Deep Learning Regression with Sequences of Different Length: An Application for State of Health Trajectory Prediction and Remaining Useful Life Estimation in Lithium-Ion Batteries

Author:

Bellomo Michele1ORCID,Giazitzis Spyridon1,Badha Susheel2,Rosetti Filippo2,Dolara Alberto1ORCID,Ogliari Emanuele1ORCID

Affiliation:

1. Department of Energy, Politecnico di Milano, 20156 Milan, Italy

2. Infineon Technologies, 9500 Villach, Austria

Abstract

This study presents methods to handle deep learning regressions with input and output sequences of different lengths. We discuss the Autoregressive one-step prediction framework and introduce an innovative one-time multi-step (OTMS) prediction approach, based on a custom loss function, that predicts all future steps in a single shot. The presented methodologies are then applied to simultaneously predict the State of Health (SoH) trajectory and estimate the Remaining Useful Life (RUL) of lithium-ion battery cells. Accurate estimates of SoH trajectory and RUL are essential for Battery Management Systems (BMSs), electronic systems that guarantee safety while maximizing performance and extending battery lifespan. In this context, the studied methodologies were compared using a rigorous cross-validation approach. The OTMS model showed better predictions in early cycles, while the Autoregressive model performed better in later cycles, suggesting a hybrid approach between these two methodologies as an optimal solution.

Funder

European Union–NextGenerationEU

Publisher

MDPI AG

Reference22 articles.

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