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Maximized Mutual Information Analysis Based on Stochastic Representation for Process Monitoring

机译:基于流程监测随机表示的最大化的互信息分析

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This paper proposes a stochastic representation of maximized mutual information analysis (MIA) method for quality monitoring in which a manner of imposing prior probability distributions over projection parameters is employed and subsequently, a Bayesian estimation algorithm is put forward for projection learning. The proposed stochastic MIA (SMIA) based approach allows the enhanced performance of fault detection due to the following advantages over classic monitoring methods. First, the SMIA approach utilizes the mechanism of hierarchical priors and an individual prior over each projection direction, as a key feature of the proposed method, which enables SMIA to build a sparse model that can discard irrelevant components in the process data with respect to the prediction of quality variables. Second, the proposed SMIA method incorporates the advantage of maximizing mutual information on the minimum achievable error of model prediction as well as the advantage of describing the serial dynamics. Additionally, the optimal dimensionality of the latent space in an SMIA can be automatically determined during the procedure of Bayesian estimation by the utilization of these adaptive priors over projections. The effectiveness of the proposed approach for quality monitoring is demonstrated on the benchmark of Tennessee Eastman process.
机译:本文提出了一种用于质量监测的最大化互信息分析(MIA)方法的随机表示,其中采用在投影参数上施加先前概率分布的方式,并随后提出了一种贝叶斯估计算法进行投影学习。所提出的随机MIA(SMIA)的方法允许增强的故障检测性能由于经典监控方法以下优点而导致的故障检测。首先,SMIA方法利用分层前沿的机制和在每个投影方向上之前的单独的机制,作为所提出的方法的关键特征,这使得SMIA能够构建一个稀疏模型,可以丢弃相对于过程数据中的过程数据中的无关组件的稀疏模型。质量变量预测。其次,所提出的SMIA方法包括最大化模型预测的最小可实现误差的互信息的优点以及描述串行动态的优点。另外,通过在投影上利用这些自适应前提,可以在贝叶斯估计过程中自动确定SMIa中潜在空间的最佳维度。在田纳西州伊士曼进程的基准上证明了提出的质量监测方法的有效性。

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