AI Fast Track to Battery Fast Charge
暂无分享,去创建一个
[1] G. Ceder,et al. Ultrahigh power and energy density in partially ordered lithium-ion cathode materials , 2020, ECS Meeting Abstracts.
[2] Joachim Denzler,et al. Deep learning and process understanding for data-driven Earth system science , 2019, Nature.
[3] Stefano Ermon,et al. Closed-loop optimization of fast-charging protocols for batteries with machine learning , 2020, Nature.
[4] Tejs Vegge,et al. Autonomous Discovery of Materials for Intercalation Electrodes , 2020 .
[5] Ricardo Pinto Cunha,et al. Artificial Intelligence Investigation of NMC Cathode Manufacturing Parametersinterdependencies , 2019, ECS Meeting Abstracts.
[6] Z. Deng,et al. A Critical Review of Machine Learning of Energy Materials , 2020, Advanced Energy Materials.
[7] Kristen A. Severson,et al. Data-driven prediction of battery cycle life before capacity degradation , 2019, Nature Energy.
[8] G. Ceder,et al. Kinetic pathways of ionic transport in fast-charging lithium titanate , 2020, Science.
[9] Ole Winther,et al. Deep Generative Models for Molecular Science , 2018, Molecular informatics.
[10] O. Winther,et al. A perspective on inverse design of battery interphases using multi-scale modelling, experiments and generative deep learning , 2019, Energy Storage Materials.