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Development of inferential distillation models using multivariate statistical methods

机译:利用多元统计方法开发推理蒸馏模型

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Chemical processes often have many variables that are being monitored every minute or every second. This can result in "data overload" and useful information that is buried within the collection of data is lost. Techniques that provide a quick method to extract information from large sets of data can prove to be very beneficial. In many cases, however, the data collected from processes are redundant, or highly correlated. In this paper, inferential models for estimating product compositions are built by using Partial Least Squares (PLS) regression, based on simulated time series data. The PLS method removes the correlation problem by projecting the original variable space to an orthogonal latent space. A debutanizer column is used as a case study and the results of the PLS method are compared to another two multivariate statistical methods, which are Multiple Linear Regression (MLR) and Principal Components Regression (PCR).
机译:化学过程通常每分钟或每秒监测许多变量。这可能导致“数据过载”和埋在数据集中的有用信息丢失。提供一种快速方法来提取来自大组数据的信息的技术可以证明是非常有益的。然而,在许多情况下,从过程收集的数据是冗余的,或高度相关的。本文通过基于模拟时间序列数据,通过使用局部最小二乘(PLS)回归来构建用于估计产品组合物的推理模型。通过将原始变量投影到正交潜空间,PLS方法通过将原始变量突出到正交潜空间来消除相关问题。使用Debutanizer栏作为案例研究,并将PLS方法的结果与另外两种多变量统计方法进行比较,这是多元线性回归(MLR)和主成分回归(PCR)。

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