Phillip Gräfensteiner, Markus Osenberg, André Hilger, Nicole Bohn, Joachim R. Binder, Ingo Manke, Volker Schmidt, Matthias Neumann
{"title":"Data-driven stochastic 3D modeling of the nanoporous binder-conductive additive phase in battery cathodes","authors":"Phillip Gräfensteiner, Markus Osenberg, André Hilger, Nicole Bohn, Joachim R. Binder, Ingo Manke, Volker Schmidt, Matthias Neumann","doi":"arxiv-2409.11080","DOIUrl":null,"url":null,"abstract":"A stochastic 3D modeling approach for the nanoporous binder-conductive\nadditive phase in hierarchically structured cathodes of lithium-ion batteries\nis presented. The binder-conductive additive phase of these electrodes consists\nof carbon black, polyvinylidene difluoride binder and graphite particles. For\nits stochastic 3D modeling, a three-step procedure based on methods from\nstochastic geometry is used. First, the graphite particles are described by a\nBoolean model with ellipsoidal grains. Second, the mixture of carbon black and\nbinder is modeled by an excursion set of a Gaussian random field in the\ncomplement of the graphite particles. Third, large pore regions within the\nmixture of carbon black and binder are described by a Boolean model with\nspherical grains. The model parameters are calibrated to 3D image data of\ncathodes in lithium-ion batteries acquired by focused ion beam scanning\nelectron microscopy. Subsequently, model validation is performed by comparing\nmodel realizations with measured image data in terms of various morphological\ndescriptors that are not used for model fitting. Finally, we use the stochastic\n3D model for predictive simulations, where we generate virtual, yet realistic,\nimage data of nanoporous binder-conductive additives with varying amounts of\ngraphite particles. Based on these virtual nanostructures, we can investigate\nstructure-property relationships. In particular, we quantitatively study the\ninfluence of graphite particles on effective transport properties in the\nnanoporous binder-conductive additive phase, which have a crucial impact on\nelectrochemical processes in the cathode and thus on the performance of battery\ncells.","PeriodicalId":501425,"journal":{"name":"arXiv - STAT - Methodology","volume":"187 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-09-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"arXiv - STAT - Methodology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/arxiv-2409.11080","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
A stochastic 3D modeling approach for the nanoporous binder-conductive
additive phase in hierarchically structured cathodes of lithium-ion batteries
is presented. The binder-conductive additive phase of these electrodes consists
of carbon black, polyvinylidene difluoride binder and graphite particles. For
its stochastic 3D modeling, a three-step procedure based on methods from
stochastic geometry is used. First, the graphite particles are described by a
Boolean model with ellipsoidal grains. Second, the mixture of carbon black and
binder is modeled by an excursion set of a Gaussian random field in the
complement of the graphite particles. Third, large pore regions within the
mixture of carbon black and binder are described by a Boolean model with
spherical grains. The model parameters are calibrated to 3D image data of
cathodes in lithium-ion batteries acquired by focused ion beam scanning
electron microscopy. Subsequently, model validation is performed by comparing
model realizations with measured image data in terms of various morphological
descriptors that are not used for model fitting. Finally, we use the stochastic
3D model for predictive simulations, where we generate virtual, yet realistic,
image data of nanoporous binder-conductive additives with varying amounts of
graphite particles. Based on these virtual nanostructures, we can investigate
structure-property relationships. In particular, we quantitatively study the
influence of graphite particles on effective transport properties in the
nanoporous binder-conductive additive phase, which have a crucial impact on
electrochemical processes in the cathode and thus on the performance of battery
cells.
本文介绍了锂离子电池分层结构阴极中纳米多孔粘结导电添加相的随机三维建模方法。这些电极的粘结导电添加相由炭黑、聚偏二氟乙烯粘结剂和石墨颗粒组成。为了对其进行随机三维建模,采用了基于随机几何方法的三步程序。首先,用椭圆形颗粒的布尔模型来描述石墨颗粒。其次,炭黑和粘合剂的混合物由石墨颗粒补充部分的高斯随机场偏移集建模。第三,炭黑和粘合剂混合物中的大孔隙区域由球形颗粒的布尔模型描述。模型参数根据聚焦离子束扫描电子显微镜获取的锂离子电池阴极三维图像数据进行校准。随后,通过比较模型实现值与测量图像数据,对模型进行验证,这些数据包含模型拟合时未使用的各种形态描述符。最后,我们使用随机 3D 模型进行预测模拟,生成具有不同数量石墨颗粒的纳米多孔粘结导电添加剂的虚拟但真实的图像数据。基于这些虚拟纳米结构,我们可以研究结构与性能之间的关系。特别是,我们定量研究了石墨颗粒对纳米多孔粘结剂导电添加剂相中有效传输特性的影响,这些特性对阴极的电化学过程以及电池的性能有着至关重要的影响。