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Main Authors: Olalde-Verano, José Ignacio, Kirch, Sascha, Pérez-Molina, Clara, Martin, Sergio
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.00233
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author Olalde-Verano, José Ignacio
Kirch, Sascha
Pérez-Molina, Clara
Martin, Sergio
author_facet Olalde-Verano, José Ignacio
Kirch, Sascha
Pérez-Molina, Clara
Martin, Sergio
contents The state of health (SOH) of a Li-ion battery is a critical parameter that determines the remaining capacity and the remaining lifetime of the battery. In this paper, we propose SambaMixer a novel structured state space model (SSM) for predicting the state of health of Li-ion batteries. The proposed SSM is based on the MambaMixer architecture, which is designed to handle multi-variate time signals. We evaluate our model on the NASA battery discharge dataset and show that our model outperforms the state-of-the-art on this dataset. We further introduce a novel anchor-based resampling method which ensures time signals are of the expected length while also serving as augmentation technique. Finally, we condition prediction on the sample time and the cycle time difference using positional encodings to improve the performance of our model and to learn recuperation effects. Our results proof that our model is able to predict the SOH of Li-ion batteries with high accuracy and robustness.
format Preprint
id arxiv_https___arxiv_org_abs_2411_00233
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SambaMixer: State of Health Prediction of Li-ion Batteries using Mamba State Space Models
Olalde-Verano, José Ignacio
Kirch, Sascha
Pérez-Molina, Clara
Martin, Sergio
Machine Learning
The state of health (SOH) of a Li-ion battery is a critical parameter that determines the remaining capacity and the remaining lifetime of the battery. In this paper, we propose SambaMixer a novel structured state space model (SSM) for predicting the state of health of Li-ion batteries. The proposed SSM is based on the MambaMixer architecture, which is designed to handle multi-variate time signals. We evaluate our model on the NASA battery discharge dataset and show that our model outperforms the state-of-the-art on this dataset. We further introduce a novel anchor-based resampling method which ensures time signals are of the expected length while also serving as augmentation technique. Finally, we condition prediction on the sample time and the cycle time difference using positional encodings to improve the performance of our model and to learn recuperation effects. Our results proof that our model is able to predict the SOH of Li-ion batteries with high accuracy and robustness.
title SambaMixer: State of Health Prediction of Li-ion Batteries using Mamba State Space Models
topic Machine Learning
url https://arxiv.org/abs/2411.00233