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首页> 外文期刊>Fuel >Retrieving soot volume fraction fields for laminar axisymmetric diffusion flames using convolutional neural networks
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Retrieving soot volume fraction fields for laminar axisymmetric diffusion flames using convolutional neural networks

机译:利用卷积神经网络检索层间轴对称扩散火焰的烟灰体积分数。

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摘要

Typical procedures for estimating soot volume fraction distribution in laboratory flames require solving ill-posed inverse problems to recover the fields from convoluted signals that integrate light extinction from soot particles along the line-of-sight of a photo-detector. Classical deconvolution methods are highly sensitive to noise and the choice of tunable regularization parameters, which prevents obtaining consistent estimations even for the same reference flame settings.This paper presents a novel approach based on Convolutional Neural Networks (CNNs) for estimating the soot volume fraction fields from 2D images of line-of-sight attenuation (LOSA) measurements in coflow laminar axisymmetric diffusion flames. Using a set of reference synthetic soot volume fraction fields of canonical flames and their corresponding projected LOSA images, we trained a CNN for reconstructing soot fields from images representing the data captured by a camera. Experimental results show that the proposed CNN approach outperforms classical deconvolution methods when reconstructing the flame spatial soot distribution from noisy images of LOSA.
机译:用于估计实验室火焰中烟灰体积分布分布的典型程序需要解决不存在的逆问题,以从沿着光检测器的视线沿着烟灰颗粒集成光雾颗粒的卷积信号来恢复区域。古典解构方法对噪声和可调正则化参数的选择非常敏感,这甚至可以获得同一参考火焰设置的一致估计。本文提出了一种基于卷积神经网络(CNNS)的新方法,用于估计烟灰体积分数从Coflow层间扩散火焰中的视线衰减(LOSA)测量的2D图像。使用一组参考合成烟灰体积分数分数和它们相应的投影LOSA图像,我们训练了用于从代表由相机捕获的数据的图像重建烟灰场的CNN。实验结果表明,当重建从LOSA嘈杂图像的火焰空间烟灰分布时,所提出的CNN方法优于经典的解卷积方法。

著录项

  • 来源
    《Fuel》 |2021年第1期|119011.1-119011.12|共12页
  • 作者单位

    Univ Tecn Federico Santa Maria Dept Elect Av Espana 1680 Casilla 110-5 Valparaiso Chile;

    Univ Tecn Federico Santa Maria Dept Ind Av Espana 1680 Casilla 110-5 Valparaiso Chile;

    Univ Tecn Federico Santa Maria Dept Ind Av Espana 1680 Casilla 110-5 Valparaiso Chile;

    Univ Tecn Federico Santa Maria Dept Elect Av Espana 1680 Casilla 110-5 Valparaiso Chile;

    Univ Tecn Federico Santa Maria Dept Ind Av Espana 1680 Casilla 110-5 Valparaiso Chile;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Soot diagnostics; CoFlame code; Synthetic images; LOSA technique; Ill-posed problem; Artificial neural networks;

    机译:SOOT诊断;COFlame代码;合成图像;LOSA技术;不良问题;人工神经网络;

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