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Mixture modeling for industrial soft sensor application based on semi-supervised probabilistic PLS

机译:基于半监督概率PLS的工业软件应用应用混合物建模

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Due to the difficulty in measuring key performance indices in the process, only a small portion of collected data may have values for both routinely recorded variables and key performance indices, while a large portion of data only has values for routinely recorded variables. In order to improve the performance of data-driven soft sensor modeling, the idea of semi-supervised learning is incorporated with the traditional partial least squares modeling method. Furthermore, the single semi-supervised model structure is extended to the mixture form, in order to handle more complex data characteristics. An efficient Expectation-Maximization algorithm is designed for model training. An industrial case study is presented for performance evaluation of the developed method, with a Bayesian inference approach developed for results integration of different local models. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于难以测量过程中的关键性能指标,只有一小部分收集的数据可能具有常规记录变量和关键性能指标的值,而大部分数据仅具有常规记录变量的值。 为了提高数据驱动的软传感器建模的性能,半监督学习的想法与传统的局部最小二乘建模方法融合。 此外,单个半监督模型结构扩展到混合形式,以便处理更复杂的数据特性。 有效的期望 - 最大化算法专为模型培训而设计。 提出了一种工业案例研究,用于开发方法的性能评估,具有贝叶斯推理方法,用于不同本地模型的结果集成。 (c)2019年elestvier有限公司保留所有权利。

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