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Soft Sensor Method Based on Deep Belief Network for Rotor Thermal Deformation of Rotary Air Preheater

机译:基于深度信仰网络的旋翼旋转空气预热器的软传感器方法

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In this paper, to detect the rotor thermal deformation of rotary air preheater, a soft sensor method based on Deep Belief Network (DBN) is proposed. The rotor thermal deformation of rotary air preheater can be accurately detected by the proposed method, so the air leakage of rotary air preheater under the harsh working environment can be well controlled. In the study, latent variables which are closely related to rotor thermal deformation are obtained by grey relation analysis method. Then, DBN network is trained by using labeled data and unlabeled data, in which the features in the data set are extracted by DBN module. The features extracted by DBN module are input Support Vector Regression (SVR) as input data. At the same time, Particle Swarm Optimization (PSO) algorithm is used to select the appropriate parameters for SVR. SVR is used as the predictor of the continuous target change value in the soft sensor model. The new soft sensor model of rotor thermal deformation is obtained by the superiority of DBN and SVR algorithms. Simulation result shows that the identification accuracy of this new model is higher, and the prediction of rotor thermal deformation is accurate, so it can predict the output well.
机译:在本文中,为了检测旋转空气预热器的转子热变形,提出了一种基于深度信仰网络(DBN)的软传感器方法。通过所提出的方法可以精确地检测旋转空气预热器的转子热变形,因此可以很好地控制旋转空气预热器的旋转空气预热器的漏气。在研究中,通过灰色关系分析方法获得与转子热变形密切相关的潜在变量。然后,通过使用标记的数据和未标记数据训练DBN网络,其中数据集中的功能由DBN模块提取。 DBN模块提取的功能是输入支持向量回归(SVR)作为输入数据。同时,粒子群优化(PSO)算法用于选择SVR的适当参数。 SVR用作软传感器模型中连续目标变化值的预测器。通过DBN和SVR算法的优越性获得了转子热变形的新软传感器模型。仿真结果表明,这种新型号的识别精度较高,转子热变形的预测是准确的,因此可以预测输出良好。

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