基于深度高斯与非高斯信息融合框架的工业过程监控

Zhiqiang Ge
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引用次数: 0

摘要

在工业过程监测中,高斯和非高斯数据驱动模型是近年来分别发展起来的两个重要代表。虽然已经有多次尝试将高斯和非高斯数据信息结合起来进行综合过程监控,但这种信息融合策略可以在深度学习的思想和框架下得到进一步的增强。特别是,通过协同学习和逐层信息转换,可以在深度模型的不同隐藏层中有效地提取出更多的高斯和非高斯分量的模式。然后,进一步制定贝叶斯模型融合策略,将高斯和非高斯数据驱动模型的监测结果集成在一起。因此,本文的主要贡献是为数据驱动的工业过程监控提出了一个深度高斯和非高斯信息融合框架。通过详细的行业标杆案例分析,验证了所建立模型的可行性和优越性。与高斯和非高斯深度模型相比,新的深度信息融合模型获得了更满意的监测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industrial Process Monitoring Based on Deep Gaussian and Non-Gaussian Information Fusion Framework
For industrial process monitoring, Gaussian and non-Gaussian data-driven models are two important representatives that have been developed separately in the past years. Although several attempts have been made to combine Gaussian and non-Gaussian data information for integrated process monitoring, this information fusion strategy can be further enhanced under the idea and framework of deep learning. Particularly, through collaborative learning and layer-by-layer information transformation, more patterns of both Gaussian and non-Gaussian components can be effectively extracted in different hidden layers of the deep model. Then, a further Bayesian model fusion strategy is formulated to ensemble monitoring results from both Gaussian and non-Gaussian data-driven models. Therefore, the main contribution of this article is to propose a deep Gaussian and non-Gaussian information fusion framework for data-driven industrial process monitoring. Both feasibility and superiority of the developed model are confirmed through a detailed industrial benchmark case study. Compared to both Gaussian and non-Gaussian deep models, the new deep information fusion model has obtained more satisfactory monitoring results.
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