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Partial discharge detection in transformer using adaptive grey wolf optimizer based acoustic emission technique

机译:基于自适应灰狼优化器的声发射技术检测变压器局部放电

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Partial discharge (PD) occurring in the insulation systems of the transformer is an important indicator of their deterioration. Insulation degradation is a well-known source of power transformer failure. Many methods have been realized for detection and localization of PD source in the transformer. In this paper sensor based acoustic emission technique has been implemented for PD detection. To repair site of PD after detection it is very important to find the exact location of PD sources in the equipment. This paper proposed adaptive grey wolf optimizer (AGWO) algorithm for localization of PD source using acoustic emission technique. A novel bio-inspired optimization algorithm based on the hunting process of wolves in nature called the grey wolf optimizer (GWO) Algorithm. In contrast to meta-heuristics; the main feature is randomization having a relevant role in both exploration and exploitation in the optimization problem. A novel randomization technique termed adaptive technique is integrated with GWO and exercised on unconstrained test benchmark function and optimum location of PD in the transformer. Integration of new randomization adaptive technique provides potential to AGWO algorithm to attain global optimal solution and faster convergence with less parameter dependency. AGWO solutions are evaluated and a result shows it’s competitively better performance over other optimization algorithms.
机译:变压器绝缘系统中发生的局部放电(PD)是其劣化的重要指标。绝缘劣化是电力变压器故障的众所周知的原因。已经实现了许多方法来检测和定位变压器中的PD源。在本文中,基于传感器的声发射技术已经实现用于PD检测。要在检测到PD后修复PD的位置,找到设备中PD源的确切位置非常重要。提出了一种利用声发射技术对PD源进行定位的自适应灰狼优化算法(AGWO)。一种基于自然界中的狼狩猎过程的新型生物启发式优化算法,称为灰狼优化器(GWO)算法。与元启发法相反;主要特征是随机化在优化问题的探索和开发中均具有重要作用。一种称为自适应技术的新型随机技术与GWO集成在一起,并在无约束的测试基准功能和PD在变压器中的最佳位置上得到了应用。新的随机自适应技术的集成为AGWO算法提供了获得全局最优解的潜力,并以较少的参数依赖性实现了更快的收敛。对AGWO解决方案进行了评估,结果表明它比其他优化算法具有更好的竞争性能。

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