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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Fault detection of uncertain nonlinear process using reduced interval kernel principal component analysis (RIKPCA)
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Fault detection of uncertain nonlinear process using reduced interval kernel principal component analysis (RIKPCA)

机译:使用减少间隔内核主成分分析(RIKPCA)的不确定非线性过程的故障检测

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The interval kernel principal component analysis (IKPCA) is an extension of the KPCA method to deal with data with uncertainties. However, for a large data set the IKPCA method suffers high computation complexity. To avoid these disadvantages, a new fault detection method for uncertain nonlinear process entitled reduced interval kernel principal component analysis is proposed in this paper. The concept of the developed method consists of determine a reduced data set by choosing variables with the variance of highest projection in the direction of the selected principal components. Two RIKPCA models are developed: the first model is based on the midpoints-radii KPCA (RIKPCA(CR)) and the second one is based on the lower and upper bounds of intervals (RIKPCA(UL)). The purpose of the developed RIKPCA technique is to improve the efficiency of the IKPCA technique and to minimize the computation time. The efficiency of the developed method is illustrated by an application to the Tennessee Eastman process (TEP), and the desired performance is satisfied.
机译:区间内核主成分分析(IKPCA)是kpca方法的扩展,以处理具有不确定性的数据。但是,对于大数据集,IKPCA方法遭受高计算复杂性。为避免这些缺点,本文提出了一种新的非线性工艺的新故障检测方法,其题为减少的间隔内核主成分分析。开发方法的概念包括通过选择变量来确定减少的数据集,其中沿所选主组件的方向的最高投影的方差。开发了两个rikpca模型:第一个模型基于中点 - 半kpca(rikpca(cr)),第二个模型基于间隔的下限和上限(rikpca(ul))。发达的RIKPCA技术的目的是提高IKPCA技术的效率,并最大限度地减少计算时间。开发方法的效率由应用于田纳西州的Eastman进程(TEP),并且满足所需的性能。

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