基于在线深度演化模糊系统的工业过程数据流自适应软测量方法

Y. Gao, Huaiping Jin, Bin Wang, Biao Yang, Wangyang Yu
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摘要

近年来,深度学习技术在软传感器建模中得到了广泛的应用。堆叠式自编码器(SAE)网络由于其分层结构,在发现复杂数据模式方面特别有效。然而,过程数据通常以数据流的形式生成,这对基于SAE的传统软测量模型捕获过程的时变特征提出了很大的挑战。此外,离线预训练数据的不足进一步限制了SAE的特征表示能力。针对这些问题,提出了一种基于在线深度进化模糊系统(ODEFS)的过程数据流自适应软测量方法。在离线建模阶段,对质量相关堆叠自编码器(QSAE)进行预训练作为表征层,挖掘质量相关特征表征,构建具有自组织能力的进化模糊系统作为预测层。在在线实现阶段,在QSAE特征网络的学习过程中加入了拓扑保持损失,实现了特征表示的持续学习,缓解了灾难性遗忘问题。同时,浅层EFS网络通过自调整结构和参数来处理数据模式中的概念漂移。提出的ODEFS方法可以提高SAE在数据流环境下的特征表示能力和处理时变特征的能力,从而保证更好的预测精度。在TE过程中验证了该方法的有效性和优越性。
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An Adaptive Soft Sensor Method based on Online Deep Evolving Fuzzy System for Industrial Process Data Streams
In recent years, deep learning techniques have been widely applied in soft sensor modeling. Stacked autoencoder (SAE) networks are particularly effective at discovering complex data patterns due to their hierarchical structures. However, process data are typically generated as data streams, which poses a great challenge to capture the time-varying characteristics of the process for traditional soft sensor models based on SAE. Furthermore, the insufficiency of offline pre-training data further limits the feature representation capability of SAE. To address these problems, an online deep evolving fuzzy system (ODEFS) based adaptive soft sensor method for process data streams is proposed. In the offline modeling phase, quality-related stacked autoencoder (QSAE) is pre-trained as representation layer to mine quality-related feature representations, while an evolving fuzzy system with self-organization capability is built as the prediction layer. In the online implementation phase, the topology-preserving loss is added to the learning process of QSAE feature network to enable continuous learning of feature representations and alleviate the catastrophic forgetting problem. Meanwhile, the shallow EFS network handles concept drift in data patterns by self-adjusting the structure and parameters. The proposed ODEFS method can improve the feature representation capability of SAE in a data streaming environment and the ability to handle time-varying characteristics, thus ensuring better prediction accuracy. The effectiveness and superiority of the proposed method are verified on TE process.
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