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基于全变量信息的子空间监控方法 被引量:3
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作者 吕小条 宋冰 +1 位作者 谭帅 侍洪波 《化工学报》 EI CAS CSCD 北大核心 2015年第4期1395-1401,共7页
实际化工过程采集得到的数据往往维度较高,直接建模比较复杂。主元分析(principal component analysis,PCA)方法可以提取原始数据主要特征,得到低维数据,但传统的PCA过程监控方法仅保留了方差较大的主元,会造成信息缺失,这将大大影响过... 实际化工过程采集得到的数据往往维度较高,直接建模比较复杂。主元分析(principal component analysis,PCA)方法可以提取原始数据主要特征,得到低维数据,但传统的PCA过程监控方法仅保留了方差较大的主元,会造成信息缺失,这将大大影响过程监控性能。针对这一问题,提出了一种新的基于全变量信息(full variable information,FVI)的子空间监控方法。首先,依据每个变量与主元空间(principal component subspace,PCS)和残差空间(residual subspace,RS)相似性的高低,将原始数据空间划分为3个维度较低的子空间,3个子空间保存了全部过程变量,可以更充分地利用过程信息。其次,在每个子空间中,分别建立监控模型,并利用贝叶斯推断整合子空间的监控结果。最后,通过数值仿真及Tennessee Eastman(TE)过程仿真研究验证FVI方法的有效性。 展开更多
关键词 化工过程系统 子空间 信息缺失 监控模型 数值分析
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Process Monitoring Based on Independent Component Contribution
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作者 吕小条 宋冰 +1 位作者 侍洪波 谭帅 《Journal of Donghua University(English Edition)》 EI CAS 2017年第3期349-354,共6页
Independent component analysis( ICA) has been widely applied to the monitoring of non-Gaussian processes. Despite lots of applications,there is no universally accepted criterion to select the dominant independent comp... Independent component analysis( ICA) has been widely applied to the monitoring of non-Gaussian processes. Despite lots of applications,there is no universally accepted criterion to select the dominant independent components( ICs). Moreover, how to determine the number of dominant ICs is still an open question. To further address this issue,a novel process monitoring based on IC contribution( ICC) is proposed from the perspective of information storage. Based on the ICC with each variable,the dominant ICs can be obtained and the number of dominant ICs is determined objectively. To further preserve the process information, the remaining ICs are not useless. As a result,all the ICs are regarded to be divided into dominant and residual subspaces. The monitoring models are established respectively in each subspace, and then Bayesian inference is applied to integrating monitoring results of the two subspaces. Finally, the feasibility and effectiveness of the proposed method are illustrated through a numerical example and the Tennessee Eastman process. 展开更多
关键词 independent component analysis(ICA) dominant independent components(ICs) independent component contribution(ICC) SUBSPACE Bayesian inference
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