...
A gradient free function optimization technique, namely particle swarm optimization (PSO) algorithm,...