应用两步分解的HBA-NBEATS燃煤电站锅炉能效预测
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1.中北大学计算机科学与技术学院太原030051;2.中北大学电气与控制工程学院太原030051; 3.极限环境光电动态测试技术与仪器全国重点实验室太原030051

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TM621.2;TP183

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山西省基础研究计划(202303021222084)、山西省基础研究计划(202303021222120)、中北大学研究生校级科技立项(20242066)资助


Energy efficiency prediction for coal-fired power station boilers based on two-step decomposition and HBA-NBEATS model
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1.School of Computer Science and Technology, North University of China, Taiyuan 030051, China; 2.School of Electrical and Control Engineering, North University of China, Taiyuan 030051, China; 3.State key Laboratory of Extreme Environment Optoelectronic Dynamic Measurement Technology and Instrument, North University of China, Taiyuan 030051, China

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    摘要:

    燃煤电站锅炉受热面的灰污沉积不仅会引发能效下降,持续累积还可能引发严重的安全事故,因此对锅炉受热面能效状态的精准预测是解决该问题的重要途径。为实现能效预测精度的提升,构建了一种应用两步分解的蜜獾算法(honey badger algorithm, HBA)优化的神经基扩展分析(neural basis expansion analysis, NBEATS)模型的燃煤电站锅炉能效预测模型。该方法以清洁因子作为锅炉受热面能效变化的表征指标,使用小波阈值理论对原始清洁因子数据实施去噪,并运用鲁棒经验模态分解(robust empirical mode decomposition, REMD)联合变分模态分解(variational mode decomposition, VMD)的两步分解获取去噪后数据的多个模态分量。在每个分解得到的模态分量上,应用HBA算法调优超参数的NBEATS模型进行独立预测,叠加所有模态分量预测值生成锅炉能效预测结果。贵州某300 MW燃煤电站锅炉数据集上的实验表明,相较于消融实验中的对比模型,本文模型在多个性能指标上展现出显著优势,均方根误差性能提升幅度在5.43%~93.31%之间;决定系数提高至0.98以上;平均绝对误差最优值达0.000 2。

    Abstract:

    Ash deposition on the heating surfaces of coal-fired power station boilers causes a significant decrease in energy efficiency. If it accumulates continuously, it may cause serious safety accidents. Therefore, accurate prediction of the energy efficiency of the boiler heating surface is an important way to solve this problem. To achieve the improvement of energy efficiency prediction accuracy, this paper constructs an energy efficiency prediction model for coal-fired power station boilers based on a neural basis expansion analysis (NBEATS) model. This model is optimized by the honey badger algorithm (HBA) that incorporates a two-step decomposition strategy. This method uses the cleanliness factor as an indicator of energy efficiency in the boiler heating surface, and applies wavelet threshold theory to denoise the original cleanliness factor data. The two-step decomposition strategy of robust empirical mode decomposition (REMD) combined with variational mode decomposition (VMD) is used to obtain multiple mode functions of the denoised data. For each decomposed mode function, the HBA algorithm is applied to tune the hyperparameters of the NBEATS model for independent prediction, and the predicted values of all mode functions are superimposed to generate the boiler energy efficiency prediction results. Experiments on the boiler dataset of a 300 MW coal-fired power station in Guizhou Province show that the proposed model outperforms the ablation model in multiple performance metrics, the root mean square error performance is improved by 5.43%~93.31%; the coefficient of determination increases to above 0.98; the minimum mean absolute error achieves 0.000 2.

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崔方舒,王楠,冀鹏宇,袁泽宇,闫俊义,史元浩.应用两步分解的HBA-NBEATS燃煤电站锅炉能效预测[J].电子测量与仪器学报,2026,40(4):110-120

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  • 在线发布日期: 2026-06-12
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