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Prediction of combustion state through a semi-supervised learning model and flame imaging

机译:通过半监督学习模型和火焰成像预测燃烧状态

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摘要

Accurate prediction of combustion state is crucial for an in-depth understanding of furnace performance and optimize operation conditions. Traditional data-driven approaches such as artificial neural networks and support vector machine incorporate distinct features which require prior knowledge for feature extraction and suffers poor generalization for unseen combustion states. Therefore, it is necessary to develop an advanced and accurate prediction model to resolve these limitations. This study presents a novel semi-supervised learning model integrating denoising autoencoder (DAE), generative adversarial network (GAN) and Gaussian process classifier (GPC). The DAE network is established to extract representative features of flame images and the network trained through the adversarial learning mechanism of the GAN. Structural similarity (SSIM) metric is introduced as a novel loss function to improve the feature learning ability of the DAE network. The extracted features are then fed into the GPC to predict the seen and unseen combustion states. The effectiveness of the proposed semi supervised learning model, i.e., DAE-GAN-GPC was evaluated through 4.2 MW heavy oil-fired boiler furnace flame images captured under different combustion states. The averaged prediction accuracy of 99.83% was achieved for the seen combustion states. The new states (unseen) were predicted accurately through the proposed model by fine-tuning of GPC without retraining the DAE-GAN and averaged prediction accuracy of 98.36% was achieved for the unseen states. A comparative study was also carried out with other deep neural networks and classifiers. Results suggested that the proposed model provides better prediction accuracy and robustness capability compared to other traditional prediction models.
机译:精确预测燃烧状态对于深入了解炉子性能并优化操作条件至关重要。传统的数据驱动方法,如人工神经网络和支持向量机包括不同的特征,需要先前知识的特征提取,并且对看不见的燃烧状态具有较差的概括。因此,有必要开发先进和准确的预测模型以解决这些限制。本研究提出了一种新型半监督学习模型,其集成了去噪自身额(DAE),生成对抗网络(GAN)和高斯过程分类器(GPC)。建立DAE网络以提取火焰图像的代表特征和通过GaN的对抗性学习机制训练的网络训练。将结构相似性(SSIM)指标被引入为新颖的损耗功能,以改善DAE网络的特征学习能力。然后将提取的特征送入GPC以预测所看到的并且看不见的燃烧状态。通过在不同燃烧状态下捕获的4.2 MW重油燃烧锅炉炉火焰图像评估了所提出的半监督学习模型的有效性,即DAE-GAN-GPC。对于所见的燃烧状态,实现了99.83%的平均预测精度。通过拟议的模型通过所提出的模型准确地预测了新的州(看不见的),无需再培训Dae-GaN,并且对未经调整的状态实现了98.36%的平均预测精度。还与其他深神经网络和分类器进行了比较研究。结果表明,与其他传统预测模型相比,所提出的模型提供更好的预测精度和鲁棒性能力。

著录项

  • 来源
    《Fuel》 |2021年第1期|119745.1-119745.15|共15页
  • 作者单位

    Southeast Univ Sch Energy & Environm Key Lab Energy Thermal Convers & Control Minist Educ Nanjing 210096 Peoples R China;

    Southeast Univ Sch Energy & Environm Key Lab Energy Thermal Convers & Control Minist Educ Nanjing 210096 Peoples R China;

    Southeast Univ Sch Energy & Environm Key Lab Energy Thermal Convers & Control Minist Educ Nanjing 210096 Peoples R China;

    Univ Kent Sch Engn & Digital Arts Canterbury CT2 7NT Kent England;

    Southeast Univ Sch Energy & Environm Key Lab Energy Thermal Convers & Control Minist Educ Nanjing 210096 Peoples R China;

  • 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

    Combustion state prediction; Novel loss function; Denoising autoencoder; Generative adversarial network; Gaussian process classifier;

    机译:燃烧状态预测;新型损失功能;去噪自身拓扑;生成对抗网络;高斯过程分类器;
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