基于超参数优化的长短期记忆图注意力焚烧炉温度预测模型

Long and Short-term Memory Map Attention Incinerator Temperature Prediction Model Based on Hyperparameter Optimization

  • 摘要: 核燃料后处理厂焚烧炉用于核燃料废物的可控燃烧,工艺上需要对燃烧过程中炉内关键节点温度进行实时检测以指导进料控制,在确保废料燃烧充分的同时,有效避免燃烧温度过高损坏设备。与其他常规化工厂反应设备相比,核燃料后处理厂焚烧炉工作环境具有高放射性及难检修的特点,因此炉内关键节点温度的实时检测存在极大挑战。针对后处理厂焚烧炉关键温度无法通过传感器检测的困难,本文提出一种基于超参数优化的长短期记忆图注意力(ABCHB-LSTM-GAT)模型。数据预处理模块通过k-邻近(KNN)图构建动态图结构;LSTM-GAT模块采用长短期记忆(LSTM)神经网络融合图注意力(GAT)处理序列数据中的空依赖;优化器模块通过融合贝叶斯采样算法与超宽带动态减枝器确定模型最优超参数,以提升模型的训练效率与预测精度。实验结果表明,该模型在训练效率和预测精度上较长短期记忆图注意力的基准模型有显著优势,在工程运行过程中可实现焚烧炉炉内温度的精确预测,辅助操作员控制进料并有效监测炉内超温等异常工况。

     

    Abstract: The incinerator in a nuclear fuel reprocessing plant is used for the controlled combustion and harmless treatment of nuclear fuel waste. Technologically, real-time monitoring of key nodal temperatures within the furnace during the combustion process is essential to guide feed control. This ensures the thoroughness of waste combustion while effectively preventing excessively high temperatures that could damage equipment. Compared to reaction equipment in conventional chemical plants, the incinerator in a nuclear fuel reprocessing plant operates in a high-radiation environment with difficult maintenance access. Consequently, real-time temperature monitoring at key furnace nodes presents significant challenges. To address the challenge of being unable to directly measure key temperatures in the nuclear fuel reprocessing plant incinerator using sensors, an ABCHB-LSTM-GAT model (hyperparameter-optimized long short-term memory graph attention network) was proposed in this paper. The data preprocessing module constructs dynamic graph structures using k-nearest neighbors (KNN) graphs. The LSTM-GAT module employs long short-term memory (LSTM) neural networks integrated with graph attention networks (GAT) to handle spatiotemporal dependencies within sequential data. The optimizer module determines the model’s optimal hyperparameters by combining a Bayesian sampling algorithm with an ultra-wideband dynamic pruning mechanism, enhancing both training efficiency and prediction accuracy. Experimental results demonstrate that this model exhibits significant advantages over baseline LSTM and GAT models in terms of both training efficiency and prediction accuracy. During operational engineering processes, it enables precise prediction of internal furnace temperatures, assisting operators in controlling feed rates and effectively monitoring abnormal conditions such as furnace overheating.

     

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