Marvellous significance performance analysis of PQ events prediction and classification

B. Vighneshwari, N. Jayakumar, P. Sandhya
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Abstract

This paper compares various significant research techniques concerning the power quality (PQ) events prediction and classification system presented by the authors previously and examines its viability scale as far as the research gap. This paper examines some of the frequently exercised PQ classification techniques named as Feedforward Neural Network (FNN), Sequential Ant Lion Optimizer and Recurrent Neural Network (SALRNN), dual-layer Feedforward network and Short-Time Fourier Transform (STFT) from the most significant literature in order to have more insights of the techniques. The research work has presented a simple framework that retains a balance between higher accuracy in the detection of disturbances as well as also maintains an effective computational performance for a large number of the power signals. The principle aim of the paper is research and comparative analysis of above-mentioned algorithms for searching the best impressive technique to detect and classify the PQ events. The simulation results of this research can be reasoned that the SALRNN technique performed very well to detect and classify the PQ disturbances when compared with the other two techniques such as FNN and STFT. The SALRNN technique is more optimal than the other existing techniques in terms of RMSE, MAPE, MBE, sensitivity, specificity and consumption time is analyzed.
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PQ事件预测与分类的显著性性能分析
本文比较了前人提出的各种重要的电能质量事件预测与分类系统的研究方法,并考察了其可行性尺度和研究差距。本文从最重要的文献中考察了一些经常使用的PQ分类技术,如前馈神经网络(FNN)、顺序蚂蚁狮子优化器和递归神经网络(SALRNN)、双层前馈网络和短时傅里叶变换(STFT),以便对这些技术有更多的了解。研究工作提出了一种简单的框架,在较高的干扰检测精度和对大量功率信号保持有效的计算性能之间保持平衡。本文的主要目的是对上述算法进行研究和比较分析,以寻找最有效的PQ事件检测和分类技术。本研究的仿真结果可以推断,SALRNN技术与FNN和STFT等其他两种技术相比,在检测和分类PQ干扰方面表现得非常好。分析了SALRNN技术在RMSE、MAPE、MBE、灵敏度、特异性和消耗时间等方面均优于现有技术。
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