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Soft sensor modeling based on cotraining-style kernel extreme learning machine

机译:基于协同训练式内核极限学习机的软传感器建模

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Most traditional soft sensor modeling requires the labeled training samples that contain both subsidiary and key variables. However, key variables are difficult to be obtained online due to lack of detection information or high measurement cost. In this paper, a novel semi-supervised learning algorithm, called cotraining-style kernel extreme learning machine, is proposed to exploit unlabeled training samples to reduce the labeling cost. This algorithm employs two soft sensor models trained by kernel extreme learning machine, each of which labels the unlabeled samples for the other during the training process. The confidence in labeling an unlabeled sample can be evaluated by training error which reflects the fitting capability of the soft sensor model and the final prediction is made by combining the estimates by both soft sensors. Industrial application case study shows that the proposed semi-supervised learning algorithm exhibits a good capability to exploit unlabeled training samples, which can improve the performance of the soft sensor.
机译:大多数传统的软传感器建模需要标记的训练样本,包含两个子公司和键变量。然而,由于缺乏检测信息或高测量成本,难以在线获得关键变量。本文提出了一种新型半监督学习算法,称为CoTraing-Siqule Extreme学习机,用于利用未标记的训练样本来降低标签成本。该算法采用了由内核极端学习机训练的两个软传感器型号,每个软件型号在训练过程中标记了另一个对方的未标记的样本。可以通过训练误差来评估在标记未标记的样品的置信度,这反映了软传感器模型的拟合能力,并且通过将估计与两个软传感器相结合来进行最终预测。工业应用案例研究表明,所提出的半监督学习算法表现出良好的能力来利用未标记的训练样本,这可以提高软传感器的性能。

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