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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Consistent neural network empirical physical formula constructions for nonlinear scattering intensities of dye-doped nematic liquid crystals with ultraviolet pump laser-driven Fredericksz threshold shifts
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Consistent neural network empirical physical formula constructions for nonlinear scattering intensities of dye-doped nematic liquid crystals with ultraviolet pump laser-driven Fredericksz threshold shifts

机译:紫外线泵激光驱动的弗雷德里克斯阈值偏移染料掺杂向乙型液晶非线性散射强度的一致神经网络经验物理配方结构

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Intrinsic high nonlinearity in experimentally measured laser scattering intensities poses significant difficulties in analyzing various molecular and optical properties of nematic liquid crystals (NLCs). In this respect, as we theoretically proved in a previous paper, universal nonlinear function approximator layered feedforward neural network (LFNN) can be applied to construct consistent empirical physical formulas (EPFs) for nonlinear physical phenomena. The novelty of this paper is that, by using our previous conference paper data (literature data or simply data for short) for He-Ne probe laser illumination nonlinear scattering intensities of dye-doped NLCs with ultraviolet pump laser-driven Fredericksz threshold (FT) shifts, we constructed definitive LFNN-EPFs for these illumination intensities of nonlinear scattering exhibiting FT shifts. The dyes used in the literature data were methyl red (MR) azo and disperse red (DR) anthraquinone. The LFNN-EPFs fitted the data very well. Moreover, magnificent LFNN test set forecastings over previously unseen data confirmed the consistent LFNN-EPFs inferences of the intensities of scattering. The LFNN-EPFs properly extracted the FT threshold shifts, as well as revealing the intensity dependencies on the kind of dye used. We, therefore, conclude the LFNN consistently infers nonlinear physical laws governing the NLC scattering data. Provided that sufficient scattering intensity data is available, these nonlinear physical laws embedded in LFNN-EPFs may potentially be useful for investigating various NLC molecular structure parameters in molecular nonlinear optics domain. This knowledge may be applicable in developing new optical materials. (C) 2017 Elsevier GmbH. All rights reserved.
机译:在实验测量的激光散射强度下的固有高非线性在分析向列液晶(NLC)的各种分子和光学性质方面具有显着困难。在这方面,随着我们理论上证明在先前的论文中,可以应用通用非线性函数近似剂分层的前馈神经网络(LFNN)来构建非线性物理现象的一致经验物理公式(EPF)。本文的新颖性是,通过使用我们之前的会议纸质数据(文献数据或简单的简单数据)对于HE-NE探针激光照明非线性散射强度,染料掺杂NLC与紫外线泵激光驱动的FrederickSz阈值(FT)转移,我们构建了用于这些照明强度的明确LFNN-EPF,其非线性散射的光度散射表现出FT偏移。文献数据中使用的染料是甲基红色(MR)偶氮和分散的红色(DR)蒽醌。 LFNN-EPFS非常符合数据。此外,在以前看不见的数据上的宏伟LFNN测试设定预测确认了散射强度的一致LFNN-EPFS推论。 LFNN-EPFS正确提取了FT阈值偏移,以及揭示使用的染料种类的强度依赖性。因此,我们总结了LFNN,始终如例Infers Infers管理NLC散射数据的非线性物理法律。此外,如果有足够的散射强度数据,则嵌入在LFNN-EPF中的这些非线性物理法律可能是用于研究分子非线性光学结构域中的各种NLC分子结构参数。这些知识可能适用于开发新的光学材料。 (c)2017年Elsevier GmbH。版权所有。

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