基于最近邻的数据约简与故障诊断算法

K. Detroja
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引用次数: 0

摘要

在分析工厂范围内监控的过程历史数据时,降维是主要关注的问题之一,因为这可以显著减少统计模型构建期间的计算负荷。大多数研究关注的是沿变量空间的降维,即减少列数。但是,没有努力沿着样本(行)空间降低维数。本文提出了一种基于最近邻的算法,利用对应分析(CA)算法的分布等价(PDE)特性原理,在不显著影响诊断性能的情况下实现沿样本空间的数据约简。本文提出的数据约简算法是无监督的,当与CA结合使用时,可以实现显著的数据约简。使用基准田纳西伊士曼过程模拟案例研究证明了所提出方法的数据约简能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nearest neighbour based algorithm for data reduction and fault diagnosis
Dimensionality reduction is one of the prime concerns when analyzing process historical data for plant-wide monitoring, because this can significantly reduce computational load during statistical model building. Most research has been concerned with reducing the dimension along the variable space, i.e. reducing the number of columns. However, no efforts are made to reduce dimensions along the sample (row) space. In this paper, an algorithm based on nearest neighbor is presented here that exploits the principle of distributional equivalence (PDE) property of the correspondence analysis (CA) algorithm to achieve data reduction along the sample space without significantly affecting the diagnostic performance. The data reduction algorithm presented here is unsupervised and can achieve significant data reduction when used in conjunction with CA. The data reduction ability of the proposed methodology is demonstrated using the benchmark Tennessee Eastman process simulation case study.
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