Simple statistical models and sequential deep learning for Lithium-ion batteries degradation under dynamic conditions: Fractional Polynomials vs Neural Networks

02/16/2021
by   Clara B. Salucci, et al.
0

Longevity and safety of Lithium-ion batteries are facilitated by efficient monitoring and adjustment of the battery operating conditions: hence, it is crucial to implement fast and accurate algorithms for State of Health (SoH) monitoring on the Battery Management System. The task is challenging due to the complexity and multitude of the factors contributing to the battery capacity degradation, especially because the different degradation processes occur at various timescales and their interactions play an important role. This paper proposes and compares two data-driven approaches: a Long Short-Term Memory neural network, from the field of deep learning, and a Multivariable Fractional Polynomial regression, from classical statistics. Models from both classes are trained from historical data of one exhausted cell and used to predict the SoH of other cells. This work uses data provided by the NASA Ames Prognostics Center of Excellence, characterised by varying loads which simulate dynamic operating conditions. Two hypothetical scenarios are considered: one assumes that a recent true capacity measurement is known, the other relies solely on the cell nominal capacity. Both methods are effective, with low prediction errors, and the advantages of one over the other in terms of interpretability and complexity are discussed in a critical way.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/30/2019

Modeling long-term capacity degradation of lithium-ion batteries

Capacity degradation of lithium-ion batteries under long-term cyclic agi...
research
01/06/2021

Statistical learning for accurate and interpretable battery lifetime prediction

Data-driven methods for battery lifetime prediction are attracting incre...
research
06/05/2020

Self-Supervised Encoder for Fault Prediction in Electrochemical Cells

Predicting faults before they occur helps to avoid potential safety haza...
research
08/15/2023

Cerberus: A Deep Learning Hybrid Model for Lithium-Ion Battery Aging Estimation and Prediction Based on Relaxation Voltage Curves

The degradation process of lithium-ion batteries is intricately linked t...
research
07/17/2023

Predicting Battery Lifetime Under Varying Usage Conditions from Early Aging Data

Accurate battery lifetime prediction is important for preventative maint...
research
06/01/2022

Dynaformer: A Deep Learning Model for Ageing-aware Battery Discharge Prediction

Electrochemical batteries are ubiquitous devices in our society. When th...
research
02/06/2023

A Quantum Neural Network Regression for Modeling Lithium-ion Battery Capacity Degradation

Given the high power density low discharge rate and decreasing cost rech...

Please sign up or login with your details

Forgot password? Click here to reset