Patel, KishanKishanPatelSalin, Athira PulickakudyAthira PulickakudySalinStender, MertenMertenStenderBraun, MoritzMoritzBraunEhlers, SörenSörenEhlers2025-11-182025-11-182025ASME 44th International Conference on Ocean, Offshore and Arctic Engineering, OMAE 2025https://hdl.handle.net/11420/58866The maritime industry faces significant challenges as it adapts from a major carbon emitter to a low-emission sector, intending to eventually achieve zero emissions. This transition requires innovative solutions for both new and old vessels, lithium-ion batteries show promise in achieving these goals. Battery management systems improve reliability and safety by monitoring voltage, current, and temperature through sensors. These parameters enable the prediction of remaining usable life, allowing for prompt maintenance and replacement before failure occurs. Publicly accessible lithium battery datasets provide a useful starting point for predictive degradation model development. This study investigates time series modeling methodologies for lithium-ion battery degradation, utilizing NASA’s battery degradation dataset. Three models viz. Autoregressive, Autoregressive Integrated Moving Average, and its extension using seasonality parameters were developed. They were tested with four train/test ratios to predict the remaining useful life values and assess the accuracy of the predicted degradation curve against experimental results. From the results, it was observed that the Autoregressive Integrated Moving Average model had the least combined average Root Mean Square Error values, resulting in a good overall degradation curve fitting, whereas the Seasonal Autoregressive Integrated Moving Average model was able to predict the End of Life values more accurately.enhttps://creativecommons.org/licenses/by/4.0/lithium-ion batteriesdata driven time series modelARARIMASARIMAremaining useful lifeSocial Sciences::330: EconomicsSocial Sciences::380: Commerce, Communications, TransportNatural Sciences and Mathematics::519: Applied Mathematics, ProbabilitiesTechnology::623: Military Engineering and Marine EngineeringTechnology::660: Chemistry; Chemical EngineeringLithium-ion battery degradation forecasting using data-driven time series modelsConference Paperhttps://doi.org/10.15480/882.1618110.1115/omae2025-15610410.15480/882.16181Conference Paper