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基于动态相关性引导图时空学习的循环流化床床温预测

Dynamic Correlation-Guided Graph Spatiotemporal Learning for Bed Temperature Prediction of Circulating Fluidized Beds

作者 Guangwei Chen · Wenhui Ma · Honggui Han · Mingyue Xu · Zi-Peng Wang · Junfei Qiao
期刊 IEEE Transactions on Industrial Informatics
出版日期 2025年11月
卷/期 第 22 卷 第 2 期
技术分类 智能化与AI应用
技术标签 深度学习 机器学习 故障诊断 模型预测控制MPC
相关度评分 ★★ 2.0 / 5.0
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中文摘要

本文提出一种融合动态相关性引导图卷积网络(GCN)与LSTM的混合模型,用于循环流化床床温预测,通过自适应学习空间拓扑与时间演化关系,显著提升多步预测精度,为工业过程异常预警提供支持。

English Abstract

Accurate bed temperature prediction is crucial in the circulating fluidized bed (CFB) combustion process, as it provides early warning of abnormal conditions, allowing timely intervention to prevent potential safety risks. However, the inherently complex multiphase flows and nonlinear chemical reactions in CFB systems make time series prediction of bed temperature a highly challenging task. Starting from the intrinsic spatial correlations and the temporal dependencies, this article proposes an adaptive learning-based bed temperature prediction method. The proposed model integrates dynamic correlation-guided Graph Convolutional Networks (GCN) and Long Short-Term Memory (LSTM) networks. Specifically, the GCN guided by prior knowledge adaptively learns complex topological structures to capture spatial dependencies. LSTM receives both raw input features and the spatial features extracted by GCN as parallel inputs, effectively capturing the temporal evolution of bed temperature. The proposed method is then applied to the task of bed temperature prediction in CFB. The experimental findings indicate that the proposed method consistently outperforms other comparative methods across different forecasting horizons, achieving a leading level of performance.
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SunView 深度解读

该研究面向火电/化工领域CFB锅炉的床温预测,与阳光电源主营业务无直接关联。但其提出的动态图神经网络+时序建模方法论可迁移至光伏/储能电站智能运维场景:例如适配iSolarCloud平台对组串式逆变器温度、ST系列PCS热场、PowerTitan电池舱温升的多点协同预测与早期过热预警,建议在AI算法团队开展跨行业技术预研,聚焦电力电子设备热-电耦合时序建模方向。