Abstract
Profitability, reliability, and efficiency of battery systems across a broad spectrum of applications, including both stationary energy storage and automobile sectors, are critically dependent on accurate battery lifespan predic-tions. Traditional deterministic models for estimating battery longevity are inadequate, as they do not fully cap-ture the complex and stochastic nature of battery degradation. In this contribution BattProDeep is introduced as a groundbreaking tool that employs a deep learning-based framework to offer probabilistic predictions of battery aging, thereby addressing the uncertainties according to the experimental dataset. BattProDeep sets itself apart with its innovative features. It adopts an open-source approach, enhancing transparency and fostering collabora-tion across the global research community. This not only enriches the tool with a diverse range of insights but al-so accelerates advancements in the field. Utilizing cutting-edge TensorFlow and TensorFlow probability libraries, BattProDeep offers a data-driven method for battery aging prediction, improving accuracy and applicability across different battery types and conditions. Furthermore, its probabilistic predictions include confidence inter-vals, providing crucial information about prediction uncertainty, which is invaluable for risk management and decision-making in critical sectors. The validation results show that the mean prediction error for our approach stays within ±0.2 % for high-cyclic applications, with all true measured capacity loss values falling within the 95 % confidence interval, affirming its reliability for risk management. These qualities, coupled with the bench-marking of BattProDeep according to the literature, make BattProDeep a key instrument for advancing battery health management, leading to more dependable and sustainable battery-powered solutions.
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GitHub Repository for BattProDeep
Description
This repository contains the source code, data, and supplementary materials associated with our preprint titled 'BattProDeep: A Deep Learning-Based Tool for Probabilistic Battery Aging Prediction.' The provided resources include implementation details, scripts for data analysis, and additional documentation to support the research findings. We encourage researchers and practitioners to explore the code, replicate the results, and build upon our work. For any questions or collaborations, please feel free to contact us through the repository.
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