首页|Analysis and prediction of thermal stress distribution on the membrane wall in the arch-fired boiler based on machine learning technology

Analysis and prediction of thermal stress distribution on the membrane wall in the arch-fired boiler based on machine learning technology

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The arch-fired boiler easily suffers from membrane wall deformation and rupture caused by high stress. Thus, it is necessary to predict thermal stress distribution on the membrane wall for the sake of early warning. In this study, a lab-scale arch-fired boiler was constructed to achieve thermal stress distribution on the membrane wall, and the reason for high-stress formation was found. Besides, machine learning technology was first applied to predict thermal stress based on experimental data. The results show that both high-temperature distribution and boiler configuration play an important role on high-stress distribution. As for the prediction, the regression neural network model presents an admissible result (R-2 = 0.724), but has a relatively poor performance on the high-stress prediction due to the skewed data distribution. Specifically, the relatively high prediction errors present on the bending and connection areas. Future work should consider the effect of boiler configuration and different heat loads. In contrast, the binary classification neural network model has a more accurate result with a high F1 score (0.893). It is the best choice for practical application considering the generality and accuracy. This work is meant to be valuable in optimizing the prediction model and applying it in practice.

Arch-fired boilerMembrane wallThermal stress predictionNeural networksAnomaly detectionCOMBUSTION CHARACTERISTICSUTILITY BOILERANTHRACITE COMBUSTIONASYMMETRIC COMBUSTIONENERGY-CONSUMPTIONRESIDUAL-STRESSESNOX EMISSIONSCOALFLOWCORROSION

Aziz, Muhammad、Zhou, Qulan、Li, Na、Wen, Du、Pan, Yuqing、Chen, Xiaole

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Univ Tokyo

Xi An Jiao Tong Univ

2022

Thermal science and engineering progress

Thermal science and engineering progress

SCI
ISSN:2451-9049
年,卷(期):2022.28
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