Department of Electrical Engineering, Regional University of Blumenau, Rua São Paulo 3250, Blumenau 89030-000, Brazil.
Fondazione Bruno Kessler, Via Sommarive 18, 38123 Trento, Italy.
Sensors (Basel). 2022 Aug 16;22(16):6121. doi: 10.3390/s22166121.
To improve the monitoring of the electrical power grid, it is necessary to evaluate the influence of contamination in relation to leakage current and its progression to a disruptive discharge. In this paper, insulators were tested in a saline chamber to simulate the increase of salt contamination on their surface. From the time series forecasting of the leakage current, it is possible to evaluate the development of the fault before a flashover occurs. In this paper, for a complete evaluation, the long short-term memory (LSTM), group method of data handling (GMDH), adaptive neuro-fuzzy inference system (ANFIS), bootstrap aggregation (bagging), sequential learning (boosting), random subspace, and stacked generalization (stacking) ensemble learning models are analyzed. From the results of the best structure of the models, the hyperparameters are evaluated and the wavelet transform is used to obtain an enhanced model. The contribution of this paper is related to the improvement of well-established models using the wavelet transform, thus obtaining hybrid models that can be used for several applications. The results showed that using the wavelet transform leads to an improvement in all the used models, especially the wavelet ANFIS model, which had a mean RMSE of 1.58 ×10-3, being the model that had the best result. Furthermore, the results for the standard deviation were 2.18 ×10-19, showing that the model is stable and robust for the application under study. Future work can be performed using other components of the distribution power grid susceptible to contamination because they are installed outdoors.
为了改善电网的监测,有必要评估污染对泄漏电流及其向破坏性放电发展的影响。在本文中,通过在盐雾室中测试绝缘子来模拟其表面盐污染的增加。通过泄漏电流的时间序列预测,可以在闪络发生之前评估故障的发展情况。在本文中,为了进行全面评估,分析了长短时记忆 (LSTM)、数据处理群方法 (GMDH)、自适应神经模糊推理系统 (ANFIS)、自举聚合 (bagging)、顺序学习 (boosting)、随机子空间和堆叠泛化 (stacking) 集成学习模型。从模型最佳结构的结果中,评估了超参数并使用小波变换来获得增强模型。本文的贡献在于使用小波变换改进了成熟的模型,从而获得了可用于多种应用的混合模型。结果表明,使用小波变换可提高所有使用模型的性能,尤其是小波 ANFIS 模型,其均方根误差 (RMSE) 的平均值为 1.58×10-3,是表现最好的模型。此外,标准偏差的结果为 2.18×10-19,表明该模型对于研究中的应用具有稳定性和鲁棒性。未来的工作可以使用易受污染的配电网络的其他组件进行,因为它们安装在户外。