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LSTM-based soft sensor design for oxygen content of flue gas in coal-fired power plant

机译:基于LSTM的燃煤电厂烟气氧含量的软传感器设计

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摘要

To address problems of high cost, complicated process and low accuracy of oxygen content measurement in flue gas of coal-fired power plant, a method based on long short-term memory (LSTM) network is proposed in this paper to replace oxygen sensor to estimate oxygen content in flue gas of boilers. Specifically, first, the LSTM model was built with the Keras deep learning framework, and the accuracy of the model was further improved by selecting appropriate super-parameters through experiments. Secondly, the flue gas oxygen content, as the leading variable, was combined with the mechanism and boiler process primary auxiliary variables. Based on the actual production data collected from a coal-fired power plant in Yulin, China, the data sets were preprocessed. Moreover, a selection model of auxiliary variables based on grey relational analysis is proposed to construct a new data set and divide the training set and testing set. Finally, this model is compared with the traditional soft-sensing modelling methods (i.e. the methods based on support vector machine and BP neural network). The RMSE of LSTM model is 4.51% lower than that of GA-SVM model and 3.55% lower than that of PSO-BP model. The conclusion shows that the oxygen content model based on LSTM has better generalization and has certain industrial value.
机译:针对燃煤电厂烟气含氧量测量成本高、过程复杂、精度低的问题,提出了一种基于长短时记忆(LSTM)网络的方法来代替氧传感器来估算锅炉烟气含氧量。具体来说,首先,利用Keras深度学习框架建立了LSTM模型,通过实验选择合适的超参数,进一步提高了模型的精度。其次,将烟气含氧量作为主导变量,与机理和锅炉工艺主要辅助变量相结合。根据从中国榆林一座燃煤电厂收集的实际生产数据,对数据集进行了预处理。此外,还提出了一种基于灰色关联分析的辅助变量选择模型,用于构建新的数据集,并划分训练集和测试集。最后,将该模型与传统的软测量建模方法(即基于支持向量机和BP神经网络的方法)进行了比较。LSTM模型的RMSE比GA-SVM模型低4.51%,比PSO-BP模型低3.55%。结果表明,基于LSTM的含氧量模型具有较好的泛化能力,具有一定的工业价值。

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