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Modeling Large-Scale Industrial Processes by Multiple Deep Belief Networks With Lower-Pressure and Higher-Precision for Status Monitoring

机译:通过具有较低压力和更高精度的多个深度信仰网络建模大型工业过程,以进行状态监控

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摘要

Typically, fault detection using deep learning is performed based on the features extracted from only one well-trained deep model. However, our results show that large-scale data is complicated and originates from different schemas, which will cause great pressure on deep neural networks, furthermore, the quality of the extracted features will be affected, and the training complexity and time will also be increased. Conversely, deep models would feel comfortable to extract features from raw data that contain less complex relationships and the quality of extracted features are higher and more representative. Hence, variables from large-scale industrial processes in this study are reasonably divided into various schemas with simple relationships by mutual information. Then, the corresponding deep belief network (DBN) models are established under a lighter pressure state to sufficiently extract the abstract and high-order information from data in each schema. Experimental analysis shows that the training efficiency, the accuracy of extracted features and the monitoring performance based on the proposed model system are all better than using only one DBN. What;s more, a comparison with those of representative and state-of-the-art methods on numerical and Tennessee Eastman processes also demonstrates the high performance of the proposal called M-DBN.
机译:通常,使用深度学习的故障检测基于仅从一个良好训练的深层模型提取的特征来执行。但是,我们的结果表明,大规模数据复杂,源自不同的模式,这将对深度神经网络引起很大的压力,此外,提取特征的质量将受到影响,并且还将增加培训复杂性和时间。相反,深度模型将舒适地提取来自含有较差关系的原始数据的特征,提取特征的质量更高,更高的代表性。因此,本研究中大规模工业过程的变量合理地分为各种模式,通过相互信息具有简单的关系。然后,在较轻的压力状态下建立相应的深度信仰网络(DBN)模型,以充分提取来自每个模式中的数据的抽象和高阶信息。实验分析表明,基于所提出的模型系统的提取功能和监测性能的培训效率和监测性能都比使用一个DBN更好。更重要的是,与数值和田纳西州伊斯坦德进程的代表和最先进的方法的比较也展示了涉及M-DBN的提案的高性能。

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