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Diagonal Recurrent Neural Network as an On-line Identifier for a Cold Flow Circulating Fluidized Bed

机译:对角线复发性神经网络作为冷流流化床的在线标识符

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Circulating fluidized beds (CFB) are widely used in energy industries for increasing the efficiency and reducing environment pollution. CFB modeling and identification have significant importance for operation optimization. Owing to the nonlinear nature of CFB operation, online CFB modeling and identification are highly desirable so that the model can adjust itself according to the change of CFB operation. In this paper, we develop an online CFB identification method based on diagonal recurrent neural network (DRNN) modeling. This method was applied to a large-scale cold flow CFB at the National Energy Technology Laboratory for prediction of solid circulation rate. The result showed that this method worked excellently.
机译:循环流化床(CFB)广泛应用于能源产业,以提高效率和减少环境污染。 CFB建模和识别对操作优化具有重要意义。由于CFB操作的非线性性质,非常希望在线CFB建模和识别,使模型可以根据CFB操作的变化来调整自身。在本文中,我们开发了基于对角线复发性神经网络(DRNN)建模的在线CFB识别方法。该方法应用于国家能源技术实验室的大型冷流CFB,以预测固体循环率。结果表明,该方法效果优良。

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