基于Dissado-Hill和GWO-HMM模型的OIP衬套水分状态判别方法

Wei Liao, Lijun Zhou, Chuanhui Zhang, Dong Wang, Jun Zhang, Lei Guo
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引用次数: 6

摘要

准确识别油浸纸(OIP)衬套的水分状态对衬套的维护和更换计划至关重要。基于频域光谱(FDS)测量和Dissado-Hill (DH)松弛模型,提出了一种隐马尔可夫模型和灰狼优化(GWO-HMM)的混合方法,用于非均匀水分分布和动态时间序列建模下衬套的质谱估计。首先,采用有限元建模方法建立了OIP衬套的水分扩散和FDS仿真模型。然后,采用GWO算法对DH模型中介电参数受水分的影响进行研究。然后,采用gwo - hmm作为MS的分类工具进行MS的判别,并结合仿真和实验数据,应用gwo - hmm对衬套的MS进行估计。分类结果表明,该方法的平均识别准确率分别为98.08%和97.61%,验证了该方法对OIP套管水分估计的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method for Discriminating the Moisture Status of OIP Bushing based on Dissado-Hill and GWO-HMM Model
An accurate discrimination on moisture status (MS) of oil-impregnated paper (OIP) bushings is crucial for the maintenance and replacement schedule of bushings. Based on frequency-domain spectroscopy (FDS) measurement and Dissado-Hill (DH) relaxation model, this paper proposes a hybrid approach of hidden Markov model and gray wolf optimization (GWO-HMM) for MS estimation of bushings subjected to the ununiform moisture distribution and dynamic time-series modeling. First, simulation models of moisture diffusion and FDS of the OIP bushing were constructed using finite element modelling (FEM) approach. Then, the GWO algorithm was employed to explore dielectric parameters influenced by moisture in DH model. Then, GWO-HMMs was further adopted as a classification tool to discriminate the MS. The GWO-HMMs was applied to estimate the MS of bushings using both simulation and experimental data. Classification results confirm that the average identification accuracies of the proposed method are 98.08% and 97.61% over these two datasets, which demonstrates the effectiveness of the proposed moisture estimate method for OIP bushings.
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