A novel adaptive soft sensing framework for label delay in industrial data streams.

IF 6.5
Lei Chen, Guomin Wu, Haoyan Dong, Kuangrong Hao
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引用次数: 0

Abstract

In industrial data stream environments, the acquisition of real quality variables is challenging and subject to delay, posing significant obstacles to effective updates of adaptive soft sensors. To this end, this paper proposes a novel framework, Adaptive Soft Sensor for Label Delay (ASSLD). An adaptive multilevel regression model, weighting and integrating outcomes from layers at different depths, is designed to enhance online adaptability. To efficiently reuse historical labeled data, a diverse database is maintained online, from which similar samples are selected and weighted. Moreover, unlabeled samples within the delay time are utilized to help accommodate recent data. The experimental results on the sulfur recovery unit dataset and polyester dataset show the effectiveness of ASSLD in handling label delay, with accuracy improvements of more than 12 % over baselines.

一种新的工业数据流标签延迟自适应软检测框架。
在工业数据流环境中,真实质量变量的获取具有挑战性且存在延迟,这对自适应软传感器的有效更新构成了重大障碍。为此,本文提出了一种新的框架——标签延迟自适应软传感器(ASSLD)。设计了一种自适应多层回归模型,对不同深度层的结果进行加权和整合,以增强在线适应性。为了有效地重用历史标记数据,在线维护了一个多样化的数据库,从中选择相似的样本并进行加权。此外,利用延迟时间内的未标记样本来帮助适应最近的数据。在硫回收装置数据集和聚酯数据集上的实验结果表明,ASSLD在处理标签延迟方面是有效的,准确率比基线提高了12%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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