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Industrial process deep feature representation by regularization strategy autoencoders for process monitoring

机译:工业过程深度特征表示由正则化策略自动化器进行过程监控

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摘要

Autoencoders and stacked autoencoders (SAEs) are efficient for detecting abnormal situations in process monitoring because of their powerful deep feature representation capability. However, SAEs are easy to overfit during training, thereby affecting this representation. Furthermore, several nodes of the same layer in the SAE carry duplicate information, and thus the features are strongly correlated. To solve these problems, a novel regularization strategy, in which the inner product is introduced, is proposed for the SAE to reduce overfitting more effectively. The modified SAE is called an inner product-based stacked autoencoder (IPSAE). SAEs aim to reduce the Euclidean distance between the output and input matrices through iterative calculation, whereas the IPSAE adds the inner products between the outputs of the neurons to the objective function to regularize the features and reduce feature redundancy. Hence, after determining the structure of the SAE, it is trained to lower the reconstruction error and inner product between the outputs of the neurons to improve the deep feature representation of the industrial process. The proposed model is applied to a numerical system and a Tennessee Eastman dataset, and demonstrates the best performance when compared with several state-of-the-art models.
机译:由于其强大的深度特征表示能力,AutoEncoders和堆叠的autoencoders(SAES)是有效的,用于检测过程监控的异常情况。然而,在训练期间,Saes易于过度装备,从而影响了这种代表性。此外,SAE中的几个相同层的节点携带重复信息,因此该特征强烈相关。为了解决这些问题,提出了一种新的正规化策略,其中介绍了内部产品,以使SAE更有效地减少过度拟合。修改的SAE被称为基于内部产品的堆叠自动化器(IPSAE)。 SAES旨在通过迭代计算减少输出和输入矩阵之间的欧几里德距离,而IPSAE在神经元的输出之间添加内部产品,以规范特征并降低特征冗余。因此,在确定SAE的结构之后,训练以降低神经元的输出之间的重建误差和内部产品,以改善工业过程的深度特征表示。所提出的模型应用于数字系统和田纳西州伊斯特曼数据集,并与几种最先进的模型相比,展示了最佳性能。

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