Electric Vehicles Batteries Modeling Analysis Based on a Multiple Layered Perceptron Identification Approach

2015-36-0142

09/22/2015

Event
24th SAE Brasil International Congress and Display
Authors Abstract
Content
A reliable battery state estimation management system in electric vehicles greatly depends on the validity and generalizability of battery models. This paper presents a Li-ion and Lead Acid batteries neural model. This model does not consider battery details, bringing universality, which is suitable for parameters estimation of all battery kinds. The final model proposes describe the dynamic contributions due to open-circuit voltage, polarization time constants, electrochemical hysteresis, effects of temperature, state of charge and state of health.
Meta TagsDetails
DOI
https://doi.org/10.4271/2015-36-0142
Pages
10
Citation
dos Santos, S., de Sousa, T., de Tarso Peres, P., de Fátima Negreli Campos Rosolem, M. et al., "Electric Vehicles Batteries Modeling Analysis Based on a Multiple Layered Perceptron Identification Approach," SAE Technical Paper 2015-36-0142, 2015, https://doi.org/10.4271/2015-36-0142.
Additional Details
Publisher
Published
Sep 22, 2015
Product Code
2015-36-0142
Content Type
Technical Paper
Language
English