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Automatic hyper-parameter tuning for soft sensor modeling based on dynamic deep neural network

机译:基于动态深神经网络的软传感器建模自动超参数调整

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Deep learning has been proposed for soft sensor modeling in process industries. However, conventional deep neural network (DNN) is a static network and thereby can not embrace evident dynamics in processes. Motivated by nonlinear autoregressive with exogenous input (NARX) model and neural nets based dynamic modeling, a dynamic network called NARX-DNN is put forward by further utilizing historical process samples and quality samples in a period of time. A modified hyper-parameter tuning method is proposed to choose optimal hyper-parameters of NARX-DNN with little manual intervention, which automatizes the training procedure and reduces computational cost. The quality prediction error of validation data is interpreted from different aspects, and the most appropriate delay of historical data can be determined automatically. The effectiveness of the proposed method is validated by case studies on a sulfur recovery unit and a debutanizer column. As training, validation and test data sets are selected by the original orders of data samples, the accurate prediction results of NARX-DNN demonstrate its ability in dealing with operation condition changes which are common in real processes.
机译:在工艺产业中提出了深度学习的软传感器建模。然而,传统的深神经网络(DNN)是静态网络,从而不能在过程中包含明显的动态。由非线性归类与外源性输入(NARX)模型和基于神经网络的动态建模的动机,通过在一段时间内进一步利用历史过程样本和质量样本来提出一种称为NARX-DNN的动态网络。建议修改过的超参数调整方法,以选择具有很少的手动干预的NARX-DNN的最佳超参数,这使得训练程序自动化并降低计算成本。验证数据的质量预测误差是从不同方面解释的,并且可以自动确定最适当的历史数据延迟。通过对硫回收单位和脱霉素柱的情况验证所提出的方法的有效性。作为训练,验证和测试数据集由原始数据样本选择,NARX-DNN的准确预测结果展示其在处理实际过程中常见的操作条件变化的能力。

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