Deep learning techniques for the localization and classification of liquid crystal phase transitions

I. Dierking, J. Dominguez, James Harbon, Joshua Heaton
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引用次数: 5

Abstract

Deep Learning techniques such as supervised learning with convolutional neural networks and inception models were applied to phase transitions of liquid crystals to identify transition temperatures and the respective phases involved. In this context achiral as well as chiral systems were studied involving the isotropic liquid, the nematic phase of solely orientational order, fluid smectic phases with one-dimensional positional order and hexatic phases with local two-dimensional positional, so-called bond-orientational order. Discontinuous phase transition of 1st order as well as continuous 2nd order transitions were investigated. It is demonstrated that simpler transitions, namely Iso-N, Iso-N*, and N-SmA can accurately be identified for all unseen test movies studied. For more subtle transitions, such as SmA*-SmC*, SmC*-SmI*, and SmI*-SmF*, proof-of-principle evidence is provided, demonstrating the capability of deep learning techniques to identify even those transitions, despite some incorrectly characterized test movies. Overall, we demonstrate that with the provision of a substantial and varied dataset of textures there is no principal reason why one could not develop generalizable deep learning techniques to automate the identification of liquid crystal phase sequences of novel compounds.
液晶相变定位与分类的深度学习技术
深度学习技术,如卷积神经网络和初始模型的监督学习,被应用于液晶的相变,以确定相变温度和所涉及的相应阶段。在此背景下,研究了非手性和手性体系,包括各向同性液体,单取向顺序的向列相,一维位置顺序的流体近晶相和局部二维位置的六相,即所谓的键取向顺序。研究了一阶不连续相变和连续二阶相变。结果表明,较简单的跃迁,即Iso-N, Iso-N*和N-SmA可以准确地识别所有未见过的测试电影。对于更微妙的转换,如SmA*-SmC*、SmC*-SmI*和SmI*-SmF*,提供了原理证明证据,证明了深度学习技术识别这些转换的能力,尽管有一些错误表征的测试电影。总的来说,我们证明了提供大量多样的纹理数据集,没有主要理由不能开发可推广的深度学习技术来自动识别新化合物的液晶相序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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