Wide accessibility of imaging and profile sensors in modern industrial systems created an abundance of high-dimensional sensing variables. This led to a a growing interest in the research of high-dimensional process monitoring. However, most of the approaches in the literature assume the in-control population to lie on a linear manifold with a given basis (i.e., spline, wavelet, kernel, etc) or an unknown basis (i.e., principal component analysis and its variants), which cannot be used to efficiently model profiles with a nonlinear manifold which is common in many real-life cases. We propose deep probabilistic autoencoders as a viable unsupervised learning approach to model such manifolds. To do so, we formulate nonlinear and probabilistic extensions of the monitoring statistics from classical approaches as the expected reconstruction error (ERE) and the KL-divergence (KLD) based monitoring statistics. Through extensive simulation study, we provide insights on why latent-space based statistics are unreliable and why residual-space based ones typically perform much better for deep learning based approaches. Finally, we demonstrate the superiority of deep probabilistic models via both simulation study and a real-life case study involving images of defects from a hot steel rolling process.
翻译:现代工业系统中成像和剖面传感器的可广泛获取性创造了大量高维遥感变量。这导致人们对高维过程监测研究的兴趣日益浓厚。然而,文献中的大多数方法都假定,在控制范围内的人口属于线性成份,有一定基础(即斯普林、波板、内核等)或未知基础(即主要组成部分分析及其变体),无法用来有效地用非线性成份来模拟剖面图象,许多现实生活中常见的非线性成份。我们提出深概率自动成份作为可行的、不受监督的学习方法来模拟这些元件。为了做到这一点,我们从古典方法中制定监测统计数字的非线性、概率性扩展,如预期重建误差(ERE)和基于监测统计的KL-维朗(KLD)等。我们通过广泛的模拟研究,就潜空统计为何不可靠,以及基于残余空间的模型通常对深深层学习方法产生更好的效果。最后,我们通过模拟研究以及滚动性钢模模型,从滚动性钢模模型中,从滚动案例研究中,展示了深层稳定模型。