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A new neural network soft sensing method based on the multi-resolution data fusion

机译:一种基于多分辨率数据融合的新神经网络软感测方法

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For the sampling frequency is different between the quality indexes and the auxiliary variables in the soft sensing training patterns, a new neural network soft sensing method based on the multi-resolution data fusion is presented in the paper. In the presented method, the neural network is trained based on the quality indexes and auxiliary variables with low sampling frequency first and the high resolution quality indexes is estimated using the trained network. Then the high resolution quality indexes are multi-scale decomposed using the biorthogonal wavelets and are fused with the low resolution quality indexes. Then the fused high resolution quality indexes are got and are used for the next training of the neural network to improve the accuracy of the soft sensing model. The method is used in the soft sensing modelling for the dry point of the crude gasoline of the Fluidized Catalytic Cracking Unit (FCCU) fractionator, results show that the neural network soft sensing model has higher accuracy after several iterative fusion and training steps.
机译:对于采样频率在软感测训练模式中的质量指标和辅助变量之间存在不同,纸张中提出了一种基于多分辨率数据融合的新神经网络软感测方法。在呈现的方法中,神经网络基于质量指标和具有低采样频率的辅助变量首先培训,并且使用训练网络估计高分辨率质量索引。然后,高分辨率质量索引是使用双正态小波分解的多尺度,并且与低分辨率质量索引融合。然后,融合的高分辨率质量指标得到并用于下一步训练神经网络,以提高软感测模型的准确性。该方法用于流化催化裂解单元(FCCU)分馏器的粗汽油的干燥点的软感测模型中,结果表明,神经网络软感测模型在几种迭代融合和训练步骤后具有更高的准确性。

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