Transfer Learning for Battery Health Forecasting: From Lab to Real World Data
dc.contributor.author | Andersson, Oskar | |
dc.contributor.author | Fornstedt, Ludvig | |
dc.contributor.department | Chalmers tekniska högskola / Institutionen för elektroteknik | sv |
dc.contributor.examiner | Zou, Changfu | |
dc.contributor.supervisor | Fleischer, Christian | |
dc.contributor.supervisor | Bian, Xiaolei | |
dc.date.accessioned | 2025-08-13T08:26:30Z | |
dc.date.issued | 2025 | |
dc.date.submitted | ||
dc.description.abstract | Accurately forecasting lithium-ion battery health in electric vehicles remains challenging due to the scarcity and variability of real-world data and the disconnect between controlled laboratory tests and in-service operation. To address this, a transfer-learning framework is proposed, that leverages diverse lab datasets and small amounts of vehicle-specific data to produce personalized State of Health (SOH) and Remaining Useful Life (RUL) forecasts. The proposed method employs a dual LSTM architecture, where one branch ingests historical SOH trajectories, while a parallel branch processes simple statistical descriptors (mean and standard deviation of voltage, current, and temperature) per cycle. The outputs of the two LSTMs are concatenated and passed through a lightweight MLP to yield cycle-wise forecasts. Models were trained on three open-source lab datasets (MIT, XJTU, HKUST) encompassing varied chemistries and cycling protocols, then evaluated both on a held-out lab domain and on real-world EV data from nine vehicles spanning 18–30 months of operation. Results demonstrate that the dual LSTM consistently outperforms simpler baselines, with fine-tuning on early-life data yielding substantial accuracy gains. Our framework thus effectively provides a step towards bridging the lab-to-road gap, enabling scalable, adaptive battery management. | |
dc.identifier.coursecode | EENX30 | |
dc.identifier.uri | http://hdl.handle.net/20.500.12380/310324 | |
dc.language.iso | eng | |
dc.setspec.uppsok | Technology | |
dc.subject | RUL | |
dc.subject | SOH | |
dc.subject | LSTM | |
dc.subject | Battery health | |
dc.subject | Battery Degradation | |
dc.subject | Transfer Learning | |
dc.subject | EV | |
dc.title | Transfer Learning for Battery Health Forecasting: From Lab to Real World Data | |
dc.type.degree | Examensarbete för masterexamen | sv |
dc.type.degree | Master's Thesis | en |
dc.type.uppsok | H | |
local.programme | Complex adaptive systems (MPCAS), MSc |