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A Hybrid-driven Soft Sensor with Complex Process Data Based on DAE and Mechanism-introduced GRU

机译:一种混合驱动的软传感器,具有基于DAE和机构引入的GRU的复杂过程数据

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With the increasing complexity of industrial processes, process big data inevitably has strong nonlinear, dynamic and noise problems, which restrict the accurate establishment of data-driven or mechanism-driven soft sensor models. Therefore, a soft sensor based on the denoising autoencoder and mechanism-introduced gated recurrent units is proposed. The denoising autoencoder is used to denoise the data. The mechanism-introduced gated recurrent units are used to introduce the information contained in the mechanism model and extract the dynamic characteristics of the process data by deep learning. This soft sensing method can deal with various problems of complex process data and introduce mechanism model for hybrid-driven modeling, which improves the prediction performance of the soft sensor. The effectiveness and superiority of the method are verified by the industrial case of predicting the thermal deformation of an air preheater rotor.
机译:随着工业过程的复杂性越来越多,过程大数据不可避免地具有强大的非线性,动态和噪声问题,限制了数据驱动或机制驱动的软传感器模型的准确建立。 因此,提出了一种基于去噪的自动化器和机构引入的门控复发单元的软传感器。 Denoising AutoEncoder用于代位于数据。 机制推出的门控复发单元用于介绍机制模型中包含的信息,并通过深度学习提取过程数据的动态特征。 这种软感测方法可以处理复杂过程数据的各种问题,并引入混合驱动建模的机制模型,从而提高了软传感器的预测性能。 通过预测空气预热器转子的热变形的工业情况验证了该方法的有效性和优越性。

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