Deep Learning Based Harmonics and Interharmonics Pre-Detection Designed for Compensating Significantly Time-varying EAF Currents

Ebrahim Balouji, Karl Bäckström, T. McKelvey, Özgül Salor-Durna
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引用次数: 7

Abstract

In this research work, time-and frequency-domain Deep Learning (DL) based methods have been developed to predetect harmonic and interharmonic components of a current waveform of an Electric Arc Furnace (EAF) application. In the time-domain DL based approach, a DL-based algorithm predicts future samples of an EAF current waveform, which is then used in a multiple reference frame (MSRF) analysis together with exponential smoothing (ES) to detect harmonics and interharmonics. Comparably, in the frequency-domain DL based approach, sliding Discrete Fourier Transform (DFT) followed by DL is employed to predict the future samples of harmonics and interharmonics. Moreover, to obtain the most accurate and robust prediction system, grid search has been employed for parameter optimization of the DL structure. Due to the high computational complexity of the DL training phase, an NVIDIA TITAN XP Graphics Processing Unit (GPU) is employed which utilizes an efficient multi-core parallel processing infrastructure which was critical for making this work feasible. Testing on recorded field data resulted in outstanding prediction of all harmonics up-to 50th order and interharmonics with 5Hz resolution. In addition, the effectiveness of our proposed system for Active Power Filters (APFs) for harmonics and interharmonics has been evaluated in a simulation environment using field data and has shown to provide successful results. Since the proposed method due to its predictive nature can reduce the response and reaction time of APFs to zero while maintaining high compensation accuracy. The developed method can be considered to be a feasible candidate solution for generating reference signals to the controllers of a new generation of compensation devices which we refer to as predictive active power filters (pAPF).
基于深度学习的谐波和间谐波预检测设计用于补偿显著时变电火花电流
在这项研究工作中,基于时域和频域深度学习(DL)的方法已经被开发出来,用于预检测电弧炉(EAF)应用中电流波形的谐波和间谐波分量。在基于时域DL的方法中,基于DL的算法预测EAF电流波形的未来样本,然后将其与指数平滑(ES)一起用于多参考帧(MSRF)分析以检测谐波和间谐波。相比之下,在基于频域DL的方法中,采用滑动离散傅里叶变换(DFT)和DL来预测谐波和间谐波的未来样本。此外,为了获得最准确和鲁棒的预测系统,采用网格搜索对深度学习结构进行参数优化。由于深度学习训练阶段的高计算复杂性,采用了NVIDIA TITAN XP图形处理单元(GPU),它利用了高效的多核并行处理基础设施,这对于使这项工作可行至关重要。对现场记录数据的测试结果表明,该系统能够预测50阶以下的所有谐波和5Hz分辨率的间谐波。此外,我们提出的有源电力滤波器(apf)系统对谐波和间谐波的有效性已经在使用现场数据的模拟环境中进行了评估,并显示出成功的结果。由于该方法具有预测性,可以在保持较高补偿精度的同时将apf的响应和反应时间降至零。所提出的方法可以被认为是一种可行的候选解决方案,为新一代补偿装置的控制器产生参考信号,我们称之为预测有源电力滤波器(pAPF)。
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