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Ensemble Meta-Learning for Few-Shot Soot Density Recognition

机译:合奏元学习几次射击烟灰密度识别

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摘要

In each petrochemical plant around the world, the flare stack as a requisite facility produces a large amount of soot due to the incomplete combustion of flare gas, and this strongly endangers air quality and human health. Despite severe damages, the abovementioned abnormal conditions rarely occur, and, thus, only few-shot samples are available. To address such difficulty, in this article, we design an image-based flare soot density recognition network (FSDR-Net) via a new ensemble meta-learning technology. More particularly, we first train a deep convolutional neural network (CNN) by applying the model-agnostic meta-learning algorithm on a variety of learning tasks that are relevant to the flare soot recognition so as to obtain the general-purpose optimized initial parameters (GOIP). Second, for the new task of recognizing the flare soot density via only few-shot instances, a new ensemble is developed to selectively aggregate several predictions that are generated based on a wide range of learning rates and a small number of gradient steps. Results of experiments conducted on the density recognition of flare soot corroborate the superiority of our proposed FSDR-Net as compared with the popular and state-of-the-art deep CNNs.
机译:在世界各地的每种石化工厂,由于闪光气体不完全燃烧,爆发堆产生大量烟灰,这强烈危及空气质量和人类健康。尽管损坏严重,但上述异常情况很少发生,因此,只有少量样品可用。为了解决此类困难,在本文中,我们通过新的集合元学习技术设计基于图像的光晕烟灰密度识别网络(FSDR-Net)。更具体地说,我们首先通过应用于与闪光烟灰识别相关的各种学习任务的模型 - 不可知的元学习算法来训练深度卷积神经网络(CNN),以便获得通用优化的初始参数( gop)。其次,对于仅通过少量拍摄实例识别闪光烟灰密度的新任务,开发了一种新的集合来选择性地聚合基于各种学习速率和少量梯度步骤产生的若干预测。对耀斑烟灰密度识别进行的实验结果证实了我们提出的FSDR-NET的优越性,与流行和最先进的深CNN相比。

著录项

  • 来源
    《IEEE transactions on industrial informatics》 |2021年第3期|2261-2270|共10页
  • 作者单位

    Beijing Univ Technol Minist Educ Fac Informat Technol Engn Res Ctr Intelligent Percept & Autonomous Con Beijing 100124 Peoples R China|Beijing Univ Technol Beijing Artificial Intelligence Inst Key Lab Computat Intelligence & Intelligent Syst Beijing 100124 Peoples R China;

    Beijing Univ Technol Minist Educ Fac Informat Technol Engn Res Ctr Intelligent Percept & Autonomous Con Beijing 100124 Peoples R China|Beijing Univ Technol Beijing Artificial Intelligence Inst Key Lab Computat Intelligence & Intelligent Syst Beijing 100124 Peoples R China;

    Beijing Univ Technol Minist Educ Fac Informat Technol Engn Res Ctr Intelligent Percept & Autonomous Con Beijing 100124 Peoples R China|Beijing Univ Technol Beijing Artificial Intelligence Inst Key Lab Computat Intelligence & Intelligent Syst Beijing 100124 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Task analysis; Combustion; Training; Petrochemicals; Image recognition; Data models; Informatics; Ensemble; few-shot; flare gas; gradient step; learning rate; meta-learning; soot density recognition;

    机译:任务分析;燃烧;培训;石化;图像识别;数据模型;信息学;集合;射击气体;闪光气体;渐变步骤;学习率;拍摄率;烟灰密度识别;

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