This paper proposes a multi-scale parameter identification algorithm for the lithium-ion battery (LIB) electric model by using a combination of particle swarm optimization (PSO) and Levenberg-Marquardt (LM) algorithms. Two-dimensional Poisson equations with unknown parameters are used to describe the potential and current density distribution (PDD) of the positive and negative electrodes in the LIB electric model. The model parameters are difficult to determine in the simulation due to the nonlinear complexity of the model. In the proposed identification algorithm, PSO is used for the coarse-scale parameter identification and the LM algorithm is applied for the fine-scale parameter identification. The experiment results show that the multi-...
A well-parameterized battery model is prerequisite of the model-based estimation and control of lith...
The parameters of a well predicted model can be used as health characteristics for Lithium-ion batte...
Because of the common data redundancy phenomenon in the current least-squares parameter identificati...
This paper proposes a multi-scale parameter identification algorithm for the lithium-ion battery (LI...
The dynamic characteristics of power batteries directly affect the performance of electric vehicles,...
An accurate and practical model of lithium-ion batteries (LIBs) is necessary for state and health mo...
Electric vehicles, as a new green mode of transportation, have put forward higher demand indicators ...
Nowadays, the equivalent circuit approach is one of the most used methods for modeling electrochemic...
A gradient free function optimization technique, namely particle swarm optimization (PSO) algorithm,...
The state-of-charge (SOC) estimation is an enabling technique for the efficient management and contr...
This thesis investigates novel algorithms for enabling the use of first-principle electrochemical mo...
Nowadays an effective Energy Storage System (ESS) is a fundamental requirement for any effective inn...
Lithium-ion batteries have been used in many applications owing to their high energy density and rec...
Underlying data and numerical model for the journal paper "A Multi-Step Parameter Identification of ...
The precise assessment of the state of charge (SOC) of lithium-ion batteries (LIBs) is critical in b...
A well-parameterized battery model is prerequisite of the model-based estimation and control of lith...
The parameters of a well predicted model can be used as health characteristics for Lithium-ion batte...
Because of the common data redundancy phenomenon in the current least-squares parameter identificati...
This paper proposes a multi-scale parameter identification algorithm for the lithium-ion battery (LI...
The dynamic characteristics of power batteries directly affect the performance of electric vehicles,...
An accurate and practical model of lithium-ion batteries (LIBs) is necessary for state and health mo...
Electric vehicles, as a new green mode of transportation, have put forward higher demand indicators ...
Nowadays, the equivalent circuit approach is one of the most used methods for modeling electrochemic...
A gradient free function optimization technique, namely particle swarm optimization (PSO) algorithm,...
The state-of-charge (SOC) estimation is an enabling technique for the efficient management and contr...
This thesis investigates novel algorithms for enabling the use of first-principle electrochemical mo...
Nowadays an effective Energy Storage System (ESS) is a fundamental requirement for any effective inn...
Lithium-ion batteries have been used in many applications owing to their high energy density and rec...
Underlying data and numerical model for the journal paper "A Multi-Step Parameter Identification of ...
The precise assessment of the state of charge (SOC) of lithium-ion batteries (LIBs) is critical in b...
A well-parameterized battery model is prerequisite of the model-based estimation and control of lith...
The parameters of a well predicted model can be used as health characteristics for Lithium-ion batte...
Because of the common data redundancy phenomenon in the current least-squares parameter identificati...