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      Stochastic reconstruction of periodic, three-dimensional multi-phase electrode microstructures using generative adversarial networks

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          Abstract

          The generation of multiphase porous electrode microstructures is a critical step in the optimisation of electrochemical energy storage devices. This work implements a deep convolutional generative adversarial network (DC-GAN) for generating realistic n-phase microstructural data. The same network architecture is successfully applied to two very different three-phase microstructures: A lithium-ion battery cathode and a solid oxide fuel cell anode. A comparison between the real and synthetic data is performed in terms of the morphological properties (volume fraction, specific surface area, triple-phase boundary) and transport properties (relative diffusivity), as well as the two-point correlation function. The results show excellent agreement between for datasets and they are also visually indistinguishable. By modifying the input to the generator, we show that it is possible to generate microstructure with periodic boundaries in all three directions. This has the potential to significantly reduce the simulated volume required to be considered representative and therefore massively reduce the computational cost of the electrochemical simulations necessary to predict the performance of a particular microstructure during optimisation.

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          Author and article information

          Journal
          17 February 2020
          Article
          2003.11632
          2ea0ca4e-f476-4f55-a668-b1e64baa25f1

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          68T10, 68T45, 92E99, 82D30
          37 pages, 10 figures
          cs.NE cs.CV

          Computer vision & Pattern recognition,Neural & Evolutionary computing
          Computer vision & Pattern recognition, Neural & Evolutionary computing

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