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Robust probabilistic principal component analysis based process modeling: Dealing with simultaneous contamination of both input and output data

机译:基于鲁棒的概率主体成分分析的过程建模:处理两个输入和输出数据的同时污染

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In this work, one of the common issues, the robustness of the soft sensors, in development of such predictive models is discussed and the solution is provided. Large random errors, also known as outliers are one inseparable characteristic of data sets which can be caused by various reasons. Robust probabilistic predictive models overcome this problem by appropriate formulation of noise distributions. In this work possible outliers are considered for both input and output data in contrast to the traditional robust algorithms that have focused on output outliers only. Probabilistic principal component analysis based regression is used for the predictive model in this work and Expectation Maximization algorithm is applied to solve a complex robust estimation problem. Finally the performance of the developed robust predictive model is evaluated by simulated and industrial case studies. This work is a generalization to the traditional robust probabilistic principal component analysis based regression modeling work which considered a different type of outliers that occur in the output only. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在这项工作中,讨论了普通问题,软传感器的鲁棒性,在这种预测模型的发展中进行了一个常见问题,并提供了解决方案。大量的随机错误,也称为异常值是数据集的一个不可分割的特性,可以是由各种原因引起的。通过适当的噪声分布,鲁棒概率预测模型克服了这个问题。在此工作中,可能的异常值被认为是输入和输出数据,与传统的强大算法相比仅聚焦在输出异常值上。基于概率的主成分分析的回归用于该工作中的预测模型,并应用期望最大化算法来解决复杂的鲁棒估计问题。最后,通过模拟和工业案例研究评估了发达的稳健预测模型的性能。这项工作是传统的稳健概率主成分分析的回归建模工作的概括,其仅考虑了输出中发生的不同类型的异常值。 (c)2017 Elsevier Ltd.保留所有权利。

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