基于鲁棒多任务学习的绝缘纸近红外检测DP标定传递

Han Li, Xie Jia, Wenbo Zhang, Shaorui Qin, Yuan Li, Guanjun Zhang
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引用次数: 0

摘要

近年来,研究人员提出利用近红外光谱(NIRS)检测绝缘纸的聚合度(DP),从而方便、快速、无损地获得变压器绝缘的老化情况。针对以往建立的定量分析模型由于光谱仪之间的差异而不能适用于新生产的光谱仪的问题,也称为校准转移问题,提出了一种鲁棒多任务学习(RMTL)方法,该方法将迹范数正则化多任务学习模型和l2,1范数正则化多任务学习模型结合起来,获得任务之间的相关关系。提高各任务的泛化能力,降低过拟合风险。因此,RMTL可以同时利用主机光谱仪(HS)积累的大量数据和从机光谱仪(SS)的少量数据进行训练,从而获得相对高质量的从机定量分析模型。此外,我们将RMTL方法与经典的DS、PDS、MU-PLS、带直接从建模的PLS以及其他三种不同范数正则化的多任务学习方法进行了比较,结果表明所提出的方法在数据集的均方根误差(RMSE)和相关系数(R)方面具有最佳性能。
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Robust Multi-task Learning for Calibration Transfer in DP Detection by NIRS of Insulating Paper
In recent years, researchers have proposed the use of Near-Infrared Spectroscopy (NIRS) to detect the Degree of Polymerization (DP) of insulating paper, thus obtaining the aging of transformer insulation in a convenient, fast and nondestructive way. To cope with the problem that the previously established quantitative analysis models are no longer applicable to newly produced spectrometers due to the differences between spectrometers, also called calibration transfer problem, we proposed an robust multi-task learning (RMTL) method, which unites the multi-task learning model of trace norm regularization and l2,1 norm regularization to obtain the correlation relationships between tasks, improving the generalization ability of each task and reducing the risk of overfitting. Therefore, RMTL can use the large amount of data accumulated by the host spectrometer (HS) and the small amount of data from the slave spectrometer (SS) to train at the same time to obtain a relatively high-quality quantitative analysis model of the slave machine. In addition, we compare the RMTL method with the classical DS, PDS, MU-PLS, PLS with direct slave modeling, and three other multi-task learning methods with different norm regularization, and the results show that the proposed method has the best performance in terms of root mean square error (RMSE) and correlation coefficient(R) on the dataset.
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