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Enhanced optimal trained hybrid classifiers for aging assessment of power transformer insulation oil

机译:增强的最佳培训的混合分类器,用于电力变压器绝缘油的老化评估

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Purpose - As a result of the deregulations in the power system networks, diverse beneficial operations have been competing to optimize their operational costs and improve the consistency of their electrical infrastructure. Having certain and comprehensive state assessment of the electrical equipment helps the assortment of the suitable maintenance plan. Hence, the insulation condition monitoring and diagnostic techniques for the reliable and economic transformers are necessary to accomplish a comprehensive and proficient transformer condition assessment. Design/methodology/approach - The main intent of this paper is to develop a new prediction model for the aging assessment of power transformer insulation oil. The data pertaining to power transformer insulation oil have been already collected using 20 working power transformers of 16-20 MVA operated at various substations in Punjab, India. It includes various parameters associated with the transformer such as breakdown voltage, moisture, resistivity, tan δ, interfacial tension and flashpoint. These data are given as input for predicting the age of the insulation oil. The proposed aging assessment model deploys a hybrid classifier model by merging the neural network (NN) and deep belief network (DBN). As the main contribution of this paper, the training algorithm of both NN and DBN is replaced by the modified lion algorithm (LA) named as a randomly modified lion algorithm (RM-LA) to reduce the error difference between the predicted and actual outcomes. Finally, the comparative analysis of different prediction models with respect to error measures proves the efficiency of the proposed model. Findings - For the Transformer 2, root mean square error (RMSE) of the developed RM-LA-NN + DBN was 83.2, 92.5, 40.4, 57.4, 93.9 and 72 per cent improved than NN + DBN, PSO, FF, CSA, PS-CSA and LA-NN + DBN, respectively. Moreover, the RMSE of the suggested RM-LA-NN + DBN was 97.4 per cent superior to DBN + NN, 96.9 per cent superior to PSO, 81.4 per cent superior to FF, 93.2 per cent superior to CSA, 49.6 per cent superior to PS-CSA and 36.6 per cent superior to LA-based NN + DBN, respectively, for the Transformer 13. Originality/value - This paper presents a new model for the aging assessment of transformer insulation oil using RM-LA-based DBN + NN. This is the first work uses RM-LA-based optimization for aging assessment in power transformation insulation oil.
机译:目的 - 由于电力系统网络的放管,不同的有益业务一直在竞争优化其运营成本并提高电气基础设施的一致性。对电气设备的某些和全面的国家评估有助于各种各样的维护计划。因此,对于可靠和经济变压器的绝缘状况监测和诊断技术是实现全面和精通变压器条件评估所必需的。设计/方法/方法 - 本文的主要目的是为电力变压器绝缘油的老化评估开发一种新的预测模型。已经采用了在印度旁遮普邦旁遮普邦的各种变电站运行的20个工作电力变压器,已经收集了电力变压器绝缘油的数据。它包括与变压器相关的各种参数,例如击穿电压,湿度,电阻率,TANδ,界面张力和闪点。这些数据作为预测绝缘油的年龄的输入给出。通过合并神经网络(NN)和深度信仰网络(DBN),所提出的老化评估模型部署了混合分类器模型。作为本文的主要贡献,将NN和DBN的训练算法由被称为随机修改的狮子算法(RM-LA)的修改的狮子算法(LA)代替,以降低预测和实际结果之间的误差差异。最后,对误差措施的不同预测模型对不同预测模型的比较分析证明了所提出的模型的效率。结果 - 对于变压器2,开发的RM-LA-NN + DBN的根均方误差(RMSE)为83.2,92.5,40.4,57.4,93.9和72%,改善于NN + DBN,PSO,FF,CSA, PS-CSA和LA-NN + DBN分别。此外,建议的RM-LA-NN + DBN的RMSE高于DBN + NN的97.4%,优于PSO 96.9%,优于FF 81.4%,93.2%优于CSA,优于49.6% PS-CSA和36.6%,分别为Transformer 13的基于LA基NN + DBN。原创/值 - 本文介绍了使用基于RM-LA的DBN + NN的变压器绝缘油老化评估的新模型。这是第一项工作,使用基于RM-LA的优化进行功率转换绝缘油中的老化评估。

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