Transfer Learning-based State of Health Estimation for Lithium-ion
Battery with Cycle Synchronization
- URL: http://arxiv.org/abs/2208.11204v1
- Date: Tue, 23 Aug 2022 21:40:40 GMT
- Title: Transfer Learning-based State of Health Estimation for Lithium-ion
Battery with Cycle Synchronization
- Authors: Kate Qi Zhou, Yan Qin, Chau Yuen
- Abstract summary: Accurately estimating a battery's state of health (SOH) helps prevent battery-powered applications from failing unexpectedly.
With the superiority of reducing the data requirement of model training for new batteries, transfer learning (TL) emerges as a promising machine learning approach.
This paper proposes an interpretable TL-based SOH estimation method by exploiting the temporal dynamic to assist transfer learning.
- Score: 16.637948430296227
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accurately estimating a battery's state of health (SOH) helps prevent
battery-powered applications from failing unexpectedly. With the superiority of
reducing the data requirement of model training for new batteries, transfer
learning (TL) emerges as a promising machine learning approach that applies
knowledge learned from a source battery, which has a large amount of data.
However, the determination of whether the source battery model is reasonable
and which part of information can be transferred for SOH estimation are rarely
discussed, despite these being critical components of a successful TL. To
address these challenges, this paper proposes an interpretable TL-based SOH
estimation method by exploiting the temporal dynamic to assist transfer
learning, which consists of three parts. First, with the help of dynamic time
warping, the temporal data from the discharge time series are synchronized,
yielding the warping path of the cycle-synchronized time series responsible for
capacity degradation over cycles. Second, the canonical variates retrieved from
the spatial path of the cycle-synchronized time series are used for
distribution similarity analysis between the source and target batteries.
Third, when the distribution similarity is within the predefined threshold, a
comprehensive target SOH estimation model is constructed by transferring the
common temporal dynamics from the source SOH estimation model and compensating
the errors with a residual model from the target battery. Through a widely-used
open-source benchmark dataset, the estimation error of the proposed method
evaluated by the root mean squared error is as low as 0.0034 resulting in a 77%
accuracy improvement compared with existing methods.
Related papers
- Graph neural network-based lithium-ion battery state of health estimation using partial discharging curve [16.570091013381266]
This paper introduces an innovative approach leveraging graph-temporal networks (GCNs) to estimate state of health (SOH) of lithium-ion batteries.
Our method systematically selects discharge voltage segments using the Matrix Profile anomaly detection algorithm.
Validation with a widely accepted open-source dataset demonstrates that our method achieves precise SOH estimation, with a root mean squared error of less than 1%.
arXiv Detail & Related papers (2024-08-30T02:14:53Z) - Data-driven Bayesian State Estimation with Compressed Measurement of Model-free Process using Semi-supervised Learning [57.04370580292727]
The research topic is: data-driven Bayesian state estimation with compressed measurement (BSCM) of model-free process.
The dimension of the temporal measurement vector is lower than the dimension of the temporal state vector to be estimated.
Two existing unsupervised learning-based data-driven methods fail to address the BSCM problem for model-free process.
We develop a semi-supervised learning-based DANSE method, referred to as SemiDANSE.
arXiv Detail & Related papers (2024-07-10T05:03:48Z) - Deep Ensembles Meets Quantile Regression: Uncertainty-aware Imputation for Time Series [45.76310830281876]
We propose Quantile Sub-Ensembles, a novel method to estimate uncertainty with ensemble of quantile-regression-based task networks.
Our method not only produces accurate imputations that is robust to high missing rates, but also is computationally efficient due to the fast training of its non-generative model.
arXiv Detail & Related papers (2023-12-03T05:52:30Z) - Time-series Generation by Contrastive Imitation [87.51882102248395]
We study a generative framework that seeks to combine the strengths of both: Motivated by a moment-matching objective to mitigate compounding error, we optimize a local (but forward-looking) transition policy.
At inference, the learned policy serves as the generator for iterative sampling, and the learned energy serves as a trajectory-level measure for evaluating sample quality.
arXiv Detail & Related papers (2023-11-02T16:45:25Z) - Adapting to Continuous Covariate Shift via Online Density Ratio Estimation [64.8027122329609]
Dealing with distribution shifts is one of the central challenges for modern machine learning.
We propose an online method that can appropriately reuse historical information.
Our density ratio estimation method is proven to perform well by enjoying a dynamic regret bound.
arXiv Detail & Related papers (2023-02-06T04:03:33Z) - Digital Twin for Real-time Li-ion Battery State of Health Estimation
with Partially Discharged Cycling Data [16.637948430296227]
The state of health (SOH) estimation of Lithium-ion batteries (LIBs) has a close relationship with the degradation performance.
The proposed digital twin solution consists of three core components to enable real-time SOH estimation.
The method yields the real-time SOH estimation with errors less than 1% for most sampling times in ongoing cycles.
arXiv Detail & Related papers (2022-12-09T01:30:10Z) - A Transferable Multi-stage Model with Cycling Discrepancy Learning for
Lithium-ion Battery State of Health Estimation [18.980782609740082]
Multiple degradation patterns of a complete life cycle of a battery make it challenging to pursue transfer learning (TL)
A transferable multi-stage SOH estimation model is proposed to perform TL across batteries in the same stage, consisting of four steps.
The proposed method outperforms its competitive algorithms in various transfer tasks for a run-to-failure benchmark with three batteries.
arXiv Detail & Related papers (2022-09-01T02:59:46Z) - Posterior Coreset Construction with Kernelized Stein Discrepancy for
Model-Based Reinforcement Learning [78.30395044401321]
We develop a novel model-based approach to reinforcement learning (MBRL)
It relaxes the assumptions on the target transition model to belong to a generic family of mixture models.
It can achieve up-to 50 percent reduction in wall clock time in some continuous control environments.
arXiv Detail & Related papers (2022-06-02T17:27:49Z) - Lithium-ion Battery State of Health Estimation based on Cycle
Synchronization using Dynamic Time Warping [13.19976118887128]
State of health (SOH) estimation plays an essential role in battery-powered applications to avoid unexpected breakdowns due to battery capacity fading.
This paper proposes an innovative cycle synchronization way to change the existing coordinate system using dynamic time warping.
By exploiting the time information of the time series, the proposed method embeds the time index and the original measurements into a novel indicator to reflect the battery degradation status.
arXiv Detail & Related papers (2021-09-28T02:53:54Z) - Machine learning pipeline for battery state of health estimation [3.0238880199349834]
We design and evaluate a machine learning pipeline for estimation of battery capacity fade.
The pipeline estimates battery SOH with an associated confidence interval by using two parametric and two non-parametric algorithms.
When deployed on cells operated under the fast-charging protocol, the best model achieves a root mean squared percent error of 0.45%.
arXiv Detail & Related papers (2021-02-01T13:50:56Z) - Statistical control for spatio-temporal MEG/EEG source imaging with
desparsified multi-task Lasso [102.84915019938413]
Non-invasive techniques like magnetoencephalography (MEG) or electroencephalography (EEG) offer promise of non-invasive techniques.
The problem of source localization, or source imaging, poses however a high-dimensional statistical inference challenge.
We propose an ensemble of desparsified multi-task Lasso (ecd-MTLasso) to deal with this problem.
arXiv Detail & Related papers (2020-09-29T21:17:16Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.