总投影到潜在结构的多空间泛化及其在过程在线监测中的应用

Chunhui Zhao, Youxian Sun
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引用次数: 6

摘要

在本工作中,分析了现代工业过程的过程变量空间的多样性,其中大量的过程变量可以从不同的来源收集。每个过程空间由不同的变量组成,揭示了不同的潜在特征。在此基础上,提出了多空间版本的隐结构全投影算法。该算法从质量关注的角度研究了多个过程空间之间的关系。这样可以在每个过程空间中得到全面的信息分解,将四个系统部分分离出来,揭示跨空间的共同和特定过程可变性。基于MsT-PLS子空间分解结果制定了过程监控策略,并以田纳西伊士曼过程为例,与其他方法进行了比较。
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The multi-space generalization of total projection to latent structures (MsT-PLS) and its application to online process monitoring
In the present work, the multiplicity of process variable spaces is analyzed for modern industrial processes where a large number of process variables may be collected from different sources. Each process space is composed of different variables, revealing different underlying characteristics. The multi-space version of total projection to latent structures algorithm (MsT-PLS) is thus developed. By the proposed algorithm, the relationship across multiple process spaces is studied from the quality-concerned viewpoint. In this way, comprehensive information decomposition is obtained in each process space, where four systematic parts can be separated, revealing cross-space common and specific process variability. Process monitoring strategy is developed based on the MsT-PLS subspace decomposition result and illustrated on the Tennessee Eastman process in comparison with the other methods.
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